behaviour as a set of IF-THEN rules After obtaining
the usage patterns of interesting customer group at
time period t, we can trace the behaviour changes of
these customers from time period t to t+1 when
retrieving their corresponding data at time period t+1.
The proposed model has been successfully
implemented using real credit card data provided by
a commercial bank in Taiwan. The provided analysis
procedure should provide card issuers a systematic
approach to set up marketing strategies for
interesting customer groups. However, there are still
some rooms for improvement in the future.
Currently, only the fuzzy number with trapezoid
shape is considered. It is suggested that automatic
membership function fitting algorithms can be
incorporated into the proposed framework. Besides,
it will be worthwhile to explore variant customer
groups and study what marketing strategies can
affect their behaviour.
REFERENCES
Chen, M.-C., Chiu, A.-L. and Chang, H.-H., 2005a.
Mining changes in customer behavior in retail
marketing, Expert Systems with Applications, Vol. 28,
No. 4, pp. 773-781.
Chen, R., Chen, T., Chien, Y., and Yang, Y., 2005b.
Novel questionnaire-responded transaction approach
with SVM for credit card fraud detection, Lecture
Notes in Computer Science (LNCS), Vol. 3497, pp.
916-921.
Donato, J. M., Schryver, J. C., Hinkel, G. C., Schmoyer, R.
L., Leuze, M. R., and Grandy, N. W., 1999. Mining
multi-dimensional data for decision support, IEEE
Future generation Computer Systems, Vol. 15, No. 3,
pp. 433-441.
Dong, G., Li, J., 1999. Efficient mining of emerging
patterns: discovering trends and differences, In
Proceedings of the Fifth International Conference on
Knowledge Discovery and Data Mining, pp. 43-52.
Giudici, P., Passerone, G., 2002. Data mining of
association structures to model consumer behavior,
Computational Statistics and Data Analysis, Vol. 38,
No. 4, pp. 533-541.
Han, J., Dong, G. and Yin, Y., 1999. Efficient mining of
partial periodic patterns in time series database. In
Proceedings of the Fifteenth International Conference
on Data Engineering, pp. 106-115.
Janikow, C. Z., 1998. Fuzzy decision trees: issues and
Methods, IEEE Transactions on Systems, Man, and
Cybernetics-Part B: Cybernetics, Vol. 28, No. 1, pp. 1-
14.
Lee, T.-S., Chiu, C.-C., Chou, Y.-C. and Lu, C.-J., 2006.
Mining the customer credit using classification and
regression tree and multivariate adaptive regression
splines, Computational Statistics & Data Analysis, Vol.
50, No. 4, pp. 1113-1130.
Kohonen, T., 1990. The self-organizing map, In
Proceedings of the IEEE, Vol. 78, No. 9, pp. 1464-
1480.
Kou, Y., Lu, C.-T., Sirwongwattana, S., Huang, Y.-P.,
2004. Survey of fraud detection techniques, In
Proceedings of IEEE International Conference on
Networking, Sensing and Control, Vol. 2, pp. 749- 754.
Liu, B., Hsu, W., 1996. Post-analysis of learned rules, In
Proceedings of the Thirteen National Conference on
Artificial Intelligence, pp. 220-232.
Liu, B., Hsu, W., Ma, Y. and Chen, S., 1999. Mining
interesting knowledge using DM-II, In Proceedings of
the Fifth International Conference on Knowledge
Discovery and Data Mining, pp. 430-434.
Quinaln, J. R., 1986. Induction of decision trees. Machine
Learning, Vol. 1, No. 1, pp. 81-106.
Rauber, A. and Merkl, D., 1999. The SOMLib digital
library system. In Proceedings of the Third European
Conference, ECDL'99, pp. 323.
Tsai, C.-Y., Chiu, C.-C., 2004. A purchase-based market
segmentation methodology, Expert Systems with
Applications, Vol. 27, No. 2, pp. 265-276.
Tsai, C.-Y., Wang, J.-C., Chen, C.-J., 2007. Mining usage
behavior change for credit card users, WSEAS
Transactions on Information Science and Applications,
Vol. 4, No. 3, pp. 529-536.
Vesanto, J., Alhoniemi, E., 2000. Clustering of the Self-
Organization Map, IEEE Transactions on Neural
Networks, Vol. 11, pp. 568-600.
Wu, J. and Lin, Z., 2005. Research on customer
segmentation model by clustering. In Proceedings of
the 7th international Conference on Electronic
Commerce (ICEC '05), pp. 316 – 318.
Zhang, X., Li, Y., 1993. Self-organizing map as a new
method for clustering and data analysis, In
Proceedings of International Joint Conference on
Neural Networks, pp. 2448-2451.
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