Selecting among rules induced from a hurricane database

作者:John A. Major ASA, John J. Mangano

摘要

Rule induction can achieve orders of magnitude reduction in the volume of data descriptions. For example, we applied a commercial tool (IXLtm) to a 1,819 record tropical storm database, yielding 161 rules. However, human comprehension of the discovered results may require further reduction. We present a rule refinement strategy, partly implemented in a Prolog program, that operationalizes “interestingness” into performance, simplicity, novelty, and significance. Applying the strategy to the induced rulebase yielded 10 “genuinely interesting” rules.

论文关键词:knowledge discovery, rule refinement, interestingness, hurricanes

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论文官网地址:https://doi.org/10.1007/BF00962821