Title: Online Educa Berlin' eLene EE Economics of elearning
1Online Educa Berlin. eLene- EE (Economics of
e-learning)
2Index
- Welcome (Mikael Sjöberg) 5 minutes
- Project overview and connection with main
objectives (David Castillo) 5 minutes - WP1 Cost-Benefit Analysis (Niklas Hanes and
David Castillo) 30 minutes - WP2 Students Achievement (David Castillo and
Toni Femenias) 30 minutes - Coffee break 20 minutes
- WP3 E-learning Indicators (Susanna Sancassani
and Andrzej Wodecki) 40 minutes - WP4 E-learning and Digital Divide (Adel Ben
Youssef) 40 minutes - Summary and topics for further discussion
(Deborah Arnold) 10 minutes
3Project overview Economic Framework
- Rapid knowledge creation and easy access to
knowledge the emergence of a knowledge-based
economy - ICT can be seen as a suitable technological base
for knowledge economy development - The main hypothesis is that ICT are the technical
paradigm on which current dynamics of the
industrial revolution is based. - ICT can be situated at the material basis of the
economic growth for many developed countries
since 1995. - Productivity increase is consistent with a
positive trend in labour quality explained by the
rise in average levels of educational attainment. - It is confirmed the existence of
complementarities between technical and
organisational change and skilled labour input
through the demand for specific skills and
abilities.
4Project overview Economic Framework
- Universities have important challenges
generalise access to education, improve
educational attainment levels, respond to social
demand of lifelong learning and fit workers needs
of specific skills and abilities. - E-learning is a good opportunity for universities
to reach these objectives, as a general diffusion
of education may lead to significant benefits. - Individual benefits higher productivity and
wages, higher likelihood to participate in the
labour market, greater probability to experience
less unemployment, effects on health, on
intergenerational cognitive development, better
analytical skills, better adoption of consumption
technology, higher saving rates. - Social benefits improvement of productivity
levels and rates of economic growth and spillover
effects to the whole society. - eLene-EE objectives
- WP1. Efficiency
- WP2. Students performance
- WP3. Indicators
- WP4. Digital divide.
5WP2- Student performance of e-learning
- The diffusion of ICT infrastructure in higher
education tools has induced important changes,
not just on the pedagogic sphere, but also
related to administrative and organizational
issues. - The increasing use of the online learning tools
and its diversity allow students have more
choices in an online course than they used to
have in a traditional face-to-face environment. - Two main questions
- Does the use of ICT affect student performance?
- Does the use if ICT affect student performance
differently depending on the subject?
6WP2- Analysis of student performance through
production functions
- Which variables affect students achievement?
- The analysis of student performance will allow us
testing the relations between achievement,
earnings, institutional variables (organisation,
methodology, technology) and students profile. - Some analysis constrains the multidimensional
nature of educational outputs, the lack of market
value measures for some of the educational
process results and the joint production of these
different educational outputs (Maddala, 1977). - Two alternative approaches to specify the
relation between educational inputs and outputs - The production function
- The frontier production functions
7WP2- Theoretical models
- The technical relation that underlies education
production functions can be expressed as follows
(Hanushek, 1986) -
- Where
- A represents the achievement of a student I at
period t. - Xi is a vector of ability, attitudes and
socio-demographic characteristics for student I
at period t. - H is a vector of inputs for university I at
period t. Within this group we should include
four different set of variables - Institutional variables, related to the level of
institutional commitment towards ICT adoption. - Technological variables, linked to the use of
different ICT devices for teaching and learning
purposes. - Methodological variables.
- Teachers inputs, related to the degree of
technology and methodology uses by teachers.
8WP2- Empirical models
- The most simple and common functional form to
describe the technical relation between inputs
and outputs is Cobb-Douglas function, which can
be expressed as follows -
or - Cobb-Douglas function has an important
constraint, i.e. the fact that substitution
elasticity between inputs is equal to one. - Two alternative functional forms
- The CES production function
- It can be estimated through the use of different
methods, for instance Kmenta method (1962),
transformation method by Box and Cox (1964) or
procedures to adjust non-lineal models (Zellner,
1971). - The translog production function
- It can be estimated by conventional econometric
methods -
-
9WP2- Data needed and survey design
- We need to collect information from students who
attend different courses or modules where some
use ICT while others dont. - The variables collected trough the survey can be
gathered into some general categories student
preparation, student and family characteristics,
students ability, how students used the course
materials, and the characteristics of educational
institutions. - If we want to compare the results between the
online and the face-to-face methods will be
suitable that the survey is responded in the same
period. - The socioeconomic characteristics of the country
or region must be included by the investigator,
in order to obtain the peculiarities and
similarities of and between regions. - To evaluate the influence of the diversity of
learning tools, the questionnaire also must be
focused on how the students used the course
materials.
10WP2- Data needed and survey design
- We must send out a questionnaire to students in
order to collect the following information - Grade (fail, pass, pass with distinction, or
something else). This will be our dependent
variable, y . - Sex
- Age
- College grades
- Type of college exam (science, social science,
practical) - Numbers of semesters at university level
- Students attitude (endogenous)
- Time use (endogenous)
- Other activities (work, club activities, see
Löfgren, 1998) - We will also need the following information to
control for other potentially important
determinants of student performance - Restricted intake (admission)..
- Collaboration. To what extend are collaboration
part of the teaching process. - Class size.
- Type of exam (written test, exam paper etc.).
- Teacher (name, sex, education).
11WP2- Hypothesis and expected results
- There is a consensus that an appropriate use of
digital technologies in higher education can have
significant positive effects both on students
attitude and achievement (Talley, 2005). - Empirical results show a worse performance of
online students respect to their face-to-face
counterparts (Coates et al., 2004 or Brown and
Liedholm, 2002). However, these results are not
related with students characteristics. - Brown and Liedholm (2002) conducted an empirical
study where can be observed that students who are
enrolled in an online course have better
characteristics than the live students. -
12WP2- Hypothesis and expected results
13WP2- Hypothesis and expected results
- Are significant these differences?
- Brown and Liedholm (2002) conclude that the
difference between performances of the two
methods is significant. - Coates et al (2004), although its results
indicate that students in face-to-face courses
use to score better than their online
counterparts, argue that this difference was no
significant. This difference is due to the
importance of the self-selection into online
courses and its effects on the determination of
students outcomes. - Students characteristics like ability or prior
experience affect in his/her performance - The better results in the exams that live
students show can be due, at least in part, to
differences in the student effort. Student
effort, expressed in hours allocated to study,
tend to be higher among live students than online
students
14WP2- Hypothesis and expected results
- The fact that universities supply digital devices
does not necessarily mean that these tools are
used, since often educators are precisely the
ones that remain reluctant to its utilization in
their subjects. - One of the possible causes of this reluctance is
the fact that the introduction of ICT-based tools
in teaching methods require more time for
teachers than with traditional methods ( Becker
and Watts,2001). - The benefits of technology may not be uniform
across the student characteristics (ability,
gender, or prior experience) - Brown and Liedholm (student preferences in Using
Online Learning Resources) use the concept of
cognitive styles to explore the role of
differences in student abilities, past learning
in the subject, attitudes, and aptitudes make in
the explanation of learning achievements. - These authors argue that a students having a
cognitive style is analogous to the students
having a production function for learning, and
indeed, the cognitive style determines the
underlying shape of the learning curves or the
students production function for learning.
15WP2- Hypothesis and expected results
- Among the diversity of materials available in the
course the students will value better those who
consider concordant with their diverse cognitive
styles. - To contradict the belief that those instructors
that use technologies in their classes spend more
time that those who dont make use of them. - The instructor who use technology with high
intensity spend the same amount of time in their
teaching activity that those who are more
reticent to use technology tools in their
classes. ( Sosin et al, 2004). - No longer concern because the real significant
issue is in what manner technology is used at
university, teachers and students level (Sosin
et al., 2004)
16WP2- Hypothesis and expected results
- Table 3- Fixed- Effect Panel Regression with
Institution Cross Group
17WP2- Methodological constraints
- Econometric models of the production function of
education may have some estimation problems
related to endogeneity, data censoring,
measurement and self-selection (Becker 2001
Becker and Powers, 2001 Sosin et al. 2004). - The data-censoring problem arises if the
dependent variable has an upper or lower bound
that limits the measurement of the student
performance. - OLS (ordinary least- squares) regression
specification is the most common econometric
model used to measure the differential impact of
online courses on educational outcome. - Some inconveniences of this model
- Sosin, K. et al (2004) point out that
econometric models of the production of learning
may have estimation problems related to
measurement, self-selection data censoring and
endogeneity - Coates et al. (2004) argue that a potential
shortcoming of the OLS regression procedure is
that it is possible that an individuals choice
between distance learning and face-to-face
instruction is affected by unobservable
differences in ability and learning styles. In
this case, OLS estimates of the parameters would
be biased and inconsistent due to endogeneity. -
18WP2- Methodological constraints
- If the decision of the mode of instruction
selection is related to each students expected
performance under each method of instruction, OLS
is not an appropriate specification. - There are alternative econometric models
- The 2SLS ( two stages least-squares)
specification. - Switching equations models with endogenous
switching - Maximize or minimize the educational production
function? - The majority of the authors tend to maximize the
educational production function. It means that
ICT tools have been created to maximize the gains
available to students. - However other authors, like Talley (2005) hold
that students will seek the amount of learning
that they believe appropriate to earn a desired
grade at the minimum cost possible. As Talley
conclude they may be considered cost-minimizers
when it comes to learning. -