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Simultaneous Evolution of Neural Network Topologies and Weights for Classification and Regression

机译:神经网络拓扑和权重的同时演变分类和回归

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摘要

Artificial Neural Networks (ANNs) are important Data Mining (DM) techniques. Yet, the search for the optimal ANN is a challenging task: the architecture should learn the input-output mapping without overfitting the data and training algorithms tend to get trapped into local minima. Under this scenario, the use of Evolutionary Computation (EC) is a promising alternative for ANN design and training. Moreover, since EC methods keep a pool of solutions, an ensemble can be build by combining the best ANNs. This work presents a novel algorithm for the optimization of ANNs, using a direct representation, a structural mutation operator and Lamarckian evolution. Sixteen real-world classification/regression tasks were used to test this strategy with single and ensemble based versions. Competitive results were achieved when compared with a heuristic model selection and other DM algorithms.
机译:人工神经网络(ANNS)是重要的数据挖掘(DM)技术。然而,搜索最佳ANN是一个具有挑战性的任务:架构应该学习输入输出映射而不过度装备,数据和训练算法倾向于被困成局部最小值。在这种情况下,使用进化计算(EC)是ANN设计和培训的有希望的替代品。此外,由于EC方法保留了一揽子解决方案,因此可以通过组合最佳安卡斯来构建集合。这项工作提出了一种用于优化ANN的新算法,使用直接表示,结构突变算子和拉马克进化。十六个现实世界分类/回归任务用于使用单一和合奏的版本测试此策略。与启发式模型选择和其他DM算法相比,实现了竞争结果。

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