Continuity of Academic Work through e-Learning during the
COVID-19 Lockdown: The Case of Ghana
Mateko Okantey
1a
, Nana Kofi Annan
1b
, Dennis Soku
1c
, Samuel Mensah
2d
, Isaac Korboe
1e
and Kojo Akuokoh Frimpong
1f
1
Wisconsin International University College, No. 23 Akoto Bamfo Street North Legon, Accra, Ghana
2
University of Ghana, Legon, Accra, Ghana
Keywords: COVID-19, e-Learning, Information and Communication Technology, Tertiary Institution, Online, Virtual,
Teaching, Learning.
Abstract: The outbreak of the Novel Corona Virus (COVID-19) pandemic took the whole world by surprise. It virtually
brought everything to a standstill due to the lockdown. Though every sector of the global economy had its
fair share of the dire consequences of the COVID-19, one of the most affected area included education.
Educational institutions shut down to avoid the spread of the virus. The situation led to the compulsory
adoption of E-Learning or online learning as a step in the gap to enable the continuation of academic work.
The objective of the study was to categorize the technologies used by universities during the COVID-19
pandemic; determine the extent of use of these technologies during the lockdown; examine the effectiveness
of these technologies for teaching and learning. The survey approach of research design was used to observe
education institutions adoption of e-learning technology during the COVID-19 and interpreted the findings
based on existing theory. The result shows that the strongest relationship amongst the factors was perceived
usefulness and attitude towards use.
1 INTRODUCTION
Corona Virus (also called COVID-19) was first seen
in the Wuhan region of China in the early part of
December 2019 and since then it has spread across
many countries, including Ghana (Shereen et al.,
2020). The presence of this virus in nations has
brought in its wake a number of stagnations,
including restriction of movements of people (since it
is believed to be transferred from human to human),
the collapse of businesses (Ozili & Arun, 2020) and
the disruption of academic calendars of most
universities especially in Ghana just to mention a few
(Haruna, 2020).
The Government of Ghana, in an attempt to check
and control further spread of the virus closed all
educational institutions in the country. In the interim,
recommended E-Learning for the Tertiary
a
https://orcid.org/0000-0001-5737-8491
b
https://orcid.org/0000-0001-5881-9148
c
https://orcid.org/0000-0002-0216-9841
d
https://orcid.org/0000-0001-6476-8252
e
https://orcid.org/0000-0002-5351-2718
f
https://orcid.org/0000-0002-1372-2796
Institutions. In this, each University in the country,
either public or private, was expected to choose its
own suitable online programme, train its teaching
staff and students and then the teaching staff would
use the virtual platform to train its learners till the end
of the semester or till the virus was gotten rid of in the
country. This shift completely changed the academic
environment.
Online education is one of the methods of
education in today’s world of technology. It has, with
time, become an important part of school education.
Until now, E-learning has been used by most
universities as a supplement to the traditional
classroom or face-to-face teaching. Some universities
are involved only in traditional methods of teaching,
while others combine the traditional method with
some amount of e-learning. In the wake of the
COVID-19 pandemic, most schools up to the tertiary
216
Okantey, M., Annan, N., Soku, D., Mensah, S., Korboe, I. and Frimpong, K.
Continuity of Academic Work through e-Learning during the COVID-19 Lockdown: The Case of Ghana.
DOI: 10.5220/0010443302160224
In Proceedings of the 13th International Conference on Computer Supported Education (CSEDU 2021) - Volume 2, pages 216-224
ISBN: 978-989-758-502-9
Copyright
c
2021 by SCITEPRESS Science and Technology Publications, Lda. All rights reserved
level had to continue academic work. The only option
available in this current situation as an emergency
response was to resort to some form of e-Learning as
recommended by the president.
Responses by education providers have been varied
from having no response to social isolation strategies
on campus and rapid curriculum redevelopment for
fully online offerings (Crawford et al., 2020).
The context of the problem is that Online
education has become necessary in the wake of the
COVID-19 pandemic, with most universities
resorting to various online means of continuing
academic work to avoid the disruption in the
academic calendar. Schools rushed to convert
teaching resources used with the traditional face-to-
face method to online content as a necessary means
of engaging students to minimize the effect on
academic work during the COVID-19 pandemic. The
challenge is the appropriateness and effectiveness of
these technologies and the consideration of
pedagogical issues that come with the use of these
technologies. In the bid to continue academic work
and prevent the disruption of most universities’
academic calendar, responses were sudden and
spontaneous.
With this background, this work seeks to find out
the extent to which the technologies are used, how
they were used, and the effectiveness of their usage
as pedagogical tools.
The study’s objectives are to categorize the
technologies used by universities during the COVID-
19 pandemic to determine the extent of use of these
technologies during the pandemic and examine the
effectiveness of these technologies for teaching and
learning. The researchers put forward three research
questions:
1. What categories of technologies were used by
universities during the COVID-19 pandemic?
2. To what extent were these technologies used
during the pandemic?
3. To what extent were these technologies
effective for teaching and learning during the
pandemic?
2 LITERATURE REVIEW
University education worldwide in the past had
mostly taken the form of on-campus teaching/
learning (Osei & Mensah, 2011) with some
Universities practising Distance Education, that is, an
approach that focuses on opening access to education
and training provision, freeing learners from the
constraints of time and place and offering flexible
learning opportunities to individuals and groups of
learners (Patru et al., 2002).
In Ghana, when on-campus face to face
teaching/ learning came to a standstill due to the
outbreak of the coronavirus that was transmitted from
human to human on 12
th
March 2020, the
Government of the day recommended E-Learning,
especially to the third cycle institutions of learning.
E-learning is seen as an innovative approach for
delivering well-designed, learner-centred, interactive,
and facilitated learning environment to anyone,
anyplace, anytime by utilizing the attributes and
resources of various digital technologies along with
other forms of learning materials suited for open,
flexible, and distributed learning environment (Khan,
2005). It is the act whereby telecommunication
technology is used in the delivery of training and
education (Goyal, 2012). This medium liberates both
parties involved in the training from limitations of
time and space through learning network models (P.-
C. Sun et al., 2008). It would also ensure that the
academic work was not disrupted. Different authors
have used other terms to describe E-Learning, such as
online teaching (Dhull, 2019), virtual learning system
(Kimovski et al., 2001), distributed-learning (Victor
& Hart, 2016), and web-based learning (Poon et al.,
2004). The “E” in E-Learning stands for
“Electronics”. It stands for all electronic devices that
are used in the teaching/ learning activity such as
mobile phone, laptops, Internet, Intranet, web just to
mention a few. In other words, E-Learning
incorporates all educational activities carried out by
individual or groups online or offline.
E-Learning activities are classified into two
modes, namely synchronous and asynchronous
modes. In the former, classes take place at an agreed
time, and one can observe communication between
the instructors and the learner through
teleconferencing. In the latter, learners access
educational material in their convenient time
anywhere at any time they wish (Nadia, 2006). From
this classification, it becomes evident that the
Government call on lecturers’ use of online teaching
is about using the synchronous mode.
Modalities of E-learning activities are classified
into four: individualized self-paced E-Learning
online where the learner uses the internet to access
learning materials and the Individualized self-paced
E-Learning offline, where individual accesses
learning materials without been connected to the
internet. The others are synchronous E-Learning,
where a group of learners are working together at an
agreed time via the Internet (Shaikh, 2011). In this
also we observe that what the Government meant for
Continuity of Academic Work through e-Learning during the COVID-19 Lockdown: The Case of Ghana
217
the tertiary institutions is the group-based E-Learning
synchronously. Talking about which model to use, it
is noted that several models have been put forwards
by researchers in the field of E-Learning. While one
group of model emphasizes on the interactions
between the teacher, student and the content, the other
one focuses on embedding tacit knowledge in
pedagogical model to enhance the e-learning
activities. For instance Anderson and others proposed
a model in which the instructor and the learner would
be represented. In this also they recommended that
the material resource should be made available to the
learner to access on the Internet. Another writer puts
forward a pedagogical model with three phases
namely for E-Learning activities namely: the content
organization phase where the content of the study are
collected and organized based on the requirements of
the industry or institution, the quality assessment
phase where theoretical and experimental methods
are used to analyze and access the contents. The final
stage is the content delivery phase, where the learner
is assessed to find out his aptitude and level (Irfan &
Shaikh, 2008). Pedagogy, the act of teaching, is
founded on some psychological theories.
Other studies that focused on how theories,
practices and assessments were applied to online
learning and carried out on 47 published works and
researches on online teaching/learning in 2008 using
the qualitative content analysis Method concluded
that effective online instruction is dependent upon
three factors, namely: well-designed course content
and motivated interaction between the learners and
instructors; creation of a sense of online learning
community; and the rapid advancement of technology
(A. Sun & Chen, 2016).
3 THEORETICAL FRAMEWORK
Adoption of technology to be used to perform any
kind of task can be viewed from an individual or
institutional perspective. In this study, we consider e-
learning as the technology and its adoption for
teaching and learning as a stop-gap measure during
the Corona Virus Disease (COVID-19) pandemic.
The study takes a look at both individual and
institutional factors of e-learning adoption. There are
several Information System (IS) theories which
researchers use to determine the factors which affect
technology adoption and use depending on the
objective of the study.
Some of the theories which have been used in e-
learning studies are the Technology Acceptance Model
1, 2 & 3 (TAM 1, TAM 2 & TAM 3) (Davis, 1985;
Hanif et al., 2018), Unified Theory of Acceptance and
Use of Technology 1 & 2 (UTAUT 1 & UTAUT 2)
(Chang, 2012; Huang & Kao, 2015) and Theory of
Reasoned Action (TRA) (Ajzen, 1991; Fishbein,
1979). The rest is the Theory of Planned Behaviour,
Innovation Diffusion Theory, Model of PC utilization
and General Extended TAM for E-Learning
(GETAMEL) (Abdullah & Ward, 2016a). The
theoretical underpinning of this study focuses on TAM,
UTAUT and GETAMEL to establish a conceptual
framework based on the objectives of the study.
Abdullah et al. developed The General Extended
Technology Acceptance Model for E-Learning
(GETAMEL) to investigate relevant external factors of
the Technology Acceptance Model (TAM) within the
context of e-learning adoption (Abdullah & Ward,
2016b). GETAMEL identified five external factors as
having a significant influence on Perceived Usefulness
and Perceived Ease of Use, According to the
proponents of GETAMEL, Experience (XP),
Subjective Norm (SN), Enjoyment (ENJOY),
Computer Anxiety (CA) and Self-Efficacy (SE) are
significant external factors which impact on TAM in
the adoption of e-learning.
3.1 Conceptual Framework
The conceptual framework takes its theoretical
background from TAM, UTAUT -2 and GETAMEL.
In this study, it is acknowledged that the mass
adoption of e-learning technology for teaching and
learning was necessitated under a state of emergency
of the COVID-19 lockdown as a stop-gap measure to
continue academic work. This came as a surprise to
most educational institutions, especially those who
have not been doing e-learning. Because of this, the
Perceived Usefulness (PU) and Perceived Ease of Use
(PEOU) which influence attitude toward using and
behavioural intention to use e-learning technology in
this context are further influence by external factors.
In our investigation, we propose that Subjective
Norm (SN), Price Value (PV) and System
Accessibility (SA) are some external factors that
influence the factors of TAM as shown in figure 1.
The conceptual framework is to show that Subjective
Norm (SN), Price Value (PV) and System
Accessibility (SA) have a correlation with Perceived
Usefulness (PU), Perceived Ease of Use (PEOU),
Attitude and Intention to use e-learning system. In
similar works, using TAM, UTAUT-2 and
GETAMEL have shown that there exist to some
extent, a degree of correlation between the external
factors and the core constructs of TAM and UTUAT.
CSEDU 2021 - 13th International Conference on Computer Supported Education
218
Figure 1: Conceptual Framework.
3.1.1 Subjective Norm
Subjective norm (SN) is the social behaviour of how
people act based on their beliefs and assumptions of
how other people think of them. The adoption of e-
learning, in this case, was not optional; therefore, the
subjective norm (SN) might not be an influencing
factor. However, selecting a particular e-learning
technology can be significantly influenced by
subjective norm (SN). In this situation, the
hypothetical assumption is that the adoption of a
particular e-learning system by a school on behalf of
faculty and students is influenced by what other peer
or higher esteemed schools are using. The schools’
decision in this context represents that of faculty and
students to use a specific e-learning system. The
hypothesis for this external factor is as follows:
H5: Subjective norm (SN) influence attitude toward
usage (ATU).
H6: Subjective norm (SN) influence perceived
usefulness (PU).
H7: Subjective norm (SN) influence perceived ease of
use (PEOU).
3.1.2 Price Value
Price value (PV) is a trade-off between what the user
stands to benefit from the technology and the sacrifice
to make. Findings from related research show that
price value (PV) is vital in influencing consumers
intention to use. It also shows that price value (PV)
tends to have a positive influence on the intention to
use when the benefit from the technology is far more
than the monetary commitment. Venkatesh et al.
explain price value (PV) as the cognitive trade-off of
the consumer between the anticipated benefits of the
technology and the financial cost. From the marketing
background price value (PV) has two dimensions:
financial cost and nonfinancial cost. The financial
cost is the value that is derived in contrast to the price
that the consumer pays for the technology while the
nonfinancial cost is the value that is obtained in return
for time and efforts expended. In this study, the price
value (PV) is evaluated using both the financial and
nonfinancial values to explore the influence on
schools attitude toward using particular e-learning
technology with the following hypothesis.
H1: Price value (PV) influence perceived usefulness
(PU).
H2: Price value (PV) influence attitude toward usage
(ATU).
3.1.3 System Accessibility
System accessibility (SA) is when a user can have
access to use the technology conveniently and
frequently without obstructions. The challenge of a
lack of required technical infrastructure, including
unstable internet connection makes it difficult for the
user to access and conveniently use the technology.
Students relent to use e-learning platforms when it has
network connectivity, speed and access reliability
problems. Accessibility technically is a factor which
affects the usability and success of an e-learning
system. Consequently, system accessibility (SA) is one
of the significant external factors that other studies
have shown using TAM to determine e-learning
adoption. An e-learning system which has poor system
accessibility, irrespective of a positive attitude toward
usage and intention to use, the system will not be
usable. The hypothesis for this factor is as follows:
H8: System accessibility (SA) influence perceived
ease of use (PEOU).
H9: System accessibility (SA) influence perceived
usefulness (PU).
3.1.4 Perceived Usefulness
Perceived Usefulness (PU) is the extent to which a user
of any technology believes that using that technology
can facilitate his/her job performance. This is one of
the core constructs of TAM, which has proved a
significant favourable influence on attitude toward
usage and intention to use. How useful faculty and
students perceive the e-learning system will influence
their attitude toward usage and behavioural intention to
use. The hypothesis to evaluate this construct is:
H3: Perceived usefulness (PU) influence attitude to
use (ATU).
The conceptual framework expands the research
questions as follows to achieve the objective of the
study based on the identified hypothesis.
To determine the technology used by schools
Q1: What technologies were adopted by schools?
Q2: What factors influenced the decision to adopt the
technologies?
To examine the effectiveness of these technologies
Continuity of Academic Work through e-Learning during the COVID-19 Lockdown: The Case of Ghana
219
Q3: How effective were the technologies for teaching
and learning?
To determine the extent of use of these technologies
Q4: How were the technologies used for teaching and
learning?
Q5: What were the roles and responsibilities of
faculty and students in using the technologies?
Q6: What were the factors which influenced the use
of technology by faculty and students?
Q7: How useful were the technologies?
3.1.5 Perceived Ease of Use
Perceived ease of use (PEOU) is the extent to which
a person thinks that it is easy to use a particular
technology to perform a task. Existing research shows
that PEOU has a positive influence on attitude toward
usage and perceived usefulness (PU). Similarly, we
are hypothesizing that faculty and students perceived
ease of use of the e-learning system would influence
their attitude toward the use and perceived usefulness
of the system as follows:
H4: Perceived ease of use (PEOU) influence attitude
to use (ATU).
4 METHODOLOGY
4.1 Research Design / Method
To a large extent, the scientific validity of any
empirical study depends on the research design. The
research design is what provides the scientific basis for
interpreting the findings based on a specific philoso-
phical world view. In this study, the survey approach
of research design is used to observe education
institutions adoption of e-learning technology during
the COVID-19 and interpret the findings based on
existing theory. The world view which forms the basis
for this research design is more of post-positivism.
Because of this, the quantitative research strategy of
inquiry is chosen as a means for creating knowledge.
Although there are several stakeholders within the
tertiary education ecosystem, the research was
centred around the three (3) main stakeholders
Students, Faculty and Administrative staff because of
their involvement in the use of the e-learning platform
during the COVID-19 pandemic. This formed the
basis for the population sample, data source and data
analysis. The selected stakeholders who constituted
the participants, performed different roles with the
e-learning platform. Therefore they had different user
experiences, which helped in appreciating their
perspectives.
4.2 Data Source
The population for the study was students, faculty, and
administrative staff from university institutions in
Ghana, which served as the data source. The
participation of members of the population sample was
mainly individual decision and willingness to take part
in the study. Because of this, the sample is convenient
and does not constitute a representative sample of all
the universities in Ghana. The respondents were not
given any incentive for their participation.
4.3 Data Collection Instrument
Google forms was used to prepare an online
questionnaire which was posted on the internet for the
participants to respond. Three (3) different sets of
questionnaires were developed for the various groups
of participants. The sections of the questionnaire
included technology adoption, usage, usefulness, ease
of use and demography, among others. The
questionnaires were all administered at the same time
for a period of six (6) weeks. In all 344 students, 33
faculty and 6 administrative staff responded
representing 90%, 9% and 1% respectively of the
total respondent from nine (9) universities.
5 FINDINGS
5.1 Research Model and Hypothesis
Having discussed the objectives and purpose of this
study, the research model for this study adapts the
Technology Acceptance Model. The model was
adopted to ascertain relationships between the factors
and how it applies to the continuity of academic work
through e-learning during the COVID-19 lockdown.
Figure 2 illustrates the research model:
Figure 2: Research Model for the study. Source: Author.
Perceive
usefulness
Actual
Use
Antecedentfactors
a.SubjectiveNorm
b.Accessibility
c.PriceValue
h2(a, b, c)
h1(a, b, c,)
h4
Attitude
towards
use
h3
h5
Behavioral
Intention
CSEDU 2021 - 13th International Conference on Computer Supported Education
220
Guided by the trust path model, the study
adopted the quantitative survey research
methodology. The tested model comprises seven
constructs, each having multiple items that are
measured using a seven-point the likert scale ranging
from one to seven where 1= strongly disagree | 2 =
disagree | 3 = neutral | 4 = agree | 5 = strongly agree.
Respondents were asked to respond to a series of
questions using the likert scale ranging from one to
seven where 1= strongly disagree | 2 = disagree |3=
neutral |4 = agree | 5 = strongly agree. Table 4.1
illustrated below shows the factors, the number of
items under each scale, reliability assessment of pilot
study using cronbach alpha.
Table 1: Questionnaire Development.
Factors
No. of
questions
Cronbach
Alpha
Subjective Norm 5 0.53
Perceived ease of use 4 0.80
Perceived usefulness 4 0.93
Behavioural intention to use 5 0.91
Accessibility 5 0.81
Attitude towards use 4 0.91
Price Value 4 0.75
Actual use 3 0.86
For the student survey the instrument was divided
into two sections. The first section covered the
demographic details, the second section highlights the
path model of that contains eight factors that include;
Subjective Norm (SN), Perceived ease of use (PEOU),
Perceived usefulness (PU), Behavioural intention to
use (BI), Accessibility (AC), Attitude towards use
(AT), Price Value (PV) and Actual use (AU).
5.2 Demographic Analysis
Out of the 344 valid questionnaires retrieved, the data
showed that 137 respondents were male, representing
39.8% and 207 were female representing 60.2% of
the dataset, respectively. Again from the data set, it
was shown that the age bracket from 25-34yrs
constituted majority of the respondents representing
51.2% whereas the least participating respondents
were the 45 -54 ae bracket representing 1.7% of the
data set. In terms of different programmes that the
respondents belonged to within the education sector,
it was also shown that e-learning was prevalent within
the Humanities field since it constituted 49.1%,
followed by them were those that belonged to the
Health Sciences field, which constituted 31.1%
respectively. The least percentage of respondents in
the data set was from the Education sector, which
constituted 0.3%.
Furthermore, the dataset received more
respondents from private universities than public
ones. From the data, 276 of the respondents from the
private universities constituted 80.2% of the
respondents, whereas 68 respondents representing
19.8% of the dataset were from public tertiary
institutions. Again, from the Covid-19 period, 37
respondents from tertiary institutions representing
only 10.8% admitted to have used more than five (5)
technological platforms for virtual learning. 25.6%
represented by 88 respondents did not use
technology-enabled learning at all. However, more
than 43.9% represented by 151 respondents form
tertiary institutions used between 2 and 3 technology
platforms for teaching and learning.
In terms of contact hours for e-learning, 60.8% of
the respondents admitted that the maximum contact
hours used for virtual learning was 1hr 30 mins per
lecture, whereas 9.3% of the respondents that their
maximum contact hours were less than 30mins of
lecture but 27.9% of the respondents admitted to have
had maximum contact hours from between 30 to
60mins.
5.3 Measurement Model
The Confirmatory Factor Analysis (CFA) was used as
an assessment of fit to ascertain dimensionality and
internal consistency for construct measurement. CFA
is applied to confirm a good representation of the
proposed items of constructs and the conceptual
model (Hair, Ringle, & Sarstedt, 2011). Hence, the
essence of a CFA test is to ascertain whether the
proposed research model and the data collected are
consistent or agree together in simple terms. About
this study. The fit statistics values for the structural
model were all within acceptable limits. The
minimum discrepancy or χ
2
(Chi-square) = 176.7, df
(Degree of Freedom) = 329, the Standardized Root
Mean Square Residual (SRMR) = 0.04, Root Mean
Error of Approximation (RMSEA) = 0.05, χ
2
/df ratio
= 1.74, Comparative Fit Index (CFI) = 0.98,
Goodness Fit index (GFI) = 0.94, Incremental Fit
Index (IFI) = 0.98, Tucker-Lewis Index (TLI) = 0.97
and Normed Indices of Fit (NFI) = 0.95.
5.4 Structural Model
In assessing the structural model, the data should
support the model’s specified theoretical relation-
Continuity of Academic Work through e-Learning during the COVID-19 Lockdown: The Case of Ghana
221
ships (Bagozzi & Yi, 2012). The hypothesis testing
was conducted in these parts; Hypotheses 1(a, b, c);
to assess the relationship between perceived
usefulness(PU) and its antecedent factors;
Hypotheses 2(a, b, c); to assess the direct
relationships between the Subjective Norm(SN),
Accessibility (AC), Price Value (PV) and Actual Use
(AU) respectively. Hypotheses 3; assesses the
relationship between Price value (PV) and Actual Use
(AU); Hypothesis 4, assesses the relationship
between Attitude towards Use (AT) and Behavioural
Intention to use (BI); and lastly, Hypothesis 5,
determines the relationship between Behavioural
Intention to use (BI) and Actual Use (AU). The
results revealed that except for the relationship
between SN and PU, SN and AU, PV and AU, all the
other relationships were found to be significant. This
implies that apart from H1a, H1c H2a, and H2c, all
the other hypothesis H1b, H1c, H2b, H3, H5, H5, H6
were all significant. Hence, path analysis of the
structural model as shown in Table below.
Table 2: Indices for the structured model.
Hypothesized Path
Standardized
Coefficients
t-value p-value Results
H1a: Subjective Norm
- Perceived Usefulness
0.18 0.219 0.827 Unsupported
H1b: Accessibility-
Perceived Usefulness
0.64 7.76 *** Supported
H1c: Price Value -
Perceived Usefulness
-0.29 .583 .827 Unsupported
H2a: Subjective
Norm-Actual Use
0.11 5.8 0.12 Unsupported
H2b: Accessibility-
Actual Use
0.20 5.8 *** Supported
H2c: Price Value -
Actual Use
0.002 0.29 9.77 Unsupported
H3: Perceived
Usefulness – Attitude
towards Use
0.88 15.79 *** Supported
H4:Attitude Towards
Use - Behavioral
Intention to Use
0.90 11.53 *** Supported
H5: Behavioral
Intention to Use -
Actual Use
0.50 9.83 *** Supported
*p< 0.05, **p < 0.01, ***p <0.001
5.5 Mediation Analysis
As indicated in the table below, by using Baron and
Kenny approach the results produced no mediation
and partial mediation. From the table below, three
main mediators of the model were assessed. These are
perceived usefulness and Attitude towards Use and
Behavorial Intention to Use. As shown from below it
was found that PU produced a No Mediation between
Subjective Norm and Attitude. Again PU also
produced a No mediation between Price Value and
Attitude towards Use.
Table 3: Mediation Effect.
Relationships
Direct
without
mediator
Direct
with
mediator
Mediation
effect
Subjective Norm →
Perceived Usefulness →
Attitude towards use
0.037(0.64) 0.23(0.68)
No
Mediation
Price Value → Perceived
Usefulness → Attitude
towards Use
0.006(0.9) 0.038(0.4)
No
Mediation
Accessibility →
Perceived Usefulness →
Attitude towards Use
0.67(***) 0.26 (***)
Partial
Mediation
Perceived Usefulness →
Attitude towards Use →
Behavioural Intention to
Use
0.86(***) 0.91(***)
Partial
Mediation
Attitude towards Use →
Behavioural Intention to
Use → Actual Use
0.62(***) 0.68 (***)
Partial
Mediation
*p< 0.05, **p < 0.01, ***p <0.001
Source Author.
Figure 3: Final Structural Model for Antecedents’ Factors
and Outcome of Trust.
From the figure above, it can be deduced that,
when e-learning was introduced, the strongest
relationship amongst the factors was perceived
usefulness and attitude towards use. This means that
once, tertiary institutions and it stakeholders realize
that a technology or virtual platform is useful, it will
influence their attitude towards using. As it can be
Perceived
Usefulness
Actual
Use
Subjective
Norm
Price
Value
Accessibility
-0.29 ns
0.64***
0.2 ns
Attitude
towards
Use
Behav-
ioural
Intention
0.88***
0.50***
0.90 ***
0.67(***)
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seen that the relationship between perceived
usefulness and attitude towards use is 0.9 with
significance. Secondly, accessibility remains the
strongest determinant to perceived usefulness.
Accessibility is the only factor that has a strong
positive influence on perceived usefulness. Secondly,
it is the only factor that directly has a strong
relationship with Attitude towards use without a
mediator. From then on, it is clearly seen that PU has
a strong positive relationship with AU with a
significant value of 0.88, AU also has a strong
positive relationship with BI with a value of 0.90 and
BI also has a moderate relationship with the resultant
variation with a regression weight of 0.50.
χ
2
(Chi-square) = 176.7, df (Degree of Freedom) = 113, SRMR
= 0.03, RMSEA = 0.95, χ
2
/df ratio = 1.56, CFI = 0.98, GFI =
0.95, IFI = 0.98, TLI = 0.98 NFI = 0.96
Figure 4: Stage One: Measurement Model.
6 CONCLUSIONS
In conclusion, the study shows that accessibility has
direct positive influence on both perceived usefulness
and attitude toward use. The main constructs
perceived usefulness and attitude towards use also
showed strong relationship toward behavioural
intention to use. The findings provide a clear
relationship between SN and PU, SN and AU, PV and
AU, and further shows that all the other relationships
are significant. Therefore, it implies that hypothesis
H1b, H1c, H2b, H3, H5, H5, and H6 are significant.
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