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Genetic Programming for Automatically Evolving Multiple Features to Classification. | LitMetric

Genetic Programming for Automatically Evolving Multiple Features to Classification.

Evol Comput

Center for Data Science and Artificial Intelligence & School of Engineering and Computer Science, Victoria University of Wellington,Wellington 6140, New Zealand

Published: September 2024

AI Article Synopsis

  • High-dimensional data classification is difficult due to large search spaces and complex interactions, which complicate feature selection and construction processes.
  • This study explores using genetic programming to perform feature selection and construction simultaneously, aiming to improve classification tasks.
  • Testing on 16 datasets shows that the features obtained through this combined method can enhance classification accuracy and reduce dimensionality, demonstrating the effectiveness of the approach.

Article Abstract

Performing classification on high-dimensional data poses a significant challenge due to the huge search space. Moreover, complex feature interactions introduce an additional obstacle. The problems can be addressed by using feature selection to select relevant features or feature construction to construct a small set of high-level features. However, performing feature selection or feature construction only might make the feature set suboptimal. To remedy this problem, this study investigates the use of genetic programming for simultaneous feature selection and feature construction in addressing different classification tasks. The proposed approach is tested on 16 datasets and compared with seven methods including both feature selection and feature constructions techniques. The results show that the obtained feature sets with the constructed and/or selected features can significantly increase the classification accuracy and reduce the dimensionality of the datasets. Further analysis reveals the complementarity of the obtained features leading to the promising classification performance of the proposed method.

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Source
http://dx.doi.org/10.1162/evco_a_00359DOI Listing

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