An Investigation of Factors and Measurements for Successful
e-Commerce Websites
Xiaosong Li, Wei Lian and Abdolhossein Sarrafzadeh
Department of Computing & Information Technology, Unitec Institute of Technology, Auckland, New Zealand
Keywords: e-Commerce, Website, Factor, Dimension, Measurement, Success.
Abstract: Business-to-Consumer (B2C) e-commerce is popular because of its convenience, speed and price. Although
there has been intense debate about quality dimensions of e-commerce websites, more research is needed to
find a well-established measurement. This empirical study identifies a set of measurements with 10 factors
and their corresponding dimensions, including software development attributes based on the literature and
the qualitative and quantitative data gathered from four different stakeholders. The survey results suggest
that security, smooth transaction processes and smooth shopping processes are the most important concerns
for online shoppers. The IS success model checking suggests that the proposed measurements are
comprehensive. This work is compared with the customized ISO 9126 quality model.
1 INTRODUCTION
Business-to-Consumer (B2C) e-commerce is
popular because of its convenience, speed and price
(Luo et al., 2008). Although there has been debate
about quality dimensions of e-commerce websites,
however, they are not well-established, and more
research is needed to find a measurement of e-
commerce website success (Balfagih et al., 2010).
The existing relevant works contain either a
broad framework which does not include specific
and detailed information for more accurate, effective
and practical evaluation of e-commerce websites, or
the measurements focus only on certain aspects of
the e-commerce websites, or the measurements are
applicable to a general information system not
specific for e-commerce websites. The existing
DeLone & McLean IS Success Model was updated
and extended by introducing new metrics for e-
commerce system success measurement (DeLone &
McLean, 2003). This framework was modified and
extended further to be more specific on measuring e-
commerce website success (DeLone & McLean,
2004). When these frameworks are applied to a
specific website, further interpretations or
refinements are required. An empirical study was
conducted to develop a set of instruments of B2C e-
commerce website quality (Cao et al., 2005). The
instruments covered some aspects of service quality,
such as responsiveness, information quality, and
information accuracy. However, they omitted other
aspects, such as page design and shopping process.
The 7C framework was developed (Rayport &
Jaworski, 2001) to evaluate e-commerce websites;
however, it emphasizes the specific role of interface
elements as a communication channel between
retailers and their customers. The 7Cs evaluates an
e-commerce website more from a user interface
design perspective than information quality and
usability perspectives. The 8C framework was
developed based on the 7Cs to cover the Web 2.0
features (Yang et al., 2008). However, the scope of
7Cs was extended for generic web application, and
the dimensions were interpreted more from
technique implementation perspectives. A B2B e-
commerce web application evaluation model was
proposed in 2009 (Behkamal et al., 2009), in which
a traditional software quality model, ISO 9126, was
customised by identifying the B2B quality
characteristics and adding the necessary attributes.
The customisation was carried out in five steps. A
numeric value was assigned to each of the quality
characteristics from both the B2B application users’
and developers’ viewpoints. So the result
emphasizes the user and development issues.
The long-term success is determined by their
ability to generate positive net revenues (DeLone &
McLean, 2004). Attracting Internet users,
encouraging customer loyalty and improving service
are aiming to increase profits ultimately (Bezes,
354
Li X., Lian W. and Sarrafzadeh A..
An Investigation of Factors and Measurements for Successful e-Commerce Websites.
DOI: 10.5220/0004933903540360
In Proceedings of the 10th International Conference on Web Information Systems and Technologies (WEBIST-2014), pages 354-360
ISBN: 978-989-758-023-9
Copyright
c
2014 SCITEPRESS (Science and Technology Publications, Lda.)
2009). These suggest that the ultimate measurement
for e-commerce website success is profit. To help
the business owners improve the quality of their e-
commerce websites, there is a need to identify the
factors that critically influence the quality of the
websites and the measurements which can reflect the
profit closely.
This empirical study focuses on B2C e-
commerce websites that support shopping
functionalities. It aims to find a set of
comprehensive, specific and objective measurements
based on the information possibly obtained from
different sources for successful e-commerce
websites. It uses the existing research findings as a
starting point and captures the critical factors that
contribute to the success of an e-commerce website
from design, content, shopping process, security,
management and technique perspectives. Ten
important factors and their dimensions were
identified initially (Lian, 2012). To verify and refine
these factors, data were collected from an online
survey of e-commerce website users, interviews of
relevant professionals and online tool testing. The
data were interpreted and analyzed with the help of
two simple quantitative instruments: mean and
standard deviation; and the factors as well as their
dimensions were refined. The refined factors were
examined against the six dimensions of the updated
DeLone and McLean (2004) information systems
success model. The refined factors were also
examined against the conceptual model proposed by
Ghandour group (Ghandour et al., 2008).
In the following sections, the initial
measurements are described first, that is, followed
by the data analysis and the measurement
refinement, the proposed measurements are
validated, and finally the result is discussed and the
paper is summarized.
2 INITIAL FACTORS
On the basis of a study of the existing publications,
this research identifies 10 factors that may contribute
to the success of e-commerce websites. The detailed
dimensions for each factor were also identified at the
same time. Following are the 10 factors, their
dimensions, their literature sources and their codes
which will be referred to in the rest of this paper:
Factor 1. Site Popularity (F1) (Ghandour et
al., 2008): Keeping high daily reach (F1D1),
A large number of unique users (F1D2), A
larger number of visitors (F1D3);
Factor 2. Website Profit (F2) (Carney, 2005;
Barnes, 2002);
Factor 3. Usability and Performance (F3)
(Haenlein, 2004; Kuballa, 2007; May, 2000;
Chen, 2005): Speed of site load (F3D1),
Website consistence for the leading browsers
(F3D2), The home page is well-organized and
easy to read and understand (F3D3); Logical
and clear navigation choices with consistence
and availability (F3D4); Easy to use
navigation (F3D5); Easy to use search boxes
(F3D6); Functionality (F3D7); Error message
resolution (F3D8);
Factor 4. Security and Privacy (F4) (Gehling
& Stankard, 2005): Escrow service (F4D1);
Personal information privacy (F4D2); Secure
server (F4D3); Secure payment mechanism
(F4D4); Antivirus software (F4D5); Firewall
(F4D6); Authentication (F4D7);
Factor 5. Website Design (F5) (Lau, 2007;
Blanchard & Fabrycky, 1990): Use of
animated gifts and ticker tapes (F5D1); A
balance between design and functionality
(F5D2); Page fitness for scrolling entire page
(F5D3); Simple and logical web layout
(F5D4); Use of colors (F5D5); Expression of
company image (F5D6); Easy to understand
product categories (F5D7); Appropriate
typefaces and font sizes (F5D8); Ease in
finding checkout button (F5D9); Shopping
cart location (F5D10);
Factor 6. Website Content (F6) (Leea &
Kozar, 2006): Quality information (F6D1);
Good service (F6D2); Easy to understand
(F6D3); Catalog information organized
logically (F6D4);
Factor 7. Transaction Process and Volume
(F7) (John, 2004): The site supports secure
credit card transactions (F7D1); Different
payment methods available (F7D2); User-
friendly rules and policy for sellers and buyers
(F7D3); Good trade volumes (F7D4);
Factor 8. Shopping Process (F8)
(Spiekermann et al., 2001): Reliable delivery
process (F8D1); Easy to obtain refunds
(F8D2); Easy to use the shopping cart (F8D3);
Easy to add or delete items from the shopping
cart (F8D4); Easy to view the contents of the
shopping cart (F8D5); An obvious click path
to the cash register (F8D6); Accessible
product inventory and availability of
information (F8D7); Customer
rating/recording system (F8D8);
AnInvestigationofFactorsandMeasurementsforSuccessfule-CommerceWebsites
355
Factor 9. Technical Support (F9) (Citera &
Beauregard, 2005): Availability of site map
(F9D1); Customer online help (F9D2);
Discussion board (F9D3); User guide (F9D4);
FAQs (F9D5); Contact details (F9D6);
Factor 10. System Development (F10) (Anil
et al., 2003).
3 THE DATA AND ANALYSIS
Customer experience could influence customers'
perceptions of value and service quality, therefore,
affecting customer loyalty. This is critical for the
success of an e-commerce website. An online survey
(Lian, 2012) was used to solicit customers’ opinions
on most of the proposed factors, except F2 and F10,
which are more appropriate for professionals’
opinions. 52 e-commerce website users from a local
technology institute participated in the survey, of
which the majority are aged between 18 and 30
(Lian, 2012). These young tertiary students are
active on the internet and have good computer skills.
The results of the survey may reflect this situation.
Eight selected professionals participated in the
interviews. The chosen participants needed to
understand and have an interest in the research area,
as well as have certain knowledge of e-commerce
websites. In addition, the participants needed to have
the ability and insight to perceive critical success
factors for e-commerce websites with a technical
and business focus. Two academic researchers, three
business managers and three e-commerce website
developers were interviewed. The authors believe
that they possessed the required characteristics and
experiences.
3.1 Online Survey Data
The participants were asked to choose which
particular factors are critical for e-commerce website
success and how they weight each of the dimensions
of a particular factor (Lian, 2012). The questions
were presented using a five-point Likert-type scale,
5 being the most desirable, and 1 being the least. A
dimension score is the average of all the scores for
that dimension from all the participants. A factor
score is the average of all the scores for that factor
from all the participants. Table 1 is a summary of the
results.
The standard deviation of the dimension scores
for a factor was calculated to check the diversity of
the dimensions in the participants’ opinions. A small
standard deviation may indicate that the dimensions
Table 1: Online survey results.
Factors Dimensions
Dimension
Score
STDEV
Factor
Score
F1
F1D1 3.79
0.093 4.21 F1D2 3.84
F1D3 3.97
F3
F3D1 4.03
0.139 4.22
F3D2 3.94
F3D3 4.14
F3D4 4.09
F3D5 4.14
F3D6 4.39
F3D7 4.14
F3D8 3.97
F4
F4D1 3.69
0.359 4.34
F4D2 4.29
F4D3 4.26
F4D4 4.54
F4D5 4.23
F4D6 4.09
F4D7 4.37
F5
F5D1 3.00
0.359 4.22
F5D2 4.00
F5D3 3.57
F5D4 3.91
F5D5 3.56
F5D6 3.43
F5D7 4.17
F5D8 3.71
F5D9 4.00
F5D10 3.78
F6
F6D1 3.97
0.075 4.29
F6D2 4.11
F6D3 3.97
F6D4 4.09
F7
F7D1 4.20
0.109 4.32
F7D2 4.20
F7D3 4.14
F7D4 3.97
F8
F8D1 4.09
0.135 4.29
F8D2 4.40
F8D3 4.00
F8D4 4.23
F8D5 4.14
F8D6 4.11
F8D7 4.31
F8D8 4.06
F9
F9D1 3.44
0.278 4.17
F9D2 3.85
F9D3 3.56
F9D4 3.56
F9D5 3.71
F9D6 4.21
proposed for that particular factor are highly
correlated; a large one may indicate that certain
dimensions are inappropriate.
WEBIST2014-InternationalConferenceonWebInformationSystemsandTechnologies
356
The survey results show that F4 and F7 got the
highest factor scores of 4.34 and 4.32, respectively.
This suggests that security and smooth transaction
processes are the two most important concerns for
online shoppers.
System security becomes a more significant
system-quality issue as e-commerce is typically
conducted over the Internet (DeLone & McLean.
2004). Good protection on confidential information
should help to gain the consumer's trust
(Yazdanifard et al., 2011). An e-commerce website
must provide a secure user interface system and an
easy-to-use transaction process. F9 got the lowest
score of 4.17, suggesting that customers prefer a
convenient and easy-to-use shopping system than
using a help system. This may also reflect that the
survey samples are highly computing skilled. F8
scored 4.29 which is higher than F5 at 4.22. This
suggests that the shopping process and functionality
is more important to the customers than the site’s
visual appearance.
Table 2: The difference between the dimension average of
a factor and its factor score.
Factors
Dimension
Average
Factor
Score
Difference
F1 3.87 4.21 0.34
F3 4.11 4.22 0.11
F4 4.21 4.34 0.13
F5 3.71 4.22 0.51
F6 4.04 4.29 0.25
F7 4.13 4.32 0.19
F8 4.17 4.29 0.12
F9 3.72 4.17 0.45
The scores of all the dimensions of a particular
factor were averaged to compare with that factor’s
score to gauge the validity of the dimensions for that
particular factor. Table 2 shows the dimension
averages and the differences between the dimension
average of a factor and its factor score. A large
difference may indicate the omission of certain
dimensions for that factor. For example, the largest
difference between the two scores is 0.51 for F5,
which suggests that the identified dimensions for
this factor may not be suitable or complete.
Customization defined in the 7Cs (Rayport &
Jaworski, 2001) was missed out in the dimensions of
F5. With customization, a user is provided with
functions that enable him/her to enter personal
details or customize the look of a banner. So, the
dimension “Be able to customize the look of the user
interface” with code F5D11 is added to F5. F3 got a
small average score difference of 0.11 and a
relatively small standard deviation of 0.139, which
suggests that the dimensions for this factor are well
defined. For example, “Search facility” was
highlighted in (Cao et al., 2005) and it was included
in F3D6. The difference for F9 is 0.45, which is the
second largest. There may be serious omissions for
this factor. Service quality can be measured by the
effectiveness of on-line support capabilities, such as
answers to frequently asked questions or
responsiveness in the e-commerce environment
(DeLone & McLean, 2004). This is confirmed by
(Cao et al., 2005), where responsiveness is a
construct with 5 items. So “Responsive to
customers’ inquiries” with code F9D7 is added to
F9. The difference for F6, 0.251, is large as well.
This suggests omissions. The small standard
deviation 0.075 suggests that the proposed
dimensions may only focus on certain aspects of this
factor. The dimensions for F6 show that some
popular dimensions like “use video demonstration”
(Cao et al., 2005) are missing, thus, it is added to
code F6D5, and, similarly, “use customer
testimonial” with F6D6 is added. For F7, the
average score of F7D4 is much lower than the
others, suggesting that F7D4 may not belong to this
factor. Removing F7D4 from the factor reduces the
difference to 0.14, which is more appropriate. The
name of F7 has been changed, therefore, to
Transaction Process.
3.2 Interview Data
Each group of professionals was given a slightly
different set of questions to reflect their expertise
(Lian, 2012). While they shared some opinions with
the online survey participants, there were a few
differences that need to be highlighted.
Only the professionals’ opinions were solicited
for F2 and F10. For F2, six out of eight professionals
thought that website profit is a success factor and no
meaningful comments were given. On the other
hand, Transaction Volume was fully supported with
strongly supportive comments, such as, “there must
be a problem if the trading volume is too small”,
“transaction volume and website success are
positively correlated”, and “transaction volume
reflects the commercial value of a website”. In many
cases, commercial transaction volume is positively
related to commercial profit. It is reasonable to add
“Good transaction volume” with code F2D1 as a
dimension of F2.
F10 received full support as well, with many
meaningful comments. The comments added
desirable attributes for e-commerce websites from a
software development perspective. Here is a
AnInvestigationofFactorsandMeasurementsforSuccessfule-CommerceWebsites
357
summary of the comments, which define the
dimensions for this factor: System Requirements-
Reliability (F10D1); System Requirements-Usability
(F10D2); System Requirements-Data Integrity
(F10D3); Resources-Technologies and Tools
(F10D4); Resources-Network & Internet Access
(F10D5); Resources-Relevant Knowledge (F10D6);
Process-Back up (F10D7); Process-Documentation
(F10D8); Process-Methodology (F10D9).
3.3 Online Testing Data
The online testing tool Alexa was used to test 30 e-
commerce websites, including three very successful
sites, TaoBao, eBay and Amazon (Lian, 2012). The
results showed that TaoBao, eBay and Amazon got a
much higher Alexa Traffic Rank than the others.
They scored 15, 24 and 17, respectively, while the
highest rank for the others was 387. It is reasonable
to use Alexa Traffic Rank (Global) as a quantitative
measurement for e-commerce website success. The
average score difference for F1 is quite large, 0.34,
with a small standard deviation, 0.093. This suggests
omissions again. So “Traffic rank” with code F1D4
is added to F1. Table 3 is a summary of the revised
factors and their dimensions.
Table 3: Revised factors and their dimensions.
Factors Dimensions
F1 F1D1, F1D2, F1D3, F1D4
F2 F2D1
F3
F3D1, F3D2, F3D3, F3D4, F3D5, F3D6,
F3D7, F3D8
F4
F4D1, F4D2, F4D3, F4D4, F4D5, F4D6,
F4D7
F5
F5D1, F5D2, F5D3, F5D4, F5D5, F5D6,
F5D7, F5D8, F5D9, F5D10, F5D11
F6 F6D1, F6D2, F6D3, F6D4, F6D5, F6D6
F7 F7D1, F7D2, F7D3
F8
F8D1, F8D2, F8D3, F8D4, F8D5, F8D6,
F8D7, F8D8
F9
F9D1, F9D2, F9D3, F9D4, F9D5, F9D6,
F9D7
F10
F10D1, F10D2, F10D3, F10D4, F10D5,
F10D6, F10D7, F10D8, F10D9
4 INFORMATION SYSTEM
SUCCESS MODEL
According to DeLone and McLean (2004), all of the
proposed measures for e-commerce website could be
classified under six dimensions. To validate the
proposed measurements in Table 3, it is helpful to
check them against the six dimensions of the
DeLone & McLean Model. Table 4 shows detailed
information for each dimension.
For B2C e-commerce websites that support
shopping functions, the main stakeholders are the
customers and the business owners. For the net
benefits, we should consider the benefits for both of
them. When the customers find the site convenient
or are happy with the quality/price of the products
they purchase, so the website can make a profit.
Website Profit (F2) can be used to measure this. Site
Popularity (F1) can be used to measure customer
satisfaction.
Table 4 shows the proposed factors’
classification in the DeLone & McLean Model. The
factors are distributed into all six dimensions, so
they should be comprehensive; however, they are
not necessarily accurate. For example, F1 can reflect
customers’ satisfaction to a certain extent, however,
possibly not completely.
Table 4: Checking with DeLone & McLean Model.
Dimensions Measures Factors
System
quality
Measures the desired
characteristics such as
usability and response time
F3,
F10
Information
quality
Captures the content issue
such as personalization,
complete, relevant, easy to
understand and secure
F4, F5,
F6
Service
quality
The overall support delivered F9
Usage
Measures everything from a
visit to a website and
navigation to information
retrieval
F7, F8
User
satisfaction
Measures customers’ opinions F1
Net benefits
Captures the balance of the
positive and negative impacts
F2
In the DeLone & McLean Model, the role of
computing was not strongly suggested nor
recommended. This was considered in an extended
model proposed by Ghandour et al. (2008), where
there were three main phases of e-commerce website
success: development, use and consequences of the
website. This study categorized the factors proposed
in Table 3 by collaborating with the interviewed
professionals. They were asked to classify the ten
factors in the three given categories (Lian, 2012).
The results showed that 6 factors (F3, F4, F5, F6, F9
and F10) belong to the development; 2 factors (F7
and F8) belong to the use; and 2 factors (F1 and F2)
belong to the impact. Each category got more than
half of the experts’ support. So the proposed
WEBIST2014-InternationalConferenceonWebInformationSystemsandTechnologies
358
measurements fit in the extended model. It also
provided empirical evidence support for the
extended model.
5 DISCUSSION AND SUMMARY
A set of measurements with 10 factors and their
corresponding dimensions was identified in Table 3
based on the literature and the qualitative and
quantitative data gathered from four different e-
commerce website stakeholders. It is the
combination of these factors that measures the
success of an e-commerce website rather than an
individual factor. The survey results suggested that
security, smooth transaction processes and smooth
shopping processes are the most important concerns
for online shoppers. Good protection on confidential
information should help to gain the consumer's trust
(Yazdanifard et al., 2011) and maintain customer
loyalty. The IS success model (DeLone & McLean,
2004) checking suggested that the proposed
measurements are comprehensive; however, they are
not necessarily accurate. The proposed
measurements fit in the extended model (Ghandour
et al., 2008), which also provides empirical evidence
support for this model. To refine the measurements
further, empirical tests involving a set of e-
commerce websites and their customers/owners are
required.
Comparing the proposed measurements with the
existing work, the customized ISO 9126 quality
model (Behkamal et al., 2009) seems the closest.
They both define the quality factors in a hierarchical
structure and assign numerical values to the quality
factors. However, one is for B2B e-commerce
websites and the other is for B2C. In terms of quality
attributes, the customized ISO 9126 quality model
emphasizes the user and development factors, such
as “Functionality”, “Reliability” and “Usability”; the
proposed measurements emphasize the customer
and business-related factors more, such as “Website
Design”, “Website Content”, “Shopping Process”
and “Transaction Process and Volume”. In terms of
process, five steps were defined in the customized
ISO 9126 quality model, particularly in step 4, a
widely-used method, analytical hierarchy process
(AHP) is carefully followed. This systematic
approach makes it easy to generalise the five steps
for other types of e-commerce websites such as
B2C. However, the factors should be revised to
include more customer-related features. On the other
hand, this work used the scores given by the users
and adjusts the quality factors by means of simpe
statistics instruments. These were further improved
by considering the opinions of the other
stakeholders. In terms of data, only users
viewpoints and developers’ viewpoints were
considered in the customized ISO 9126 quality
model; in the proposed measurements, users’,
developers’, business owners’ and researchers’
viewpoints were considered, therefore, the resulting
quality factors should be more complete.
The small sample size of the online survey
limited the use of rigorous statistics in the data
analysis, instead, a mixed approach using combined
qualitative and quantitative analysis was used on
these data. A large sample with a more general
population should improve the accuracy of the
results.
REFERENCES
Anil, S., Ting, L. T., Moe, L. H. & Jonathan, G. P. G.,
2003. Overcoming barriers to the successful adoption
of electronic commerce in Singapore. International
Journal of Mobile Communications, 1(1-2), pp. 194-
231.
Balfagih, Z., Mohamed, N. & Mahmud, M., 2010. A
Framework for Quality Assurance of Electronic
Commerce Websites. Chapter 9, E-Commerce, Edited
by Kyeong Kang, ISBN 978-953-7619-98-5,
Published by In-tech.
Barnes, S. J., 2002. The electronic commerce value chain:
Analysis and future developments. International
Journal of Information Management, 22(2), pp. 91-
108.
Behkamal, B., Kahani, M., & Akbari, M. K., 2009.
Customizing ISO 9126 quality model for evaluation of
B2B applications. Information and Software
Technology, 51(3), pp. 599-609.
Bezes, C., 2009. E-Commerce Website Evaluation: A
Critical Review. Working Paper.
Blanchard, B. & Fabrycky, W., 1990. Systems engineering
and analysis. Cambridge, UK: Cambridge University
Press.
Cao, M., Zhang, Q. & Seydel, J., 2005. B2C e-commerce
web site quality: an empirical examination. Industrial
Management & Data Systems, 105(5), pp. 645-661.
Carney, M., 2005. Trade Me Success Secrets: How to Buy
Better and Sell More Profitably on New Zealand's
Most Popular Auction Site. Buckinghamshire, UK:
Activity Press.
Chen, R., 2005. Modeling of User Acceptance of
Consumer E-Commerce Website. Lecture Notes in
Computer Science, 38(6), pp. 452-462.
Citera, M. & Beauregard, R., 2005. An experimental study
of credibility in e-Negotiations. Psychology and
Marketing, 3(12), pp. 310-332.
DeLone, W. H. & McLean, E. R., 2003. The DeLone and
McLean Model of Information Systems Success, A
AnInvestigationofFactorsandMeasurementsforSuccessfule-CommerceWebsites
359
Ten-Year Update. Journal of Management
Information Systems, 19(4), pp. 9-30.
DeLone, W. H. & McLean, E. R. 2004. Measuring e-
Commerce Success: Applying the DeLone & McLean
Information Systems Success Model. International
Journal of Electronic Commerce, 9(1), pp. 31-47.
Gehling, B. & Stankard, D., 2005. eCommerce security. In
Proceedings of the 2nd Annual Conference on
Information Security Curriculum Development, pp.
331-340. NY, USA: ACM.
Ghandour, A., Deans, J., Benwell, G. & Pillai, P., 2008.
Measuring eCommerce Website Success. In
Proceedings of the 19th Australasian Conference on
Information Systems, Christchurch, New Zealand:
ACIS.
Haenlein, M., 2004. An Exploratory Investigation of E-
business Success Factors Using Partial Least Squares
Analysis. Perlin, Germany: Cuvillier Verlag.
John, M., 2004. Can Internet services facilitate commerce?
Findings from the Greek telecommunications market.
International Journal of Mobile Communications,
2(2), pp. 188-198.
Kuballa, J., 2007. Key Factors of Successful E-commerce.
Paris, France: GRIN Verla.
Lau, R., 2007. Towards a web services and intelligent
agents-based negotiation system for B2B eCommerce.
Electronic Commerce Research and Applications,
6(3), pp. 260-273.
Leea, Y., & Kozar, K. A., 2006. Investigating the effect of
website quality on e-business success: An analytic
hierarchy process (AHP) approach. Decision Support
Systems, 42(3), pp. 1383-1401.
Lian, W., 2012. Success Factors for Transactional
eCommerce Websites: an Investigation Focusing on
Technical and Business contexts. Master’s Thesis,
Unitec Institute of Technology.
Luo, X., Tu, Y., Tang, J. & Kwong, C. K., 2008.
Optimizing customer's selection for configurable
product in B2C e-commerce application. Computers in
Industry, 59(8), pp. 767–776, October.
May, P., 2000. The business of ecommerce: from
corporate strategy to technology. Cambridge, UK:
Cambridge University Press.
Rayport, J. E. & Jaworski, B. J. 2001. E-Commerce,
McGraw-Hill Higher Education, New York.
Spiekermann, S., Grossklags, J., & Berendt, B., 2001. E-
privacy in 2nd generation E-commerce: privacy
preferences versus actual behavior. In the Proceedings
of the 3rd ACM conference on Electronic Commerce,
New York: ACM.
Yang, T. A., Kim, D. J., Dhalwani, V. & Vu, T. K., 2008.
The 8C Framework as a Reference Model for
Collaborative Value Webs in the Context of Web 2.0.
In the Proceedings of the 41st Annual Hawaii
International Conference on System Sciences, HICSS
'08, p. 319.
Yazdanifard, R., AbuTabik, M. & Seyedi, A., 2011.
Security and Trust in Electronic Commerce - Finding
the Safe Side, In the Proceedings of the International
Conference on Information Communication and
Management, IPCSIT vol.16, IACSIT Press,
Singapore, pp. 141-146.
WEBIST2014-InternationalConferenceonWebInformationSystemsandTechnologies
360