Visualizing Time-varying Twitter Data with SentimentClockReportar como inadecuado

Visualizing Time-varying Twitter Data with SentimentClock - Descarga este documento en PDF. Documentación en PDF para descargar gratis. Disponible también para leer online.

1 The University of Sydney Sydney 2 ADVANSE - ADVanced Analytics for data SciencE LIRMM - Laboratoire d-Informatique de Robotique et de Microélectronique de Montpellier

Abstract : Temporal dimension contains important information for sentiment analysis of microblog data such as tweets. Previous works on sentiment visualization could not address the multidimensional nature of sentiment together with temporal information. In this work, we introduce SentimentClock for visualizing the sentiment of time-varying Twitter data on 2D affective space. Our visualization enables various interesting tasks : 1 Visualize and compare temporal variations of sentiments. 2 Compare sentiments variations of tweets on different topics. 3 Visualize the distribution of tweets on 2D affective space. 4 Visualize both dimensions of sentiments i.e. valence, arousal and their semantic meanings e.g. elated, stressed. Fig.1 SentimentClock of the tweets collected on 2013 Australian election day 7-Sep-2013 Fig.2 SentimentClocks of tweets on two different topics: Australian Politics left and World Cup 2014 right Fig.1 shows the sentiment visualization of 36016 related tweets posted on 2013 Australian election day. In the evening 18:00 to 22:00, which is the vote counting and result releasing period, tweets are found to have both high arousal and valence, primarily falling into the elated and excited range with high strength. Fig.2 shows the sentiment visualization of 71200 tweets on two topics. Tweets on the topic - Australian Politics - are more spread out along the sentiment wheel and express more negative sentiments, e.g. upset and stressed. However, tweets on the topic - World cup 2014 - are mainly concentrated within the range of content and elated.

Autor: Florence Ying Wang - Arnaud Sallaberry - Karsten Klein - Masahiro Takatsuka -



Documentos relacionados