In this paper a Genetic Programming algorithm based on Solomonoff probabilistic induction concepts is designed and used to face an Inductive Inference task, i.e. symbolic regression. To this aim, Schwefel function is dressed with increasing levels of additive noise and the algorithm is employed to denoise the resulting function and recover the starting one. The proposed algorithm is compared against a classical parsimony-based GP. The earliest results seem to show a superiority of the Solomonoff-based approach.

Inductive Inference on Noisy Data by Genetic Programming

De Falco Ivanoe;Maisto Domenico;Tarantino Ernesto
2006

Abstract

In this paper a Genetic Programming algorithm based on Solomonoff probabilistic induction concepts is designed and used to face an Inductive Inference task, i.e. symbolic regression. To this aim, Schwefel function is dressed with increasing levels of additive noise and the algorithm is employed to denoise the resulting function and recover the starting one. The proposed algorithm is compared against a classical parsimony-based GP. The earliest results seem to show a superiority of the Solomonoff-based approach.
2006
Istituto di Calcolo e Reti ad Alte Prestazioni - ICAR
Genetic Programming
inductive inference
symbolic regression
Solomonoff's induction theory
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/83775
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