Recommending Fresh URLs Using Twitter Lists
نویسندگان
چکیده
Recommender systems for social media have attracted considerable attentions due to its inherent features, such as a huge amount of information, social networks, and real-time features. In microblogs, which have been recognized as one of the most popular social media, most of URLs posted by users are considered to be fresh (i.e., shortly after creation). Hence, it is important to recommend URLs in microblogs for appropriate users because users become able to obtain such fresh URLs immediately. In this paper, we propose a URL recommender system using Twitter user lists. Twitter user list is the official functionality to group users into a list along with the name of it. Since it is expected that the members of a list (i.e., users included in the list) have similar characteristics, we utilize this feature to capture the user interests. Experimental results show that our proposed method achieves higher effectiveness than other methods based on the follow-followed network which does not offer user interests explicitly.
منابع مشابه
Personalized Recommendation of Twitter Lists using Content and Network Information
Lists in social networks have become popular tools to organize content. This paper proposes a novel framework for recommending lists to users by combining several features that jointly capture their personal interests. Our contribution is of two-fold. First, we develop a ListRec model that leverages the dynamically varying tweet content, the network of twitterers and the popularity of lists to ...
متن کاملWarningBird: Detecting Suspicious URLs in Twitter Stream
Twitter can suffer from malicious tweets containing suspicious URLs for spam, phishing, and malware distribution. Previous Twitter spam detection schemes have used account features such as the ratio of tweets containing URLs and the account creation date, or relation features in the Twitter graph. Malicious users, however, can easily fabricate account features. Moreover, extracting relation fea...
متن کاملA Distributed System for Detecting Phishing and Mail Alert based Malicious Tweet URLs Blocker in a Twitter Stream
Twitter is a hugely well-liked famous social network where people exchanges messages of 140 characters called tweets. Because of short content size, and use of URL, it is difficult to detect phishing on Twitter unlike emails. Ease of information exchange large audience makes Twitter as a popular medium to spread external content like articles, videos, and photographs by embedding URLs in tweets...
متن کاملTweet-Recommender: Finding Relevant Tweets for News Articles
Twitter has become a prime source for disseminating news and opinions. However, the length of tweets prohibits detailed descriptions; instead, tweets sometimes contain URLs that link to detailed news articles. In this paper, we devise generic techniques for recommending tweets for any given news article. To evaluate and compare the different techniques, we collected tens of thousands of tweets ...
متن کاملSuspicious URL detection system using SGD Algorithm for twitter stream
Twitter is a one of the most popular social networking site used by millions of people in the world. As the usage growing rapidly in the recent years, attackers are concentrating more on twitter to gather personnel data and made changes to. It leads to the diminishing the privacy of the users. The attacker tweets suspicious URLs on the user’s timeline. These URLs contains spam, phishing and mal...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
دوره شماره
صفحات -
تاریخ انتشار 2013