提高人工神经网络性能的新方法

V. Devendran, H. Thiagarajan, A. Wahi
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引用次数: 0

摘要

人工神经网络受到大脑信息处理策略的启发,被证明在各种应用中都很有用,包括对象分类问题和许多其他感兴趣的领域,可以不断地更新新数据以优化其性能在任何时刻。神经分类器的性能取决于许多标准,如神经网络的结构、初始权值、特征数据、使用的训练样本数量,这些仍然是研究界的一个具有挑战性的问题。本文讨论了一种通过改变神经分类器训练样本的呈现方法来提高神经分类器性能的新方法。结果证明,网络也依赖于给分类器提供样本的方法。这项工作是使用真实世界的数据集进行的
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Novel Approach to Improve the Performance of Artificial Neural Networks
Artificial neural networks, inspired by the information-processing strategies of the brain, are proving to be useful in a variety of the applications including object classification problems and many other areas of interest, can be updated continuously with new data to optimize its performance at any instant. The performance of the neural classifiers depends on many criteria i.e., structure of neural networks, initial weights, feature data, number of training samples used which are all still a challenging issues among the research community. This paper discusses a novel approach to improve the performance of neural classifier by changing the methodology of presenting the training samples to the neural classifier. The results are proving that network also depends on the methodology of giving the samples to the classifier. This work is carried out using real world dataset
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