Digital divide in computer access and use between poor and non-poor youth.
Eamon, Mary Keegan
The main objectives of this study were to examine the "digital
divide" in home computer ownership and to evaluate differences in
academic and non-academic computer use between poor and non-poor youth.
Data from a national sample of 1,029, 10- through 14-year-old young
adolescents were analyzed. Results show that poor youth were .36 times
as likely to own a home computer, but equally as likely to use their
home computer for academic purposes as were non-poor youth. Poor youth
did not differ from non-poor youth in how often they used any computer
for academic purposes, but were less likely to use any computer for
non-academic purposes. Government initiatives to close the digital
divide and foster computer use among poor youth are suggested.
Key words: digital divide; poverty; computer use; information
technology
**********
The phrase "digital divide'--the disparity between
individuals who have and do not have access to information technology
(IT)--became part of our country's vocabulary in the mid-1990s
(Wilhelm, Carmen, & Reynolds, 2002). Well-documented inequalities in
access to and use of IT such as the computer and Internet reflect
existing patterns of social stratification in the United States (Steyaert, 2002). For example, high-income, Caucasian, married, and
well-educated individuals have more access to IT compared to low-income,
African American and Latino, unmarried, and less-educated individuals
(National Telecommunications and Information Administration [NTIA],
2000, 2002).
Although recent increases in access to IT in public schools have
narrowed the IT gap between high- and low-income and white and minority
students (NTIA, 2002), inequalities in IT access and use among children
and adolescents continue, paralleling those of adults (Attewell &
Battle, 1999). A recent survey (NTIA, 2002) indicates that less than 3%
of adolescents living in the highest income families do not use
computers, compared to approximately 15% of youth in the lowest income
category. Although home computer use is almost universal among the
wealthiest youth, only one-third of the lowest-income youth use a home
computer. The survey found similar differences in Internet access and
use between low- and high-income youth and in computer and Internet
access and use between Latinos and African Americans and whites.
For more than a decade, numerous private and government initiatives
have assisted poor communities and low-resource schools (where poor and
minority students are more likely to reside and to attend) to gain
access to computers, educational software, and the Internet (Wilhelm et
al., 2002). Despite the well-documented IT gap between high- and
low-income youth, and the billions of dollars that have been spent to
close this gap (Roberts, 2000), few studies have examined IT access and
type of IT use between poor and non-poor youth using multivariate methods. The multivariate methods used in this study enable the
assessment of the independent influences of poverty on home computer
ownership and on type of IT use, while controlling for other
socio-demographic factors.
Implications of the Digital Divide
Diverse groups of individuals from government, education, social
work, private foundations, industry, the popular press, as well as
parents and youths themselves, have expressed several reasons why the
nation should be concerned about the gap between the IT
"haves" and "have-nots" (Brown, 2000; Hick &
McNutt, 2002; NTIA, 2000; Turow & Nir, 2000). These concerns fall
into four main themes: educational advantages, future employment and
earnings, opportunities for social and civic involvement, and equity and
civil rights issues.
Many educators, researchers, policy advocates, and government
officials maintain that computers, educational software, and the
Internet offer a number of educational advantages (Center for Media
Education, 1996; Lepper & Gurtner, 1989; Ross, Smith, &
Morrison, 1991). IT can provide students and teachers with a large body
of easily accessible information; create opportunities to reinforce
learning basic, new, and higher-order cognitive skills; and increase
student interest and motivation, parent-school communication, and parent
involvement. These advantages, in turn, are expected to produce positive
educational outcomes such as increased student achievement and school
retention (Center for Media Education, 1996; U. S. Department of
Education, 1999; Wenglinsky, 1998). Research tends to support these
expectations, generally finding positive relations between school, home,
and community uses of IT and a variety of academic outcomes both for
socioeconomically disadvantaged (e.g., Blanton, Moorman, Hayes, &
Warner, 1997; Ross et al., 1991; Sutton, 1991) and other children and
youth (e.g., Campbell, Hombo, & Mazzeo, 2000; Fletcher-Flinn &
Gravatt, 1995; Rocheleau, 1995; Schacter, 1999; Wenglinsky, 1998).
Recent polls also indicate that parents, registered voters, elected
officials, and business leaders share the belief that IT provides
students with educational advantages. For example, almost 90% of polled
parents agreed that access to IT assists children with their school
work, and 74% of parents believed that children without access to IT are
at an educational disadvantage (Turow & Nir, 2000). Over two-thirds
of registered voters also agreed that educational computer uses would
make a great deal or a fair amount of difference in the quality of
children's education (Milken Exchange on Educational Technology,
1998).
Children's and adolescent's access to and use of IT also
are expected to increase future employment and earning opportunities. IT
skills assist youth in researching and locating employment (NTIA, 2000).
IT skills prepare youth to successfully compete in job markets in which
an increasing number of occupations require such skills (U.S. Department
of Education, 1999), and employers compensate workers who possess them
with higher wages (Krueger, 1993). The belief among adolescents
themselves that IT is important to their current and future well-being
is reflected in a recent poll (Gallup Organization, 1997). Over
three-fourths of the teenagers thought that owning a computer was
critically important, and more than 80% of these youths believed strong
computer skills and IT knowledge were necessary for them to make a good
living in the future.
IT not only has revolutionalized the way individuals learn and earn
a living, but has provided new avenues for communicating and
participating in the nation's social and civic life (Lonergan,
2000; NTIA, 2000). Daily newspapers, research, and government and
private information on a variety of important social and civic topics
are available online (Brown, 2000). In addition, computer and Internet
technologies provide a variety of communication methods such as
electronic-mail, instant messages, listserves, and chatrooms, placing
youth who lack access to or skills in using IT at a social disadvantage
(NTIA, 2000).
The widespread belief in the benefits of IT to the educational,
occupational, and social well-being of individuals, and the IT gap
between the poor and non-poor and minorities and whites, have led some
to characterize the "digital divide" as one of America's
leading equity or civil rights issues (Brown, 2000; Lonergan, 2000;
NTIA, 1999). Inequalities in IT access and use not only mirror existing
patterns of social stratification, but can maintain and even widen current disparities between these groups in important indicators of
well-being such as academic achievement and earnings (Johnson, 2000;
Krueger, 1993; Sutton, 1991; U. S. Department of Education, 2002).
Disparities in academic achievement might widen because low-income and
minority youth are unable to take full advantage of the educational
benefits of IT. Inequalities in earnings might increase as a result of
poor and minority youth being less prepared to compete for higher paying
jobs that require IT skills, or result from the link between academic
achievement and subsequent educational attainment and future earnings
(Jencks & Phillips, 1999).
Critiques of IT
Not all educators and researchers are enthusiastic about the recent
trend in the widespread use of IT among children and youth. Those who
criticize this trend argue that research has not convincingly
demonstrated that IT is effective in enhancing academic outcomes
(Oppenheimer, 1997). Moreover, youth frequently use IT for recreational
purposes such as playing video-games, which might increase social
withdrawal among socially marginal youth, encourage impulsive and
aggressive behaviors (Lin & Lepper, 1987), or displace traditional
instruction in the school and academic activities in the home (such
reading and completing homework) that enhance academic achievement
(Colaric & Jonassen, 2001; Johnson, 2000; Lepper & Gurtner,
1989).
Arguments against the widespread use of IT among children and
adolescents might be especially applicable to poor youth. Although most
children and adolescents use the computer primarily for recreational
purposes such as playing games, E-mail, and listening to music, rather
than for academic learning (Becker, 2000; Giacquinta & Lane, 1990;
Kafai & Sutton, 1999), a Gallup Poll (1997) found that a higher
percentage of low-income youth used the computer to play video games daily, compared to their wealthier peers. Other research suggests that
socioeconomically disadvantaged youth would be less likely to use IT for
academically productive purposes because their parents are less able to
provide educational software, computer hardware, technical assistance,
and supervision, compared to wealthier parents (Attewell & Battle,
1999; Becker, 2000; Giacquinta & Lane, 1990). A similar argument has
been applied to low-resource schools, to which poor and minority youth
are more likely to attend. Low teacher-student ratios, outdated technology, and teachers with few IT skills, factors that are associated
with low-resource schools, would likely result in low levels of
supervision and unproductive educational uses of IT (Becker, 2000; Ryan,
1991; Wenglinsky, 1998).
Despite the existing disparities in IT access and use between poor
and non-poor youth and the allocation of billions of federal dollars to
increase IT access and use (Lonergan, 2000; Roberts, 2000), few studies
have used a multivariate approach to examine the independent impact of
poverty on home computer ownership and type of IT use. Such results
could provide the basis for policy development focused on addressing
specific and clearly identified effects of the digital divide. Recent
data from a national sample of young adolescents are used to examine
four specific research questions: Controlling for the youth's
race/ethnicity, age, gender, and the marital status and education of the
youth's mother (1) are poor youth less likely to have access to a
home computer, (2) are poor youth less likely to use their home computer
for academic purposes, (3) do poor youth use any computer less often for
academic purposes, and (4) do poor youth use any computer more often for
non-academic purposes, compared to non-poor youth?
Method
Data and Sample
Data were drawn from the National Longitudinal Survey of Youth
(NLSY) and the NLSY mother/child data sets. The original NLSY, initiated
in 1979, included 12,686 individuals between 14 and 21 years of age,
including oversamples of African American, Latino, and economically
disadvantaged youth. Respondents were interviewed annually from 1979
through 1994, and biannually thereafter. Beginning in 1986 and every two
years afterwards, a number of assessments were administered to the
original NLSY female participants and to their biological children. By
2000, the most recent data available for this analysis, 8,323 children
had been born to the 4,113 interviewed female respondents (Center for
Human Resource Research, 2001).
Young adolescent children of the original NLSY female cohort who
were interviewed in 2000 comprise the sample used in this analysis.
These adolescents were 10 through 14 years of age, were attending public
school, and answered at least one survey question related to computers
and their use. The sample was limited to youth between the ages of 10
through 14 years because only children in this age range were evaluated
with the self-administered survey that provided the computer variables
for this analysis. To meet the assumption of statistical independence,
only one young adolescent was selected randomly from families with more
than one child. The remaining sample of 1,029 young adolescents included
288 Black, 166 Hispanic, and 575 non-Hispanic, White youth (hereinafter referred to as "African American," "Latino," and
"white").
Measures
Independent variables. Poverty was measured by comparing family
income reported by the female respondent during the 2000 interview
(which refers to income in 1999) to 185% of the official poverty
threshold for the family size measured at the interview date. If total
family income for a given family size fell below 185% of the official
threshold, the youth was categorized as poor, and as non-poor otherwise.
Defining poverty as 185% of the poverty thresholds is consistent with
federal government eligibility guidelines for a free or reduced-price
lunch and with other studies examining the relation between low income
and computer access and use (e.g., Cattagni & Westat, 2001;
Wenglinsky, 1998).
Other independent variables included the youth's age (10, 11,
12, 13, and 14); gender; race/ethnicity, based on the mother's
racial/ethnic identification (African American; Latino; and white);
mothers' marital status (married, spouse present; all other types)
and mothers" years of education (less than 12 years; 12 years; more
than 12 years). The youth's age and the mother's marital
status and educational attainment were measured at the 2000 interview
date. Variables indicating location of residence (urban vs. rural and
region of the country) initially were evaluated in the models presented
in the Results section. Because none of the residence coefficients were
statistically significant nor substantively affected the size or
significance of other coefficients, the variables were removed from the
final models. Respondents provided complete information on all the
independent variables, with the exception of family income
(approximately 15% of respondents had missing income information). For
respondents with missing income data, poverty status was imputed using
the matching procedures available in Interactive LISREL (du Toit &
du Toit, 2001).
Dependent variables. The first dependent variable measured whether
the youth had a home computer. Those youth who had a home computer
indicated which of seven activities they used their computer for most
often. Based on findings from a principal components analysis of similar
items (explained in the next paragraph) an academic home computer use
dichotomous variable was formed by grouping two items indicating
academic use (school or homework; learn/practice a skill such as art,
music or another language) and five items indicating non-academic use
(entertainment, such as games and recreation; writing letters and
correspondence; references or looking things up; accessing the Internet
or using E-mail; other uses). The other two dependent variables were the
frequency of youth's academic and non-academic use of any computer.
These variables were measured by the youth rating (0 = never to 4 =
almost every day) how often they used any computer for 13 specific
purposes. In order to determine whether these items could be reduced to
conceptually coherent sets of variables, indicating academic and
non-academic computer use, a principal components analysis was conducted
(Dunteman, 1989). The analysis yielded two components. The first
component indicated academic computer use (writing stories, reports,
compositions, or papers; doing math, graphs, or computation; doing
reading or spelling; doing science problems; learning, practicing, or
making music; doing art work or graphics; creating or writing computer
programs; and analyzing data). For the academic use component,
Cronbach's alpha = .84; lowest factor loading = .50. The second
component indicated non-academic computer use (writing letters; looking
up things or using references; playing games; reading or sending E-mail;
and accessing the Internet or other on-line networks or services). Alpha
= .75; lowest factor loading = .52. Additive scales were created to
measure the frequency of academic and non-academic computer use (scores
ranged from 0 to 20 for academic use, and from 0 to 18 for non-academic
use).
Data Analysis
Data analysis was conducted in two steps. First, weighted
descriptive statistics for the study sample and dependent variables were
computed. Second, multivariate models for the dichotomous variables
(home computer ownership and home computer academic use) were estimated
using logistic regression, the preferred analysis of binary dependent
variables (Allison, 1999). Multivariate logistic regression allows for
examining the effect that each independent variable contributes to the
log odds that the respondent had a home computer (versus no home
computer) and used the home computer most often for academic purposes
(versus non-academic purposes), while adjusting for the effects of the
other independent variables. Multivariate (Ordinary Least Squares)
regression models were estimated for the frequency of academic and
non-academic computer use. As recommended by the Center for Human
Resource Research (2001), the regression analyses were conducted using
unweighted data. The race/ ethnicity variables controlled for the
oversamples of minority respondents included in the NLSY.
Results
Weighted means and standard deviations or percentages for the study
sample and variables are presented in Table 1. Although more than 87% of
non-poor youth had a home computer, only 55.89% of poor youth had a
computer. Among the 710 youths who had access to a home computer and
answered the item related to computer use, only 26 (3.32%) reported that
they did not use their home computer. There were no significant
differences in using versus not using their home computer between poor
and non-poor youth, [chi square](1, N = 710) = .075, p = .784. Table 1
also indicates large differences in computer ownership between white
(84.13 %) and African American (51.76%) and Latino (59.16%) youth. A
relatively low percentage of youth (19.63%) reported using their home
computer most for academic purposes, a percentage that is similar for
poor (22.33%) and non-poor (23.16%) youth. A larger percentage of
African Americans (33.02%) and Latinos (30.67%), however, reported using
their home computer for academic use, compared to whites (21.51%). Youth
also reported using any computer more frequently for non-academic (M =
8.88) versus academic uses (M = 5.86). Means for frequency of academic
computer use are almost identical for poor and non-poor youth, but poor
youth reported using any computer less often for non-academic purposes
(M = 7.83) than did non-poor youth (M = 9.30). As compared to whites,
African Americans and Latinos reported using any computer more often for
academic purposes and less often for non-academic purposes.
Results of the multivariate logit analysis of poverty and other
factors associated with home computer ownership and youth academic use
of their home computer appear in Table 2. Controlling for the effects of
all other variables in the model, the odds ratio for poverty indicates
that poor young adolescents were .36 times as likely to have a home
computer as non-poor youth. African American (odds ratio = .28) and
Latino (odds ratio = .37) youth also were less likely to have a home
computer compared with white youth. Results of the second multivariate
logit model indicate that poor youth were about equally as likely to
report using their home computer most often for academic purposes as
were non-poor youth. African Americans (odds ratio = 1.78) and Latinos
(odds ratio = 1.88) also were more likely to report using their home
computer most often for academic purposes compared to whites.
Table 3 presents the results of the multivariate (OLS) regression
analyses of poverty and other factors associated with the time young
adolescents spent on academic and non-academic uses of any computer.
Poor youth did not significantly differ in the frequency of their
computer use for academic purposes compared with non-poor youth, but
poor youth reported using a computer significantly less often for
non-academic purposes (b = -.96, p < .05). African Americans (b =
2.24, p < .001) and Latinos (b = .85, p < .10) reported using a
computer more frequently than whites for academic purposes and less
frequently for nonacademic purposes (b = -1.15, p < .01, for African
Americans; b = -1.23, p < .01, for Latinos).
Absence of a statistically significant difference in frequency of
academic computer use between poor and non-poor youth, as well as the
negative relation between poverty and frequency of non-academic use,
might result from poor youth's more restricted access to computers.
Since poor youth are less likely to have access to a home computer, they
must use computers in schools or in other community locations where
their computer use probably would be more restricted and monitored. If
poor youth did have comparable access to a home computer as do non-poor
youth, they might use computers for academic purposes less frequently
and perhaps use computers for non-academic purposes more frequently than
non-poor youth. In order to test this possibility, two additional
variables were entered into the regression models. The first measured
whether the youth had and used a home computer (versus did not have or
did not use an available home computer). In both models, coefficients
for this variable were positive and significant, indicating that youth
who had and used a home computer used a computer more frequently for
both academic (b = 1.02, p < .05) and non-academic (b = 2.98, p <
.001) uses, compared to youth who did not have or did not use an
available home computer. In addition, the coefficient for the poverty
variable in the non-academic computer use model was no longer
significant, suggesting that differences in the frequency of
non-academic use between poor and non-poor youth were due to differences
in the use of a home computer. When the home use variable was entered
into the regression model, African Americans (b = 2.58, p < .001) and
Latinos (b = 1.12, p < .05) were still more likely to report using
any computer for academic purposes, compared to whites. The
race/ethnicity coefficients were not statistically significant in the
non-academic use model.
The second variable, an interaction between poverty status and the
previously defined home computer variable, tested whether poor youth who
used a home computer used any computer more frequently for academic or
non-academic purposes than did non-poor youth. The interaction term was
not statistically significant in either model, indicating that poor
youth who use a home computer do not differ from non-poor youth in the
time they spend on academic or non-academic computer uses.
Conclusions and Discussion
The objectives of this study were to examine disparities in home
computer ownership and in academic and non-academic uses of computers
between poor and non-poor youth, using data from a national sample of
young adolescents between the ages of 10 through 14 years. Study
findings indicate that poor youth were .36 times as likely to have a
home computer compared to non-poor youth. Indeed, there is a
"digital divide" between poor and non-poor young adolescents
in home computer access that is independent of any effects of the
youth's age, gender, race/ethnicity, and the marital status and
education of the youth's mother. However, when a home computer was
present, poor youth were just as likely to use the home computer for
academic purposes as were non-poor youth. A failure to find a
significant interaction between poverty and use of an available home
computer and type of computer use adds to the validity of this finding.
Whether home computer use or type of IT use translates into better
academic outcomes for children and adolescents, however, has not been
adequately studied (Lauman, 2000) and is an area for future research. On
the other hand, research has produced little evidence that home computer
use results in socioemotional problems for youth or displaces more
academically beneficial activities such as reading or completing
homework (for a review of this literature, see Subrahmanyam, Greenfield,
Kraut, & Gross, 2001). This research, in conjunction with the
findings of the current study, suggests that increasing poor
youth's access to home computers will not cause harm, but might
allow these youth to accrue a variety of social, employment, and
possible academic benefits (NTIA, 2000; Lonergan, 2000).
The findings of the current study indicating that poor youth do not
use any computer for academic purposes less often than do non-poor
youth, regardless of whether they have a home computer, are consistent
with the finding for the use of a home computer. These results suggest
that increasing poor youth's access to computers in the community
most likely will result in poor youth using IT for academic purposes as
often as their wealthier peers. Although poverty was associated with
using any computer less frequently for non-academic use, this relation
appears to be the result of poor youth being less likely to own home
computers. If increasing access to home computers resulted in poor youth
using the computer more often for non-academic purposes than they
currently do, some research suggests that even non-academic uses of
computers might have educational benefits. For example, recreational
games can encourage and develop the use of complex cognitive processes,
which might transfer to academic situations that require problem-solving
abilities (Pillay, Brownlee, & Wilss, 1999).
Although not the main focus of this study, the racial/ethnic
differences found in IT access and use are noteworthy. Differences in
home computer access between whites and African Americans and Latinos
have been established by past studies (NTIA, 2002; Wenglinsky, 1998),
and these differences remain in this study even after controlling for
poverty and other demographic factors (e.g., mother's marital
status and educational level). These racial/ethnic disparities in
computer ownership might be explained by variations in the depth of
poverty or in attitudes toward the benefits of computer ownership
between whites and African Americans and Latinos. Future research is
needed to explore these results and also to explore the findings that
African American and Latino youth use IT for academic purposes more than
whites. Perhaps African American and Latino parents are more likely to
monitor and restrict their young adolescents' home computer use.
The current findings indicate that if increasing IT access and use
result in better academic outcomes and job opportunities, these benefits
would be particularly important for African Americans and Latinos.
This study has a number of limitations. Among the most important is
the reliance on young adolescents' self-reports of computer access
and use, which might not be reliable. The restricted age range of the
youth limits the generalizability of the study findings. If additional
information on IT access and use were available in the NLSY (e.g.,
presence of an Internet connection or educational software in the home),
this information could have contributed to better understanding
differences in IT access and use between poor and non-poor youth.
Despite these limitations, two main policy implications can be
drawn from the findings of this study. First, the federal government
should continue efforts to achieve its stated "vitally important
national goal" of increasing the number of Americans who use IT
(NTIA, 2002) by continuing programs (e.g., the Education-rate and
Community Technology Centers Program) to assist low-resource communities
and schools in increasing access, use, and quality of IT applications
(Roberts, 2000). Largely due to such efforts, progress has been made in
decreasing, and even eliminating, disparities between poor and non-poor
and minority and white youth in IT access and use in public schools (U.
S. Department of Education, 2002; NTIA, 2002). Current programs should
be continued and expanded to include assisting low-income families to
purchase home computers (e.g., through a tax credit), and increasing
research funds to understand and ameliorate factors that block access to
home computer ownership among ethnic minority youth. Unfortunately, the
current administration's budget proposal for 2003 (Executive Office
of the President of the United States, 2002) calls for eliminating such
programs. One of the most important of these is the Community Technology
Centers Program, which provides grants to economically distressed areas
to assist residents in gaining access to IT in community locations such
as libraries and public housing facilities (Roberts, 2000).
Second, if government officials and the general public consider
access to IT important to the education, future job opportunities, and
social and civic participation of our nation's youth, this study
indicates that establishing eligibility guidelines for obtaining
relevant government assistance at even 185% of official poverty
thresholds might be too low. Since poverty thresholds were established
in 1965, debates have continued regarding adequate measures of economic
hardship. Many researchers contend that at least one poverty measure
should reflect the economic resources necessary to participate in the
"activities of normal living" (Glennerster, 2002). Not only
should federal policies continue to assist IT "have-nots" in
obtaining access to computer technologies, but must ensure realistic
eligibility guidelines for obtaining such assistance.
Table 1
Weighted Means (Standard Deviations) or Percentages for the Study
Sample and Variables (N = 1,029) (a)
Dependent Variables
Academic
Home Home
Study Computer Computer
Variable Sample Ownership Use
Independent variables
Poverty (less than 185%
of official threshold)
Poor 29.57% 55.89% 22.33%
Non-poor 70.43 87.18 23.16
Youth/Mother Characteristics
Youth age (years)
Ten 21.15% 76.32% 18.81%
Eleven 20.51 80.84 22.28
Twelve 22.71 77.05 23.28
Thirteen 22.75 77.95 24.19
Fourteen 12.88 77.36 28.15
Youth gender
Female 47.36% 76.30% 23.07%
Male 52.64 79.37 22.90
Youth race/ ethnicity
African American 14.21% 51.76% 33.02%
Latino 6.66 59.16 30.67
White 79.13 84.13 21.51
Mothers' marital status
Married, spouse present 69.43% 84.73% 21.82%
All other types 30.57 62.46 26.79
Mothers' years of education
Less than 12 years 13.42% 54.19% 30.70%
12 years 39.21% 70.37% 23.49%
More than 12 years 47.37 90.89 21.43
Dependent Variables
Home computer ownership
(n = 1,002)
Yes 77.92%
No 22.08
Academic home computer use
(n = 690)
Yes 19.63%
No 80.37
Frequency academic computer
use (n = 894) 5.86
(4.99)
Frequency non-academic
computer use (n = 894) 8.88
(4.86)
Dependent Variables
Frequency
Frequency Non-
Academic Academic
Computer Computer
Variable Use Use
Independent variables
Poverty (less than 185%
of official threshold)
Poor 5.90 7.83
(5.08) (4.79)
Non-poor 5.85 9.30
(4.94) (4.83)
Youth/Mother Characteristics
Youth age (years)
Ten 5.58 7.58
(5.16) (4.58)
Eleven 5.66 8.29
(5.20) (4.76)
Twelve 5.96 8.86
(4.75) (4.99)
Thirteen 5.76 9.96
(4.89) (4.83)
Fourteen 6.60 9.93
(4.85) (4.66)
Youth gender
Female 5.97 8.79
(4.90) (4.98)
Male 5.76 8.96
(5.06) (4.75)
Youth race/ ethnicity
African American 7.75 7.69
(6.30) (4.94)
Latino 6.45 7.50
(5.46) (4.63)
White 5.50 9.19
(4.61) (4.82)
Mothers' marital status
Married, spouse present 5.77 9.25
(4.85) (4.78)
All other types 6.08 7.98
(5.28) (4.95)
Mothers' years of education
Less than 12 years 6.65 7.96
(5.16) (5.01)
12 years 6.00 8.62
(5.22) (4.96)
More than 12 years 5.54 9.33
(4.70) (4.69)
Notes: Weights adjust for oversamples of African American and
Latino youth.
(a) Sample size is unweighted and varies depending on the number
of responses on the dependent variable.
Table 2
Multivariate Logit Analyses of the Effect of Poverty and Other Factors
on Home Computer Ownership (N = 1,022) and Academic Home
Computer Use (N = 690) Among Young Adolescents
Home Computer Academic Home
Ownership Computer Use
Logit Odds Logit Odds
Variable Coefficient Ratio Coefficient Ratio
Poor (non-poor) -1.03 *** .36 -.13 .88
Youth age (14 years)
Ten -.34 .71 -.42 .66
Eleven .03 1.03 -.22 .80
Twelve -.20 .82 -.25 .78
Thirteen -.22 .81 -.20 .82
Youth male .15 1.16 -.20 .82
Youth race/ethnicity (white)
African American -1.27 *** .28 .58 * 1.78
Latino -1.00 *** .37 .63 * 1.88
Mother married, spouse .34 1.41 -.09 .91
present (other types) ([dagger])
Mothers' years of education
(more than 12 years)
12 years -1.20 *** .30 .08 1.09
Less than 12 years -1.48 *** .23 .06 1.06
Notes: Reference categories are in parenthesis.
([dagger]) p < .10; * p < .05; ** p <. 01; *** p <.001
Table 3
Multivariate Regression Analyses of the Effect of Poverty and
Other Factors on Frequency of Young Adolescent Academic and
Non-Academic Computer Use (N = 894)
Frequency Frequency
Academic Non-academic
Computer Use Computer Use
Variable b b
Poor (non-poor) -.12 -.96 *
Youth age (14 years)
Ten -.91 -2.26 ***
Eleven -.92 -1.85 ***
Twelve -.42 -.83
Thirteen -.79 -.04
Youth male .05 .24
Youth race/ethnicity (white)
African American 2.24 *** -1.15 **
Latino .85 ([dagger]) -1.23 **
Mother married, spouse present .41 .27
(other types of marital status)
Mothers' years of education (more
than 12 years)
12 years .67 -.62 ([dagger])
Less than 12 years 1.11 * -.77
Notes: Reference categories are in parenthesis.
([dagger]) p < .10 * p < .05; ** p < .01; *** p < .001
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