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首页> 外文期刊>The Computer journal >WS-BD-Based Two-Level Match: Interesting Sequential Patterns and Bayesian Fuzzy Clustering for Predicting the Web Pages from Weblogs
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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,可从Weblog预测网页

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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:信息和技术的迅速发展导致网页数量的增加,这增加了粘贴相关网页的复杂性,并且由于时间浪费导致访问者遭受痛苦,从而导致满意度不足。本文提出了一种基于加权支持和基于Bhattacharya距离(WS-BD)的两级匹配的网页预测方法。所提出的方法的主要目的是获得客户满意度。最初,使用加权支持器获得有趣的顺序模式,该称重支持器根据网页的频率,持续时间和重复出现对使用PrefixSpan算法获得的顺序模式进行过滤。使用基于骰子相似度的贝叶斯模糊聚类对有趣的顺序模式进行聚类,并使用基于Bhattacharya距离的两级匹配来预测网页。利用CTI和MSNBC数据进行了实验,证明了该方法的有效性。相对于现有的FCM-KNN,该方法在CTI数据集的精度,召回率和F度量方面显示出9.59、21.22和10.17%的改进。同样,该方法在精度,召回率和F量度方面比现有FCM-KNN分别提高了2.58%,22.17和7.83%。

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