RULE GENERATION AND EVALUATION BY DATA MINING ENSEMBLES FOR CLINICAL DECISION SUPPORT

Simon Fong, Luke Lu, Kun Lan

References

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  15. [15]Eibe Frank, Ian H., Witten: Generating Accurate RuleSets Without Global Optimization, Proc. FifteenthInternational Conference on Machine Learning, 1998,144-151.39Figure 2. Screen capture of the final rules ranked by performance scores.Figure 3. Screen capture of the final rules ranked by cardinality.7 out of the 8 strong rules require only 3 testing conditionsRules that have 3 testsRules that have only 1 testRules that have 2 tests

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