Interpretable scientific discovery with symbolic regression: a review

被引:0
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作者
Nour Makke
Sanjay Chawla
机构
[1] HBKU,Qatar Computing Research Institute
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关键词
Symbolic Regression; Automated Scientific Discovery; Interpretable AI;
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摘要
Symbolic regression is emerging as a promising machine learning method for learning succinct underlying interpretable mathematical expressions directly from data. Whereas it has been traditionally tackled with genetic programming, it has recently gained a growing interest in deep learning as a data-driven model discovery tool, achieving significant advances in various application domains ranging from fundamental to applied sciences. In this survey, we present a structured and comprehensive overview of symbolic regression methods, review the adoption of these methods for model discovery in various areas, and assess their effectiveness. We have also grouped state-of-the-art symbolic regression applications in a categorized manner in a living review.
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