Most of the tweets that users exchange on Twitter make implicit mentions of named-entities, which in turn can be mapped to corresponding Wikipedia articles using proper Entity Linking (EL) techniques. Some of those become trending entities on Twitter due to a long-lasting or a sudden effect on the volume of tweets where they are mentioned. We argue that the set of trending entities discovered from Twitter may help predict the volume of requests for relating Wikipedia articles. To validate this claim, we apply an EL technique to extract trending entities from a large dataset of public tweets. Then, we analyze the time series derived from the hourly trending score (i.e., an index of popularity) of each entity as measured by Twitter and Wikipedia, respectively. Our results reveals that Twitter actually leads Wikipedia by one or more hours.

Twitter anticipates bursts of requests for Wikipedia articles / Tolomei, Gabriele; Orlando, Salvatore; Diego, Ceccarelli; Lucchese, Claudio. - (2013), pp. 5-8. (Intervento presentato al convegno 2103 workshop on Data-driven user behavioral modelling and mining from social media - DUBMOD '13 tenutosi a San Francisco, CA, USA) [10.1145/2513577.2538768].

Twitter anticipates bursts of requests for Wikipedia articles

TOLOMEI, GABRIELE
;
2013

Abstract

Most of the tweets that users exchange on Twitter make implicit mentions of named-entities, which in turn can be mapped to corresponding Wikipedia articles using proper Entity Linking (EL) techniques. Some of those become trending entities on Twitter due to a long-lasting or a sudden effect on the volume of tweets where they are mentioned. We argue that the set of trending entities discovered from Twitter may help predict the volume of requests for relating Wikipedia articles. To validate this claim, we apply an EL technique to extract trending entities from a large dataset of public tweets. Then, we analyze the time series derived from the hourly trending score (i.e., an index of popularity) of each entity as measured by Twitter and Wikipedia, respectively. Our results reveals that Twitter actually leads Wikipedia by one or more hours.
2013
2103 workshop on Data-driven user behavioral modelling and mining from social media - DUBMOD '13
entity Linking; twitter; wikipedia; time series analysis
04 Pubblicazione in atti di convegno::04b Atto di convegno in volume
Twitter anticipates bursts of requests for Wikipedia articles / Tolomei, Gabriele; Orlando, Salvatore; Diego, Ceccarelli; Lucchese, Claudio. - (2013), pp. 5-8. (Intervento presentato al convegno 2103 workshop on Data-driven user behavioral modelling and mining from social media - DUBMOD '13 tenutosi a San Francisco, CA, USA) [10.1145/2513577.2538768].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1382692
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