Abstract

The diffusion of new information and communication technologies—social media in particular—has played a key role in social and political activism in recent decades. In this paper, we propose a theory-motivated, spatiotemporal learning approach, ActAttn, that leverages social movement theories and a deep learning framework to examine the relationship between protest events and their social and geographical contexts as reflected in social media discussions. To do so, we introduce a novel predictive framework that incorporates a new design of attentional networks, and which effectively learns the spatiotemporal structure of features. Our approach is not only capable of forecasting the occurrence of future protests, but also provides theory-relevant interpretations—it allows for interpreting what features, from which places, have significant contributions on the protest forecasting model, as well as how they make those contributions. Our experiment results from three movement events indicate that ActAttn achieves superior forecasting performance, with interesting comparisons across the three events that provide insights into these recent movements.

Highlights

  • Social movements are one of the most complex collective actions

  • The results offer interesting insights regarding how social media “connectedness”—as operationalized at the level of features and the level of the model—could predict offline protest activity

  • We show the significance of static features by comparing the results of Logistic Regression (LR)[tem] with LR[s, tem], Support Vector Machine (SVM)[tem] with SVM[s, tem], and Long Short-Term Memory (LSTM) with S + LSTM

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Summary

Introduction

Social movements are one of the most complex collective actions. They reflect how collectivities articulate and press a collectivity’s interests to make significant changes in public policies and political decisions. News about social movement activity relevant to a variety of contested issues is being updated, on topics ranging from civil rights, to human rights, to gender equality, to gun control and others. From the Arab Spring, to the Occupy Wall Street movement, to the recent March for Our Lives gun violence protests, social media has been central in providing mobilizing information, coordinating demonstrations, and creating opportunities for people (2019) 8:5 to exchange opinions [2, 3]. Our focus is whether and how online activities can forecast offline protests

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