Wealth neutrality in higher education: The effects of student grants

Wealth neutrality in higher education: The effects of student grants

Wealth Neutrality in Higher Education: The Effects of Student Grants Dcpzrtmeot of Economics. Gardner Hall OilA. Hill. NC University of North 175...

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Wealth Neutrality in Higher Education: The Effects of Student Grants

Dcpzrtmeot

of Economics.

Gardner

Hall OilA. Hill. NC

University of North 17514. U.S.A.

Carolin:~

BI Chapel

Hill.

Chaprl

Abstract Public policy has been directed toward increasing equ:tl opportunitv of access ro higher education for over two decades. yet there has been little systematic investigation if the cffrctiveness of student financial aid to achieve this goal. This paper examines the effectiveness of publicly provided student grants to achieve wealth neutral college attendance in 1980. where rht: wealth neutral cyuity criterion is defined as an equal probabiliry of college attrndancr across household income. Student grants are seen IO rncouragr a mov~mrnt toward wraith neutrality. but do not complctrly remove the positive effect of income on the probability of collcgc attendance.

INTRODUCTION

Is

A IANDWYKK

California

case.

Supreme

educational the wealth (1975)

aid

secondary refers

the the

education

neutrality

distribution in The

is that

vices, such as education Fundamental services from

interests

should

individual’s particular

the general effect

alike.

them

principle

of

qualify

for

of ser-

from

in

it

Other

out

of wealth services

to have a wealth consumption

students

grants

year.

to student

A

of

higher

income cial

Since the mid-1960s a policy

the federal

to subsidize

government

college

has

aid

Loans.

attendance

both 107

increasing of being

were

college too

yet

the maximum

wealthy

for their

children

income

and made Basic Educational

of

trend

the

has occurred eligibility

Peil

were tightened the number

since

requirements

programs,

for

Pell Grants,

earning

to

for eligible

Loans

families

was

eliminated

for those qualifying

from

to

not

need by period-

legislation

now called

costs

wealthy

response

of financial

in-

aid based on

ceiling

reversal

eligibility

undergraduate

families

education

to

general

families.

financial

government’s

Eventually.

Grants,

neutrality

education. supported

the definition

tunity

neutralizing

higher

The

increasing

to

programs,

broaden

Student

for

steadily

existing

to afford

income

criteria,

that

in the bind

were

provide

lower-income

of student

aid.

ically

loans

edu-

and moder-

what

to

middle-income

without

families.

treat all goods

intergovernmental

individual

to an differs

singles

equity

equity.

of public

enough

of these

relationship

from

1970s.

of low-

initiated

low-interest

the argument

care, are deemed

It

Education

post-secondary

programs

as recipients

caught

categories

that

the

cluded

as

neutrality

The concept

provision the

and

Wealth

criteria

and

students

make

the children

families.

college

aid. The Higher

to

large-scale

criterion

and that consumption

aid intended on

decision

equity

certain

and horizontal

may be extended financial

of the

for

grants in

and

underlying

goods and services.

and services

intergovernprimary

and health

to pay.

equity

such as vertical

of

of

financial

feasible

become

Fetdstein

of

not have a strong

ability

other

light

it

a function

1965 aimed

ate-income

because

district.

student

of

cation

the California

education school

categorical

neutrality”.

wealth

that

consumption

to the implied

“wealth

ruled

of a child’s

for

(1%‘1), the

vs Priest

was unconstitutional

of his parents’

examined

mental

Court

system

made the quality

Serrano

through Act

the

Guaranteed Oppor-

available

to

as much as $25,000 of

increasing

the early

student

1980s. The

for the largest

Grants

and resulted

and

finan-

Guaranteed

in a decrease

and size of student

a

financial

in aid

a\\ard>.

Current

further

admInistration

cutbacks

Slnc2

ail

award>

are

incoms.

in stud2nt

publicly

provided

drtctrmiwd

equal

2ducatwn

a

focal

support

of

LVhils

research

presented

cate

an equity

as a determinant

neutrality

paper

as an equal

across

incomz:

(lY77)

found

wxs

groups.

not attained financial

families.

There

groups a group

to

xction.

The

for

student

individual

ths

rrccnt

programs

future

lev2ls

of

paper

collrge

of

for

of student

attendance. neutrality,

is

section and

attend

variablzs

dstermined.

is divicird of

is siven

into

the ths

for

the

colleg2.

The

on

wealth

neutrality

contains

a brief

third

and

an

model

thr

b2nefits

of

the

Iast

In

order

multi-period d2riv2

to

determine

aid on the the

education.’

utility

influence

nttendanc2

masimiration

determinants The

the

college

model

of

model drmand

hypothesizes

of

a

th2

their

is used

to

for

higher

that th2 hoube-

The 2ith2r

is,

base their uncertainty

not br

mod21

allous

the

collegz

of

at the time

expectations

for

the

for

and

these

expectations

these

choice

realized.

faced with

of each alternative

information

households

behavior

in

nttenclance yrar

to

future

decision

in high

available

to

individual.

school

is

to the housshold

tim2. strcfam

forms

aid

and thr that

the coll2ge

entttrs

exprctations

of the individual

altrrnativcs.

college.

school

of

and indiviclual

or may

use

and

valuation

Households

expectations

howe\,er,

income

dual

year

monetary

single-value

optimal

non-attrndancs

student

decision,

(1980).

s2nior

information.

may

and

the

financial

hIODEL

in

dew-

is assumed to be

that householcls

household

whethsr financial

that

decision

The

ing BEHAVIORAL

subjective.

and costs

non-colles2

summary.

of

uwd

and Abowd

associated

do form

based on ths

the

costs

such as those

by the parents

assum2s

uncertaintizs

at that

section the

and

and cost>. The

on imperfect

and expectations The

and from

including

traditionally

made at th2 2nd of the senior

of student grants

criterion.

highlv

calculations

periods:

results that

and costs

change

empirical

probability

utility

decision

with

benefits

Theorrtically.

behavioral

and ttstimation

future.

determine

four

in the following

contains

data drscription

last,

and the

as policy

description

attendance

y-ants

the

nonmonetary by nature,

the

aid to attain the And

(1976).

and to be one whose effects extend

school

benefits

of IYSO.

aid awards

is examined.

in high

into

is

Second,

er (II. future by

(1979)

attrndance

education. utility

benefits

models

the

(1977).

capital

and Roszn

college

both

the mod21

made final at the end of the individual’s

th2

income

class

financial

of the paper

grants

First.

by Willis

to

by Bishop

ths

ax

the from

single-period

Kohn

lifstimz

maximization

The

programs.

neutrality

peak levcl~. financial

of

current

across

school

whom

criterion

second

the52

ivealth

high

at their

Iev2ls

th2

is threefold.

attendance

degree

general

and

the analyses of the effscts

section

human

opzd

respect

contains

the

in

high

given

wealth

\vill

investments

wealth

aid with

of student

specification,

(1970).

both

for highzr

to capture

(lW),

to the wealth

remainder A

large-scale

and Radner er ctl.

the

attend

utility rnter

dttveloped

vnriablss

th2

mod21 of collrge

before

models

to

for

accrw

pwvious

Th2se

costs of college

sections.

Miller Fuller

may

of

of

not

allows

a

Iex,el

lifetIm

to rsplicitly

estsnds

of uhsther

investment

of the demand

model

maximization

by Bishop

that

college.

for the srnior

promote

The

model

the effects

neutrality

Th2

Neil

attendance and individual

th2

choosing

and

parents

as determinants

;~ttendance

the

utility

is a clear need to esnmin2

the: relative effectiveness direct

study

such.

colleqz

of this

attendance

coll2ge

As

purchase

a hiph2r

o\sr

than

of

of students

wealth

attendance is examined.

1960.

of this

effectiveness

of student

housrhold

collcg2-

to

basis

prwide

valu2

available

were

collrge.

consumption

on thr

uiil

rather

advo-

famllq income

pnxious

th2

loans.

not

of colleez

to

individual.

whether

indl\iduul

presznt

of

drtermincd

and

doss

th2

rducation

lo\v-income

the

and

grants

neutral

of th2s2

purpose

probability

X

in

criterion over

Th2

utility

o\er

for

and a potential

chooses

to

funding

&hate

higher

debate

aid \vas available

financial

neutralitv public

to

the

is defined for the purposes

student

of student

access

in

of parents

indl\idual.

college

of

th2 effscti\,eness

that tvealth

aid

collrge

h2r2

probability

compnwd

farnil\

of neutralizing

of colle~s

Lvralth

financial

hold. going

bv

student

critrrion.

aid in terms

financial

for

dsgrct2

issue:

continued

call

aid prosrams.

studsnt

to somil

opportunity

is

th2

propwals

financial

the direct amount

the

and

alternative

full-time

costs typrs

labor

and

of attrndof student

may

is chosen

assumes

the future

the college

household

alternative the

for

for

receive.

or not. Thr

that the indiviforce

upon

high

graduation. household collzge

selects

or non-coll2~e.

the

optimal basrd

alternative.

on the nlterna-

Wealth ,Ve’eutralit;vin Higher Education tive which yields the highest level of utility. The model yields a demand function of the determinants of college attendance which include parental income, student financial aid, the direct costs of college. the difference between lifetime earnings of the individual under the college and non-college alternatives, and household attributes which serve as proxies for the tastes and preferences of the parents and individual.’ Household and individual attributes include parental education, the individual’s academic achievement level, sex, race. geographic location and the distance to college. ESTIhlATION

AXD RESULTS

The empirical model used to estimate the probability that a household chooses college attendance for the individual is derived directly from the demand function for the discrete choice between the college and non-college alternatives discussed in the previous section. The primary purpose of the model is to examine the effects of student financial aid on the demand for college, while controlling for other variables which may influence the post-secondary decision. Some of the demand determinants require pre-estimation of instrumental variables. In particular, four general types of student financial aid are estimated then entered separately in the demand for college equation.’ The primary source of data used for the empirical estimation is the High School and Beyond (HSB) data set, a nationally representative longitudinal survey of over 28,000 high school seniors sponsored by the National Center for Education Statistics, taken in the spring of 1980. The survey was conducted at a time when student financial aid programs were well established, and proposals to reduce the funding of student financial aid occurred nearly one year after the senior cohort had been sampled. Thus, the sample contains households who were expecting student financial aid programs to continue at 1980 levels, and so provides an ideal base year sample from which to predict the effects of recent decreases in funding on the wealth neutrality criterion. Most of the data required for the analysis is provided by the HSB including socioeconomic and demographic background data, SAT-type test scores, and high school curriculum and grades. An exception is the data required for the estimation of the future return to a college degree. The investment payoff portion of the demand for college is

109

modeled separately. and its estimated value then applied to the observations in the HSB data. The data used for the estimation of age-earnings profiles are provided by the March 1980 Current Population Survey data from the Census Bureau. Student Financial Aid In order to model correctly the demand for college. the availability of student financial aid for college attendance must be included in the estimation. If college attendance is chosen, then student financial aid provides an incentive to attend; if college is not chosen, then financial aid is an opportunity foregone in lieu of some non-college alternative. Student financial aid is available to households from both public and private sources in the form of non-repayable grants and the interest subsidy from low-interest student loans. Four student financial aid variables: (1) public grants, (2) private grants, (3) public loans and (4) private loans are estimated for each individual in the HSB data set. The data used in the estimation of student financial aid is restricted to those individuals who indicated plans to attend college, some of whom received one or more types of financial aid, and many who did not receive financial aid of any type. That is. many observations of student financial aid are zero-valued while others form increasing continuous variables. Due to this truncated nature of the dependent variables, a tobit model is used for each of the four equations used to estimate the student financial aid variables. The independent variables chosen for the estimation of student financial aid are those factors primarily used by the government and higher education institutions to determine financial aid awards. In addition, variables have been included to control for demographic characteristics and for the availability of funds. The independent variables, coefficient estimates and asymptotic f-ratios for the tobit estimation of publicly provided student grants are given in Table 1.’ Public grants are defined as all non-repayable student financial aid from federal and state programs. Since student grants from the government are specifically intended to favor lower-income families, the highly significant and negative coefficient on parental income suggests that households from these groups do receive larger public grant awards than higher-income households as

110

Economics Table

1. Tobit

coefficient

of Education

estimates

Variable

Coefficient

1.6744’

Constant Parental income Direct costs Academic achievement Dependent siblings College siblings Sex (male = 0) Race (white =‘0) Race x sex New England region Middle Atlantic region South Atlantic region East South Central region East North Central region West South Central region West North Central region Mountain region Sample size Limit observations Non-limit observations -2 log likelihood ratio iSignificant fsignificant *Significant

-0.5911i O.llljt 0.1061+ 0.8579+ 0.1413 -3.0334: 5.4922: 0.3637 2.7902’ 3.5473t 0.6680 2.9295t 2.7760+ 3.2662i 2.9211; -t.-t79fIt

provided

student

Asymptotic

grants r-ratio

1.728 -22.706 5.36s 2.820 4.975 0.252 -1.978 8.222 0.275 1.744 3.2Jl 0.603 2.205 2.80s 3.004 2.474 3.221

4.145 2,105 2 .OJO 9-tO.06

at the 0.01 level. at the 0.05 level. at the 0. IO level.

expected. In addition, the direct cost of college, including tuition, books, materials and fees has the expected positive and significant influence on the level of public grants. The household’s financial need is increased as the direct cost of college increases and this is seen to increase the size of the student grant award. Financial need also suggests that family size increases the amount of the student grant, and this is confirmed by the estimated significant and positive coefficient on the number of dependent siblings in the household. Although the distribution of publicly provided student financial aid is not expected to discriminate on the basis of variables unrelated to financial need, the estimation results show that several other demographic variables are statistically significant in the allocation of student grants. These include academic achievement, sex, race and geographic location. The positive coefficient found for academic achievement indicates that there is a systematic bias in favor of higher qualified students, all else equal. The result suggests that colleges favor individuals with higher academic potential in the award process.

of publicly

Review,

Both sex and race are found to be significant factors in the estimation of student grant awards. The negative coefficient on sex indicates a bias against females and the positive coefficient on race indicates a bias in favor of nonwhites in the award process. The estimated coefficients in the dummy variables which correspond to geographic region of the household suggest a bias in favor of the Middle Atlantic, East North Central, West Central and Mountain regions. The result suggests that government grants are not uniformly distributed across regions. Perhaps states with these regions provide a higher level of federal matching student grants. Probability of College Attendance College attendance is defined as the binary dependent variable indicating full-time attendance at a four-year private or public college or university. As such, each individual in the HSB data set is categorized as either a college or non-college attender on the basis of responses to questions indicating post-secondary activities. The estimation technique used to determine the probability of college attendance is a logit model.’ The results of

Wealth Neutrality in Higher Education Table 2. Logit coefficient

Independent

estimates of the probability

111

of college attendance

Coefficient

Asymptotic

estimate

f-ratio

variable

--

-10.~381”

Constant

0.0052’

Parental income Public grants Direct costs

0.0073* -0.0031”

Academic achievement Private grams Public loan subsidy Private loan subsidy Future return Parental education Distance Sex (male = 0; femaIe = if Race (white = 0; nonwhite = 1) Race x sex (other = 0; nonwhite New England region Middle Atlantic region South Atlantic region East South Central region East North Central region West South Central region West North Central region Mountain region -2 log likelihood Estimated R’ Sample size

0.1762’

female

-0.0033 0.0325 -0.6875 0.0(x)3 0.1676” -0.0030’ 0.0198 0.8917’ -0.0434 O.j986* 0.567Ht 0.121tt 0.73X* 0.6971” 0.7061’ 0.6255” 0.53#6*

= 1)

ratio

‘Significant at the O.Ul level. f Significanr at the 0.10 level. $A11 coefficients in the equations

- 10.715 6.500 2.642 -7.750

42.95 1 -0.375 0.235 -0.435 0.056 13.462 -2.727 0.278 5.837 -0.059 -i*128 1.808 1.708 5.742 7.628 3.604 5.666 2.638

-!641.9JY$ 0.2857

I I.500

are jointly significant

the estimation are given in Table 2, which lists the independent variables, coefficient estimates and asymptotic f-ratios. The estimated coefficient found for parentai income is positive and statistically significant. The rest& indicates that, while controlling for other variables, including student financial aid, individuals from higher-income households have a higher probability of attending college than lower-income individuals. Publicly provided grants are found to have a positive and significant effect on the probability of attending college indicating that higher levels of student grants increase the probability that a household chooses to send the individual to college. These results, taken together, suggest that while the probability of college attendance is strongly and positively related to the household’s ability to pay, student grants tend to moderate differences in college attendance rates across in-

at the 0.01 level.

come groups. Lower-income househofds receive larger student grant awards and these awards are seen to increase the probability that the individual attends college. This relationship is explored in detail in the following section. Other results of the estimation indicate that the direct costs of coilege have the expected negative influence on the probability of college attendance and that academic achievement has a significant and positive effect. Higher tuition costs, materials and fees tend to decrease the odds of college attendance, all else equal. Other student financial aid, including privately funded student scholarships, and the interest subsidy from student loans are not found COhave a statistically significant influence on the probabiIity of college atrendance. Other factors, such as academic achievement, parental income and the direct costs of college, which are included in the estimation and which in part determine the levels of

11’

Economics

of Education

these types of student financial aid tend to diminish the direct effects of these awards on the probability of college attendance.

Rmieu

disturbance term. Student grant amounts are estimated for the entire sample. and fitted values, c;,, are used as instrumental variables in the college attendance equation:’

W’EALTH NEUTRALIT In [p,l(l - p,)] = B0 + &Y, + &d, Simply stated. wealth neutrality in higher education requires that the household’s decision of whether the individual will attend college will not be influenced by the household’s ability to pay the costs of college. In a situation of wealth neutrality individuals vvho are equally qualified to attend college. but who are unequally circumstanced with respect to parental income. should have equal opportunity of access to higher education. Operationally, the wealth neutrality criterion is taken to be an equal probability of college attendance irrespective of parental income. while controlling for all other variables. Since in the reported research parental income was found to be positively related to the probability that an individual would attend college, wealth neutral college attendance does not appear to have been obtained by those entering college in 1980. In an attempt to clarify the situation with respect to these students, the following analysis focuses on the relationship between parental income. publicly provided student grants, and the degree of wealth neutrality attained. In addition, the degree of effectiveness of student grants and the reduction of direct costs of college. as policy variables to attain wealth neutrality, are compared. Direct and Indirect Effects The analysis of the effects of student financial aid on the extent of attainment of wealth neutrality is limited to publicly provided student grants, the only type of student financial aid found to be statistically significant in the estimation of the probability of college attendance. In order to determine how the probability of college attendance varies with parental income, both the direct effect of income and the indirect effect of income through its influence on the amount of student grant awards must be considered. The estimation equation for the level of student grants is of the general form: G, = a, + cX]Y, +

+ k,

(1)

where G; is the amount of the publicly provided student grant, Y, is parental income and p_; is the

+

+ E, (2)

where pI is the probability that the ith household chooses college for the individual and E, is the disturbance term. Thus. parental income is seen to influence the probability of college attendance in two ways. The independent and direct effect of parental income on the probability of college attendance. (ap,iak;), is found to be positive and statistically significant. The indirect effect of parental income on the probability of college attendance through student grants. (aP,ia6,)(ad,iaY,). is found to be negative, i.e. higher parental income leads to lovver levels of student grants. Because student grants are positively related to the probability of college attendance, the indirect effect of income through grants is a negative influence on the probability of college attendance for individuals from higher income households, and a positive influence for individuals from lower income households. The full effect of parental income, (aP,IaY,) + (aP,iaC,, (aC;,iaY,), contains both the direct and indirect income effects (which are opposite in direction) on the probability of college attendance. Other independent variables included in the estimation of student grant amounts and in the estimation of the probability of college attendance (such as the academic achievement of the individual and the costs of college) have similar direct and indirect effects on the probability of college attendance. In the case of academic achievement, both the direct and indirect effects are found to have positive impacts on the probability of college attendance. The money costs of attending college are found to have negative direct effects and positive indirect effects on the probability of college attendance. Estimated college attendance probabilities and changes in probabilities for five values of parental income are contained in Table 3. Probabilities are estimated for an individual with sample mean characteristics, and sample mean probabilities (P) and standard deviations (a[,) of the probability distribution are given for comparison purposes. The probability distribution for the base case, presented in column (1). illustrates the degree of wealth

113 Table 3. Estimated

college dttendancs

probabilities

and changes an probahilltier’

Income

effect5 Indlrrst

Direct

(3)

(4)

il~.O33Y +0.0761 +o. 1331 +O. 1797 +0.305

AlI. 1036 TO.1)601 +0.0161 0.0 0.0

+o. 1x5 +o. Ii63 +o. 143’) +u. 17Y7 +0.‘NS

+0.0217 -0.0389

+o. I-123 +o.o-I3

+0.121 +o.os13 *Probabilities

neutrality

of college

The

estimated

ance

is seen

creases.

mean to

attendance

attained of college

increase

probability,

and.

to the extent

of lack of wealth the greater the

ability

The

of

base

distribution

tal income,

income

and

increases

neutrality. shown

This

direct

in column

between

and

the

come is set equal equation.

(2). the direct percent

effect

the dispersion the

direct

probability the effect incomes

effect

of parental

is such that receive

neutrality.

is

in-

income with

individuals tends

12 in

does

shown both

the

student (direct percent

and a smaller

usually

income direct

with than

income

do

grants

effect.

for

student

grant

awards

attendance income

and

The total

parental

on

attendance

are

represent

for each group

effects

the

the when

effects

income

of

effect

for approximately

14

of attendance, income

due

to the

with

lower

which

to

income

of parental

of college

probability

those

tend

groups.

accounts

higher

for

receive

high

of college

are removed.

in probability

in-

grant

they

ineligible

probability income

lowest

is smaller

and

of

higher

student

(4). These estimates

of the mean

increases

the

of student

income

and indirect)

Individuals

are

distribution

direct

grants

The

the equality

attendance

the

parental

awards.

of the full effect

in column

college

grants

induce

because

the allocation

the probability

in

high-middle

rates across parental

but

The result

grant

to increase

college.

higher

incomes

indirect

in the degree

larger

of student

for

who

Thus,

increase

effects.

distribution

only

student

Estimates

of the distribution Not

effect

this

of the student

in the dispersion

grants

receive

higher

no effect

grants.

attendance for over

probabilities

The

2 percent

and an increase

which

grants

of parental

households,

attendance

with

of student effect

causes a decrease Student

groups

have

P. and increases

direct

low-income

that

i.e. when

P. Because

neutrality.

smaller

of college

will attend

those

the largest

probability

of wealth

income

accounts

households.

that an individual

is a less equal degree

income

attend-

the results in column

probability,

college

those

of wealth

parental

wealth

awards.

parental

as the difference when

of income

favor

attendance

for over

of attendance,

of income

in column

are removed.

indirect

is seen to account

come

criterion. of

base probability

and skewness

of higher

of paren-

college

This

of parental

the base case in the

in the estimation

mean probability

influences,

is shown

grants

to zero.

of the distribution,

to zero in the college

of the mean

income

is set equal

effect

grants of

student

prob-

of parental

As can be seen from

parental

indirect from

probability

when

closely

the degree

probability

results

are

(7) and is defined

the estimated

attendance

favor

effect

It is the difference

attendance

of college

decreases

student

effect

effect

the probability

ance and, therefore,

(3).

of the

through

grants

neutrality

direct

estimates

income

and indirect

of the wealth

The

income

neutrality.’

the full effects

the direct

independent

attendance:

neutrality

includes

both

on achievement The

wealth

from

of the degree

of parental

case college

nith sample mznn characteristics

estimated

the mean

of the distribution,

effects

I

income

in-

it differs

in college

of wealth

and indirect

degree

related.

about

that

deviation

the degree

The direct and

neutrality

19SO.

attend-

income

as a measure

the standard

in

of the distribution

of dispersion

zero. may be interpreted the lower

as parental

deviation

the degree

for an individual

probability

The standard

measures

are estimated

Full

(2)

decreases

full

p.

have larger effects

incomes.

of The

the degree

of

Economics

11-I wealth

neutrality.

is

indirect

effect

of

increase

the degree

larger

student

than

grants

of wealth

the

of Educarion

offsetting

which

tends

neutrality

Rer,ieti

For to

each

amount

in college

nation Achievement

Tl-12 essentia! wealth

neutrality

are equally

and Student

requirement criterion

qualified

access of opportunity the academic seen

to

the

grants

positive

to college.

As is noted

the

level

level in

on

It is also

of

the

on

the

Individuals college

are

are not only

but also to receive will

also

larger

of

and

direct

college in-

to

to attend of

The the

measure

of academic

tests,

high

curriculum.x

school

achievement the

high

index

to attend estimated

presented,

level.

represents

college.

student

grants.

are given

The

for

characteristics

course such.

measure

used

In Table increases.

of

grades

th2

how

student

broken

estimated amount

down student

for the other

grants

who

amount

income

available mean

Low Low-middle Middle High-middle High Mean

Table

5 presents

25

61.2S.i 694 103 0.0 0.0

$1.329 738 147 0.0 0.0 __777

*Estimates are obtained by using tobit coefficients repayable awards from federal and state government

by

income

levels

shown

income

in Table

6, reveal

have the largest

attend

from

college.

help

to account

ability

that

these

to attend

for

mean probability

effects

on the parental

effects,

academic that

attend

achievement (Base) 50 5 I.391 SO6 215 0.0 0.0 259

which

achievethe

college

(0.5016).

(percentiles) 75

90

Yl.461 570 279 II.0 0.0

$1.516 925 334 0.0 0.0

353

to of

that student

the lower

the fact

individuals

the mean

effects

These

of average

and

in the

are more likely indirect

of

college level

at or above

that individuals

groups

effects of

are less likely

The

to

achievement

indirect

probability

and income

equal.

of

attributable

student grant awards*

10

178

and

levels

ment.

Academic income

to the

We note that individuals

as expected.

the sample

variables.

as

probabilities

group

the

are largest for students

Estimates

sample

each

individuals

else

achievement.

parental

Table 4. Estimated

Parental

all

probability

college. have

and that

by

college.

direct

sample.

achievement

grants.

grant

for

levels of achievrment

for

student

decrzases

the likelihood

and parental

increase

lowest

attend.

award

attendance

the

college.

achievement

of the award

chooses to attend individuals

well

In Table

relationship

available

both for each parental

for the total

and

inverse and

5. we see that as academic both

attendance

academic

of

academic

for

larger

6 shoas the part of the total probability

attendance

of SAT-type

is the individual.

of five

the annual

if the individual

a

amount

levels income

As

is

at each

index

school

college

individuals are

achievement

is a composite

achievement

4,

achievement

achievement

estimation

prepared

academic college

attendance.

highly

receive

increases

attends

attend

college

better

more

can be said to be effsctive

colleg2

grant awards which

probability

an

its availability

estimated and Table

of

increases.

grant

that

discrimi-

favor

equal,

The 2stimated

that an individual

attendance.

qualified

student

their

extent

achieve-

positive

of college

A student

and

estimated

as academic

note that at each level of

income

incorn

the

students

hand.

achievemrnt

is evident.

in

slse

prepared

par2nral

parental

provided

academic

likely

grants is

All

On the othsr

between

above,

process

students.

academic

equal

a direct

that

better more

increase

has

probability

true

probability

who

publicly

grants.

who

have

of the individual

turn,

has an independent

fluence

individuals

college

which,

influence

attendance. ment

is that

the

Isvel

increases

The results suggest

auard

academically

obtaining

to attend

achievement

increase

studrnt

Grants

for

grant

increases.

in

qualified

income

student

achievement

attendance. Academic

parental

of

409

shown in Table 1. Student grants include all nonstudent financial aid programs.

probis near

Wealth i\;eurralirlr: in Higher Educatmn Table 5. Estimated

college attendance

probabilities Academic

115

by income and academic

achlscement

achievement

(percentiles)

(Ewe) Parental

income

10

25

50

75

90

Low Low-middle hfiddle High-middle High

0.1263 0.1296 0.1331 0.1549 0.1841

0 2371 0:23x o.243q 0.2746 0.3 179

0.1572 0.4949 0.5026 O.j;Y-! 0.5s95

0.7367 0.712 I 0.7479 0.7767 0.8051

0.8774 0.8806 0.8838 0.89-N 0.9125

P UP

0.1326 0.0213

0.2475 0.0358

0.5016 0.0423

0.7472 O.OW

0.883-I 0.0142

Table

6. Effects of student grants on the probability Academic

Parental

achievement (Base) 50

(percentiles)

10

25

Low Low-middIe Middle High-middle High

+O.O368 +0.0217 +O.OO% 0.0 0.0

+0.0635 +0.037s +0.01 I7 0.0 0.0

-CO. 1026 +0.0601 +0.0t61 0.0 0.0

+0.0933 +0.0529 +0.0160 0.0 0.0

+0.0579 +0.032-r +0.0107 0.0 0.0

P

l-0.0060 -0.0133

+0.0120 -0.0231

+0.0217 - 0.0;89

+0.0155 -0.0371

+0.0132 -0.0227

UP

income

of college attendance

The effects of grants for individuals who are below average in academic achievement, and who, therefore, have less than even odds of attending college, are smaller than the effects for their better qualified counterparts at each achievement percentile. In the lowest income level, for example, grants account for 3.68 percentage points of the probability of a student in the 10th percentile of achievement attending college, while for a student in the 90th percentile these effects explain 5.79 percent of the total probability. The availability of student grants for below-average achievement individuals, who are less likely to attend college and who generally receive smaller than average grants, therefore, does little to increase the probability of college attendance. On the other hand, student grants to higher than average achievement individuals, who are more likely to attend college and who tend also to receive larger than average grant amounts provide smaller than average increases in the probability of college attendance. It is those students between the low- and high-achievement

75

90

extremes for whom grants have the most important impact on the attendance decision. If the goal of student grant programs is simply to induce college attendance, the above results suggest that student grants are very effective for average achievement individuals, less effective for below average achievement individuals, and essentially turn out to be gifts to high achievement individuals who generally attend college anyway. Student grants do, however, tend to equalize college attendance probabilities for individuals from different parental income levels when academic achievement percentile is controlled. The changes in the standard deviation of the probability distribution shown in Table 6 indicate the influence of student grants on the movement of the distribution toward wealth neutrality. versus Direct Costs In Table 7 the effectiveness of an increase in student grants to induce college attendance and equalize college attendance probabilities across Student Grants

116

parental

incomes

in the direct estimated

grunt

column

(3)

to that

of college.

college

student from

is compared

costs

Column

attendance

avvards

presents

are the

uould

be estimated

college

increased

individuals levels

who

were

low

to

eligible

Overall,

the

increase

amount

would

be

persion

The

by about

at the

$100

in grants

probability

percent

for

parental

to

and

increase

student

from

when

of change of those

in

IWO.

decrease

the

dis-

0.0-17_.~ to 0.4OlJ.

a

probability (1)

decrease

in

probability

tuition

would

generally awards.

grant

families,

costs

effect

from

anyway.

college

of

odds

of college

the

increased reduction.

probability with

have

sample

of

levels,

the at

cost to

tuition their

touard

wealth

in

would

tend the

wealth

neutralitv.

practices

to negate

the

neutrality.

the

seen

if

in

the

The iead

in

a

tuition

reductions of

wealth

to prevent students

tuition

the that

reductions. be

suggest

to a decrease

in

movement

degree

decreases

results

the

indivi-

that increases

possible with

to be a

aveqe

induce the

of

increase

aid to poorer

along

of

in

result

appears

the

whereas

it were

to occur

would

would

mean probability

for to

that

decreases

increased that

actual

in the deqee

of

For

SUhlhlARY

student

effect

is absent

probabilities

of

of the direct

college

of is

which shows

or

policy

decrease

effect

h&h-income

characteristics

policies

it is noteworthy

to

would

on

estimates

through

suggested

neutrality.

actually

effect

re-

degree

surprisinp.

to substantially

are

reduction

receive

as a result The

grants

expected

reductions. and

dual in the sample.

tend

the

that

the

grants

attendance

by the lower a

two

Neither

means

Only

in

the student

attendance.

neutrality.

groups

to an extent

or no change in the overall

student

result,

while

amounts

because

indirect

attending mean

increase

income

the

the

indirect

the

to cause a decrease

eli$ble

individuals

to

magnitude

of

in

that

by a decrease

these

and

shown

This

to decrease

in

the

and fees on the

caused

tends

not

attendance

the

tuition

of the

and to lessen

tend

of

increases

effective

for an individual

hi%h-middle

are

of the cost

individual

either

cost

at lower

are understood,

comparison

very

is

tend

be offset

is of sufficient

who

these

occur

a

the dispersion

once the mechanisms

the board

indicate

income

For

awards.

direct

individuals

not

attendance

parental

in direct

positive

The

in the probability

grant

attendance

that

results

costs

would

student

effect

attendance

of college

decrease

materials

(5).

to middle

student

neutrality,

tuition

of

grants

to 0.0467,

neutrality,

will

lovvered

effects

reduced

0.0473

wealth

little

of an across

college

and

the increase

and

in tuition.

of

columns

grants

the effects

of $100

the low

A

by

tend to increase

tuition

college

comparison.

decrease

of

result

offsetting from

from

college

attendance. For

levels

changes

this

neutral

income

not illo$cal

by

base

the

resulting

distribution. duced

the

that

reduction

wealth

grants

uealth

from but

degree

income

grants

student

expected

toward

by

the

0.7

for in

costs,

the

terms

middle

of the distribution

movement

in

to increase

attendance

changed

probabilities

result

the base probabilities.

of a decrease (2) shows

indicate for is

an not

For

over

tlvo

college

sidized

decades.

the

attendance

government by

has

providing

sub-

student

orants to individuals from lower-income families c who historicallv have had lower college attendance rates

than

presented

higher-income in this

paper

families. suggest

that

The

results

the policy

has

Wealrh been generally opportunity student

consistent

Srants tended

college income

promote

wealth

in Higher

the

In 19YO

The

analysis

whether

also

shows.

however,

student

neutrality

specific

in

student

grants

of household an individual

higher

lower

income

probability

only

income attends families

of attending

partially

ability

At

offset

the

as a determinant

of

college. are

seen

college

Individuals to have than

income

grant

student

a

indivi-

of

to

reverse

and

grant

Grants

Grants)

will

college

attendance

tend

families. trend

These toward

(Supplemental and State Student

to decrease by

the prob-

individuals

reductions wealth

neutrality

Acknowledgement The author wishes to thank John Alvin for useful comments and suggestions. Any remaining errors are, of course. my own.

An econometric model of the U.S. market for higher education. In Research in (Edited by EHRENBERG, R.G.). Vol. 4. JAI Press. Greenwich. CT. BISIIOP. J. (1977) The effects of public policies on the demand for hi_rher education. J. hum. Resources (1980)

Economics

12. X-307. FELDSTEIN,h1.S. (1975)

Wealth

neutrality

in

education.

REFERENCES

J.M.

from

are likely

I. For those interested in the fully developed theoretical and empirical models, see Schwartz (1985). variables are expressed in present value terms at the time of the college attendance 2. All monetary decision. 3. Pre-estimation is also required for the future return to coller+e. Details of the empirical specification, data, and results for the future return instrument are gjven tn Schwartz (1985). 1. Estimation results for the other three financial aid variables are similar to those found for publicly provided student grants and are given in Schwartz (1985). 5. The model is a reduced form of a structural model of both the household’s decision and college admission. where admission is assumed to be independent of the error term. The logit model was chosen over a probit model for computational ease. 6. Some may argue that a selection bias is present in the data since only those individuals who enroll in college can be observed to receive student grants. However. correction of the potential bias is impossible in the model. See Schwartz (1985). 7. As a measure of the degree of wealth neutrality. the standard deviation is useful for comparison purposes only. A zero standard deviation implies that wealth neutrality requires that college attendance probabilities across parental incomes be set equal to the mean probability, which may not be the intent of student financial aid programs. S. Details of the method used to construct the academic achievement index are contained in Schwartz (19S2).

Labor

in

to eliminate

NOTES

ABOWD,

while

grants. cutbacks

proposals

programs

Opportunity

the

even

of student

supgest that recent

funding

lower-income higher

families.

for the availability

Incentive

wealth

of college

was not achieved.

117

The results further

attendance

that

as an equal probability

across all incomes,

19S0 levels influence

from

Educational

defined

attendance

duals

Educarion

controlling

and thereby

education.

neutrality,

higher

education.

to equalize

across household

are seen to effectively

from

a goal to improve

of access to higher

probabilities higher

with

.\.eurralirl;

and local choice

in public

education.

,4rn.

econ.

Rev. 65,

75-89. FULLER. W.C., MANXI. C.F. and WISC, D.S. (1981) New evidence in the economic determinants of postsecondary schooling choices. J. hrcm. Rrsources 17, -177~495. KOHN, M.G.. ~JANSKI, C.F. and MU&DEL. D.S. (1976) An empirical investigation of factors-influencing college going behavior. Am. econ. sot. ~Wrusrrre 5. 391~-119. MILLER. L. and RADNEK, R. (1970) Demand and supply in higher education: a progress report. Am. econ. Rev. 60. 326-334. SCH~AKTZ, J.B. (19Sj) Student financial aid and the college enrollment decision: the effects of public and private grants and interest subsidies. Econ. ed. Rev. 1. 12% 144. SCHH.AKTZ, J.B. (1982) Wealth neutrality and public subsidies to higher education. Ph.D. dissertation. University of North Carolina at Chapel Hill. SEKRANO vs PKIEST (1971) L.A. 29820, Superior Court No. 93825-1. cited in Hnv. Educ. Rev. 41. 503. WILLIS. R.J. and ROSEN. S. (1979) Education and self-selection. /. polir. Ecorz. 87, S7-S36.