English Language Acquisition Grants Under the No Child Left Behind Act: Analysis of State Grant Formula and Data Options

English Language Acquisition Grants Under
the No Child Left Behind Act: Analysis of
State Grant Formula and Data Options
June 29, 2007
Rebecca R. Skinner
Specialist in Social Legislation
Domestic Social Policy Division



English Language Acquisition Grants
Under the No Child Left Behind Act:
Analysis of State Grant Formula and Data Options
Summary
The number of limited English proficient (LEP) students enrolled in K-12
education increased by 60.8% from the 1994-1995 school year to the 2004-2005
school year, while total student enrollment increased by 2.6% over the same time
period. Given this tremendous growth in the LEP student population and the
likelihood that Congress will consider legislation to reauthorize the Elementary and
Secondary Education Act of 1965 (ESEA), as amended by the No Child Left Behindth
Act of 2001 (NCLBA; P.L. 107-110), during the 110 Congress, this report examines
the formula used to provide grants to states under the English Language Acquisition
program, authorized by Title III of the ESEA. This program provides grants to states
to help ensure that LEP and recent immigrant students attain proficiency in English.
Much of the debate surrounding the reauthorization of this program has focused on
the data used to determine how many LEP and immigrant students are in each state,
as these data are the basis upon which grants are determined.
This report examines the American Community Survey (ACS) data that the U.S.
Department of Education has used to calculate state grants since FY2005. It also
analyzes state-reported data that could potentially be used to calculate these grants.
Differences in LEP and immigrant student counts based on the different data sources
are compared, revealing substantial differences in student counts for some states
depending on the data source used. FY2007 grants are calculated using both the ACS
and state-reported data to examine the potential differences in state grant amounts
depending on the data source used. The differences in student counts that exist
between the ACS and state-reported data are reflected in the differences in estimated
state grant amounts, as some states would receive substantially more or less funding
if state-reported data were used to calculate grants rather than the ACS data.
Consideration is also given to the drawbacks of using either the ACS or state-
reported data and possible alternative strategies for determining state grant awards
(e.g., averaging the student counts from the ACS and state-reported data) are
discussed.
This report will be updated as warranted by legislative action.



Contents
English Language Acquisition State Grants.............................1
Data Availability..................................................2
American Community Survey Data................................3
State-Reported LEP Student Counts...............................6
State-Reported Immigrant Student Counts..........................9
ACS Data Compared with State-Reported Data.........................11
Data Limitations..............................................11
Student Count Data Comparisons................................12
Estimated FY2007 State Grants......................................15
Selecting Data on Which To Base the Distribution of Funds...............17
ACS Data...................................................17
State-Reported Data...........................................18
Data Accuracy...............................................19
Possible Alternatives..............................................20
List of Tables
Table 1. LEP Student Counts from the 2003, 2004, and 2005 American
Community Surveys............................................4
Table 2. Immigrant Student Counts from the 2003, 2004, and 2005
American Community Survey....................................5
Table 3. Estimated State LEP Student Counts Based on Data Available
from the Common Core of Data and the NCELA: 2002-2003,
2003-2004, and 2004-2005 ......................................8
Table 4. Immigrant Student Counts Based on State-Reported Data
in Title III Biennial Reports: 2002-2003 and 2003-2004...............10
Table 5. Comparison of Estimated Limited English Proficient Student
Counts from the 2005 American Community Survey and
2004-2005 State-Reported Data..................................13
Table 6. Comparison of Estimated Immigrant Student Counts from the 2005
American Community Survey and 2003-2004 State-Reported Data......14
Table 7. Estimated FY2007 State Grants Based on the 2005 American
Community Survey and State-Reported Data.......................16



English Language Acquisition Grants Under
the No Child Left Behind Act: Analysis of
State Grant Formula and Data Options
The number of limited English proficient (LEP) students enrolled in K-12
education increased by 60.8% from the 1994-1995 school year to the 2004-2005
school year; total student enrollment increased by 2.6% over the same time period.
Given this tremendous growth in the LEP student population and the likelihood that
the 110th Congress will consider legislation to reauthorize the Elementary and
Secondary Education Act of 1965 (ESEA), as amended by the No Child Left Behind
Act of 2001 (NCLBA; P.L. 107-110), this report examines the formula used to
provide grants to states under the English Language Acquisition program, authorized
by Title III of the ESEA. This program provides grants to states to help ensure that
LEP and recent immigrant students attain proficiency in English. Much of the debate
surrounding the reauthorization of this program has focused on the data used to
determine how many LEP and immigrant students are in each state, as these data are
the basis upon which grants are determined.
This report begins with a general overview of the English Language Acquisition
program, focusing specifically on the state grant formula. This is followed by a
detailed analysis of the American Community Survey (ACS) data currently used by
the U.S. Department of Education (ED) to calculate these grants, as well as state-
reported data that could potentially be used to calculate these grants. The third
section of the report compares student counts based on ACS data and state data and
examines differences in estimated FY2007 state grants if state data were used as the
basis for determining the awards. The report concludes with an examination of some
of the drawbacks of using either the ACS or state-reported data for determining state
grants and other possible alternative strategies for calculating state grants.
English Language Acquisition State Grants
Title III, Part A of the ESEA authorizes formula grants to states to ensure that
limited English proficient (LEP) students and immigrant children develop English
proficiency.1 Prior to determining state grant allocations, statutory language provides


1 Statutory language defines a limited English proficient student to be a student (1) who is
between the ages of 3 and 21, (2) who is enrolled or is preparing to enroll in an elementary
or secondary school, (3) who was not born in the United States or whose native language
is a language other than English, who is a Native American or Alaska Native, who is a
native of the outlying areas, who comes from an environment where a language other than
English has had an impact on the student’s level of English language proficiency, or is a
(continued...)

for several reservations of funds. These include reservations for national activities,
for schools serving Native American and Alaska Native students, and for the outlying
areas.2 After reserving the required funds, grants to the 50 states, the District of
Columbia, and Puerto Rico are determined based on the state’s proportional share of
LEP students and immigrant students relative to the U.S. population of LEP students
and immigrant students.3 These shares are then weighted, with a higher weight (0.8)
being assigned to the state’s population of LEP students and a lower weight (0.2)
being assigned to the state’s population of recent immigrant students. No state can
receive a grant less than $500,000. The grant to Puerto Rico cannot exceed 0.5% of
the total available for state distribution.
Data Availability
In determining the number of LEP and immigrant students in an individual state
and in the United States, statutory language directs ED to use “the more accurate” of
(1) data available from the American Community Survey (ACS), or (2) the number
of children being assessed for English proficiency as required under Title I of the
ESEA.4 In practice, ED has been using the ACS data to make state allocations since
FY2005. Title III grants for a specific fiscal year have been based on ACS data from
two years prior. For example, FY2007 grants are based on the 2005 ACS data.
According to testimony provided by Cornelia Ashby, Director of Education,
Workforce, and Income Security Issues at the Government Accountability Office5


(GAO), ED has not used state data because it believes the state data are incomplete.
1 (...continued)
migratory student whose native language is not English and who comes from an
environment where English is not the dominant language, and (4) whose difficulties in
speaking, reading, writing, or understanding English may prevent the student from reaching
the proficient level on state assessments required under Title I, succeeding in classrooms
where English is the language of instruction, or participating fully in society (Section 9101).
Statutory language defines an immigrant student as an individual 3 to 21 years old who was
not born in any state and has not been attending a school in the United States for more than
three full academic years (Section 3301). These latter students are referred to as immigrant
or recent immigrant students throughout this report.
2 Through FY2005, a reservation was also made to provide continuation grants for
competitive grants awarded prior to the enactment of the NCLBA.
3 For the purposes of this report, the term “state” includes the District of Columbia and the
Commonwealth of Puerto Rico.
4 More specifically, Section 1111(b)(7) requires states to assess the English language skills
of students with limited English proficiency on an annual basis.
5 Testimony provided by Cornelia M. Ashby to the House of Representatives, Committee
on Education and Labor, Subcommittee on Early Childhood, Elementary and Secondary
Education. (March 23, 2007). Impact of NCLB on English Language Learners. (Hereafter
referred to as Ashby testimony.)

For example, ED noted that for the 2004-2005 school year, not every state provided
data, and some data included only partial student counts.6
American Community Survey Data
ED obtains the relevant ACS data from the U.S. Census Bureau. The LEP
student count is based on the population aged 5 to 21 who reported speaking a
language other than English at home and speaking English less than “very well.” The
number of immigrant students is based on the number of individuals aged 3 to 21
who reported entering the United States during the two years prior to the survey or
during the survey year. For example, for the 2005 ACS, individuals entering the
country in 2003 or later were counted as recent immigrant students. According to
GAO, these questions were developed for the 1980 census to “obtain information
needed about current language use and limited English language proficiency as a
result of legislation such as the Civil Rights Act of 1964, the Bilingual Education
Act, and the Voting Rights Act.”7 These questions have not been modified since
their inception. Thus, they were not designed specifically for Title III purposes.
Tables 1 and 2 provide the ACS counts for LEP and immigrant students,
respectively, used by ED in determining state grant amounts for FY2005, FY2006,
and FY2007. Few states had relatively stable LEP student counts from 2002 to 2003
and 2003 to 2004 (Table 1). It was more common for states to experience substantial
increases or decreases in their number or percentage of LEP students across the
various ACS administrations. For example, the number of LEP students in Arizona
declined by over 16,000 students from 2002 to 2003 but increased by nearly 21,000
students from 2004 to 2005, while the number of LEP students in Texas decreased
by almost 58,000 students from 2002 to 2003 and increased by almost 25,000
students from 2003 to 2004. In other states, the change in the estimated number of
LEP students may have been relatively small, but because some states serve small
numbers of LEP students, changes in their student counts can result in large
percentage changes. For example, the number of LEP students in Arkansas increased
by about 8,000 students from 2002 to 2003 and decreased by about 5,000 students
from 2003 to 2004, resulting in percentage changes in student counts of 59.9% and
21.6%, respectively. Although the number of immigrant students identified through
the ACS is smaller then the number of LEP students, similar patterns were found in
the immigrant student counts across years (Table 2).


6 U.S. Government Accountability Office. (2006). No Child Left Behind Act: Education’s
Data Improvement Efforts Could Strengthen the Basis for Distributing Title III Funds
(GAO-07-140). Available online at [http://www.gao.gov]. (Hereafter referred to as GAO,
Basis for Distributing Title III Funds.)
7 Ibid., p. 10.

Table 1. LEP Student Counts from the 2003, 2004, and 2005
American Community Surveys
Change from Change from
ACS 2003ACS 2004ACS 20052003 to 20042004 to 2005
(FY2005 (FY2006 (FY2007
St a t e Gr a n t s ) Gr a n t s ) Gr a n t s ) Number Percent N umber P ercent
Alabama 15,225 14,970 18,745 -255 -1 .7% 3 ,775 25.2%
Alaska 5,500 5,090 4,225 -410 -7 .5% -865 -17.0%
Arizona 117,530 101,140 121,895 -16,390 -13.9% 20,755 20.5%
Arkansas 13,635 21,800 17,095 8,165 59.9% -4 ,705 -21.6%
California 1 ,050,180 1,075,825 1,097,205 25,645 2.4% 21,380 2.0%
Co lo rado 66,865 60,430 61,675 -6 ,435 -9 .6% 1 ,245 2.1%
Co nnecticut 28,080 33,020 33,165 4,940 17.6% 145 0.4%
Delaware 6,030 7,015 8,355 985 16.3% 1,340 19.1%
District of Columbia5,8352,9503,490-2,885-49.4%54018.3%
Florid a 231,710 235,830 234,505 4,120 1.8% -1 ,325 -0 .6%
Georgia 93,155 78,495 85,275 -14,660 -15.7% 6,780 8.6%
Hawaii 10,565 12,945 14,230 2,380 22.5% 1,285 9.9%
Idaho 12,485 12,550 9,860 65 0.5% -2 ,690 -21.4%
Illinois 176,630 182,210 182,730 5,580 3.2% 520 0.3%
Indiana 57,500 70,380 40,740 12,880 22.4% -29,640 -42.1%
Iowa 17,370 12,900 16,015 -4 ,470 -25.7% 3,115 24.1%
Kansas 15,965 17,160 21,115 1,195 7.5% 3,955 23.0%
Kentucky 16,565 17,580 17,160 1,015 6.1% -420 -2 .4%
Lo uisiana 18,740 15,235 14,165 -3 ,505 -18.7% -1 ,070 -7 .0%
Maine 2 ,590 3,865 3,535 1,275 49.2% -330 -8 .5%
Maryland 38,640 39,900 47,550 1,260 3.3% 7,650 19.2%
Massachusetts 77,685 59,785 64,815 -17,900 -23.0% 5,030 8.4%
Michigan 72,320 49,255 62,675 -23,065 -31.9% 13,420 27.2%
Minneso ta 44,530 48,180 39,575 3,650 8.2% -8 ,605 -17.9%
Mississippi 7,410 4,775 7,870 -2 ,635 -35.6% 3,095 64.8%
Misso uri 28,600 19,950 21,765 -8 ,650 -30.2% 1,815 9.1%
Montana 1 ,515 2,920 2,185 1,405 92.7% -735 -25.2%
Nebraska 14,100 12,460 14,935 -1 ,640 -11.6% 2,475 19.9%
Nevada 48,730 58,010 38,540 9,280 19.0% -19,470 -33.6%
New Hampshire5,9055,1955,000-710-12.0%-195-3.8%
New Jersey121,360100,680107,955-20,680-17.0%7,2757.2%
New Mexico40,20527,69028,805-12,515-31.1%1,1154.0%
New York388,795332,065275,230-56,730-14.6%-56,835-17.1%
North Carolina65,60073,71070,9708,11012.4%-2,740-3.7%
North Dakota2,1902,0951,700-95-4.3%-395-18.9%
Ohio 42,860 48,885 48,005 6,025 14.1% -880 -1 .8%
Oklaho ma 31,570 20,575 21,085 -10,995 -34.8% 510 2.5%
Oregon 37,755 43,100 49,910 5,345 14.2% 6,810 15.8%
Pennsylvania 61,600 75,935 74,245 14,335 23.3% -1 ,690 -2 .2%
Rhode Island17,86511,87512,130-5,990-33.5%2552.1%
South Carolina16,15515,52522,940-630-3.9%7,41547.8%
South Dakota4,0552,8554,065-1,200-29.6%1,21042.4%
T ennessee 25,595 33,180 28,635 7,585 29.6% -4 ,545 -13.7%
T exas 603,105 545,330 570,145 -57,775 -9 .6% 24,815 4.6%
Utah 19,215 20,590 21,050 1,375 7.2% 460 2.2%
Vermont 1 ,585 1,140 1,900 -445 -28.1% 760 66.7%
Virginia 53,935 52,640 57,440 -1 ,295 -2 .4% 4 ,800 9.1%
Washington 58,840 59,350 78,270 510 0.9% 18,920 31.9%
West Virginia2,4652,3203,250-145-5.9%93040.1%
Wisconsin 44,275 39,665 38,855 -4 ,610 -10.4% -810 -2 .0%



Change from Change from
ACS 2003ACS 2004ACS 20052003 to 20042004 to 2005
(FY2005 (FY2006 (FY2007
St a t e Gr a n t s ) Gr a n t s ) Gr a n t s ) Number Percent N umber P ercent
Wyoming 1 ,780 1,885 2,130 105 5.9% 245 13.0%
T o tal 3 ,942,395 3,792,910 3,828,805 -149,485 -3 .8% 35,895 0.9%
Source: Table prepared by CRS, June 2007, based on data provided by the U.S. Department of Education (ED),
Budget Service.
Note: The American Community Survey (ACS) is administered by the U.S. Census Bureau. The Census Bureau
provides ED with specific data runs from the most recent ACS to enable ED to calculate Title III grants.
Table 2. Immigrant Student Counts from the 2003, 2004, and 2005
American Community Survey
ACS 2003ACS 2004ACS 2005Change from 2003 to 2004Change from 2004 to 2005
(FY2005 (FY2006 (FY2007
St a t e Gr a n t s ) Gr a n t s ) Gr a n t s ) Number Percent N umber P ercent
Alabama 10,500 10,195 7,710 -305 -2 .9% -2,485 -24.4%
Alaska 1,705 2,415 965 710 41.6% -1 ,450 -60.0%
Arizona 20,670 35,400 35,660 14,730 71.3% 260 0.7%
Arkansas 3,485 6,545 4,680 3,060 87.8% -1 ,865 -28.5%
California 238,495 229,805 251,275 -8 ,690 -3 .6% 21,470 9.3%
Co lo rado 18,920 14,840 16,835 -4 ,080 -21.6% 1,995 13.4%
Co nnecticut 10,255 10,725 10,670 470 4.6% -5 5 -0.5%
Delaware 1,525 2,520 2,495 995 65.2% -2 5 -1.0%
District of Columbia2,1251,6651,285-460-21.6%-380-22.8%
Florid a 105,365 100,595 93,535 -4 ,770 -4 .5% -7,060 -7 .0%
Georgia 21,285 25,045 36,945 3,760 17.7% 11,900 47.5%
Hawaii 3,635 5,145 6,645 1,510 41.5% 1,500 29.2%
Idaho 5 ,730 3,360 5,010 -2 ,370 -41.4% 1,650 49.1%
I llino is 3 6 , 3 9 0 4 3 , 5 2 0 3 5 , 9 6 5 7 , 1 3 0 1 9 . 6 % -7 ,5 5 5 -1 7 . 4 %
Indiana 8 ,270 12,940 11,985 4,670 56.5% -955 -7 .4%
Iowa 7,755 2,910 4,150 -4 ,845 -62.5% 1,240 42.6%
Kansas 4,890 4,305 6,035 -585 -12.0% 1,730 40.2%
Kentucky 4,160 6,965 5,275 2,805 67.4% -1 ,690 -24.3%
Lo uisiana 9 ,955 3,105 3,185 -6 ,850 -68.8% 80 2.6%
Maine 735 1,000 995 265 36.1% -5 -0 .5%
Maryland 18,895 18,755 26,765 -140 -0 .7% 8 ,010 42.7%
Massachusetts 19,355 17,520 23,935 -1 ,835 -9 .5% 6 ,415 36.6%
Michigan 27,330 18,330 20,640 -9 ,000 -32.9% 2,310 12.6%
Minneso ta 12,340 7,180 14,420 -5 ,160 -41.8% 7,240 100.8%
Mississippi 1,350 1,035 2,695 -315 -23.3% 1,660 160.4%
Misso uri 10,585 4,300 7,315 -6 ,285 -59.4% 3,015 70.1%
Montana 440 980 465 540 122.7% -515 -52.6%
Nebraska 4,390 4,280 4,130 -110 -2 .5% -150 -3 .5%
Nevada 10,410 9,690 9,445 -720 -6 .9% -245 -2 .5%
New Hampshire3,2351,2551,155-1,980-61.2%-100-8.0%
New Jersey53,08031,03538,670-22,045-41.5%7,63524.6%
New Mexico5,8003,9005,720-1,900-32.8%1,82046.7%
New York75,56087,32083,31011,76015.6%-4,010-4.6%
North Carolina20,49525,14527,8904,65022.7%2,74510.9%
North Dakota6957704157510.8%-355-46.1%
Ohio 13,805 14,070 13,525 265 1.9% -545 -3 .9%
Oklaho ma 10,450 9,740 5,935 -710 -6 .8% -3,805 -39.1%
Oregon 7,900 10,845 10,925 2,945 37.3% 80 0.7%



ACS 2003ACS 2004ACS 2005Change from 2003 to 2004Change from 2004 to 2005
(FY2005 (FY2006 (FY2007
St a t e Gr a n t s ) Gr a n t s ) Gr a n t s ) Number Percent N umber P ercent
Pennsylvania 15,835 13,545 16,150 -2 ,290 -14.5% 2,605 19.2%
Rhode Island2,5703,4204,61085033.1%1,19034.8%
South Carolina6,1954,08011,865-2,115-34.1%7,785190.8%
South Dakota3807901,835410107.9%1,045132.3%
T ennessee 13,740 10,160 9,800 -3 ,580 -26.1% -360 -3 .5%
T exas 106,445 126,650 130,990 20,205 19.0% 4,340 3.4%
Utah 5,695 8,155 7,410 2,460 43.2% -745 -9 .1%
Vermont 870 300 645 -570 -65.5% 345 115.0%
Virginia 25,800 24,835 25,835 -965 -3 .7% 1 ,000 4.0%
Washington 14,835 21,350 24,375 6,515 43.9% 3,025 14.2%
West Virginia2,845235200-2,610-91.7%-35-14.9%
Wisconsin 8 ,880 9,320 8,805 440 5.0% -515 -5 .5%
Wyoming 310 765 1,085 455 146.8% 320 41.8%
T o tal 1 ,016,365 1,012,755 1,082,260 -3 ,610 -0 .4% 69,505 6.9%
Source: Table prepared by CRS, June 2007, based on data provided by the U.S. Department of Education (ED),
Budget Service.
Note: The American Community Survey (ACS) is administered by the U.S. Census Bureau. The Census Bureau
provides ED with specific data runs from the most recent ACS to enable ED to calculate Title III grants.
State-Reported LEP Student Counts
There are several potential sources of state-reported data and three types of state
LEP student counts: (1) total number of LEP students, (2) number of LEP students
receiving services (Title III or non-Title III), and (3) number of LEP students being
served in Title III. The National Clearinghouse for English Language Acquisition
and Language Instruction Educational Programs (NCELA) uses data provided by
states to ED in their Consolidated State Performance Reports (CSPRs) to produce an8
annual state-by-state count of the number of LEP students enrolled. The CSPRs
collect data on the total number of students identified as LEP. The most recent data
available are for the 2004-2005 school year. Missing data and data discrepancies
were resolved by NCELA through telephone calls to the relevant states.
The Common Core of Data (CCD) collects data on the total number of students9
receiving LEP services. This is not limited to Title III services only. Rather, it
includes students served in appropriate programs of language assistance. This is
somewhat different than the data available from NCELA, as the CCD count does not
include students who are identified as LEP but are not receiving services.10 The
most recent data available from the CCD are for the 2004-2005 school year.


8 Information about how NCELA produces LEP student counts was provided by NCELA
staff members, Dr. Judith Wilde and Suzanne Abdelrahim.
9 The CCD uses the term English language learners (ELL) rather the LEP. The term LEP
was used until the 2001-2002 school year. For consistency, the term LEP is used throughout
this report.
10 For example, students may not receive LEP services if their parents do not want them to
participate.

A third source of data is the biennial report on Title III performance. The first
report was published by ED in 2005 and covered 2002-2004. It included data on the
number of LEP students served in Title III programs during the 2002-2003 and 2003-
2004 school years. It did not, however, report on the total number of LEP students
in the state or the total number of LEP students receiving Title III and non-Title III
services. According to staff at NCELA, the second biennial report, expected later
this year, will include counts of both the number of LEP students served in Title III
programs and the total number of LEP students in the state. They also indicated that
much of the data included in the forthcoming second biennial report has been drawn
from the annual CSPRs.
LEP student counts from the NCELA data and CCD data are compared for the
2002-2003, 2003-2004, and 2004-2005 school years (Table 3). The NCELA data
produced using the CSPRs are more complete than the data available from the CCD,11
as state data are missing for several states in the CCD data. As the NCELA LEP
student count is, in theory, a more comprehensive count than the CCD LEP student
count, it would be expected that the NCELA counts would be higher than the CCD
counts but not substantially higher, as it is not expected that many parents would
choose for their children not to receive services. The data on Table 3 do not
consistently support these theories. For example, for the 2004-2005 school year, the
NCELA count is actually lower than the CCD count in 18 states. For Indiana,
Louisiana, Oklahoma, Vermont, and West Virginia, the NCELA count is at least 20%
lower than the CCD count. Although it was expected that the NCELA count might
be somewhat higher than the CCD count, in Florida, Mississippi, New Hampshire,
North Dakota, Rhode Island, South Carolina, South Dakota, Vermont, and
Wisconsin, the NCELA count is at least 20% higher than the CCD count. Similar
issues exist with the data from the 2002-2003 and 2003-2004 school years. It is the
exception, rather than the rule, that the NCELA data and the CCD data match or
differ by a relatively small number of students. In addition, differences between the
NCELA data and the CCD data change for some states from year to year with the
NCELA count being higher in some years, the CCD count being higher in other
years, and the magnitude of the differences between the counts changing from year
to year. This raises questions about how states are conducting LEP student counts,
whether these counts are being conducted consistently within a state and from year
to year, and which students are actually being included in the counts.


11 For several states, data are either not available, or data were missing for more than 20%
of schools or districts in a state, so the data were not publicly reported.

Table 3. Estimated State LEP Student Counts Based on Data
Available from the Common Core of Data and the NCELA:
2002-2003, 2003-2004, and 2004-2005
ABCDEFGHIJ
2002-2003 School Year2003-2004 School Year2004-2005 School Year
Di fference Di fference Di fference
CCD NCELA(Col C - CCD NCELA(Col F - CCD NCELA(Col I -
StateDataDataCol B)DataDataCol E)DataDataCol H)
Alab ama 10,568 10,566 -2 10,825 13,312 2,487 14,801 15,295 494
Alaska 16,378 20,272 3,894 19,877 21,533 1,656 21,533 20,140 -1 ,393
Arizona 143,744 149,354 5,610 155,840 144,145 -11,695 194,171 155,789 -38,382
Arkansas 15,146 14,838 -308 17,174 15,581 -1 ,593 18,647 17,384 -1 ,263
California 1 ,599,542 1,599,542 0 1 ,598,366 1,598,535 169 1,585,647 1,591,525 5,878
Co lorado 86,128 86,129 1 97,043 91,751 -5 ,292 90,372 90,391 19
Connecticut 22,651 22,547 -104 25,959 25,867 -9 2 27,931 27,580 -351
Delaware 3,449 3,523 74 3,956 4,246 290 4,858 5,094 236
District of Columbia5,7985,363-4355,7275,201-5265,6574,771-886
Florida 203,712 292,077 88,365 196,037 282,066 86,029 214,562 299,346 84,784
Georgia 70,464 59,840 -10,624 65,876 59,126 -6 ,750 60,334 50,381 -9 ,953
Hawaii 12,853 12,853 0 12,850 12,850 0 17,017 18,376 1,359
Id ah o 18,747 19,753 1,006 19,649 20,541 892 20,987 17,649 -3 ,338
Illinois 168,727 169,414 687 ! 161,700 !!192,764 !
Indian a 42,629 22,584 -20,045 42,632 28,741 -13,891 51,212 31,956 -19,256
Io wa 13,961 13,961 0 15,238 15,238 0 14,606 14,421 -185
Kansas 17,942 25,006 7,064 22,399 25,504 3,105 26,041 23,512 -2 ,529
Kentucky 6,343 6,017 -326 8,446 8,446 0 10,471 11,181 710
Louisian a 11,108 6,854 -4 ,254 12,175 7,546 -4 ,629 12,979 7,990 -4 ,989
Maine 2 ,632 3,006 374 2,852 3,179 327 2,868 2,896 28
Maryland 27,311 27,422 111 27,695 27,849 154 21,709 24,811 3,102
Massachusetts 51,622 51,622 0 49,297 49,297 0 49,773 49,923 150
M i ch i gan ! 60,479 ! 62,025 62,265 240 62,778 64,345 1,567
Minneso ta 51,275 52,244 969 53,507 54,878 1,371 56,976 56,829 -147
Mississippi 2,250 2,916 666 2,916 4,681 1,765 3,365 4,152 787
Missouri 13,121 13,121 0 14,855 14,855 0 ! 15,403 !
Montan a 6 ,642 7,043 401 6,668 6,948 280 6,716 6,911 195
Nebraska 13,803 13,803 0 15,586 15,586 0 16,124 16,124 0
Nevada 58,753 53,492 -5 ,261 69,896 58,753 -11,143 71,557 72,117 560
New Hampshire3,2703,27002,7552,75502,5693,235666
New Jersey57,54857,245-30358,34966,4518,102!61,287!
New Mexico65,31765,317054,52854,528062,38670,9268,540
New York178,909302,961124,052!191,992!!203,583!
North Carolina59,84960,14930060,96770,9379,97068,38170,2881,907
North Dakota8836,1765,2931,6386,5004,8622,0334,7492,716
Oh io 25,782 20,778 -5 ,004 23,368 23,302 -6 6 27,499 25,518 -1 ,981
Oklahoma 40,192 36,508 -3 ,684 40,042 33,266 -6 ,776 44,454 33,508 -10,946
Oregon 52,331 52,588 257 64,618 61,695 -2 ,923 64,676 59,908 -4 ,768
P ennsylvania ! 38,288 !!41,606 !!39,847 !
Rhode Island10,08711,6001,5139,7239,645-789,00110,9211,920
South Carolina7,4678,23977210,65312,6532,00012,52815,3962,868
South Dakota4,5243,361-1,1634,4773,433-1,0444,1945,8471,653
Tennessee ! 14,953 !!19,352 !!19,355 !
Texas 630,686 630,148 -538 661,052 660,707 -345 684,583 684,007 -576
Utah 43,299 46,342 3,043 49,556 46,521 -3 ,035 45,027 56,319 11,292
Vermont 1,057 1,052 -5 1,992 1,017 -975 1,990 1,393 -597
Virginia 49,845 49,840 -5 60,301 60,306 5 66,970 67,933 963
Wash ington 70,431 66,038 -4 ,393 58,523 69,323 10,800 75,103 75,678 575
West Virginia1,2812,1038221,4771,5941171,7741,236-538
Wisconsin 25,764 34,203 8,439 26,424 35,770 9,346 26,616 35,871 9,255
Wyoming 3 ,519 3,206 -313 3,475 3,429 -4 6 3 ,593 3,742 149
To tal 4 ,029,340 4,340,006 310,666 3,829,284 4,317,002 487,718 3,887,069 4,459,603 572,534



Source: Table prepared by CRS, June 2007. The “NCELA data” were provided by the National Clearinghouse on English
Language Acquisition and Language Instruction Educational Programs based on an analysis of data reported by states on
Consolidated State Performance Reports. The CCD data were collected through the Common Core of Data by the
National Center for Education Statistics (NCES) at the U.S. Department of Education and reported in a series of annual
reports (NCES 2005-314, NCES 2006-307, and NCES 2007-309).
Note: While a total is shown for the CCD data for the 2004-2005 school year, a total was not included in the NCES report,
as data were missing for more than 15% of all schools or districts nationally.
!: Data were not available or data were missing from more than 20% of schools or districts within a state.
Although not shown in Table 3, data from the NCELA and CCD from 2003-
2004 were compared with data reported in the biennial report for 2003-2004. As
previously discussed, the NCELA data, in theory, provide the most comprehensive
count of LEP students, including all identified LEP students. The CCD data, in
theory, provide the second most comprehensive count of LEP students by including
all students receiving LEP services. The biennial report data, in theory, are the least
comprehensive of the three sources of data as they include only the number of LEP
students receiving Title III services. A brief examination of data for Alabama,
Alaska, Arizona, Arkansas, and California revealed that the biennial LEP student
count was higher than the CCD count in Alabama and Arizona. It was also higher
than the NCELA count in Arizona. This raises further questions about how LEP
students are being counted at the state level and whether state counts are a reliable
basis upon which to make state grant allocations.
State-Reported Immigrant Student Counts
Data sources for immigrant student counts are more limited than those available
for LEP students. The primary source of this information is the Title III biennial
report. States are required to report on the number of immigrant students enrolled
and the number of immigrant students served in Title III programs. The most recent
biennial report includes these counts for the 2002-2003 and 2003-2004 school years.
Neither NCELA nor the CCD produces immigrant student counts. Table 4 provides
the immigrant student counts from the biennial report for the 2002-2003 and 2003-

2004 school years, the most recent years for which data are available.



Table 4. Immigrant Student Counts Based on State-Reported
Data in Title III Biennial Reports: 2002-2003 and 2003-2004
AB C DE
Number ofNumber of
Immigrant ChildrenImmigrant ChildrenDifference in the
and Youth Duringand Youth DuringNumber of Immigrant
2002-2003 2003-2004 Children and YouthPercent
StateSchool YearSchool Year(Col C - Col B)Change
Alabama 5 ,355 4,166 -1 ,189 -22.2%
Alaska 1,818 1,163 -655 -36.0%
Arizona 40,721 34,074 -6 ,647 -16.3%
Arkansas 4,626 4,696 70 1.5%
California 254,450 269,939 15,489 6.1%
Co lo rado 10,486 15,642 5,156 49.2%
Co nnecticut 14,977 16,398 1,421 9.5%
Delaware 1,665 1,327 -338 -20.3%
District of Columbia1,6311,376-255-15.6%
Florid a 169,819 158,168 -11,651 -6 .9%
Georgia 38,919 40,150 1,231 3.2%
Hawaii 4,678 5,242 564 12.1%
Idaho ! 1,440 !!
I llino is 6 1 , 1 3 9 6 5 , 6 2 9 4 , 4 9 0 7 . 3 %
Indiana 10,686 11,130 444 4.2%
Iowa 3,925 3,284 -641 -16.3%
Kansas 9,184 7,924 -1 ,260 -13.7%
Kentucky 3,397 5,199 1,802 53.0%
Lo uisiana 3 ,848 3,683 -165 -4 .3%
Maine 1 ,129 1,280 151 13.4%
Maryland 18,237 18,156 -8 1 -0.4%
Massachusetts 21,395 25,740 4,345 20.3%
Michigan 12,236 12,530 294 2.4%
Minneso ta 15,414 16,236 822 5.3%
Mississippi 952 1,316 364 38.2%
Misso uri 8 ,020 7,518 -502 -6 .3%
Montana 273 348 75 27.5%
Nebraska 5,698 5,635 -6 3 -1.1%
Nevada 12,565 16,479 3,914 31.2%
New Hampshire1,9911,200-791-39.7%
New Jersey54,18545,814-8,371-15.4%
New Mexico9,6318,132-1,499-15.6%
New York123,948116,822-7,126-5.7%
North Carolina31,18329,232-1,951-6.3%
North Dakota1,0071,00920.2%
Ohio 12,389 11,687 -702 -5 .7%
Oklaho ma 9,466 7,622 -1 ,844 -19.5%
Oregon 7,730 7,455 -275 -3 .6%
Pennsylvania 15,519 16,138 619 4.0%
Rhode Island3,3222,900-422-12.7%
South Carolina6,2546,7164627.4%
South Dakota9091,02011112.2%
T ennessee 19,569 16,325 -3 ,244 -16.6%
T exas 121,064 116,818 -4 ,246 -3 .5%
Utah 14,195 17,145 2,950 20.8%
Vermont 598 567 -3 1 -5.2%
Virginia 23,432 21,440 -1 ,992 -8 .5%
Washington 21,196 24,997 3,801 17.9%



AB C DE
Number ofNumber of
Immigrant ChildrenImmigrant ChildrenDifference in the
and Youth Duringand Youth DuringNumber of Immigrant
2002-2003 2003-2004 Children and YouthPercent
StateSchool YearSchool Year(Col C - Col B)Change
West Virginia178175-3-1.7%
Wisconsin 7 ,548 6,608 -940 -12.5%
Wyoming 191 191 0 0.0%
T o tal 1 ,222,748 1,215,881 -6 ,867 -0 .6%
Source: Table prepared by CRS, June 2007, based on data provided by states in their Title III biennial reports
(Biennial Evaluation Report to Congress on the Implementation of the State Formula Grant Program, 2002-2004).
!: Data either not reported or not available.
ACS Data Compared with State-Reported Data
This section makes direct comparisons between the most recent ACS data and
the most recent state data. It begins with a discussion of data limitations in making
these comparisons. This discussion is followed by a detailed analysis of differences
in LEP and immigrant student counts between the two types of data. The section
concludes with an analysis of estimated FY2007 state grants using both data sources
and how these grants would differ based on the underlying data used for the
calculation.
Data Limitations
It should be noted that comparisons of student counts have been conducted with
state data from two different school years. As the LEP student count accounts for
80% of a state’s total grant amount, it was important to have the most recent data
available and, if possible, to be using a school year comparable to the year in which
the ACS data were collected. The LEP student counts produced by NCELA for the
2004-2005 school year met both these criteria. And, unlike the CCD data for the
same school year, they presumably include a more nearly complete count of total
LEP student enrollment, as the data were confirmed with state officials as needed.
Although one of the primary purposes of this request was to compare the ACS data
with state data, it should be noted that the NCELA and ACS data are collected from
different respondents using different questions. Again, the NCELA data include the
population of students identified as LEP, while the ACS is a sample survey
conducted with native and non-native English speaking individuals.
As previously mentioned, data sources for immigrant student counts are more
limited, so the latest available data were from the 2003-2004 school year. Thus, in
addition to the aforementioned problems of collecting data from different
respondents using different questions, the state-reported immigrant data were taken
from a different year than the 2005 ACS data.
These caveats must be taken into account when examining student counts and
estimated state grants based on these data. The estimated grant amounts discussed



below are only rough estimates of what states might receive if state data were relied
upon to make grants.
Student Count Data Comparisons
As shown in Tables 5 and 6, there are some substantial differences in LEP and
immigrant student counts when the 2005 ACS data are compared with the 2004-2005
LEP student counts available from NCELA and the 2003-2004 immigrant student
counts available from the biennial report. With respect to LEP student counts, for
example, the state data indicate that there are almost 500,000 more LEP students in
California than indicated by the ACS data. Arizona, Colorado, Florida, Nevada, New
Mexico, Texas, and Utah each reported at least 25,000 more LEP students than
accounted for by the 2005 ACS. At the same time, if state LEP student counts were
used instead of ACS LEP student counts, Georgia, New Jersey, New York, and
Pennsylvania would have their student counts reduced by 25,000 students or more.
If the same data are examined based on the percentage change in student counts if
state data were used instead of ACS data, Alaska would experience the largest
percentage increase in LEP students (376.7%), followed by Montana (216.3%), North
Dakota (179.4%), Utah (167.5%), and New Mexico (146.2%). Although California
would experience the largest increase in the number of LEP students, this change
would result in a 45.1% increase in LEP student enrollment.12 West Virginia would
experience the largest percentage decrease in enrollment (62.0%), followed by
Mississippi (47.2%), Ohio (46.8%), and Pennsylvania (46.3%).
If state data were used in lieu of ACS data for immigrant counts, Florida would
experience the largest increase in the number of immigrant students, followed by
New York, Illinois, and California (Table 6). Overall, increases in immigrant
student counts would range from 16 students in Arkansas to 64,633 students in
Florida. The largest decreases in the number of immigrant students would occur in
Texas, followed by Maryland and Michigan. Overall, decreases in the number of
immigrant students would range from 12 students in Pennsylvania to 14,100 students
in Texas. In terms of percentage change in student counts, the largest increase in
immigrant students would occur in North Dakota (143.1%), followed by Utah
(131.4%) and Illinois (82.5%). The greatest decreases would be experienced by
Wyoming (82.4%), followed by Idaho (71.3%) and Mississippi (51.2%).


12 The percentage change in the number of students is calculated relative to the number of
LEP students identified on the ACS. As California has the largest number of students based
on the ACS counts, having the largest increase in the number of students based on the state
data is not a large enough increase relative to California’s initial LEP student count to result
in the largest percentage increase among the states.

Table 5. Comparison of Estimated Limited English Proficient
Student Counts from the 2005 American Community Survey and
2004-2005 State-Reported Data
2005 2004-2005 Difference Percent
StateACS State Data(State - ACS)Difference
Alabama 18,745 15,295 -3 ,450 -18.4%
Alaska 4,225 20,140 15,915 376.7%
Arizona 121,895 155,789 33,894 27.8%
Arkansas 17,095 17,384 289 1.7%
California 1 ,097,205 1,591,525 494,320 45.1%
Co lo rado 61,675 90,391 28,716 46.6%
Co nnecticut 33,165 27,580 -5 ,585 -16.8%
Delaware 8,355 5,094 -3 ,261 -39.0%
District of Columbia3,4904,7711,28136.7%
Florid a 234,505 299,346 64,841 27.7%
Georgia 85,275 50,381 -34,894 -40.9%
Hawaii 14,230 18,376 4,146 29.1%
Idaho 9 ,860 17,649 7,789 79.0%
Illinois 182,730 192,764 10,034 5.5%
Indiana 40,740 31,956 -8 ,784 -21.6%
Iowa 16,015 14,421 -1 ,594 -10.0%
Kansas 21,115 23,512 2,397 11.4%
Kentucky 17,160 11,181 -5 ,979 -34.8%
Lo uisiana 14,165 7,990 -6 ,175 -43.6%
Maine 3 ,535 2,896 -639 -18.1%
Maryland 47,550 24,811 -22,739 -47.8%
Massachusetts 64,815 49,923 -14,892 -23.0%
Michigan 62,675 64,345 1,670 2.7%
Minneso ta 39,575 56,829 17,254 43.6%
Mississippi 7,870 4,152 -3 ,718 -47.2%
Misso uri 21,765 15,403 -6 ,362 -29.2%
Montana 2 ,185 6,911 4,726 216.3%
Nebraska 14,935 16,124 1,189 8.0%
Nevada 38,540 72,117 33,577 87.1%
New Hampshire5,0003,235-1,765-35.3%
New Jersey107,95561,287-46,668-43.2%
New Mexico28,80570,92642,121146.2%
New York275,230203,583-71,647-26.0%
North Carolina70,97070,288-682-1.0%
North Dakota1,7004,7493,049179.4%
Ohio 48,005 25,518 -22,487 -46.8%
Oklaho ma 21,085 33,508 12,423 58.9%
Oregon 49,910 59,908 9,998 20.0%
Pennsylvania 74,245 39,847 -34,398 -46.3%
Rhode Island12,13010,921-1,209-10.0%
South Carolina22,94015,396-7,544-32.9%
South Dakota4,0655,8471,78243.8%
T ennessee 28,635 19,355 -9 ,280 -32.4%
T exas 570,145 684,007 113,862 20.0%
Utah 21,050 56,319 35,269 167.5%
Vermont 1 ,900 1,393 -507 -26.7%
Virginia 57,440 67,933 10,493 18.3%
Washington 78,270 75,678 -2 ,592 -3 .3%
West Virginia3,2501,236-2,014-62.0%
Wisconsin 38,855 35,871 -2 ,984 -7 .7%



2005 2004-2005 Difference Percent
StateACS State Data(State - ACS)Difference
Wyoming 2 ,130 3,742 1,612 75.7%
T o tal 3 ,828,805 4,459,603 630,798 16.5%
Source: Table prepared by CRS, June 2007, based on data provided by the U.S. Department of
Education (ED), Budget Service. The 2004-2005 student counts were provided by the National
Clearinghouse for English Language Acquisition and Language Instruction Educational Programs
(NCELA), based on an analysis of data reported by states on their Consolidated State Performance
Reports.
Note: The American Community Survey (ACS) is administered by the U.S. Census Bureau. The
Census Bureau provides ED with specific data runs from the most recent ACS to enable ED to
calculate Title III grants.
Table 6. Comparison of Estimated Immigrant Student Counts
from the 2005 American Community Survey
and 2003-2004 State-Reported Data
2005 2003-2004 Difference Percent
StateACS State Data(State - ACS) Difference
Alabama 7 ,710 4,166 -3 ,544 -46.0%
Alaska 965 1,163 198 20.5%
Arizona 35,660 34,074 -1 ,586 -4 .4%
Arkansas 4,680 4,696 16 0.3%
California 251,275 269,939 18,664 7.4%
Co lo rado 16,835 15,642 -1 ,193 -7 .1%
Co nnecticut 10,670 16,398 5,728 53.7%
Delaware 2,495 1,327 -1 ,168 -46.8%
District of Columbia1,2851,376917.1%
Florid a 93,535 158,168 64,633 69.1%
Georgia 36,945 40,150 3,205 8.7%
Hawaii 6,645 5,242 -1 ,403 -21.1%
Idaho 5 ,010 1,440 -3 ,570 -71.3%
I llino is 3 5 , 9 6 5 6 5 , 6 2 9 2 9 , 6 6 4 8 2 . 5 %
Indiana 11,985 11,130 -855 -7 .1%
Iowa 4,150 3,284 -866 -20.9%
Kansas 6,035 7,924 1,889 31.3%
Kentucky 5,275 5,199 -7 6 -1.4%
Lo uisiana 3 ,185 3,683 498 15.6%
Maine 995 1,280 285 28.6%
Maryland 26,765 18,156 -8 ,609 -32.2%
Massachusetts 23,935 25,740 1,805 7.5%
Michigan 20,640 12,530 -8 ,110 -39.3%
Minneso ta 14,420 16,236 1,816 12.6%
Mississippi 2,695 1,316 -1 ,379 -51.2%
Misso uri 7 ,315 7,518 203 2.8%
Montana 465 348 -117 -25.2%
Nebraska 4,130 5,635 1,505 36.4%
Nevada 9,445 16,479 7,034 74.5%
New Hampshire1,1551,200453.9%
New Jersey38,67045,8147,14418.5%
New Mexico5,7208,1322,41242.2%
New York83,310116,82233,51240.2%
North Carolina27,89029,2321,3424.8%



2005 2003-2004 Difference Percent
StateACS State Data(State - ACS) Difference
North Dakota4151,009594143.1%
Ohio 13,525 11,687 -1 ,838 -13.6%
Oklaho ma 5,935 7,622 1,687 28.4%
Oregon 10,925 7,455 -3 ,470 -31.8%
Pennsylvania 16,150 16,138 -1 2 -0.1%
Rhode Island4,6102,900-1,710-37.1%
South Carolina11,8656,716-5,149-43.4%
South Dakota1,8351,020-815-44.4%
T ennessee 9 ,800 16,325 6,525 66.6%
T exas 130,990 116,818 -14,172 -10.8%
Utah 7,410 17,145 9,735 131.4%
Vermont 645 567 -7 8 -12.1%
Virginia 25,835 21,440 -4 ,395 -17.0%
Washington 24,375 24,997 622 2.6%
West Virginia200175-25-12.5%
Wisconsin 8 ,805 6,608 -2 ,197 -25.0%
Wyoming 1 ,085 191 -894 -82.4%
T o tal 1 ,082,260 1,215,881 133,621 12.3%
Source: Table prepared by CRS, June 2007, based on data provided by the U.S. Department of
Education (ED), Budget Service. The 2003-2004 immigrant student counts are based on data
provided by states in their Title III biennial reports (Biennial Evaluation Report to Congress on the
Implementation of the State Formula Grant Program, 2002-2004.)
Note: The American Community Survey (ACS) is administered by the U.S. Census Bureau. The
Census Bureau provides ED with specific data runs from the most recent ACS to enable ED to
calculate Title III grants.
Estimated FY2007 State Grants
An analysis of the differences in estimated FY2007 grant amounts if the
aforementioned state data, rather than the 2005 ACS data, were used to determine
grant amounts revealed that grant amounts would change in most states, in some
cases increasing or decreasing by substantial amounts. For example, if state data,
rather than ACS data, had been used to calculate the FY2007 grant amounts,
California’s grant amount would have increased by $34.2 million or 20.2% (Table
7). Other states that would have experienced substantial increases in their FY2007
grant amounts include Florida ($7.8 million or 19.2%), Utah ($4.4 million or
123.7%), and New Mexico ($4.3 million or 100.2%). One interesting trend to note
is the general reduction in state grant amounts that would occur in Northeast states
(e.g., Connecticut, Maine, Massachusetts, New Hampshire, New Jersey, New York,
Pennsylvania, and Rhode Island), if state data were used to calculate grant amounts.
Overall, increases would have ranged from $20,000 in South Dakota to $34.2 million
in California. The largest loss of funds would have been experienced by New York
($10.9 million or 24.3%), followed by New Jersey ($7.0 million or 38.5%), Georgia
($5.7 million or 37.5%), and Pennsylvania ($5.4 million or 47.2%). Overall, the
decreases would have ranged from $12,000 in Kansas to $10.9 million in New York.
With respect to the percentage change in grant amount, Alaska would have received
the largest increase (262.1%), and Mississippi would have experienced the largest
decrease (55.2%).



Table 7. Estimated FY2007 State Grants Based on the 2005
American Community Survey and State-Reported Data
ABC DE
$ Difference
Between FY2007
Estimated Grants Based on
FY2007 Estimated State Data Versus
Grants FY2007 GrantsACS Data Percent
State(2005 ACS)(State Data) (Col C - Col B)Difference
Alabama 3 ,277,000 2,103,000 -1 ,174,000 -35.8%
Alaska 651,000 2,356,000 1,705,000 261.9%
Arizona 19,664,000 20,623,000 959,000 4.9%
Arkansas 2,721,000 2,387,000 -334,000 -12.3%
California 169,058,000 203,216,000 34,158,000 20.2%
Co lo rado 9,812,000 11,571,000 1,759,000 17.9%
Co nnecticut 5,460,000 4,641,000 -819,000 -15.0%
Delaware 1,354,000 695,000 -659,000 -48.7%
District of Columbia593,000663,00070,00011.8%
Florid a 40,669,000 48,478,000 7,809,000 19.2%
Georgia 15,123,000 9,451,000 -5 ,672,000 -37.5%
Hawaii 2,578,000 2,549,000 -29,000 -1 .1%
Idaho 1 ,833,000 2,105,000 272,000 14.8%
Illinois 27,485,000 27,758,000 273,000 1.0%
Indiana 6 ,580,000 4,626,000 -1 ,954,000 -29.7%
Iowa 2,523,000 1,921,000 -602,000 -23.9%
Kansas 3,390,000 3,378,000 -12,000 -0 .4%
Kentucky 2,797,000 1,743,000 -1 ,054,000 -37.7%
Lo uisiana 2 ,176,000 1,243,000 -933,000 -42.9%
Maine 566,000 500,000 -66,000 -11.7%
Maryland 9,135,000 4,500,000 -4 ,635,000 -50.7%
Massachusetts 11,022,000 8,024,000 -2 ,998,000 -27.2%
Michigan 10,373,000 8,370,000 -2 ,003,000 -19.3%
Minneso ta 6,708,000 7,886,000 1,178,000 17.6%
Mississippi 1,314,000 589,000 -725,000 -55.2%
Misso uri 3 ,619,000 2,435,000 -1 ,184,000 -32.7%
Montana 500,000 804,000 304,000 60.8%
Nebraska 2,382,000 2,336,000 -46,000 -1 .9%
Nevada 6,009,000 9,614,000 3,605,000 60.0%
New Hampshire772,000500,000-272,000-35.2%
New Jersey18,222,00011,208,000-7,014,000-38.5%
New Mexico4,338,0008,684,0004,346,000100.2%
New York44,717,00033,853,000-10,864,000-24.3%
North Carolina12,261,00010,628,000-1,633,000-13.3%
North Dakota500,000626,000126,00025.2%
Ohio 7,685,000 3,961,000 -3 ,724,000 -48.5%
Oklaho ma 3,375,000 4,464,000 1,089,000 32.3%
Oregon 7,633,000 7,391,000 -242,000 -3 .2%
Pennsylvania 11,343,000 5,984,000 -5 ,359,000 -47.2%
Puerto Rico3,086,0003,086,00000.0%
Rhode Island2,078,0001,495,000-583,000-28.1%
South Carolina4,288,0002,358,000-1,930,000-45.0%
South Dakota729,000749,00020,0002.7%
T ennessee 4 ,781,000 3,717,000 -1 ,064,000 -22.3%
T exas 87,896,000 87,415,000 -481,000 -0 .5%
Utah 3,538,000 7,916,000 4,378,000 123.7%



ABC DE
$ Difference
Between FY2007
Estimated Grants Based on
FY2007 Estimated State Data Versus
Grants FY2007 GrantsACS Data Percent
State(2005 ACS)(State Data) (Col C - Col B)Difference
Vermont 500,000 500,000 0 0 .0%
Virginia 10,295,000 9,621,000 -674,000 -6 .5%
Washington 12,795,000 10,824,000 -1 ,971,000 -15.4%
West Virginia500,000500,00000.0%
Wisconsin 5 ,976,000 4,630,000 -1 ,346,000 -22.5%
Wyoming 500,000 500,000 0 0 .0%
T o tal 617,177,000 617,177,000 0 0 .0%
Source: Table prepared by CRS, June 2007. Estimated FY2007 state grants based on the American
Community Survey (ACS) were calculated by the U.S. Department of Education (ED), Budget
Service. Estimated FY2007 state grants based on state-reported data were calculated by CRS using
2004-2005 limited English proficient student (LEP) counts available from the National Clearinghouse
for English Language Acquisition and Language Instruction Educational Programs, and 2003-2004
immigrant student count data available based on data provided by states in their Title III biennial
reports (Biennial Evaluation Report to Congress on the Implementation of the State Formula Grant
Program, 2002-2004.)
Note: All data sources used to make these calculations were the most recent data sources available.
State-reported data were used from two different years because the LEP student counts account for
80% of a state’s grant and more recent data were available for LEP student counts than for immigrant
student counts. In addition, the use of the 2004-2005 LEP student count data was more comparable
to the 2005 ACS data than the 2003-2004 LEP student count data would have been. Details may not
add to totals due to rounding.
Notice: These are estimated grants only. In addition to other limitations, much of the data which
would be needed to calculate final grants are not yet available. These estimates are provided solely
to assist in comparisons of the relative impact of alternative formulas and funding levels in the
legislative process. They are not intended to predict specific amounts states will receive.
Selecting Data on Which To Base
the Distribution of Funds
The use of either the ACS or state data for calculating Title III state grants has
drawbacks. This section examines the methodological issues associated with using
either the ACS data or state data as the basis for distributing state grants. It also
examines issues specific to counting LEP students and counting recent immigrant
students. The section concludes with a brief discussion of the requirement that ED
use the most accurate of these data sources to allocate state grants.
ACS Data
As previously discussed, the ACS data measure factors that are not necessarily
related to student enrollment, and there may be data problems due to the subjective
nature of the questions and the reliance on self-reported data. For example,
respondents to the ACS may not want to report that they speak English less than
“very well,” as this may be perceived as a socially undesirable response. Although



these problems are consistent across states, the Census Bureau found some
inconsistency in responses to these questions during its reinterview process to
examine data quality.13 In addition, there is no research available that demonstrates
how accurately the ACS data represent the population of LEP students.14 If these
data continue to be used as the basis for distributing state grants, developing a better
understanding of this relationship may be critical.
The estimates of the number of students who are recent immigrants are also
based on self-reported data. However, the question used to make this determination
is more objective than the question used to determine whether a student is LEP, as
it asks for factual information. Thus, responses to this question may be more
consistent than the questions used to determine LEP.15
State-Reported Data
State-reported data also have several problems that could complicate their use
as the basis for determining state grants. In responding to a GAO study examining
the Title III formula, ED indicated that state data were missing or incomplete for
several states.16 ED also noted that states did not necessarily assess all LEP students,
which could result in the number of students identified as being LEP exceeding the
number of students assessed annually for English language proficiency (as required
by Title I of the ESEA).17 In addition, ED noted that states may have provided
inconsistent data because the instructions to states for providing this information did
not include definitions of the data to be included. GAO found that the
aforementioned instructions were sufficiently vague as to allow multiple
interpretations of the instructions, and reported that ED had indicated that it would
clarify the instructions for the 2006-2007 Consolidated State Performance Report
(due in December 2007). ED was also in the process of providing feedback to states
on the data provided on the 2003-2004 and 2004-2005 CSPRs and expected that this
would lead to improved state data for subsequent school years. Until these data are
reported by states, however, it is not possible to know how complete these data will
be and whether additional followup, such as the efforts conducted by NCELA
regarding the 2004-2005 data, will be needed to produce final counts that could be
used as the basis for determining state grants.
These issues are further complicated due to the different methodologies used to
identify which students are LEP students, as there is no standard methodology by
which students with limited English proficiency are identified. Screening
instruments used to identify LEP students vary by state and even within states. Even


13 Schneider, P. (2004). Census 2000 Testing, Experimentation, and Evaluation Program
(Topic Report No. 12, TR-12). Washington, DC: U.S. Census Bureau. Available online at
[ h t t p : / / www.census.go v/ pr ed/ www/ r p t s / T R12.pdf ] .
14 GAO, Basis for Distributing Title III Funds.
15 Ibid.
16 Ibid.
17 As previously noted, ED must use the most accurate of either the ACS data or the number
of children being assessed for English proficiency as required under Title I.

among states using similar methods, the states may differ in their interpretation of the
results. States may also differ in how they determine which students to screen for
LEP. Although most states use home language surveys to determine what language
is spoken at home, some states may also use strategies such as classroom
observations to identify students for screening.
There are also problems with immigrant student counts reported by states. GAO
found that state officials question the reliability of the data they collect, as schools
and school districts may not be permitted to ask students directly whether they are
immigrant students.18 Rather, some states and districts rely on information about a
student’s place of birth and date of entry into the school system to determine whether
a student is a recent immigrant. These determinations may be further complicated
if a student has no prior school documentation, so there is no way to determine based
on student records whether the student previously attended another school in the
United States and for how long.
It should be noted, however, that if grants are determined on the basis of state-
reported data, possibly through the CSPRs, a perverse incentive may be created for
states to over-report the number of LEP and immigrant students to gain additional
federal funds. As the funds available for this program are limited to a specific
appropriation amount, if some states inflate their number of eligible students, other
states legitimately serving Title III eligible students may receive less funding than
they should receive.
Data Accuracy
Although statutory language permits ED to choose the most accurate of the ACS
or state data, ED told GAO that is has not yet established criteria or a methodology
for determining which of these data sources is the most accurate.19 According to the
GAO report, “Education officials state that as the state data improve and become
complete, complex analysis will be needed to determine the relative accuracy of these
data and the ACS data.”20 Thus, until this analysis is completed by ED or another
organization, it may be difficult to determine whether the use of ACS data or state
data will result in a grant distribution that most accurately reflects the number of LEP
and recent immigrant students by state.


18 Ibid.
19 Ibid.
20 Ibid., p. 13.

Possible Alternatives
Given the drawbacks in using either the ACS or state-reported data as the basis
for determining state grants, other alternatives could be considered. As previously
mentioned, no research demonstrates that the ACS data accurately reflect the actual
LEP student population. One option may be to require the National Academy of
Sciences (NAS) to conduct a study to examine the methodology used to produce the
ACS data on which Title III state grants are currently based, the availability of
alternative indicators, and the reliability of the data. NAS was required to conduct
a similar study of the Small Area Income and Poverty Estimates (SAIPE) data used
for Title I purposes (Improving America’s Schools Act, P.L. 103-382, Title I, Section
1124(c)(4)). In addition or alternatively, developing a formula based on both the
ACS data and the state-reported data could be considered, possibly averaging the
student counts from each. This strategy could be used on a long-term basis or as a
means of transitioning from the use of ACS data to state data to determine state
grants. Using both types of data simultaneously, however, would require state data
and ACS data to be available from comparable years. A third alternative, specifically
designed to reduce the volatility of the ACS data, would be to average the LEP
student counts produced by the ACS for the last two or three available years, and do
the same for the ACS immigrant student counts.