A PROCESS FOR DETERMINING USER REQUIREMENTS IN
eCRM DEVELOPMENT
A Strategic Aspect and Empirical Examination
Ing-Long Wu
1
and Ching-Yi Hung
2
1
Department of Information Management, National Chung Cheng University
168 University Road, Ming-Hsiung, Chia-Yi, Taiwan
2
Chung-Hwa Telecommunication Inc., Taipei, Taiwan
Keywords: Relationship marketing, CRM, eCRM, Consumer behavior, System requirement analysis.
Abstract: Customer relationship management (CRM) has incerasingly become important while business focus has
shifted from product-centric to customer-centric,. However, many organizations fail to achieve the
objectives. One of the important determinants is the deployment of electronic CRM (eCRM) in
organizations. In essence, CRM is complex in comprising product, channel, consumer, delivery, and service
aspects. This requires different approaches in eCRM development. Determining user requirement is the
most important phase and the key to the final success in system use. This research proposes a strategy-based
process for system requirement analysis. Previous research has not discussed the important role of the CRM
strategies in building eCRM. Moreover, the implemenation process was only reported partially in literature.
Basically, the framework contains three steps: (1) define CRM strategies, (2) identify consumer and
marketing characteristics, and (3) determine system requirements. This framework is further examined by
empirical data. The results indicate that CRM strategies have positive impact on system requirement
analysis while developing eCRM.
1 INTRODUCTION
Business over the Internet presents unprecedented
opportunities for building sales and increasing
revenue streams by expanding geographical scope,
enhancing channel coordination, and improving
supply chain efficiency. To be successful at
e-commerce, companies have to rethink their
business focus. Their business model has to evolve
from production-centric to customer-centric. As
products have become more commoditized and
pricing differences more slight, the great
differentiator today is delivering customer value.
Customer value is what leads to increased loyalty,
sales, and retention rates. Customer relationship
management (CRM) is a strategic and management
concept in creating customer value
(Kennedy and
King; 2004; Karakostas, et al., 2005). Here,
electronic CRM (eCRM) is a business and
technology discipline that helps firms acquire and
retain the most profitable customers while meeting
their requirements. With this trend, too many
organizations are rushing to implement a web site
and take a “build it and they will come” attitude.
However, the results were less than what was
expected. Estimates of CRM projects failing to
achieve their objectives range from 60%-80% (Kale,
2004). One of the reasons for unsatisfactory
outcomes are focusing solely on tecchnological
aspect rather than on customer and marketing
aspects for successful use of this system by
marketing personnel (Pavlou, 2003; Wu and Wu;
2005).
Basically, the idea of CRM is basically founded
on relationship marketing. Relationship marketing is
mainly to build a long term association,
characterized by purposeful cooperation and mutual
dependence on social, as well as structural, bonds
(Mowen and Hinor, 1998). CRM context inherently
involves a number of compound components on
product design, customer, marketing characteristics
and customer behavior for relatively complex
processes. The development of eCRM therefore
requires following different approaches from the
traditional system development process (Albert, et
al., 2004). Requirement analysis is the most
5
Wu I. and Hung C. (2008).
A PROCESS FOR DETERMINING USER REQUIREMENTS IN eCRM DEVELOPMENT - A Strategic Aspect and Empirical Examination.
In Proceedings of the Tenth International Conference on Enterprise Information Systems - ISAS, pages 5-12
DOI: 10.5220/0001668200050012
Copyright
c
SciTePress
important phase in the development process and the
key to the success of system use. Thus, a strategic
view on requirement analysis can provide a clear
picture to define the complex process and further,
simplify the requirement analysis (Maguire, 2001;
Rigby and Ledingham, 2004; Chan, 2005).
Therefore, this research proposes a
strategy-based process for effectively determining
system requirements in eCRM development. The
first defines a well-planned, unique customer
strategy, which conceptually considers customer
needs and marketing objectives, to direct CRM
activities. Next, the fundamentals to determining
customer strategies require further understanding
consumer behavior and marketing stimuli in order to
build effective CRM (Brown, 2000). Accordingly,
requirement analysis in eCRM development can be
effectively determined based on the previous
analyses. In summary, this planning process
comprises three steps: define customer strategies,
identify consumer and marketing characteristics, and
determine system requirements. Little research has
discussed the important role of customer strategies
in e-CRM development. The literature on this
implementation process has only reported partially
rather than integratively. Moreover, the techniques
used for analyzing these steps are also discussed.
Finally, this framework is empirically examined to
understand its practical validity.
2 LITERATURE REVIEW
2.1 IT Planning and User
Requirements
Requirement determination is the process of
gathering and modeling information about required
functionality, data, and interface of a proposed
system by a system analyst, and has been widely
recognized as the most difficult phase in system
development process (Larson and Naumann, 1992;
Guinan, et al., 1998). Difficulties in requirements
determination arise from four major reasons (Davis,
1982): (1) cognitive issues resulting from constraints
on humans as information processors and problem
solvers; (2) problem structuring issues resulting
from the variety and complexity of information
requirements; (3) communication issues resulting
from the complex patterns of interaction among
users and analysts in defining requirements; (4)
political and behavioral issues resulting from
unwillingness of some users to provide requirements.
Problem structuring issues are most apparent to
system analysts for solving requirements
determination problem (Sutcliffe, 1997). In
particular, this study intended to alleviate the impact
of unstructured problem associated with CRM
domain on system requirements analysis.
A number of models have been proposed for
developing the information system plan and
information architecture. The main focus of these
models is on discussing requirements analysis of
system development. The three-stage model by
Bowman et al. (1983) suggests that a strategic
alignment effort as the first stage should precede
organizational information requirements as the
second stage and resource allocation as the third
stage. The stimulus for systems development is
typically an organizational problem. Problems may
be usefully analyzed in terms of four levels in a
pyramid structure with organizational strategies at
the top, business processes at the second, tasks at the
third, and information at the bottom (Leifer et al.,
1994; Browne and Rogich, 2001). The review of
these models would lay a foundation on developing
the research framework in this study. A
strategy-based process initiated with CRM strategis
would define a new type of customer relationship
and in turn, ceate a need for futher understanding
consumer behavior and marketing characteristics.
Accordingly, information requirement analysis
would be effectively followed.
2.2 CRM, eCRM and CRM Strategies
The new Internet Economy presents numerous
challenges to marketers along with the significant
opportunities it offers. Customers are smart,
powerful, and highly informed. Customers are
demanding that every interaction a company has
with them leave them more than satisfied. In fact,
customer satisfaction is considered as the most
important new performance metric, soon to rival
revenue and profit in importance. Today, any
advantage based on product or service is short-lived.
Instead, forging long-term relationships with
customers is the key to stability in an increasingly
dynamic market (Lee-Kelley et al., 2003; Payne and
Frow, 2004). It indicates that traditional marketing
approach no longer fulfills the needs of the Internet
era. The premise is that existing customers are more
profitable than new customers; that it is less
expensive to sell an incremental product to existing
customers; and that customer retention would be
maximized by matching products and levels of
services more closely to customer expectation. The
ICEIS 2008 - International Conference on Enterprise Information Systems
6
central objective of CRM is thus to maximize the
lifetime value of a customer to the organization
(Peppers et al., 1999; Brown, 2000; Turban et al.,
2004). However, all have remained essentially
theoretical concepts, aspirations rather than a
practical or commercial reality. It has been difficult
to develop eCRM due to the complexity in the CRM
process. The great advancement in Internet and new
information technologies recently has provided
tremendous resources for supporting the
development of eCRM. (Curry and Curry, 2000; van
Nunen and Zuidwijk, 2004).
There are three similar models proposed to
define CRM strategies in e-commerce. The first
model includes three stages: acquisition,
enhancement, and retention (Kalakota and Robinson,
2001). Each has a different impact on the customer
relationship and each can more closely tie the
company to the customer’s life and value.
(1). Acquiring new customer. You acquire new
customers by promoting product and service
leadership that pushes performance
boundaries with respect to convenience and
innovation. The value proposition to the
customer is the offer of a superior product
backed by excellent service.
(2). Enhancing profitability of existing customers.
You enhance the relationship by encouraging
excellence in cross-selling and up-selling.
This deepens the customer relationship. The
value proposition to the customer is an offer
of greater convenience at low cost (one-stop
shopping).
(3). Retaining profitable customers for life.
Retention focuses on service
adaptability–delivering not what the market
wants, but what customers want. The value
proposition to the customer is an offer of a
proactive relationship that works in his or
her best interest.
Next, Organizations all seemed to fall within one
of three distinct stages for customer care: customer
acquisition, customer retention, and strategic customer
care (Brown, 2000). The descriptions of Stage I and
Stage II are similar to Kalakota and Robinson’s model.
Stage III organizations recognize that customer
relationships that are in essence strategic partnerships
allow them to increase own benefits by focusing on
enhancing the customer’s profits. Finally, Gartner
Group discusses a relationship marketing model. It
comprises four categories, customer selection,
customer acquisition, customer retention, and customer
extension, as shown in Figure 1 (Turban et al., 2004).
Figure 1: Relationship marketing model.
2.3 Consumer Behavior
Relationship marketing strategy descrides high-level
concept. Consumer behavior is the basis of the
concept and has a profound impact on the way that
online systems are developed. Market researchers
have been trying for decades to understand
consumer behavior. Schiffman and Kanuk (1994)
briefly discusses six comprehensive models of
consumer behavior: the Nicosia mode (Arsham and
Dianich, 1988), the Howard-Sheth model (Howard
and Sheth, 1969), the Engel-Kollat-Blackwell model
(Engel et al., 1990), the Sheth family
decision-making model (Sheth, 1974), the Bettman
information-processing model (Bettman, 1979), and
the Sheth-Newman-Gross model (Sheth et al., 1991).
For example, the Nicosia model focuses on the
relationship between the firm and its potential
consumers. In the broadest terms, the firm
communicates with consumers through its marketing
messages (advertising), and consumers communicate
with the firm by their purchase responses. This
model involves a four-stage procedure. The first
stage comprises two factors that affect consumer
attitudes, i.e., (1) consumer characteristics, and (2)
target market and competitive environment. The
second stage deals with the search for the relevant
information and evaluation of the firm’s brand in
comparison with alternative brands. The third stage
is that the consumer’s motivation toward the firm’s
brand results in purchase of the brand from a
specific retailer (decision making). The final stage
consists of two types of feedback from the purchase
experience, i.e., one to the firm in the form of sales
data, and the other to the consumer in the form of
experience (Arsham and Dianich, 1988).
Moreover, a model for buyer behavior indicates
a stimulus-response strucure similar to the previous
ones, as indicated in Figure 2 (Kotler, 1997). This
model illustrates marketing and other stimuli
entering the buyer’s “black box” and producing the
buyer’s responses. An exception to this model is
that buyer characteristics are classified as part of
A PROCESS FOR DETERMINING USER REQUIREMENTS IN eCRM DEVELOPMENT - A Strategic Aspect and
Empirical Examination
7
buyer’s black box, rather than as outside stimuli.
Besides, a consumer behavior model in e-commerce
includes outside stimuli, personal characteristics,
external characteristics and vendors’ controlled
systems entering decision-making process and
eventually producing buyers’ decisions (Turban et
al., 2004). Here, vendors’ controlled systems is
additional input component while compared to
traditional behavior model.
Figure 2: Buyer behavior model (Kotler, 1997).
3 THEORETICAL MODEL
Theoretically, the solution for this problem would be
based on a strategic perspective to pre-define
marketing orientation. Accordingly, system
requirements would be effectively determined from
a high-level perspective. Thus, this research
proposes a strategy-based process for effectively
defining system requirements in eCRM development,
as indicated in Figure 3. The theoretical basis for
building this model is mainly based on the analysis
of a hierarchical structure with firm strategies at the
top, business processes at the second, tasks at the
third, and information at the bottom, as discussed in
Section 2.1. This process basically contains three
steps: (1) define customer strategies, (2) identify
consumer and marketing characteristics, and (3)
determine system requirements. Prior research has
just literally discussed the importance of strategic
role in determining system requirements.
Furthermore, a well-defined process for requirement
analysis has not reported integratively.
Identify
consumer & marketing
characteristics
Identify
consumer & marketing
characteristics
Define
CRM strategies
Define
CRM strategies
Determine
system requirements
Determine
system requirements
Figure 3: Theoretical model.
3.1 Define CRM Strategies
Comparatively, the Brown’s model basically covers
the primary features of the other models, as
discussed previously, adopted to analyze the choice
of CRM strategies in this step, i.e., customer
acquisition, customer retention, and strategic
customer care. The decision is important because it
will dictate the infrastructure strategy of technology
(Brown, 2000).
3.2 Identify Consumer and Marketing
Characteristics
This step analyzes consumer and marketing
characteristics based on the defined CRM strategies
because the strategies are all attempting to discover
and build highly personalized customer service. A
summary of the literature indicates that the driving
forces for making purchase decisions are primarily
from the set of inputs and specifically, there were
three key inputs, i.e., (1) personal characteristics, (2)
external characteristics, and (3) stimuli. This set of
inputs can be concluded with consumer
characterisitcs and marketing stimuli.
3.3 Determine System Requirements
This step mainly bases the analyses of CRM
strategies and consumer and marketing
characteristics, on deriving a series of system
requirements for eCRM. An example could be that if
the customers tend to be more sensitive for the price
toward certain prodcuts, the eCRM will consider
such IT features as price-comparative analysis for
these products to be included. Thus, the the major
focus would be on discussing the performance of
system requirements analysis.
Next, the three-step framework is primarily
derived based on an extensive literature review and
thus, further verification by empirical data is
required for practitical validity. This verification is
primarily to explore the influence of the first step on
the second step, the second step on the third step.
However, there are two sets of variables discussed in
the second step, consumer and marketing
characteristics. Thus, two hypothesess for each
relationship are presented for this.
Hypothesis 1: The choice of CRM strategies is
positively related to consumer
characteristics.
Hypothesis 2: The choice of CRM strategies is
positively related to marketing
stimuli.
ICEIS 2008 - International Conference on Enterprise Information Systems
8
Hypothesis 3: Consumer characteristics are
positvely related to the performance
of requirements analysis.
Hypothesis 4: Marketing stimuli are positively
realted to the performance of
requirements analysis.
4 RESEARCH DESIGN
4.1 Instrumentation
The instrument contains a four-part questionnaire as
described subsequently. The first part uses nominal
scales, while the rest use 7-point Likert scales.
4.1.1 Basic Information
This part collects organizational characteristics
including industry, annual revenue, number of
employees, and experience of eCRM and
respondent’s characteristics including education, age,
experience, and position.
4.1.2 CRM Strategies
This part is adapted from a self-assessed instrument
for defining CRM strategies (Brown, 2000),
comprising 12 items in all. Example attributes
include Internet applications, differentiated services,
customer segmentation, and customers’ profitability,
in order to discriminate the adoption of CRM
strategies.
4.1.3 Consumer and Marketing
Characteristics
This part is adapted from two constructs in Turban et
al., (2004). It includes 10 subconstructs for
consumer characteristics such as age, gender,
income, education, lifestyle, psychological state,
occupation, values, personality, and marital as well
as 4 subconstructs for marketing stimuli such as
price, promotion, quality and product.
4.1.4 Performance of Requirement Analysis
This part is adapted from the instrument for
assessing requirements analysis (Teng and Sethi,
1990). This measure includes five items, accuracy
and free bias, completeness, decrease of user
requirements determination time, usefulness of
output information, and ease of use.
4.2 Sample Organizations and
Respondents
Service industries would have more expeience on
CRM activities. Moreover, the activities usually
need massive IT investment and also involve
strategic planning. It is assumed that larger firms
would be more likely to have this experience. A
study sample including 645 service firms and 200
finance and banking firms was thus selected from
the year 2004 listing of commonwealth 1155
manufacturing firms, 645 service firms, and 200
finance and banking firms. Based on this sample,
CIOs or IS top managers were selected as the
respondents. This is because this study focuses on
the understanding of IT applications development
and also involves the analysis of CRM strategies,
and therefore CIOs are likely to be the managerial
personnel most familiar with this topic. 159 replied,
with 4 incomplete responses deleted, resulting in a
total sample of 155 respondents for an 18% response
rate. The seemingly low response rate raises the
concern about non-response bias. A test for
non-response bias was conducted using two
responding subsamples: early and late respondents.
They were correlated on their annual revenue and
working experience. There is no significant
systematic non-response bias in the responding
sample.
4.3 Scale Validation
Confirmatory factor analysis (CFA) is used to analyze
scale validation. There are three measurement models
for the instrument. The results are reported in Table 1.
All indices are above the criteria.
Table 1: Scale reliability and validity.
Scale Item loading
Construct
reliability
AVE
Define CRM strategies
0.85-0.88 0.92 0.82
Identify consumer and
marketing
characteristics
0.76-0.83/0.82-0.8
4
0.83/0.87 0.69/0.75
Performance of
Requirement analysis
0.88-0.96 0.95 0.85
5 ANALYSIS AND FINDINGS
5.1 Define CRM Strategies
Cluster analysis is used to analyze the strategic types.
The results finally suggests that three-cluster
A PROCESS FOR DETERMINING USER REQUIREMENTS IN eCRM DEVELOPMENT - A Strategic Aspect and
Empirical Examination
9
solution is the appropriate choice, with cluster sizes
of 20, 70, 65 firms for clusters 1, 2, and 3
respectively. Scheffe’s multiple comparisons is used
to define the three clusters. Corresponding to the
Brown’s model, clusters 2, 3, and 1 can be
reasinabely defined as the strategies of customer
acquisition (45.2%), customer retention (41.9%),
and strategic customer care (12.9%), respectively.
From the percentage distribution, some facts can be
discussed for practice. There are almost half of the
responding firms considering customer acquisition
as the major CRM strategy. Obviously, traditional
marketing approach is still playing the important
role while CRM approach is currently in the early
stage for most firms in Taiwan.
Nevertheless, the adoption of the other two
CRM strategies adds up to occupy a high percentage
(54.8%). This implies that a trend of moving toward
CRM-based marketing strategies is developing as
Internet-based technology plays an important role in
supporting the features of customer retention and
strategic customer care. Finally, only 12.9 % of the
responding firms are in the stage of strategic
customer care. They have built the relationship of
strategic partnership with customers. However,
customers, in essence, are associated with
uncertainty and complexity in many aspects and
require extended time and effort to achieve.
5.2 Identify Consumer and Marketing
Attributes
MANOVA is used to examine the relationship of
CRM strategies with metric attributes and consumer
characteristics with non-metric attributes. The test is
significant at 0.01 level. Therefore, Hypothesis 1 is
accepted. In particular, univariate F statistics are
further examined to understand the ten consumer
characteristics varying across the three CRM
strategies. The results are reported in Table 2. Eight of
them report significant differences across the three
CRM strategies. This explains some facts.
The range
of user requirement may be approximately defined
based on these aspects and the determination process
should proceed with priorities on these aspects.
Specifically, while examining group mean
differences of the consumer characteristics, it
indicates a pattern that acquisition strategy indicates
the least significant role in identifying the consumer
characteristics for building customer relationship.
This may be because this strategy mainly focuses on
expanding new customers rather than exploring
existing customers. As the firms move to customer
retention, the focus shifts to customer-centered and
customers are initially considered as the important
asset of the firms. Differentiated services for
customers are critical to sustaining their profits. For the
firms evolving to strategic customer care, the focus is
on determining the most profitable customers and
further developing differentiated services for the
customers. The specific findings, while different
customer strategies place different focuses on
consumer characteristics, would provide insight for
clearly defining the particular scope of user
requirement.
For instance, one, six, and eight consumer
characteristics, as indicated in Table 2, are the focus on
requirement analysis for the adoption of acquisition,
retention, and strategic customer care respectively.
Table 2: Univariate tests for consumer attributes across
CRM strategies.
Customer
strategies
Consumer
characterist
ics
F
P-val
ue
1 2 3
Group
mean
differences
Age 7.83 0.012* 3.58
5.01 5.93
3>1*, 2>1*
Gender 6.43 0.031* 2.84
5.16
*
5.26
*
3>1*, 2>1*
Income
13.2
3
0.000*
4.98
*
5.69
*
6.43
*
3>1*
Education
10.1
2
0.001* 3.21
4.82
*
6.25
*
3>1,2*, 2>1*
Lifestyle 5.12 0.041* 2.31 3.84
4.51
*
3>1*
Psychological 7.34 0.071 3.03 3.31 4.01 -
Occupation 6.64 0.029* 2.96
5.39
*
6.23
*
3>1*, 2>1*
Values 6.38 0.033* 3.01 3.68
5.23
*
3>1,2*
Personality 9.23 0.009* 3.18
5.23
*
5.41
*
3>1*, 2>1*
Marital 5.89 0.064 3.11 3.70 4.01 -
*:P<0.05; 1:Customer acquisition, 2:Customer retention, 3:Strategic
customer care
The second part discusses the effect of CRM
strategies on marketing stimuli. The same procedure
is used. The test is significant at 0.01 level.
Therefore, Hypothesis 2 is accepted. The same
univariate F statistics are further examined across
the three CRM strategies. The results are reported in
Table 3 and all the four marketing stimuli are
significant differences across the three CRM
strategies. Specifically, while examining group mean
differences of the marketing stimuli, acquisition
strategy influences the four marketing stimuli. This
is because this strategy aims mainly at expanding
new customers and thus, focuses on product
attributes rather than consumer attributes for
attracting new custoemrs. While customer strategies
evolving to latter stages, the correlation with the four
product attributes becomes weaker and weaker. For
example, four, two, and one marketing attributes as
indicated in Table 3, are the focus on requirement
analysis for the adoption of acquisition, retention,
and strategic customer care respectively.
5.3 Determine System Requirements
This step discusses the performance of requirement
analysis after the analysis of the previous steps. First,
multiple regression analysis is used to examine
Hypotheses 3 and 4. Hypothesis 3 and Hypothesis 4
ICEIS 2008 - International Conference on Enterprise Information Systems
10
Table 3: Univariate tests for marketing stimuli across
CRM Strategies.
Customer strategies
Marketing
attributes
F
P-val
ue
1 2 3
Group
mean
difference
s
Price 5.33 0.028*
6.31 5.25 4.83
1>3*
Promotion 4.43 0.031*
6.01
*
3.31 3.16 1>2,3*
Quality 4.23 0.039*
5.75
*
4.29 4.23 1>2,3*
Product 4.12 0.041*
5.83
*
4.82
*
4.16 1>3*
*:P<0.05; 1:Customer acquisition, 2:Customer retention, 3:Strategic
customer care
are accepted. Next, the performance of requirement
analysis is assessed using the five items in the
questionnaire for the three groups of responding
firms with different strategies. Their average
performances are 5.71, 6.16, and 6.42 respectively,
with 7-point Likert scale, as indicated in Table 4.
This indicates that the performance of requirement
analysis is good while following the strategy-based
determining process. In particualr, different
strategies has different impacts on consumer
behavior and marketing attributes and further,
provides insight to requirement analysis in eCRM
development.
Table 4: Impact of CRM strategies on requirement analysis.
CRM strategy Emphases on consumer/marketing characteristics
Performance
Customer acquisition Income
Price, Promotion, Quality, Product
5.71
Customer retention Age, Gender, Income, Education*, Occupation, Personality
Price, Quality, Product
6.16
Strategic customer care
Age, Gender, Income, Education, Occupation, Values
, Lifestyle, Personality
Price, Quality*, Product*
6.42
*
: P<0.05, The others: P<0.01
6 CONCLUSIONS AND
SUGGESTIONS
As the growth of customer base has become more
saturated and the price premium of products less
differentiated, this justifies the need for better CRM.
While the Internet offers a tremendous amount of
communication resources to support eCRM
implementation, most organizations are rushing to
move to web-based CRM systems. However, a high
percentage of firms fail to achieve their CRM goals.
While CRM domain involves a number of
compound components on product design, market
characteristics, and consumer behavior, a
strategy-based process for requirement analysis can
initially provide a clear picture to define the
complex process and further, facilitate the
requirement analysis. Therefore, this study proposes
a three-step process for requirement analysis, i.e.,
define customer strategies, identify consumer and
marketing characteristics, and determine system
requirements. Important findings have been
concluded. In general, while firms adopt different
customer strategies in market competition, i.e.,
acquisition, retention, and strategic customer care,
the determinants in building CRM, i.e., consumer
and marketing characteristics, are greatly different.
As a result, complex domain on CRM can be
defined in terms of the particular customer segments
or marketing approaches and further, base them on
effectively eliciting user requirements.
The implications for practitioners are noted as
below. While eCRM is complex and dynamic in
nature, it is difficult to manage the requirement
determination process. System analysts can base the
adopted customer strategies and further, emphases
on consumer and marketing characteristics on
clearly defining the scope or the boundary of eCRM.
The findings are summarized in Table 4.
Accordingly, user requirements can be effectively
defined and stabilize under the particular boundary.
Besides, this will also facilitate the effective
allocation of organizational resources and reduce the
development cost. The implications for researchers
are discussed as below. A strategy-based approach
for requirement analysis is critical for eCRM
development since it intends to overcome system
analysts’ and users’ inabilities in recognizing
problem unstructuring issues. This is a common
problem for system analysts in developing complex
information systems. Traditional method is
operation-based and often difficult to converge in
requirement determination process. Prior research
has not discussed the important role of customer
strategies in eCRM development and has only
reported partially for the implementation process.
This research provides a new thinking for emerging
research on this research issue.
Furthermore, subsequent research could be based
on this foundation. First, this study is primarily at
developing a theoretical framework to effectively
determine requirements and further, empirically
validates it by survey data. Future research could
specifically conduct case studies longitudinally to
understand the usefulness of this framework in building
eCRM in practice. Second, the empirical survey is
sampled from a combination of industries, so the
conclusions are more general and comprehensive.
Future research could be targeted toward the particular
industries, for instance, the banking industry, to
understand their differences and similarities. Third, IS
managers or CIOs (from developer perspectives) are
chosen as participants in this survey since this study
mainly involves the planning work of system
development. However, a complementary study from
the perspective of marketing personnel (from user
A PROCESS FOR DETERMINING USER REQUIREMENTS IN eCRM DEVELOPMENT - A Strategic Aspect and
Empirical Examination
11
perspectives) would provide further insight to
understand requirement analysis.
Finally, although this research has produced
some useful results, a number of limitations may be
inherent in it. First, the response rate is lower than
desirable, despite the various efforts to improve it.
This may be due to lack of strategy-based planning
experience in eCRM development. However, the
sample data indicates no systematic non-response
bias in the responding sample and is well
representative of the sample frame. Next, CIOs from
larger firms are primarily chosen for the participants
in the survey; however, some of the questionnaires
may have been completed by subordinates, and as a
result the data may be some biases.
REFERENCES
Albert, T.C., Goes, P.B., and Gupta, A. (2004), A model for
design and management of content and interactivity of
customer-centric web sites, MIS Quarterly, 28, 2, 161-182.
Arsham, H., and Dianich, D.F. (1988), Consumer buying
behavior and optimal advertising strategy: the
quadratic profit function case, Computer and
Operations Research, 15, 299-310.
Bettman, J. R. (1979), An Information Processing Theory
of Consumer Choice, MA: Addison-Wesley.
Bowman, B., Davis, G.B., and Wetherbe, J.C. (1983),
Three stage model of MIS planning, Information &
Management, 6, 1, 11-25.
Brown, S.A. (2000), Customer Relationship
Management-A Strategic Imperative in the World of
e-Business, Ontario, Toronto: John Wiley & Sons.
Browne, G.J. and Rogich, M. B. (2001), An empirical
investigation of user requirements elicitation: comparing
the effectiveness of promoting techniques, Journal of
Management Information Systems, 17, 4, 223-249.
Chan, J.O. (2005), Toward a unified view of customer
relationship management, Journal of American
Academy of Business, 6, 1, 32-38.
Curry, J., and Curry, A. (2000), The Customer Marketing
Method, New York: Simon & Schuster.
Davis, G.B. (1982), Strategies for Information Requirements
Determination, IBM Systems Journal, 21, 1, 4-30.
Engel, J.F., Blackwell, R.D., and Miniard, P.W. (1990),
Consumer Behavior, 6
th
ed., Chicago: Dryden Press.
Guinan P.J., Cooprider, J.G., and Faraj, S. (1998), Enabling
software development team performance during
requirements definition: a behavioral versus technical
approach, Information Systems Research, 9, 2, 101-125.
Howard, J.A., and Sheth, J.N. (1969), The Theory of Buyer
Behavior, New York: John Wiley & Sons.
Kalakota, R. and Robinson, M. (2001), e-business:
Roadmap for Success. Reading, MA: Addison-Wesley.
Kale, S.H. (2004), CRM failure and the seven deadly sins,
Marketing Management, 13, 5, 42-46.
Karakostas, B., Kardaras, D, and Papathanassiou, E.
(2005), The state of CRM adoption by the financial
services in the UK: an empirical investigation,
Information & Management, 42, 6, 853-863.
Kennedy, M. and King, A.M. (2004), Using customer
relationship management to increase profits, Strategic
Finance, 85, 9, 36-42.
Kotler, P. (1997), Market Management-Analysis, Planning,
Implementation, & Control, 7
th
ed., Englewood Cliffs,
New Jersey: Prentice-Hall.
Larson, T.J and Naumann, J.D. (1992), An experimental
comparison of abstract and concrete representations in
system analysis, Information & Management 22, 1, 29-40.
Lee-Kelley, L., Gilbert, D., and Mannicom, R. (2003),
How e-CRM can enhance customer loyalty, Marketing
Intelligence & Planning, 21, 4/5, 239-248.
Leifer, R., Lee S., and Durgee, J. (1994), Deep structures:
real information requirements determination,
Information & Management, 27, 5, 275-285.
Maguire, M., (2001), Context of use within usability
activities, International Journal of Human Computer
Studies, 55, 4, 453-483.
Mowen, J.C. and Minors, M. (1998), Consumer behavior,
5
th
ed., Upper Saddle River, New Jersey: Prentice-Hall.
Neumann, S. (1994), Strategic Information Systems:
Competition through Information Technologies, New
York: Macmillan College.
Pavlou, P.A., Consumer acceptance of electronic
commerce – integrating trust and risk with the
technology acceptance model, International Journal of
Electronic Commerce, 7, 3, 2003, 69-103.
Peppers, D., Rogers, M., and Dorf, B. (1999), Is your
company ready for one-to-one marketing? Harvard
Business Review, 151-160.
Payne, A. and Frow, P. (2004), The role of multichannel
integration in customer relationship management,
Industrial Marketing Management, 33, 527-538.
Rigby, D. and Ledingham, D. (2004), CRM done right,
Harvard Business Review, 82, 11, 118-127.
Schiffman, L.G., and Kanuk, L. L. (1994), Consumer Behavior,
Englewood Cliffs, New Jersey: Prentice-Hall, pp.645-656.
Sheth, J.N. (1974), Models of Buying Behavior, New York:
Harper & Row, pp.17-33.
Sheth, J.N., Newman, B.I., and Gross, B.L. (1991),
Consumption Values and Market Choices: Theory and
Applications, Cincinnati: South-Western.
Sutcliffe, A. (1997), Task-related information analysis,
International Journal of Huamn Computer Studies, 47,
2, 223-257.
Teng, J.T.C. and Sethi, V., (1990), A comparison of
information requirements analysis methods: an
experimental study, Database, 27-39.
Turban, E., King, D., Lee, J., and Viehland (2004),
Electronic commerce: a managerial perspective, Upper
Saddle River, New Jersey: Prentice-Hall.
van Nunen, J.A.E. and Zuidwijk, R.A. (2004), E-enabled
closed-loop supply chains, California Management review,
46, 2, 40-48.
Wu, I.-L. and Wu, K.-W. (2005), A hybrid technology
acceptance approach for exploring e-CRM adoption in
organizations, 24, 4, 303-316.
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