| Abstract |
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This paper discusses the utilization of rule interestingness
measures in medical KDD. We selected various interestingness
measures and conducted experiments using clinical
datasets to examine how they can estimate real human
interest. The results indicate that some of them have
a stable, reasonable estimation performance and the combinational
use of interestingness measures will contribute
to medical KDD. We then developed a prototype of medical
KDD support user interface based on the experimental
outcomes. We conducted a case study in which a medical
expert tried to discover medical knowledge with the prototype.
Some interesting rules were actually obtained and that
indicates the potential of the user interface.
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Additional Information
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Citation:
Miho Ohsaki, Hidenao Abe, Shusaku Tsumoto, Hideto Yokoi, Takahira Yamaguchi,
"Proposal of Medical KDD Support User Interface Utilizing Rule Interestingness Measures,"
icdmw,
pp. 759-764,
Sixth IEEE International Conference on Data Mining - Workshops (ICDMW'06),
2006
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