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Enhanced Optimization with Composite Objectives and Novelty Pulsation

Authors :
Shahrzad, Hormoz
Hodjat, Babak
Dollé, Camille
Denissov, Andrei
Lau, Simon
Goodhew, Donn
Dyer, Justin
Miikkulainen, Risto
Publication Year :
2019

Abstract

An important benefit of multi-objective search is that it maintains a diverse population of candidates, which helps in deceptive problems in particular. Not all diversity is useful, however: candidates that optimize only one objective while ignoring others are rarely helpful. A recent solution is to replace the original objectives by their linear combinations, thus focusing the search on the most useful trade-offs between objectives. To compensate for the loss of diversity, this transformation is accompanied by a selection mechanism that favors novelty. This paper improves this approach further by introducing novelty pulsation, i.e. a systematic method to alternate between novelty selection and local optimization. In the highly deceptive problem of discovering minimal sorting networks, it finds state-of-the-art solutions significantly faster than before. In fact, our method so far has established a new world record for the 20-lines sorting network with 91 comparators. In the real-world problem of stock trading, it discovers solutions that generalize significantly better on unseen data. Composite Novelty Pulsation is therefore a promising approach to solving deceptive real-world problems through multi-objective optimization.<br />Comment: arXiv admin note: substantial text overlap with arXiv:1803.03744

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1906.04050
Document Type :
Working Paper