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Feature Subset Selection in a Methodology for Training and Improving Artificial Neural Network Weights and Connections

机译:特征子集选择,用于培训和改善人工神经网络权重和连接的方法

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This paper investigates the problem of feature subset selection as part of a methodology that integrates heuristic tabu search, simulated annealing, genetic algorithms and backpropagation. This technique combines both global and local search strategies for the simultaneous optimization of the number of connections and connection values of Multi-Layer Perceptron neural networks. We compare the performance of the proposed method for feature subset selection to five classical feature selection methods in three different classification problems.
机译:本文调查了特征子集选择的问题,作为一种方法的一部分,该方法集成了启发式禁忌搜索,模拟退火,遗传算法和背部化。该技术结合了全局和本地搜索策略,以便同时优化多层Perceptron神经网络的连接数和连接值。我们在三种不同分类问题中比较了特征子集选择的提出方法的性能,到了五个经典特征选择方法。

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