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WS-BD-Based Two-Level Match: Interesting Sequential Patterns and Bayesian Fuzzy Clustering for Predicting the Web Pages from Weblogs

机译:基于WS-BD的两级匹配:有趣的顺序模式和贝叶斯模糊聚类,用于预测来自Weblogs的网页

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摘要

The rapid increase in information and technology has led to the increased amount of web pages, which raises the complexity in sticking to relevant web pages, and the visitor suffers due to wastage of time resulting in lack of satisfaction. This paper proposes a web page prediction method using a weighed support and Bhattacharya distance-based (WS-BD) two-level match. The major aim of the proposed method is to attain customer satisfaction. Initially, interesting sequential patterns are obtained using the weighed support that filters the sequential patterns obtained using a PrefixSpan algorithm based on the frequency, duration and recurrence of the web pages. Interesting sequential patterns are clustered using the proposed dice similarity-based Bayesian fuzzy clustering, and the web page is predicted using the two-level match based on Bhattacharya distance. The experimentation is performed using the CTI and MSNBC data which proves the effectiveness of the proposed method. The proposed method shows 9.59, 21.22 and 10.17% improvement than the existing FCM-KNN in terms of precision, recall and F measure for the CTI dataset. Also, the proposed method shows 2.58, 22.17 and 7.83% improvement than the existing FCM-KNN in terms of precision, recall and F measure for the MSNBC dataset.
机译:信息和技术的快速增加导致了增加的网页量,这提高了对相关网页的复杂性,并且由于缺乏满足的时间,访客因缺乏时间而受到影响。本文提出了一种使用称重支持和基于BHATTACHARYA距离(WS-BD)两级匹配的网页预测方法。该方法的主要目的是实现客户满意度。最初,使用基于网页的频率,持续时间和复发来滤除使用前缀算法获得的顺序模式来获得有趣的顺序模式。使用所提出的基于骰子相似性的贝叶斯模糊群集聚类有趣的顺序模式,并且使用基于Bhattacharya距离的两级匹配来预测网页。使用CTI和MSNBC数据进行实验,证明了所提出的方法的有效性。在CTI数据集的精度,召回和f度量方面,所提出的方法显示出的9.59,21.22和9.59,21.22和10.17%的改善,召回和CTI数据集的F测量值。此外,所提出的方法在MSNBC数据集的精确度,召回和F度量方面显示了2.58,22.17和7.83%的改进,而不是现有的FCM-KNN。

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