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wFDT - Weighted Fuzzy Decision Trees for Prognosis of Breast Cancer Survivability
Khan, U., Shin, H., Choi, J.P. and Kim, M.
Accurate and less invasive personalized predictive
medicine can spare many breast cancer patients from
receiving complex surgical biopsies, unnecessary adjuvant
treatments and its expensive medical cost. Cancer
prognosis estimates recurrence of disease and predict
survival of patient; hence resulting in improved patient
management. To develop such knowledge based
prognostic system, this paper examines potential
hybridization of accuracy and interpretability in the form
of Fuzzy Logic and Decision Trees, respectively. Effect of
rule weights on fuzzy decision trees is investigated to be an
alternative to membership function modifications for
performance optimization.
Experiments were performed using different combinations
of: number of decision tree rules, types of fuzzy
membership functions and inference techniques for breast
cancer survival analysis. SEER breast cancer data set
(1973-2003), the most comprehensible source of
information on cancer incidence in United States, is
considered. Performance comparisons suggest that
predictions of weighted fuzzy decision trees (wFDT) are
more accurate and balanced, than independently applied
crisp decision tree classifiers; moreover it has a potential to
adapt for significant performance enhancement. |
Cite as: Khan, U., Shin, H., Choi, J.P. and Kim, M. (2008). wFDT - Weighted Fuzzy Decision Trees for Prognosis of Breast Cancer Survivability. In Proc. Seventh Australasian Data Mining Conference (AusDM 2008), Glenelg, South Australia. CRPIT, 87. Roddick, J. F., Li, J., Christen, P. and Kennedy, P. J., Eds. ACS. 141-152. |
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