Symbolic regression (SR) is the task of learning a model of data in the form of a mathematical expression. By their nature, SR models have the potential to be accurate and human-interpretable at the same time. Unfortunately, finding such models, i.e., performing SR, appears to be a computationally intensive task. Historically, SR has been tackled with heuristics such as greedy or genetic algorithms and, while some works have hinted at the possible hardness of SR, no proof has yet been given that SR is, in fact, NP-hard. This begs the question: Is there an exact polynomial-time algorithm to compute SR models? We provide evidence suggesting that the answer is probably negative by showing that SR is NP-hard
Symbolic Regression (SR) is a type of regression analysis to automatically find the mathematical exp...
Genetic programming (GP) approaches have been widely studied for symbolic regression problems and ha...
Symbolic regression is a task of finding mathematical equation based on the observed data. Historica...
Symbolic regression (SR) is the task of learning a model of data in the form of a mathematical expre...
Symbolic regression (SR) is the task of learning a model of data in the form of a mathematical expre...
Symbolic regression (SR), as a special machine learning method, can produce mathematical models with...
Symbolic regression (SR), as a special machine learning method, can produce mathematical models with...
Symbolic Regression (SR) algorithms learn analytic expressions which both accurately fit data and, u...
Symbolic regression is a data-based machine learning approach that creates interpretable prediction ...
Symbolic regression is emerging as a promising machine learning method for learning succinct underly...
Symbolic regression is an important but challenging research topic in data mining. It can detect the...
In recent years, symbolic regression has been of wide interest to provide an interpretable symbolic ...
Symbolic Regression (SR) algorithms learn analytic expressions which both accurately fit data and, u...
The ever-growing accumulation of data makes automated distillation of understandable models from tha...
In symbolic regression, the search for analytic models is typically driven purely by the prediction ...
Symbolic Regression (SR) is a type of regression analysis to automatically find the mathematical exp...
Genetic programming (GP) approaches have been widely studied for symbolic regression problems and ha...
Symbolic regression is a task of finding mathematical equation based on the observed data. Historica...
Symbolic regression (SR) is the task of learning a model of data in the form of a mathematical expre...
Symbolic regression (SR) is the task of learning a model of data in the form of a mathematical expre...
Symbolic regression (SR), as a special machine learning method, can produce mathematical models with...
Symbolic regression (SR), as a special machine learning method, can produce mathematical models with...
Symbolic Regression (SR) algorithms learn analytic expressions which both accurately fit data and, u...
Symbolic regression is a data-based machine learning approach that creates interpretable prediction ...
Symbolic regression is emerging as a promising machine learning method for learning succinct underly...
Symbolic regression is an important but challenging research topic in data mining. It can detect the...
In recent years, symbolic regression has been of wide interest to provide an interpretable symbolic ...
Symbolic Regression (SR) algorithms learn analytic expressions which both accurately fit data and, u...
The ever-growing accumulation of data makes automated distillation of understandable models from tha...
In symbolic regression, the search for analytic models is typically driven purely by the prediction ...
Symbolic Regression (SR) is a type of regression analysis to automatically find the mathematical exp...
Genetic programming (GP) approaches have been widely studied for symbolic regression problems and ha...
Symbolic regression is a task of finding mathematical equation based on the observed data. Historica...