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NEURAL NETWORKS TRAINING BY ARTIFICIAL BEE COLONY ALGORITHM ON PATTERN CLASSIFICATION

机译:基于模式分类的人工蜂殖民算法神经网络训练

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摘要

Artificial Neural Networks are commonly used in pattern classification, function approximation, optimization, pattern matching, machine learning and associative memories. They arc currently being an alternative to traditional statistical methods for mining data sets in order to classify data. Artificial Neural Networks arc well-established technology for solving prediction and classification problems, using training and testing data to build a model. However, the success of the networks is highly dependent on the performance of the training process and hence the training algorithm. In this paper, we applied the Artificial Bee Colony (ABC) Optimization Algorithm on training feed-forward neural networks to classify different data sets which are widely used in the machine learning community. The performance of the ABC algorithm is investigated on benchmark classification problems from classification area and the results arc compared with the other well-known conventional and evolutionary algorithms. The results indicate that ABC algorithm can efficiently be used on training feed-forward neural networks for the purpose of pattern classification.
机译:人工神经网络通常用于模式分类,功能逼近,优化,模式匹配,机器学习和关联记忆。当前,它们是挖掘数据集以对数据进行分类的传统统计方法的替代方法。人工神经网络是使用预测和分类问题,使用训练和测试数据来建立模型的成熟技术。但是,网络的成功高度依赖于训练过程的性​​能,因此也取决于训练算法。在本文中,我们将人工蜂群(ABC)优化算法应用于训练前馈神经网络,以对在机器学习社区中广泛使用的不同数据集进行分类。从分类区域对基准分类问题研究了ABC算法的性能,并将结果与​​其他众所周知的常规算法和进化算法进行了比较。结果表明,基于模式分类的目的,ABC算法可以有效地用于训练前馈神经网络。

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