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Hybrid Multi-objective Optimization Approach for Neural Network Classification Using Local Search

机译:使用本地搜索的神经网络分类混合多目标优化方法

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Classification is inherently multi-objective problem. It is one of the most important tasks of data mining to extract important patterns from large volume of data. Traditionally, either only one objective is considered or the multiple objectives are accumulated to one objective function. In the last decade, Pareto-based multi-objective optimization approach have gained increasing popularity due to the use of multi-objective optimization using evolutionary algorithms and population-based search methods. Multi-objective optimization approaches are more powerful than traditional single-objective methods as it addresses various topics of data mining such as classification, clustering, feature selection, ensemble learning, etc. This paper proposes improved approach of non-dominated sorting algorithm II (NSGA II) for classification using neural network model by augmenting with local search. It tries to enhance two conflicting objectives of classifier: Accuracy and mean squared error. NSGA II is improved by augmenting back-propagation as a local search method to deal with the disadvantage of genetic algorithm, i.e. slow convergence to best solutions. By using backpropagation we are able to speed up the convergence. This approach is applied in various classification problems obtained from UCI repository. The neural network modes obtained shows high accuracy and low mean squared error.
机译:分类是固有的多目标问题。它是从大量数据中提取重要模式的数据挖掘最重要的任务之一。传统上,只考虑一个目标,或者多目标累积到一个目标函数。在过去的十年中,由于使用进化算法和基于人口的搜索方法的使用多目标优化,基于帕累托的多目标优化方法已经增加了普及。多目标优化方法比传统的单目标方法更强大,因为它解决了数据挖掘的各种主题,如分类,聚类,特征选择,集合学习等。本文提出了改进的非主导排序算法II的方法(NSGA ii)通过使用本地搜索来使用神经网络模型进行分类。它试图提高分类器的两个矛盾目标:准确性和均值平方误差。通过将反向传播作为本地搜索方法来改善NSGA II,以处理遗传算法的缺点,即慢会聚到最佳解决方案。通过使用BackPropagation,我们能够加快收敛。这种方法应用于从UCI存储库获得的各种分类问题中。获得的神经网络模式显示出高精度和低平均平方误差。

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