[PDF][PDF] An empirical study on learning to rank of tweets

Y Duan, L Jiang, T Qin, M Zhou… - Proceedings of the 23rd …, 2010 - aclanthology.org
Y Duan, L Jiang, T Qin, M Zhou, HY Shum
Proceedings of the 23rd international conference on computational …, 2010aclanthology.org
Twitter, as one of the most popular micro-blogging services, provides large quantities of
fresh information including real-time news, comments, conversation, pointless babble and
advertisements. Twitter presents tweets in chronological order. Recently, Twitter introduced
a new ranking strategy that considers popularity of tweets in terms of number of retweets.
This ranking method, however, has not taken into account content relevance or the twitter
account. Therefore a large amount of pointless tweets inevitably flood the relevant tweets …
Abstract
Twitter, as one of the most popular micro-blogging services, provides large quantities of fresh information including real-time news, comments, conversation, pointless babble and advertisements. Twitter presents tweets in chronological order. Recently, Twitter introduced a new ranking strategy that considers popularity of tweets in terms of number of retweets. This ranking method, however, has not taken into account content relevance or the twitter account. Therefore a large amount of pointless tweets inevitably flood the relevant tweets. This paper proposes a new ranking strategy which uses not only the content relevance of a tweet, but also the account authority and tweet-specific features such as whether a URL link is included in the tweet. We employ learning to rank algorithms to determine the best set of features with a series of experiments. It is demonstrated that whether a tweet contains URL or not, length of tweet and account authority are the best conjunction. 1
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