Abstract

Twitter is among the most used online platforms for the political communications, due to the concision of its messages (which is particularly suitable for political slogans) and the quick diffusion of messages. Especially when the argument stimulate the emotionality of users, the content on Twitter is shared with extreme speed and thus studying the tweet sentiment if of utmost importance to predict the evolution of the discussions and the register of the relative narratives. In this article, we present a model able to reproduce the dynamics of the sentiments of tweets related to specific topics and periods and to provide a prediction of the sentiment of the future posts based on the observed past. The model is a recent variant of the Pólya urn, introduced and studied in Aletti and Crimaldi (2019, 2020), which is characterized by a “local” reinforcement, i.e. a reinforcement mechanism mainly based on the most recent observations, and by a random persistent fluctuation of the predictive mean. In particular, this latter feature is capable of capturing the trend fluctuations in the sentiment curve. While the proposed model is extremely general and may be also employed in other contexts, it has been tested on several Twitter data sets and demonstrated greater performances compared to the standard Pólya urn model. Moreover, the different performances on different data sets highlight different emotional sensitivities respect to a public event.

Highlights

  • In the last few years, the internet has become the main source for news for citizens both in EU [1] and in USA [2]

  • We aim at filling in this gap, presenting a model that is able to reproduce the sentiment curve of the tweets related to specific topics and periods and to provide a prediction of the sentiment of the future posts based on the observed past

  • We provide some tables and figures in order to point out how the different considered models are able to reproduce the trend fluctuation of the sentiment curve

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Summary

Introduction

In the last few years, the internet has become the main source for news for citizens both in EU [1] and in USA [2] Such a rapid change in the media system has created a symmetric change in the way news are delivered: before the diffusion of the web, information was intermediated by journals, newspapers, radio and TV newscast, that represented the authority, being publicly responsible for the diffusion of reliable news. Nowadays, such intermediation is not present anymore: every blog or account on Facebook or Twitter assumes truthfulness just for existing online [3,4,5,6]. Twitter is reknown to be used especially for the political communications [23], due to the limited amount of characters, perfectly

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