2021
DOI: 10.48550/arxiv.2107.03146
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Model-agnostic multi-objective approach for the evolutionary discovery of mathematical models

Abstract: In modern data science, it is often not enough to obtain only a data-driven model with a good prediction quality. On the contrary, it is more interesting to understand the properties of the model, which parts could be replaced to obtain better results. Such questions are unified under machine learning interpretability questions, which could be considered one of the area's raising topics. In the paper, we use multi-objective evolutionary optimization for composite data-driven model learning to obtain the algori… Show more

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