PRETSL: Distributed Probabilistic Rule Evolution for Time-Series Classification (2016)
Babak Hodjat, Hormoz Shahrzad, Risto Miikkulainen, Lawrence Murray, and Chris Holmes
The distributed evolutionary computation platform EC-Star is extended in this paper to probabilistic classifiers. This extension, called PRETSL, allows the distributed age-layered evolution of probabilistic rule sets, which in turn makes more fine-grained decisions possible. The method is tested on 20 UCI data problems, as well as a larger dataset of arterial blood pressure waveforms. The results show consistent improvement in all cases compared to binary classification rule-sets. Probabilistic rule evolution is thus a promising approach to difficult classification tasks and particularly well suited for time-series classification.

This work was done at Sentient Technologies, Inc. and University of Oxford.

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To Appear In Genetic Programming Theory and Practice Workshop, 2016.
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Risto Miikkulainen Faculty risto [at] cs utexas edu