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A MULTILEVEL ANALYSIS OF THE STUDENTS’ SUCCESS IN THE 1ST YEAR OF AN ENGINEERING PROGRAMME: A CASE STUDY
Carla Patrocínio, Statistics and Prospective Unit , IST
José G. Dias, Dep. of Quantitative Methods & UNIDE, ISCTE-IUL
Eduardo Pereira, Dep. of Civil Engineering and Architecture, IST 7-8 January 2011, Lisbon/Portugal
First Lisbon Research Workshop on Economics and Econometrics of Education program
Summary
Secondary Schools Clustering
Goals
Conclusions and Next Step
From high school to higher education
2
Framework
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of
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(7
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Framework
3
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Access to the public higher education in Portugal:
• National contest
• selection of applicants based on the grade of secondary education and exams
Framework
4
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Data
Literature Methodology
Can academic achievement in higher education be partially
explained by previous academic path, particularly by the
secondary school where the student did his/her studies?
Can academic achievement in higher education be
exclusively explained by the student’s intrinsic
characteristics?
Is it possible to model the student's school performance based on a set of pre-
set dimensions, so as to develop early support programmes for potential
failure?
Goals
5
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Secondary Schools Clustering
6
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Dimensions under analysis
Methodology: finite mixture models
Secondary Schools Clustering
Firs
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Wo
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Results
7
s
Natu
re
Ge
og
rap
hic
Co
nte
xt
Go
al-
dri
ve
n
Ap
pro
ac
h (
Ma
th
Resu
lts)
Fa
cu
lty
(% T
each
ers
un
de
r 4
0
ye
ars
old
)
Ed
uc
ati
on
al
Off
er
(% S
tud
en
ts in
ge
ne
ral
pro
gra
mm
es)
Siz
e
(nu
mbe
r o
f stu
de
nts
)
Pro
file
s
26% Pub. Urb. ~ ~ ~ ~ Urban Public School
24% Pub. Urb. Large Urban Public School
23% Pub. Semi-
Urb./Rur. ~ Public School in Hinterland Area
12% Pub. Urb. ~ Proficient Urban Public School
10% Priv. Urb. Proficient Urban Private School
5% Pub./Priv. Urb. ~ ~ Technical-Vocational School
From high school to higher education
8
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Dimensions under analysis (Student Level)
(Y)
Measuring Student Sucess
Number of approvals in Number of enrolments
(X)
Academic background
Socioeconomic status and
family capital
Contextual Factors
Motivations expectations
Methodology: Binomial Multilevel Models
From high school to higher education
9
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Secondary Schools of sample students
Urban Public School
15%
Large Urban Public School
44%
Public School in Hinterland Area
3%
Proficient Urban Public School
26%
Proficient Private Urban School
10%Technical-
Vocational School1%
From high school to higher education
10
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Results
Parent education level and admission stage did not reveal significance
Academic Background
Secondary education grade: + 40%
Physics in Secondary education : + 72%
Socioeconomic status and family capital
Girls: + 10%
Level of household incomes < national average: + 8% Motivations and expectations
Place of entrance 1st: -16%
Student commitment: -9%
Early choices of degree: + 22%
Contextually
Away from residence: - 17%
+ 1h in each travel: - 10%
Conclusions
All dimensions studied were relevant to explain academic success
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11
The sample studied does not reveal differences in the effects of school
The previous academic path is the strongest factor contributing to the student’s academic success
Next Step
To analyze the academic context in higher education
A MULTILEVEL ANALYSIS OF THE STUDENTS’ SUCCESS IN THE 1ST YEAR OF AN ENGINEERING PROGRAMME: A CASE STUDY
Carla Patrocínio, Statistics and Prospective Unit , IST
José G. Dias, Dep. of Quantitative Methods & UNIDE, ISCTE-IUL
Eduardo Pereira, Dep. of Civil Engineering and Architecture, IST 7-8 January 2011, Lisbon/Portugal
First Lisbon Research Workshop on Economics and Econometrics of Education program
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