Once every five minutes, Twitter publishes a list of trending topics by monitoring and analyzing tweets from its users. Similarly, Google makes available hourly a list of hot queries that have been issued to the search engine. In this work, we analyze the time series derived from the daily volume index of each trend, either by Twitter or Google. Our study on a real-world dataset reveals that about 26% of the trending topics raising from Twitter “as-is” are also found as hot queries issued to Google. Also, we find that about 72% of the similar trends appear first on Twitter. Thus, we assess the relation between comparable Twitter and Google trends by testing three classes of time series regression models. We validate the forecasting power of Twitter by showing that models, which use Google as the dependent variable and Twitter as the explanatory variable, retain as significant the past values of Twitter 60% of times.

Trending Topics on Twitter Improve the Prediction of Google Hot Queries / Giummole', Federica; Orlando, Salvatore; Tolomei, Gabriele. - (2013), pp. 39-44. (Intervento presentato al convegno SocialCom2013 tenutosi a Washington, DC, USA) [10.1109/SocialCom.2013.12].

Trending Topics on Twitter Improve the Prediction of Google Hot Queries

TOLOMEI, GABRIELE
2013

Abstract

Once every five minutes, Twitter publishes a list of trending topics by monitoring and analyzing tweets from its users. Similarly, Google makes available hourly a list of hot queries that have been issued to the search engine. In this work, we analyze the time series derived from the daily volume index of each trend, either by Twitter or Google. Our study on a real-world dataset reveals that about 26% of the trending topics raising from Twitter “as-is” are also found as hot queries issued to Google. Also, we find that about 72% of the similar trends appear first on Twitter. Thus, we assess the relation between comparable Twitter and Google trends by testing three classes of time series regression models. We validate the forecasting power of Twitter by showing that models, which use Google as the dependent variable and Twitter as the explanatory variable, retain as significant the past values of Twitter 60% of times.
2013
SocialCom2013
tme series analysis; time series regression; social network analysis; twitter; trending topics; google; hot trends
04 Pubblicazione in atti di convegno::04b Atto di convegno in volume
Trending Topics on Twitter Improve the Prediction of Google Hot Queries / Giummole', Federica; Orlando, Salvatore; Tolomei, Gabriele. - (2013), pp. 39-44. (Intervento presentato al convegno SocialCom2013 tenutosi a Washington, DC, USA) [10.1109/SocialCom.2013.12].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1382702
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