An Approach to Enhance the Quality of Recommendation Using Collaborative Tagging

Collaborative labeling portrays the process by which numerous users put in metadata in the form of keywords to shared data. Nowadays, collaborative labeling has grown in reputation on the web, on sites that permit users to label bookmarks, photographs and other details. It has been recently become u...

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Main Authors: Latha Banda, K.K. Bharadwaj
Format: Article
Language:English
Published: Atlantis Press 2014-08-01
Series:International Journal of Computational Intelligence Systems
Subjects:
Online Access:https://www.atlantis-press.com/article/25868514.pdf
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spelling doaj-41a995bd1f33451680d1d180953316ce2020-11-25T02:21:13ZengAtlantis PressInternational Journal of Computational Intelligence Systems 1875-68832014-08-017410.1080/18756891.2014.960225An Approach to Enhance the Quality of Recommendation Using Collaborative TaggingLatha BandaK.K. BharadwajCollaborative labeling portrays the process by which numerous users put in metadata in the form of keywords to shared data. Nowadays, collaborative labeling has grown in reputation on the web, on sites that permit users to label bookmarks, photographs and other details. It has been recently become useful and well known as one effective way of classifying items for future search, sharing information, and filtering. So, as to predict the future search of users, we propose a novel collaborative tagging-based page recommendation algorithm using fuzzy classifier. The method consists of three phases: Grouping, Rule Generation Phase and Page Recommendation Phase. In the proposed method, we calculate the resemblance of users in selecting tags and thereby, calculate the nearest neighbors of each user and cluster them. Then, the priority of tags and items for each user is calculated for constructing a Nominal Label Matrix and Nominal Page Matrix. Finally, the fuzzy rules are generated for page recommendation. The experimentation is carried out on delicious datasets and the experimental results ensured that the proposed algorithm has achieved the maximum hit ratio of 6.6% for neighborhood size of 20, which is higher than the existing technique which obtained only 5.5%.https://www.atlantis-press.com/article/25868514.pdfPage recommendationfuzzy classifierCollaborative labelingRule generation
collection DOAJ
language English
format Article
sources DOAJ
author Latha Banda
K.K. Bharadwaj
spellingShingle Latha Banda
K.K. Bharadwaj
An Approach to Enhance the Quality of Recommendation Using Collaborative Tagging
International Journal of Computational Intelligence Systems
Page recommendation
fuzzy classifier
Collaborative labeling
Rule generation
author_facet Latha Banda
K.K. Bharadwaj
author_sort Latha Banda
title An Approach to Enhance the Quality of Recommendation Using Collaborative Tagging
title_short An Approach to Enhance the Quality of Recommendation Using Collaborative Tagging
title_full An Approach to Enhance the Quality of Recommendation Using Collaborative Tagging
title_fullStr An Approach to Enhance the Quality of Recommendation Using Collaborative Tagging
title_full_unstemmed An Approach to Enhance the Quality of Recommendation Using Collaborative Tagging
title_sort approach to enhance the quality of recommendation using collaborative tagging
publisher Atlantis Press
series International Journal of Computational Intelligence Systems
issn 1875-6883
publishDate 2014-08-01
description Collaborative labeling portrays the process by which numerous users put in metadata in the form of keywords to shared data. Nowadays, collaborative labeling has grown in reputation on the web, on sites that permit users to label bookmarks, photographs and other details. It has been recently become useful and well known as one effective way of classifying items for future search, sharing information, and filtering. So, as to predict the future search of users, we propose a novel collaborative tagging-based page recommendation algorithm using fuzzy classifier. The method consists of three phases: Grouping, Rule Generation Phase and Page Recommendation Phase. In the proposed method, we calculate the resemblance of users in selecting tags and thereby, calculate the nearest neighbors of each user and cluster them. Then, the priority of tags and items for each user is calculated for constructing a Nominal Label Matrix and Nominal Page Matrix. Finally, the fuzzy rules are generated for page recommendation. The experimentation is carried out on delicious datasets and the experimental results ensured that the proposed algorithm has achieved the maximum hit ratio of 6.6% for neighborhood size of 20, which is higher than the existing technique which obtained only 5.5%.
topic Page recommendation
fuzzy classifier
Collaborative labeling
Rule generation
url https://www.atlantis-press.com/article/25868514.pdf
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