2011
DOI: 10.1007/978-3-642-22362-4_1
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Analyzing User Modeling on Twitter for Personalized News Recommendations

Abstract: Abstract. How can micro-blogging activities on Twitter be leveraged for user modeling and personalization? In this paper we investigate this question and introduce a framework for user modeling on Twitter which enriches the semantics of Twitter messages (tweets) and identifies topics and entities (e.g. persons, events, products) mentioned in tweets. We analyze how strategies for constructing hashtag-based, entity-based or topic-based user profiles benefit from semantic enrichment and explore the temporal dynam… Show more

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Cited by 248 publications
(220 citation statements)
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“…By specifying temporal constraints, client applications can, for example, retrieve the latest profile of a user or a profile that is only based on Twitter activities which a user performed on weekends. In previous work [13], we revealed, for example, that there are significant differences between user profiles created on the weekends with those created during the week.…”
Section: Definition 1 (User Profile)mentioning
confidence: 81%
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“…By specifying temporal constraints, client applications can, for example, retrieve the latest profile of a user or a profile that is only based on Twitter activities which a user performed on weekends. In previous work [13], we revealed, for example, that there are significant differences between user profiles created on the weekends with those created during the week.…”
Section: Definition 1 (User Profile)mentioning
confidence: 81%
“…First experiments show that entity-based user profiles generated by TUMS, allow for high precision when recommending news articles [13]. Our ambition is to make this news recommender available as Web application using TUMS for generating user profiles.…”
Section: Discussionmentioning
confidence: 99%
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