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IEEM 7103 Topics in Operations Research

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Title: IEEM 7103 Topics in Operations Research


1
IEEM 7103 Topics in Operations Research
Presentations
  • Using Data Mining Technology to
    Evaluate Customers Time-Variant Purchase
    Behavior and Corresponding Marketing Strategies.

d923834 ???
2
  • Paper
  • Customers time-variant purchase behavior and
    corresponding marketing strategies an online
    retailers case
  • Publish
  • Computer Industrial Engineering 2002
  • Authors
  • Sung Ho Ha
  • School of Business Administration, College of
    Economy Commerce, Kyungpook National
    University.
  • Sung Min Bae, Sang Chan Park
  • Department of Industrial Engineering, Korea
    Advanced Institute of Science and Technology.

3
Agenda
  • Abstract
  • Introduction
  • Literature review
  • Framework of analysis
  • Application of dynamic CRM to a retailer (Case
    Study)
  • Conclusion Future work

4
Abstract
  • ?????CRM (Customer Relationship Management)
    ??????????????????????????????,????????????????,??
    ????
  • ???????,???????? (buying-behavior-based
    CRM)?????????CRM???,?????CRM???????
  • ??paper????CRM???,????????????????,????CRM
    Model??Data Mining ? Monitoring Agent System
    (MAS)???????????????

5
Agenda
  • Abstract
  • Introduction
  • The Goal of CRM
  • Applications
  • The Lacks of Static CRM
  • Literature review
  • Framework of analysis
  • Application of dynamic CRM to a retailer (Case
    Study)
  • Conclusion Future work

6
Introduction
  • The maturity of the business-to-consumer (B2C)
    market.
  • A successful retailer must have provide a bundle
    of customized services.
  • Consumer markets characteristics
  • Repeat-buying over the relevant time horizon.
  • A large number of customer.
  • A wealth of information detailer past customer
    purchase.

7
The Goal of CRM
  • Identify the customer
  • Construct customer purchase data mart
  • Understand and predict the customer-buying
    pattern

8
The Goal of CRM
  • Measure purchase behavior of customer
  • Recency????????????
  • Frequency??????????????
  • Monetary values??????????????
  • ??????????????,???????

9
Applications
  • CRM applications
  • Short-range???????????,???????????????
  • Intermediate-range???????????????????????
  • Long-range?????????????????????
  • EC (electronic commerce) applications
  • ??????????????,???????????,?????????????,???
    CRM?????????

10
The Lacks of Static CRM
  • ???????????????????????????
  • ????????????????????
  • ?????????????????????????
  • ?????????????????????????

11
Agenda
  • Abstract
  • Literature review
  • Framework of analysis
  • Application of dynamic CRM to a retailer (Case
    Study)
  • Conclusion Future work

12
Literature Review (1/3)
  • Hughes, 1996
  • CRM???????????????,??????????????????????????????
  • Peppers, Rogers, Dorf, 1999
  • ??????????????????,???????????????,????????????
  • Peppard, 2000
  • ??????????,????????????????,??????,?????????,?????
    ?????????
  • Schafer, Konstan, Riedl, 2001
  • ???web marketing,?????????????????????

13
Literature Review (2/3)
  • Technique for online marketing
  • Database marketing
  • ?????????,??ZIP?income???????????segment as a
    group?
  • ????????????????
  • Ad targeting (offer targeting )
  • ???????????,??????????????

14
Literature Review (3/3)
  • One-to-one marketing (Peppard, Rogers, 1997a/b)
  • ????????,???????,?????????????
  • Content-based filtering system??????????,????????
    ???????
  • Collaborative filtering system???????????,???????
    ???????????,??????

15
Agenda
  • Abstract
  • Literature review
  • Framework of analysis
  • Data Mining Analysis and Technique
  • Monitoring Agent System
  • Dynamic CRM Model
  • Application of dynamic CRM to a retailer (Case
    Study)
  • Conclusion Future work

16
Data Mining Analysis and Technique
  • Time-variant Behavior Analysis
  • Markov Chain
  • Segmentation
  • Self-Organization Map (SOM)
  • Purchase Behavior Feature
  • R (Recency), F (Frequency), M (Monetary)
  • Classification
  • Decision Tree (C4.5)

17
Monitoring Agent System
18
Dynamic CRM Model (1/10)
  • Assumed the model has the Markovian property

?????????????CRM??,??????????????????????,????????
,?????????????????
A special kind of stochastic process.
The process will evolve in the future depend only
on the present state of the process.
19
Dynamic CRM Model (2/10)
  • Assumed the model has the Markovian property
    (Cont.)

20
Dynamic CRM Model (3/10)
  • States Transition Probability Matrix

21
Dynamic CRM Model (4/10)
  • Example

22
Dynamic CRM Model (5/10)
  • Stability of the matrix of transition
    probabilities
  • Example

In the long run, the process usually approaches a
steady state or equilibrium when the systems
state probabilities have not changed further so
long as the matrix of transition probabilities
remains the same.
23
Dynamic CRM Model (6/10)
  • Example (Cont.)
  • Hypothetical Profit Rate Segment A15, Segment
    B25, Segment C40

Original
After Promotion
24
Dynamic CRM Model (7/10)
  • Evaluating alternative marketing strategies

Original
Strage1
Strage2
25
Dynamic CRM Model (8/10)
  • Evaluating alternative marketing strategies
    (Cont.)

26
Dynamic CRM Model (9/10)
  • Monitoring the movements of segments

27
Dynamic CRM Model (10/10)
  • Assumption Relaxation
  • Have New Customer
  • Have Defector Customer

28
Agenda
  • Abstract
  • Literature review
  • Framework of analysis
  • Application of dynamic CRM to a retailer (Case
    Study)
  • Conclusion Future work

29
Case Study
  • ????????? (RFM) ??,???1995??????1996?12?31?,?????2
    036??????
  • ???????? (???????????),??????RFM? ?

30
  • Rt measures how long it has been since he or she
    made a last purchase during last observation
    period from time t.
  • Ft measures how many times he or she has
    purchased products during that period.
  • Mt measures how much he or she has spent in
    total.

31
Customer Clustering
  • SOM
  • Training the SOM
  • Mapping input customer RFM patterns to output
    customer segments
  • Label of segments
  • If each average of segments is bigger than the
    overall mean, a character h is given to that
    value. If the opposite case occurs, a character
    l is given.

32
Customer Segments and Corresponding Marketing
Strategies at a Specific Time
33
Changes of The Number of Customers in Each Segment
34
The Matrix of Transition Probability
  • ????????????,??????????????RhFlMl????(0.05,27?)???
    RhFlMl?????????(0.0620.115,66?)??????????RlFhMh??
    ??(0.0620.171,82?)???RlFhMh???????????(0.056,16?)
    ?
  • ??????????????????,???????????????,??????????????

????
?????
????
?????
????
????
35
Comparison of current strategy
36
Agenda
  • Abstract
  • Literature review
  • Framework of analysis
  • Application of dynamic CRM to a retailer (Case
    Study)
  • Conclusion Future work

37
Conclusion Future Work (1/4)
  • Conclusion
  • A cost-effective method for application of CRM
    should be done dynamically in time to solve
    management problems.
  • A method to discover potential customers.
  • Future work
  • The analysis of the outlier in loyal cluster.
  • Extend one-dimensional features to
    multi-dimensional features.

38
Future Work (2/4)
  • To use a multi-channel contact center as the
    foundation to model customer interaction
    processes.
  • To develop contact center evaluation methods, and
    define key performance indicators (KPI) for
    continuously improving customer service quality.

39
Future Work (3/4)
  • Contact Centers
  • Contact centers are implemented to provide
    improved customer services (Rowley, Mostowfi, and
    Lees, 2002).
  • Contact centers not only integrate multi-channels
    and provide customer service supports, but also
    improve quality management, contact routing, and
    knowledge management.

40
Future Work (4/4) - Multi-channels Contact Center

41
The End
42
Contact Center Clustering Analysis
  • Sharma (1996) proposed the RMSSTD (Root Mean
    Square Standard Deviation) and RS (R-Squared)
    methods to evaluate the quality of
    non-hierarchical clustering (e.g. K-Means) result.

43
Key Performance Indicators
  • Key Performance Indicators (KPIs) measure
    performance and improvements after companies have
    implemented new business processes.
  • The goal of implementing KPIs is to create
    professional contact centers and deliver high
    levels of service quality.

44
Key Performance Indicators
  • Cleveland (1996), Goodman, Ward, Segal and
    Cleveland (2000), Feinberg, Kim and Hokama (2000)
    and Grimm (2001) indicate the following important
    KPIs for contact center
  • Average time of answering inquiries.
  • Customer queuing time
  • Percentage of callers who have satisfactory
    resolution of problems on the first call
  • Abandonment rate (the percentage of callers who
    hang up or disconnect prior to answers being
    provided)
  • Adherence (agents in their seats and working as
    scheduled)
  • Average work time after call (time needed to
    finish paper work and research after the call has
    initially been handled)
  • Percentage of calls blocked (percentage of
    callers who receive a busy signal and cannot get
    into the service queue)
  • Time before abandoning the call (average time
    caller waited before balking from the service
    queue)
  • Inbound calls per agent during the work shift
  • Agent turnover (the number of agent who leave
    employment during a period of time)
  • Total cost of delivering the contact center
    service
  • Service output level (total number of customers
    served in a period of time)
  • Revenue of the contact center
  • The difference between predicted and actual work
    load
  • The difference between predicted and actual agent
    demand
  • Agent idle time
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