Electronic
Learning Effectiveness Determinants Management Essay
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E-learning presents advantages as well for trainees that for
organisation. The purpose of this research is to discover determinants of
effective online training. The different theoretical currents treating the
behaviour of individuals towards the technological innovation utilization
permit to identify variables that determine the efficiency of e-learning. In
this setting, we made reference to five theories that are: motivation theory,
social cognitive theory, media richness theory, technology acceptance theory
and structure theory. This study is focused on a model elaborated by Lim and al
(2007). This model contains individual, conception, technological and
environmental factors. Empirical study is conducted on Tunisian 410 employees'
sample. Factor analysis and structural equations were used. Results suggest the
importance of motivation, face- to- face meeting, e-mail exchange, easy of use,
contents of training, seniors' support and continuous learning culture for
learning performance. Learning performance, in turn, affects transfer
performance.
Keywords: e-learning, effectiveness, structural equations
INTRODUCTION
Today, the obstruction for the knowledge and the training is
attached to the problematic of the innovation: « learn because it's
necessary to enhance competitiveness". Recently, organizations have
recognized that professional training program is an important means of success
procuring competitive advantage in today's economy. In fact, employees are the
interior customers of the organization that it's necessary to be careful to
satisfy in renewing their knowledge, their knowledge to make and their
knowledge to be. Such investment in the employees' skill development cannot be
provided that by "the reengineering of the training". Technology
information has increased dramatically in the last years and has contributed to
the growth in technology - delivered instruction as an important education
method.
In recent years, the academic research and reviews increase.
More specifically, the scientific conferences have published e-learning studies
in the ambition to understand the impact of learning across different types of
delivery on the employees' performance on the one hand, and the competitiveness
of organization on the other hand. Moreover, the academic research on
e-learning effectiveness becomes one of the current themes (Lim & al, 2007).
To address the question of e-learning effectiveness, this study
examines the variables that contribute to enhance training performance and
transfer to job. Specifically, the present research refers to the model
developed by Lim & al (2007) to test its validity in the Tunisian context.
Thus, this research contributes to the literature on e-learning, by studying
the validity of variables of training programs that increases e-learning
effectiveness. In this way, we seek to identify their effects on learning performance
and transfer performance (Lim & al, 2007). Moreover, we seek to provide to
employers' a setting of analysis and comprehension of factors that affect
employees' training effectiveness.
Conceptual model and
hypotheses
A review of related research lead to identification of training
effectiveness dimensions. This dimensions are " the trainee, training
content, level of communication between trainer and trainee, ease of use of
online website resources, and the organizational environment" ( Lim &
al, 2007, p 23). In this setting, we adopted the model constructed by Lim &
al (2007) in order to test his validity in Tunisian context.
These dimensions are based on motivation theory, social
cognitive theory, media richness theory, technology acceptance theory and
structure theory. The theoretical model is shown by figure 1:
Motivation
H 1-2
H 1-1
Self efficacy
H 2-2
Contents of training
H 2-1
H 3-2
H 3-1
Face to face meeting
Learning performance
Transfer performance
H 4
H 9
E-mail exchange
H 5
H 6
Easy of use
H 7-1
Seniors' support
H 7-2
H 8-1
H 8-2
Continuous learning
culture
Figure 1: e-learning effectiveness model (Lim et al, 2007, p 27)
Individual factors: motivation and self efficacy
1 Motivation
Motivation has been defined as the degree to which trainees is
willing to make efforts to enhance his or her performance of learning and work
(Mitchell, 1982; Meyer& Becker, 2004). Moreover, Noe (1986) defined
motivation as the specific desire of employee to learn program content.
Previous research demonstrated that the motivation to learn predict learning
outcomes and is influenced by both individual and situational factors (Noe,
1986; Mathieu & al, 1992, 1993; Martocchio & Webster, 1992; Quinones,
1995; Colquitt & al, 2000).Moreover, several studies associated the
motivation to learn to the training effectiveness; we can mention the research
of Mathieu, Tannenbaum and Salas (1992), in this study emotional responses to
the program, moderate the relation between motivation to learn and learning. In
fact, more trainees express more positive emotional responses, more the
relation between motivation to learn and learning will be strong. Colquitt
& al (2000) argued that this construct is correlated to skill acquisition.
Motivation to transfer has been defined as the desire of
employees to use program content to work performance after training (Noe,
1986). Therefore, motivation to transfer plays a relevant role on the learning
performance and the change of employees' behaviour after training (Noe, 1986;
Holton, 1996; Yamnill& Mcclean, 2001).
Self efficacy
Self efficacy has been shown to influence the behaviours of
individuals towards the execution of actions. Moreover, self efficacy is an
individual's belief about his or her capacity to mobilize the resources
requisite for successful task performances (Bandura, 1986). According to social
cognitive theory (Bandura, 1986), self efficacy is postulated to influence
performance in interpersonal skills training (Gist, Stevens & Bavetta,
1991), in military training programs (Eden & Ravid, 1982; Tannenbaum &
al, 1991), in computer software training (Gist, Schwoerer, & Rosen, 1989),
and home page design training course ( Chau & Wang, 2000).
Mathieu, Martineau, Jennifer & Tannenbaum (1993) found that
individual antecedents of self efficacy (initial performance, achievement
motivation and choice) influence self efficacy development. In this context,
the authors found that self efficacy influence trainee reactions and
performance improvement during training. Hill, Smith & Mann (1987) examined
the relationship between self efficacy and the readiness to use computers.
Results indicated that efficacy beliefs predict the behavioural intentions
related to learning about computers. Moreover, Latham & Frayne, (1989)
found the relationship between self efficacy and performance both during
training and nine months after the completion of training. In the study, the
researchers showed that training could increase the perceived self efficacy of
unionized workers, and that the higher the perceived self efficacy of these
unionized workers, the better their subsequent job performance.
Ford, Quinones, Sego and Sorra (1992) examined the effects of
individual characteristics on type of tasks performed after four months on the
job. The researchers concluded that individuals high in self efficacy were more
likely to perform more of the tasks for which they were trained. This study
intends to verify the relationships between trainees' learning motivation and
computer self efficacy and the effectiveness of e-learning.
The following hypotheses are the same developed by Lim & al
(2007).
H1: The higher the trainee's motivation for online training, the
higher their learning effectiveness.
H1-1: The higher the trainee's motivation for online training,
the higher their learning performance.
H1-2: The higher the trainee's motivation for online training,
the higher their transfer performance.
H2: The higher the trainee's computer self efficacy regarding
online training, the higher learning effectiveness.
H2-1: The higher the trainee's computer self efficacy regarding
online training, the higher their learning performance.
H2-2: The higher the trainee's computer self efficacy regarding
online training, the higher their transfer performance.
Conception determinant: training content
1.2.1. Training content
The content of training has been introduced in the model
developed by Baldwin and Ford (1988) as independent variable that influence
directly on learning and retention. Training content indicate the instructions,
knowledge and skills conceived by inventors of training program to be taught to
trainees' during the period of training. Moreover, training content must
reflect trainees' knowledge needs for the job performance. In this setting,
Moore & Dutton (1978) argued that the training needs analysis is an
indispensable function to the development of the training content. Besides,
several studies put the accent on the importance of the trainees' choice of
training content to improve learning results. For example, Hicks & Klimoski
(1987) conducted a field experiment in which they manipulated trainees' choices
concerning whether to perform a training program. The results showed that
trainees' who were given a choice performed better on an achievement test, as
compared to trainees' who were not given a choice of whether to perform the
program. Similar results have been obtained by Baldwin & al (1991). Holton
(1996) specified the importance of the training content for work practices. He
further argued that a reason of the failure of the training transfer into
workplace is that the content of the program doesn't provide the ability to
generalize learning. He argued that the cognitive training can occur well but
trainees' cannot have opportunity to practice what they taught to perform job
tasks or same they didn't educate the manner with which they exploit what they
taught to their work.
H3: The more related the online training content is to actual
work practices, the greater will be the effectiveness of the online training.
H3.1: The more related the online training content in to actual
work, the greater will be the trainees' learning performance.
H3-2: The more related the online training content is to actual
practices, the greater will be the trainees' transfer performance.
1.3. The technological determinants of the training
1.3.1. Communication between trainer and trainees
Most of the research on the level of interaction that takes
place between the trainer and trainees demonstrated that the success of
training program depends on the qualifications, the attitudes and the efforts
of the trainers. A trainer must be competent regarding the knowledge and skills
required to provide the training program. Therese & al (1985) considered
the learning process as a function of communication. The researchers
established that the academic success depends on the level of interaction
between the trainer and the trainees. Thus, the trainer must be able to
mobilize effectively the needs of trainees', provide suitable solutions and
create an appropriate atmosphere facilitating the discussion with trainees.
Therefore, the respond to trainees' needs and the level of verbal and non
verbal communication that takes place between the trainer and trainees leads to
greater training effectiveness. Piccoli & al (2001) find that virtual
training environments provide materials that facilitate interaction between the
trainer and trainees that reinforce their training effectiveness. Daft & al
(1987) classify communication media in order of decreasing richness, face-to-face,
telephone, personal documents (e.g., letters or memos), impersonal of
unaddressed documents (e.g., reports, bulletins, etc), and numeric reports
(e.g., spread sheets). Face to face is considered the richest medium; it
provides immediate feedback between trainer and trainees'. Moreover, face to
face provides the opportunity of a simultaneous communication of multiple cues
via tone of voice, message content and content of eyes. Lim & al (2007)
suggested that face to face communication permits better problem-solving,
sincere interest and immediate feedback without ambiguity. E- mail
communication it allows trainees to receive immediate feedback at any time and
any place. Besides, Leidner & Jarvenpaa (1995) mentioned the importance of
e-mail communication between the trainer and trainees. Specifically, the
researchers considered e-mail to be a very useful method when the number of
trainees is roughly 30 more.
1.3.2. Ease of interaction process
The investment in applications of information technology (e.g.
e-learning) can derive to productivity gains if they are accepted and used by
the end-users (Venkatesh, 1999, 2000). Several theoretical models put the
accent on the importance of trainees' perceptions of ease of use, which have
proven successful in predicting and explaining actual intention and usage
behaviour across business areas (Davis, 1989; Davis & al, 1989). In the
context of the online training environment, Ngai & al (2007) argued that
technical support present a meaningful direct effect on the perceived ease of
use of learning material. Moreover, Zhang & Zhou (2003) developed a system
"e-learning" based on the multimedia. They found that this system is
interactive, facilitating the communication between trainees and virtual
trainers. Authors argued that, to improve training effectiveness, online
training environment must provide a structural support to multimedia
instruction and predict the learning performance. Piccoli & al (2001)
suggested that virtual training environment must facilitate communications
between physically and geographically separated trainees. They suggested, text,
hypertext, graphics, computer animations, dynamic content as a part of ease of
interaction design between system and trainees. Similarly, Leidner &
Jarvenpaa (1995) proposed debate rooms, three dimensional virtual rooms and
simulations as a part of ease of interaction between training material and
trainees. Zhang & al (2006) argued that trainee performance can be captured
when they can use an interactive video system providing an appropriate
interaction. Therefore, the following hypotheses are:
H4: The more frequent face to face interaction between the
trainer and trainees, the more effective will be online learning performance.
H5: The more frequent e-mail exchanged between trainer and
trainees, the more effective will be online learning performance.
H6: Online training programs that are perceived to be easy to
use will contribute to greater learning performance.
1.4. Training environment determinants
1.4.1. Supervisor support
Supervisor support for training has been introduced as a key
learning environment variable affecting the training effectiveness. Thus,
supervisor support refers to the extent to which supervisors reinforce and
support learning program achievement and transfer to the job. Supervisors are
usually responsible for assistance, control and the means encouraging the
trainee to learn and transfer trained skills to the job. Much research suggests
that supervisors and managers support have a direct impact on trainees'
behaviour. Thus, trainees look to their supervisor for guidance on how to learn
and transfer new skills to the workplace (Baldwin & Ford, 1988). Baldwin
& Ford (1988) argued that trainees who perceived that a training program is
important to the supervisor will be more motivated to attend and success
training program. In this context, Tracey & al (1995) concluded that social
support plays a central role in training transfer. Moreover, Tracey & al
(1995) argued that a positif organizational environment predicts the
application of behaviours learned by trainees to workplace. As well, when
learning occurs during training, the training transfer climate may either
support or inhibit the application rate of newly learned skills and knowledge
on the job (Mathieu, Tannenbaum, and Salas, 1992). These studies suggest that
an environmental factor is essential for supporting the transfer of new skills
to the job context.
1.4.2. Continuous learning culture
Continuous learning is "one in which organizational members
share perceptions and expectations that learning is an important part of
everyday work life" (Tracey & al, 1995, p 241). Tracey & al (1995)
argued that perceptions and expectations constitute an organizational value and
belief. Value and belief are influenced by a variety of factors like job
challenge, social support, competitive work setting, etc. (Tracey & al,
1995). In this way, this idea give information about the ultimate relation
between continuous learning culture dimensions, learning performance and application
of new knowledge and skills on the job.
Tracey, Tannenbaum, & Kavanagh (1995) examined the influence
of transfer climate and continuous learning culture on training and transfer of
newly trained skills. Participants were 505 supermarkets managers. Continuous
learning culture was found to be related to post training behaviour. In this
study, Tracey & al (1995) concluded that continuous learning culture
appears to play a significant role in the learning effectiveness. The argument
that organizational learning culture affects training effectiveness has been
proved by Bates and khasawneh (2005). The relationship between organizational
environment and training effectiveness is significantly central in the
e-learning environment and leads to the associate hypotheses (Lim & al,
2007):
H7: The more support trainees receive from their seniors, the
better training effectiveness will be achieved.
H7-1: The more support trainees receive from their seniors, the
better learning performance will be achieved.
H7-2: The more support trainees receive from their seniors, the
better transfer performance will be achieved.
H8: More reliable continuous learning culture will be lead to
better training effectiveness
H8-1: More reliable continuous learning culture will lead to
better learning performance.
H8-2: More reliable continuous learning culture will lead to
better transfer performance.
1.5. Training effectiveness
Alliger & al (1997) point out the importance of training
effectiveness. They argued that the training effectiveness model needs to
include many more variables than are typically included in a taxonomy advanced
by Kirkpatrick. Lim & al (2007) suggested that trainee reaction and
learning are studied as central indicators of training outcomes. However, they
considered that these variables are no appropriate indicators of the final
outcome of training programs. Therefore, a suitable evaluation of training
outcomes is made by measuring the relationships between learning goals
achievement and behaviour change on the job (Kraiger, Ford, & Salas, 1993).
As well, the integration of training program within an organization must
improve the performance of this last. Therefore, trainees in charge must
perform training program and transfer new knowledge, skills and behaviour learned
during training (Lim & al, 2007).
Baldwin & Ford (1988) elaborated an integrated model on the
process of learning and transfer (Lim & al, 2007).They defined learning
effectiveness as the quantity of knowledge , skills and behaviour learned in a
training session and their effective application by trainees to their job.
According to them, trainees must understand, achieve and remember what was
taught during training, and consequently incorporate their newly knowledge and
behaviour learned on the job. Therefore, learning performance (learning and
retention) affects transfer performance. Several researchers (e.g. Baldwin
& Ford, 1988; Kraiger & al, 1993) suggested that retention score or the
maintenance of training content is a good measure of learning performance.
Alliger & al (1997) argued that learning performance has a significant
impact on transfer performance. Moreover, Colquitt & al (2000) argued that
learning outcomes (e.g. knowledge acquisition, reactions) affect directly
knowledge transfer into daily routines. Based on previous research, the
relationship between learning performance and transfer performance is
hypothesized as associate:
H9: The higher the trainees' learning performance, the higher
their transfer performance.
2. Research method
The empirical validity study of theoretical model of e-learning
effectiveness has been conducted close to 410 employees of nine Tunisian
enterprises. The choice of these enterprises has been guided by two
considerations. For this research, we used a semi- structured interview format.
The result showed that nine enterprises are the more advanced concerning
e-learning among the contacted enterprises. Moreover, they display a
significant budget for training in general and for online training in
particular.
2.1. Sample and questionnaire of research
Participants were 410 employees, which the proportion of males
to females is 55.1 percent to 44.9 percent. Participants varied in age between
20 and 29 years. The mean seniority of participants varied between 10 and 20 years
with dominance of administrative post (62.9%). The questionnaire include 41
items measured by a five point Likert scale response to determine how strongly
respondents agreed or disagreed with each item (1= strongly disagree and 5 =
strongly agree). In order to clarify the items, the questionnaire has been
pre-tested close to twenty employees. No difficulty of understands has been
found and therefore no modification has been introduced to the questionnaire.
2.2. Definition of variables and items for the measures
2.2.1. Motivation
"Learning motivation of trainees is the desire or
aspiration to acquire the knowledge from the online training program" (Lim
& al, 2007, p 28). In order to measure motivation, two items were adopted
from Hicks & Klimoski's (1987) survey. Statements such as "I gave 100%
effort to learn during online training» were used. One item was adopted from
Holton & al (2000). Participants indicated their degree of motivation to
use newly knowledge and skills to job.
2.2.2. Computer self -efficacy
"Self efficacy is based on the trainee's perception of
their ability to carry out a series of tasks using a computer and to cope with
any difficulties regarding use" (Lim & al, 2007, p 28). In order to
measure self efficacy, four items were adopted from Compeau & Higgins
(1995). Statements such as "I feel confident in my ability to use a
computer", and "I'm sure I can use a computer by referring to the
instruction manual" were used. The fifth item was adopted from Holton &
al (2005). Employees were asked to respond to the following statement "I'
am confident in my ability to use newly learned skills on the job".
2.2.3. Training content
Training content refers to knowledge, skills and behaviour
taught during the training program. Three items were adopted from Nehari &
Bender (1978). For example employees were asked to respond to statements such
as "The online training content included important basis knowledge",
and "The online training content covered domains where I have the more
need to be formed" were used. The fourth item was adopted from Holton
& al (2000). Employees were asked to indicate whether the training content
helped them ameliorate the job related tasks performance.
2.2.4. Face to face meeting
The level of face to face interaction between trainers and
trainees was measured through four items adopted from leidner and Jarvenpaa
(1995). For example, employees were asked to respond to statements such as
"I was encouraged to have face to face meeting with my instructors out
side of online training", and "I met with one or more instructors
during training program" were used.
2.2.5. E-mail communications
E-mail communication was also measured using four items from
Leidner & Jarvenpaa (1995). Statements such as "The instructors
communicated with me via e-mail", and "I was encouraged to interact
with instructors in order to resolve my questions regarding the online
training" were used.
2.2.6. Ease of use
Ease of use was measured through three items. Thus one item was
adopted from Davis (1989). Participants indicated the degree of easiness and
comprehension of online resources. Two items from Leidner & Jarvenpaa
(1995) were used. Example of statement includes "The response speed of the
educational training system was fast enough to carry out the online
training".
2.2.7. Support from supervisors
Support from supervisors was measured through five items. Thus,
four items were adopted from Tracey & al (1995). Statements such as
"Supervisors guided me on how to apply the training to my work", and
"Supervisors encourage me to attend educational training programs"
were used. One item was adopted from Holton & al (2000). Participants were
asked to respond to statement such as "My supervisor sets goals for me
that encourage me to apply my online training on the job".
2.2.8. Continuous learning culture
Continuous learning culture was measured through five items
adopted from Tracey & al (1995). Statements such as "Learn new ways to
achieve job tasks is valorised in our enterprise", and "Job tasks are
conceived to encourage employees' development" were used.
2.2.9. Learning performance
Learning performance refers to what degree the trainees learn
and improve through the training program in terms of knowledge, skills and
behaviour for the job tasks (Lim & al, 2007). Statements such as "I
have learned important knowledge through this online training program",
and "I believe that I've learned better than the others "were used.
2.2.10. Transfer performance
Trainees' performance of transfer refers to how the trainees
applied the newly knowledge and skills learned during training sessions to
their job tasks (Lim & al, 2007). Transfer performance was measured using
four items from Holton & al (2000). Statements such as "The activities
and exercises learned during training program helped me to apply my learning on
the job", and "I' am using what I learned from the training in my
daily work".
2.3. Data analysis and results
2.3.1. The factorial analysis
For the assessment of dimensionality, reliability and validity,
exploratory analysis and confirmatory analysis was performed on each concept
using SPSS 15.0 and AMOS 7.0. Reliability and the internal consistency of items
have been assessed through crombach's alpha situated between 0.7 and 0.85.
Table 1 shows the results of the reliability test.
Table 1: Results of reliability test
variables
Number of items
Crombah's alpha
value
Training effectiveness
Learning performance
Transfer performance
Individual variables
Motivation
Computer self efficacy
Conception determinant
Training content
The technological
determinants of the training
Face to face meeting
E-mail communication
Easy to use
Training environment
determinants
Supervisor support
Continuous learning
culture
4
4
3
4
4
4
4
3
5
5
0.761
0.813
0.845
0.739
0.825
0.893
0.936
0.766
0.879
0.741
The fitness of the research model has been assessed using AMOS
7.0. Fitness indices can be considered satisfactory and suggests the good fit
of the model. Incremental indices are nearly highly acceptable, despite the
fact that fitness indices NFI remains slightly lower to 0.9 (= 0.872).
Parsimony indices reaffirm the good adjustment, through a PNFI = 0.771 and X2 =
2.307 < 5. Besides, the absolute indices confirm an acceptable adjustment
resulting in RMSEA = 0.057 nearly 0.05; GFI = 0.857 nearly 0.9; AGFI = 0.829
nearly 0.9; Hoelter.05 index = 197 nearly 200; and Hoelter.01 index = 206 >
200. Therefore, the fitness of the research model is considered satisfactory.
2.3.2. Results of hypothesis verification
The results of the hypothesized model has been verified and
assessed by using AMOS 7.0. Each hypothesis has been verified by measuring
values of standard path, being assessed on the basis of statistical
significance of t value. From this perspective, the factors influencing
trainees' learning performance are motivation (t value = 2.295; standard path=
0.125), contents of training program (t value = 7.890; standard path = 0.728),
face to face meeting between supervisors and trainees ( t value = 2.080;
Standard path = 0.081), e-mail communication ( t value = 2.849; standard path =
0.116); ease of use ( t value = 3.123; standard path = 0.148); support from
supervisors ( t value = 5.842; standard path = 0. 386); Continuous learning
culture ( t value = 3.680; Standard path = 0.224). Factors influencing trainees'
transfer performance include learning performance (t value = 4.338; Standard
path = 0.9). Final research model is shown in figure 2:
Motivation
Contents of training
0,125Â ;
(2,295)
0,728Â ; (7,890)
Face to face meeting
0,081Â ;(2,080)
Transfer performance
E-mail exchange
0,900Â ;
(4, 338)
0,116Â ;
(2,849)
Learning performance
0,148Â ;
(3,123)
Easy of use
0,386Â ;
(5,842)
0,224Â ;
(3,680)
Seniors' support
Continuous learning
culture
Figure 2: Final model of e-learning effectivenes
3. Discussion and
conclusion
The purpose of this study was to examine online training program
factors to improve e-learning effectiveness. Motivation, self efficacy,
contents of training, face to face meeting, e-mail exchange, easy of use,
senior's support, and continuous learning culture were all explored as possible
factors that explain learning performance and transfer performance. The
research results are as follows.
For Tunisian employees, motivation influences learning
performance. Nevertheless, trainees' learning motivation is a relatively no
important variable in learning performance (learning motivation - learning
performance: standard path = 0.125). This result means that employees can be
motivated in be registered with the online course as curiosity or to point out
themselves (image of one self). Moreover, this result means that trainees'
learning motivation can decrease little by little with the advance of training
sessions. However, the research result does not suggest any positive
relationship between the motivation and the transfer performance. That is
trainees' learning motivation has a relatively weak and negative effect in
transfer performance (learning motivation - transfer performance: standard path
= - 0.071). Thus, the use of newly knowledge at work is not explained by the
employees' motivation but rather by the need to apply new knowledge, skills and
behaviours for the performance of the required tasks. These results contradict
those found by Lim & al (2007). The authors showed the important effect of trainees'
learning motivation on learning performance (Standard path = 0.427) and on
transfer performance (Standard path = 0.509). Moreover, several other
researchers showed that motivation is an important predictor for the training
effectiveness (Noe, 1986; Mathieu & al, 1992, 1993; Colquitt & al,
2000). In order to emphasize the positive effect of the trainees' learning
motivation on e-learning effectiveness, it would be interesting for the human
resources responsible to predict several modes of motivation such as: rewards,
evolution in the rank with a certain qualification level.
In addition, the effect of the self efficacy on e-learning
effectiveness was not supported. This result means that trainees who believe
more in their abilities and aptitudes to use the computer tools to achieve the
desired purpose will not be inevitably most likely to perform training tasks to
become more operational for the use of newly knowledge and skills in the daily
routines of job. By contrast, Lim & al (2007) showed that self efficacy
affect partially e-training effectiveness. According to them, self efficacy
seem to positively affect online learning performance, but trainees' computer
self efficacy has no effect on transfer performance. The significant
relationship between trainees' computer self efficacy and training performance
was shown. (Compeau & Higgins, 1995; Wang & Newlin, 2002). Moreover,
the importance of self efficacy for the transfer performance was shown (Latham
& Frayne, 1989; Martocchio, 1994). Thus, the control of the computer tools
does not constitute a handicap for the Tunisian employees since they daily use
it for the performance of their tasks.
The study also showed that training content constitute an
important variable in learning performance (Standard path = 0.728). Thus, the
purpose of a training program is the development of task-related content which
satisfy the employees' needs. This result is in accordance with several
researchers such as Ford & Baldwin (1988), Hicks & Klimoski (1987), Baldwin
& al (1991), Lim & al (2007). However, in this study, task - related
content affects negatively and weakly transfer performance. These results
differ from several researchers such as Ford & Baldwin (1988), Ford &
al (1992), Holton (1996), Alliger & al (1997), Lim & al (2007). In this
setting, Holton (1996) suggested that a cause of failure of the application of
newly knowledge and skills on the job is that the task related content does not
guarantee the capacity to transfer the training. Moreover, trainees can learn
contents which are no adapted of the effective execution of the missions
required at work.
The social interactivity between trainees and trainers exert a
positive effect on the learning performance. Lim & al (2007) point out the
importance of face to face meetings between trainees and trainers in increasing
learning performance. Moreover, several other authors showed the importance of
face to face meeting and e-mail as rich means of communication and confirmed
their impact on the training performance. (Daft & al, 1987; Leidner &
Jarvenpaa, 1995).
The site's ease of use affects positively learning performance.
Consequently the higher online site is clear, comprehensible and convivial,
fewer efforts are required for trainees and better it will tend to achieve
learning performance. This result is in accordance with several researchers
such as (Piccoli & al, 2001; Zhang & Zhou, 2003; Zhang & al, 2006).
The research revealed the importance of supervisors' support in
learning performance. This result is in accordance with several researchers
such as Noe (1986), Baldwin & Ford (1988). However, unlike Baldwin &
Ford's (1988) research, this study does not attest the effect of supervisors
support on transfer performance. However, this result can show that the effect
of the supervisors' support on transfer performance is an indirect effect
carried out through the learning performance since the employees are obliged to
use newly knowledge, skills and behaviours to suitably carry out the missions
requested by their supervisors.
The idea regarding continuous learning culture for effectiveness
is partially supported. Thus, continuous learning culture does not affect
transfer performance, but rather affect learning performance. Continuous
learning culture does not have a direct effect on transfer performance, but
this effect is carried out indirectly through learning performance. This result
implies the need for the human resources responsible must take care of the fact
that the employees develop and share common standards between them.
Finally, the effect of learning performance on the transfer
performance is significant (Standard path = 0.9). This result is in accordance
with several researchers such as Baldwin & Ford (1988), Holton (1996),
Alliger & al (1997), Colquitt & al (2000), Alvarez & al (2004), Lim
& al (2007). These results seem to be crucial for e-learning effectiveness
since the relationship between the two dependent variables was checked.
Limitations and Future research
In spite of the lightings brought by the results of this
research and the managerial implications which result from this, some limiting
are to be announced. The choice of the model of the e-learning effectiveness of
Lim & al (2007) seem to be reducing. This choice was guided by a review of literature
on the e-training effectiveness determinants and the analysis of interview
content. Thus, the number of evaluated explanatory variables remains restricted
by considering the whole of the possible factors. Moreover, regarding the
transverse character of the study, the change of the employees' behaviours
towards the learning performance and transfer performance through time could
not be measured. A longitudinal study could, for this purpose, to better
delimit the determinants of e-learning effectiveness and their stability
through time. Moreover, the scale measuring the self efficacy could be
improved, in order to avoid the elimination of this variable during the
confirmatory analyses, and to consequently better determine its role in
e-learning effectiveness.
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