GSR: A Generalized Symbolic Regression Approach
Identifying the mathematical relationships that best describe a dataset remains a very challenging problem in machine learning, and is known as Symbolic Regression (SR). In contrast to neural networks which are often treated as black boxes, SR attempts to gain insight into the underlying relationshi...
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Zusammenfassung: | Identifying the mathematical relationships that best describe a dataset
remains a very challenging problem in machine learning, and is known as
Symbolic Regression (SR). In contrast to neural networks which are often
treated as black boxes, SR attempts to gain insight into the underlying
relationships between the independent variables and the target variable of a
given dataset by assembling analytical functions. In this paper, we present
GSR, a Generalized Symbolic Regression approach, by modifying the conventional
SR optimization problem formulation, while keeping the main SR objective
intact. In GSR, we infer mathematical relationships between the independent
variables and some transformation of the target variable. We constrain our
search space to a weighted sum of basis functions, and propose a genetic
programming approach with a matrix-based encoding scheme. We show that our GSR
method is competitive with strong SR benchmark methods, achieving promising
experimental performance on the well-known SR benchmark problem sets. Finally,
we highlight the strengths of GSR by introducing SymSet, a new SR benchmark set
which is more challenging relative to the existing benchmarks. |
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DOI: | 10.48550/arxiv.2205.15569 |