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Website user content navigation behavior modeling using time series neural networks

机译:时间序列神经网络的网站用户内容导航行为建模

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摘要

User navigation behavior modeling has attracted much research interest on the web. User Navigation Behavior modeling deals with creating a model to predict future user click based on previous user clicks. Previous works focus on predicting the next page without much attention to the user-selected content. In contrast to existing works, this paper focuses on the user selected contents and the page content layout for creating the user navigation behavior. In this paper, for the first time in the literature, a novel model for user navigation prediction has been proposed using the time series neural network. The performance of the proposed prediction model was examined by two variations of time series neural networks including nonlinear autoregressive (NAR) and nonlinear autoregressive with exogenous input (NARX). Providing external information for the NARX, page content layout is used. The experimental results show that the NAR and NARX neural networks are more efficient than other methods for click prediction, and using the page content layout in the NARX improves the accuracy of predictions.
机译:用户导航行为建模已引起了网络上的许多研究兴趣。用户导航行为建模涉及创建模型以基于先前的用户点击来预测未来的用户点击。以前的工作着重于预测下一页,而没有过多关注用户选择的内容。与现有作品相比,本文着重于用户选择的内容和用于创建用户导航行为的页面内容布局。本文是文献中首次使用时间序列神经网络提出了一种新的用户导航预测模型。通过时间序列神经网络的两个变体(包括非线性自回归(NAR)和带有外源输入的非线性自回归(NARX))来检验所提出的预测模型的性能。为NARX提供外部信息,使用页面内容布局。实验结果表明,NAR和NARX神经网络比其他方法更有效地进行点击预测,并且在NARX中使用页面内容布局可以提高预测的准确性。

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