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Classification of Web Logs Using Hybrid Functional Link Artificial Neural Networks

机译:使用混合功能链接人工神经网络对Web日志进行分类

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Over the decades, researchers are striving to understand the web usage pattern of a user and are also extremely important for the owners of a website. In this paper, a hybrid analyzer is proposed to find out the browsing patterns of a user. Moreover, the pattern which is revealed from this surge of web access logs must be useful, motivating, and logical. A smooth functional link artificial neural network has been used to classify the web pages based on access time and region. The accuracy and smoothness of the network is taken birth by suitably tuning the parameters of functional link neural network using differential evolution. In specific, the differential evolution is used to fine tune the weight vector of this hybrid network and some trigonometric functions are used in functional expansion unit. The simulation result shows that the proposed learning mechanism is evidently producing better classification accuracy.
机译:几十年来,研究人员正在努力了解用户的网络使用模式,对网站的所有者来说也非常重要。在本文中,提出了一种混合分析器来找出用户的浏览模式。此外,从该Web访问日志的这种浪涌显示的模式必须是有用的,激励和逻辑的。平滑功能链接人工神经网络已被用于根据访问时间和区域对网页进行分类。通过使用差分演变适当地调整功能链接神经网络的参数来分娩网络的准确性和平滑度。具体而言,差分演进用于微调该混合网络的权重向量,并且在功能扩展单元中使用一些三角函数。仿真结果表明,所提出的学习机制明显地产生了更好的分类精度。

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