从推特对话中分析足球支持者的特征

D. Pacheco, Diego Pinheiro, Fernando Buarque de Lima-Neto, Eraldo Ribeiro, R. Menezes
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引用次数: 12

摘要

足球是世界上最受欢迎的运动。这项运动的流行导致了一些关于支持者行为的故事(有些可能是轶事),并导致了竞争的出现,比如著名的巴塞罗那-皇家马德里(在西班牙)。然而,很少有人将在线用户的行为描述为足球支持者,并将其作为俱乐部特征的综合衡量标准。今天,数据的可用性使我们能够在更大的范围内了解竞争是否存在,以及是否存在可用于表征支持行为的特征。在本文中,我们使用数据科学的技术根据足球支持者在Twitter上的活动来描述他们,并根据支持者的行为来描述俱乐部。我们表明,有可能:(i)根据足球俱乐部的受欢迎程度和球迷的厌恶程度对其进行排名,(ii)确定俱乐部及其支持者之间存在的竞争,以及(iii)找到在不同俱乐部和不同国家重复出现的特定签名。结果是在与巴西和英国主要足球联赛相关的大型推文数据集上进行评估的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Characterization of Football Supporters from Twitter Conversations
Football (aka Soccer) is the most popular sport in the world. The popularity of the sport leads to several stories (some perhaps anecdotal) about supporters behaviors and to the emergence of rivalries such as the famous Barcelona-Real Madrid (in Spain). Little however has been done to characterize/profile online users' behaviors as football supporters and use them as an aggregate measure to club characterization. Today, the availability of data enable us to understand at a much greater scale if rivalries exist and if there are signatures that can be used to characterize supporting behavior. In this paper we use techniques from Data Science to characterize football supporters according to their activity on Twitter and to characterize clubs according to the behavior of their supporters. We show that it is possible to: (i) rank football clubs by their popularity and fans' dislike, (ii) identify the rivalries that exist between clubs and their supporters, and (iii) find specific signatures that repeat themselves across different clubs and in different countries. The results are evaluated on a large dataset of tweets relevant to major football leagues in Brazil and in the United Kingdom.
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