HPM: A Hybrid Model for User’s Behavior Prediction Based on N-Gram Parsing and Access Logs

The continuous growth of the World Wide Web has led to the problem of long access delays. To reduce this delay, prefetching techniques have been used to predict the users’ browsing behavior to fetch the web pages before the user explicitly demands that web page. To make near accurate predictions for...

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Main Authors: Sonia Setia, Verma Jyoti, Neelam Duhan
Format: Article
Language:English
Published: Hindawi Limited 2020-01-01
Series:Scientific Programming
Online Access:http://dx.doi.org/10.1155/2020/8897244
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spelling doaj-7248c401d711405cbaa70b0a23c1ca232021-07-02T17:27:16ZengHindawi LimitedScientific Programming1058-92441875-919X2020-01-01202010.1155/2020/88972448897244HPM: A Hybrid Model for User’s Behavior Prediction Based on N-Gram Parsing and Access LogsSonia Setia0Verma Jyoti1Neelam Duhan2J. C. Bose University of Science and Technology, YMCA, Faridabad 121006, IndiaFaculty of Computer Science, J. C. Bose University of Science and Technology, YMCA, Faridabad 121006, IndiaFaculty of Computer Science, J. C. Bose University of Science and Technology, YMCA, Faridabad 121006, IndiaThe continuous growth of the World Wide Web has led to the problem of long access delays. To reduce this delay, prefetching techniques have been used to predict the users’ browsing behavior to fetch the web pages before the user explicitly demands that web page. To make near accurate predictions for users’ search behavior is a complex task faced by researchers for many years. For this, various web mining techniques have been used. However, it is observed that either of the methods has its own set of drawbacks. In this paper, a novel approach has been proposed to make a hybrid prediction model that integrates usage mining and content mining techniques to tackle the individual challenges of both these approaches. The proposed method uses N-gram parsing along with the click count of the queries to capture more contextual information as an effort to improve the prediction of web pages. Evaluation of the proposed hybrid approach has been done by using AOL search logs, which shows a 26% increase in precision of prediction and a 10% increase in hit ratio on average as compared to other mining techniques.http://dx.doi.org/10.1155/2020/8897244
collection DOAJ
language English
format Article
sources DOAJ
author Sonia Setia
Verma Jyoti
Neelam Duhan
spellingShingle Sonia Setia
Verma Jyoti
Neelam Duhan
HPM: A Hybrid Model for User’s Behavior Prediction Based on N-Gram Parsing and Access Logs
Scientific Programming
author_facet Sonia Setia
Verma Jyoti
Neelam Duhan
author_sort Sonia Setia
title HPM: A Hybrid Model for User’s Behavior Prediction Based on N-Gram Parsing and Access Logs
title_short HPM: A Hybrid Model for User’s Behavior Prediction Based on N-Gram Parsing and Access Logs
title_full HPM: A Hybrid Model for User’s Behavior Prediction Based on N-Gram Parsing and Access Logs
title_fullStr HPM: A Hybrid Model for User’s Behavior Prediction Based on N-Gram Parsing and Access Logs
title_full_unstemmed HPM: A Hybrid Model for User’s Behavior Prediction Based on N-Gram Parsing and Access Logs
title_sort hpm: a hybrid model for user’s behavior prediction based on n-gram parsing and access logs
publisher Hindawi Limited
series Scientific Programming
issn 1058-9244
1875-919X
publishDate 2020-01-01
description The continuous growth of the World Wide Web has led to the problem of long access delays. To reduce this delay, prefetching techniques have been used to predict the users’ browsing behavior to fetch the web pages before the user explicitly demands that web page. To make near accurate predictions for users’ search behavior is a complex task faced by researchers for many years. For this, various web mining techniques have been used. However, it is observed that either of the methods has its own set of drawbacks. In this paper, a novel approach has been proposed to make a hybrid prediction model that integrates usage mining and content mining techniques to tackle the individual challenges of both these approaches. The proposed method uses N-gram parsing along with the click count of the queries to capture more contextual information as an effort to improve the prediction of web pages. Evaluation of the proposed hybrid approach has been done by using AOL search logs, which shows a 26% increase in precision of prediction and a 10% increase in hit ratio on average as compared to other mining techniques.
url http://dx.doi.org/10.1155/2020/8897244
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