Complexity of evolving models in genetic programming (GP) can impact both the quality of the models and the evolutionary search. While previous studies have proposed several notions of GP model complexity, the size of a GP model is by far the most researched measure of model complexity. However, previous studies have also shown that controlling the size does not automatically improve the accuracy of GP models, especially the accuracy on out of sample (test) data. Furthermore, size does not represent the functional composition of a model, which is often related to its accuracy on test data. In this study, we explore the {\em evaluation time} of GP models as a measure of their complexity; we define the evaluation time as the time taken to ev...
International audienceInspired by genetic programming (GP), we study iterative algorithms for non-co...
The last decade has seen amazing performance improvements in deep learning. However, the black-box n...
We show negative results about the automatic generation of programs within bounded-time. Combining r...
Complexity of evolving models in genetic programming (GP) can impact both the quality of the models ...
In genetic programming (GP), controlling complexity often means reducing the size of evolved express...
The quest for simple solutions is not new in machine learning (ML) and related methods such as genet...
Traditionally, reducing complexity in Machine Learning promises benefits such as less overfitting. H...
In machine learning, reducing the complexity of a model can help to improve its computational effici...
Genetic programming (GP), a widely used evolutionary computing technique, suffers from bloat—the pro...
In machine learning, reducing the complexity of a model can help to improve its computational effici...
© The Author(s) 2022. This article is licensed under a Creative Commons Attribution 4.0 Internationa...
Genetic programming (GP) is an evolutionary computation technique to solve problems in an automated,...
In this paper, we propose the use of Tikhonov regularization in conjunction with node count as a gen...
In this paper, we carry out experimental investigations that complement recent theoretical investiga...
4siThe relationship between generalization and solutions functional complexity in genetic programmin...
International audienceInspired by genetic programming (GP), we study iterative algorithms for non-co...
The last decade has seen amazing performance improvements in deep learning. However, the black-box n...
We show negative results about the automatic generation of programs within bounded-time. Combining r...
Complexity of evolving models in genetic programming (GP) can impact both the quality of the models ...
In genetic programming (GP), controlling complexity often means reducing the size of evolved express...
The quest for simple solutions is not new in machine learning (ML) and related methods such as genet...
Traditionally, reducing complexity in Machine Learning promises benefits such as less overfitting. H...
In machine learning, reducing the complexity of a model can help to improve its computational effici...
Genetic programming (GP), a widely used evolutionary computing technique, suffers from bloat—the pro...
In machine learning, reducing the complexity of a model can help to improve its computational effici...
© The Author(s) 2022. This article is licensed under a Creative Commons Attribution 4.0 Internationa...
Genetic programming (GP) is an evolutionary computation technique to solve problems in an automated,...
In this paper, we propose the use of Tikhonov regularization in conjunction with node count as a gen...
In this paper, we carry out experimental investigations that complement recent theoretical investiga...
4siThe relationship between generalization and solutions functional complexity in genetic programmin...
International audienceInspired by genetic programming (GP), we study iterative algorithms for non-co...
The last decade has seen amazing performance improvements in deep learning. However, the black-box n...
We show negative results about the automatic generation of programs within bounded-time. Combining r...