262
-.834 (-30.524
***
)
-.875 (-32.715
***
)
R
2
= 96%
R
2
= 70%
R
2
= 77%
R
2
= 76%
Figure 5.3 Structural Model with Control Variables Showing Results of Analysis
Note: *** p < 0.001, ** p < 0.01 , * p < 0.05
-.563 (-13.918
***
)
Consumer-related characteristics
Internet Access Availability
Perceived Internet Expertise
Online Buying Frequency
Online store- and product-related
characteristics
Product Quality Concern
E- Service Quality
Reputation of Online Store
Online channel-related
characteristics
Perceived Convenience
Privacy and Security Concerns
Perceived
Consumer TCs of
Online Shopping
Online
Purchase
Behaviour
Customer
Satisfaction
Customer
Loyalty
-.116 (-5.851
***
)
-.052 (-2.948
**
)
.048 (1.945)
.057 (2.330
*
)
-.482 (-9.041
***
)
-.074 (-3.003
**
)
-.228 (-9.072
***
)
.334 (8.854
***
)
Age
Gender
Income
Education
.023 (1.407) -.008 (-.590)
-.007 (-.458)
-.011 (-.735)
-.087 (-4.239
***
)
263
5.7.2 Test of Causal Research Hypotheses
When controlling for age, gender, income and education
level of online shoppers in
predicting consumer TCs, the results in Table 5.21 indicated that Internet access available
(H1a) significantly affected consumer TCs (
β
= -.052, t = -2.948), thereby supporting H1a.
Hypothesis 1b explicated the negative impact of perceived Internet expertise on consumer
TCs. The results showed that consumer transaction costs was significantly influenced by
perceived Internet expertise (
β
= -.116, t = -5.851). Thus, H1b was supported. Hypothesis 1c
postulated the negative association between online buying frequency and consumer TCs.
Results indicated that online buying frequency significantly affected consumer TCs (
β
= -
.228, t = -9.072), thus confirming H1c. H2a predicted a positive relationship between product
quality concern and consumer TCs – this was supported (
β
= .057, t = 2.330). Also, as
expected, e-service quality had a significant and negative impact on consumer TCs (
β
= -.482,
t = -9.041), thus supporting H2c. As predicted in H2d, reputation of online store had a
significant and negative influence on consumer TCs (
β
= -.074, t = -3.003),
providing support
for H2d. The results also show that perceived convenience significantly negatively
influenced consumer TCs (
β
= -.087, t = -4.239), supporting H3a. Surprisingly, the researcher
did not find the significant effect of privacy and security concerns on consumer TCs (
β
= .048,
t = 1.945), thus H3b was not supported.
As presented in Table 5.21, when controlling for age, gender, income and education level in
predicting consumer TCs, the results indicated that a negative and significant effect of
consumer TCs on online purchase behaviour (
β
= -.834, t = -30.524), supporting H4a.
Similarly, the predicted negative relationship between consumer
TCs and customer loyalty
(H4b) was supported by the significant path with
β
= -.563 (t = 13.918). H4c, which
predicted a negative and significant effect of consumer TCs on customer satisfaction, was
264
also supported (
β
= -.875, t = -32.715). Table 5.21 revealed that the relationship between
customer satisfaction and customer loyalty was positive and significant with a standardized
path estimate of
β
= -.334 (t = 8.854) and as such H5 was supported.
Furthermore, the results shown in Table 5.21 indicate that the effects
of the control variables
on consumer TCs are all insignificant (t < 1.96, p > .05), which means that age, gender,
income and education do not confound the relationships that have been specified in the
structural model. Overall, one out of twelve estimates were consistent with the hypotheses,
the results supported the theoretical model for controlling for demographic variables with a
caveat for the path from privacy and security concerns to consumer TCs that was rejected.
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