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An Optimization Approach to Learning Falling Rule Lists

Publication ,  Conference
Chen, C; Rudin, C
Published in: Proceedings of Machine Learning Research
January 1, 2018

A falling rule list is a probabilistic decision list for binary classification, consisting of a series of if-then rules with antecedents in the if clauses and probabilities of the desired outcome (“1”) in the then clauses. Just as in a regular decision list, the order of rules in a falling rule list is important–each example is classified by the first rule whose antecedent it satisfies. Unlike a regular decision list, a falling rule list requires the probabilities of the desired outcome (“1”) to be monotonically decreasing down the list. We propose an optimization approach to learning falling rule lists and “softly” falling rule lists, along with Monte-Carlo search algorithms that use bounds on the optimal solution to prune the search space.

Duke Scholars

Published In

Proceedings of Machine Learning Research

EISSN

2640-3498

Publication Date

January 1, 2018

Volume

84
 

Citation

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MLA
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Chen, C., & Rudin, C. (2018). An Optimization Approach to Learning Falling Rule Lists. In Proceedings of Machine Learning Research (Vol. 84).
Chen, C., and C. Rudin. “An Optimization Approach to Learning Falling Rule Lists.” In Proceedings of Machine Learning Research, Vol. 84, 2018.
Chen C, Rudin C. An Optimization Approach to Learning Falling Rule Lists. In: Proceedings of Machine Learning Research. 2018.
Chen, C., and C. Rudin. “An Optimization Approach to Learning Falling Rule Lists.” Proceedings of Machine Learning Research, vol. 84, 2018.
Chen C, Rudin C. An Optimization Approach to Learning Falling Rule Lists. Proceedings of Machine Learning Research. 2018.

Published In

Proceedings of Machine Learning Research

EISSN

2640-3498

Publication Date

January 1, 2018

Volume

84