Link Recommender: Collaborative Filtering For Recommending URLs to Twitter Users

Twitter, the popular micro-blogging service, has gained a rapid growth in recent years. Newest information is accessible in this social web service through a large volume of real-time tweets. Tweets are short and they are more informative when they are coupled with URLs, which are addresses of inter...

Full description

Bibliographic Details
Main Author: Yazdanfar, Nazpar
Other Authors: Thomo, Alex
Language:English
en
Published: 2014
Subjects:
Online Access:http://hdl.handle.net/1828/5211
id ndltd-uvic.ca-oai-dspace.library.uvic.ca-1828-5211
record_format oai_dc
spelling ndltd-uvic.ca-oai-dspace.library.uvic.ca-1828-52112015-01-29T16:52:33Z Link Recommender: Collaborative Filtering For Recommending URLs to Twitter Users Yazdanfar, Nazpar Thomo, Alex Recommender System Twitter Neighborhood-based approach Twitter, the popular micro-blogging service, has gained a rapid growth in recent years. Newest information is accessible in this social web service through a large volume of real-time tweets. Tweets are short and they are more informative when they are coupled with URLs, which are addresses of interesting web pages related to the tweets. Due to tweet overload in Twitter, an accurate URL recommender system is a bene cial tool for information seekers. In this thesis, we focus on a neighborhoodbased recommender system that recommends URLs to Twitter users. We consider one of the major elements of tweets, hashtags, as the topic representatives of URLs in our approach. We propose methods for incorporating hashtags in measuring the relevancy of URLs. Our experiments show that our neighborhood-based recommender system outperforms a matrix factorization-based system significantly. We also show that the accuracy of URL recommendation in Twitter is time-dependent. A higher recommendation accuracy is obtained when more recent data is provided for recommendation. Graduate 0984 y.nazpar@gmail.com 2014-03-25T16:38:14Z 2014-03-25T16:38:14Z 2013 2014-03-25 Thesis http://hdl.handle.net/1828/5211 English en Available to the World Wide Web
collection NDLTD
language English
en
sources NDLTD
topic Recommender System
Twitter
Neighborhood-based approach
spellingShingle Recommender System
Twitter
Neighborhood-based approach
Yazdanfar, Nazpar
Link Recommender: Collaborative Filtering For Recommending URLs to Twitter Users
description Twitter, the popular micro-blogging service, has gained a rapid growth in recent years. Newest information is accessible in this social web service through a large volume of real-time tweets. Tweets are short and they are more informative when they are coupled with URLs, which are addresses of interesting web pages related to the tweets. Due to tweet overload in Twitter, an accurate URL recommender system is a bene cial tool for information seekers. In this thesis, we focus on a neighborhoodbased recommender system that recommends URLs to Twitter users. We consider one of the major elements of tweets, hashtags, as the topic representatives of URLs in our approach. We propose methods for incorporating hashtags in measuring the relevancy of URLs. Our experiments show that our neighborhood-based recommender system outperforms a matrix factorization-based system significantly. We also show that the accuracy of URL recommendation in Twitter is time-dependent. A higher recommendation accuracy is obtained when more recent data is provided for recommendation. === Graduate === 0984 === y.nazpar@gmail.com
author2 Thomo, Alex
author_facet Thomo, Alex
Yazdanfar, Nazpar
author Yazdanfar, Nazpar
author_sort Yazdanfar, Nazpar
title Link Recommender: Collaborative Filtering For Recommending URLs to Twitter Users
title_short Link Recommender: Collaborative Filtering For Recommending URLs to Twitter Users
title_full Link Recommender: Collaborative Filtering For Recommending URLs to Twitter Users
title_fullStr Link Recommender: Collaborative Filtering For Recommending URLs to Twitter Users
title_full_unstemmed Link Recommender: Collaborative Filtering For Recommending URLs to Twitter Users
title_sort link recommender: collaborative filtering for recommending urls to twitter users
publishDate 2014
url http://hdl.handle.net/1828/5211
work_keys_str_mv AT yazdanfarnazpar linkrecommendercollaborativefilteringforrecommendingurlstotwitterusers
_version_ 1716729671934017536