A Lamarckian Approach for Neural Network Training

作者:Paulo Cortez, Miguel Rocha, José Neves

摘要

In Nature, living beings improve their adaptation to surrounding environments by means of two main orthogonal processes: evolution and lifetime learning. Within the Artificial Intelligence arena, both mechanisms inspired the development of non-orthodox problem solving tools, namely: Genetic and Evolutionary Algorithms (GEAs) and Artificial Neural Networks (ANNs). In the past, several gradient-based methods have been developed for ANN training, with considerable success. However, in some situations, these may lead to local minima in the error surface. Under this scenario, the combination of evolution and learning techniques may induce better results, desirably reaching global optima. Comparative tests that were carried out with classification and regression tasks, attest this claim.

论文关键词:feedforward neural networks, genetic and evolutionary algorithms, hybrid systems, lamarckian optimization, learning algorithms

论文评审过程:

论文官网地址:https://doi.org/10.1023/A:1015259001150