Combining algorithms for Recommendation system on Twitter
P. Pankong. International Conference on Future Information Technology, 13 (2011):
5(2011)
Abstract
Twitter has rapidly increased in popularity over the past few years. So, we have focused on
Twitter as it has a large scale of data which is increasingly difficult to search through. In this paper, we propose
recommendations for content on Twitter. We explored four dimensions in designing such as: topic relevance of
content sources, the content candidate set for users, social voting and Meta data mapping. We implemented 24
algorithms for analysis of 12,000 records for three domains as follows: entertainment, stock exchange and
smart phone in the design space. The best performing algorithm improved the percentage of correct
matching interesting content to 23.86%.
%0 Journal Article
%1 nichakornpankong2011combining
%A Pankong, Prakancharoen
%D 2011
%J International Conference on Future Information Technology
%K Analysis Logistic Recommendation Regression SVM Twitter system
%N 2011
%P 5
%T Combining algorithms for Recommendation system on Twitter
%U http://www.ipcsit.com/vol13/35-ICFIT2011-F058.pdf
%V 13
%X Twitter has rapidly increased in popularity over the past few years. So, we have focused on
Twitter as it has a large scale of data which is increasingly difficult to search through. In this paper, we propose
recommendations for content on Twitter. We explored four dimensions in designing such as: topic relevance of
content sources, the content candidate set for users, social voting and Meta data mapping. We implemented 24
algorithms for analysis of 12,000 records for three domains as follows: entertainment, stock exchange and
smart phone in the design space. The best performing algorithm improved the percentage of correct
matching interesting content to 23.86%.
@article{nichakornpankong2011combining,
abstract = {Twitter has rapidly increased in popularity over the past few years. So, we have focused on
Twitter as it has a large scale of data which is increasingly difficult to search through. In this paper, we propose
recommendations for content on Twitter. We explored four dimensions in designing such as: topic relevance of
content sources, the content candidate set for users, social voting and Meta data mapping. We implemented 24
algorithms for analysis of 12,000 records for three domains as follows: entertainment, stock exchange and
smart phone in the design space. The best performing algorithm improved the percentage of correct
matching interesting content to 23.86%.},
added-at = {2011-11-21T11:07:05.000+0100},
author = {Pankong, Prakancharoen},
biburl = {https://www.bibsonomy.org/bibtex/2819b28aec352bdbec58d18866bd7c460/mohamed.baa},
description = {dieser Artikel beschreibt Filtering Algorithmus},
interhash = {aa052f2e63bcebe51ba54789b0d61d80},
intrahash = {819b28aec352bdbec58d18866bd7c460},
journal = {International Conference on Future Information Technology},
keywords = {Analysis Logistic Recommendation Regression SVM Twitter system},
number = 2011,
pages = 5,
timestamp = {2011-11-21T11:07:05.000+0100},
title = {Combining algorithms for Recommendation system on Twitter},
url = {http://www.ipcsit.com/vol13/35-ICFIT2011-F058.pdf},
volume = 13,
year = 2011
}