CYCLLGSep 11, 2019

Hope Speech Detection: A Computational Analysis of the Voice of Peace

arXiv:1909.12940v479 citations
Originality Synthesis-oriented
AI Analysis

This work addresses the need to automatically identify peace-promoting content in politically tense online discussions, though it is incremental in applying existing methods to a new domain.

The paper tackles the problem of analyzing social media comments during the India-Pakistan crisis to detect hope speech, presenting a polyglot word-embedding method for language identification and observing that pro-peace intent peaked when tensions were highest.

The recent Pulwama terror attack (February 14, 2019, Pulwama, Kashmir) triggered a chain of escalating events between India and Pakistan adding another episode to their 70-year-old dispute over Kashmir. The present era of ubiquitious social media has never seen nuclear powers closer to war. In this paper, we analyze this evolving international crisis via a substantial corpus constructed using comments on YouTube videos (921,235 English comments posted by 392,460 users out of 2.04 million overall comments by 791,289 users on 2,890 videos). Our main contributions in the paper are three-fold. First, we present an observation that polyglot word-embeddings reveal precise and accurate language clusters, and subsequently construct a document language-identification technique with negligible annotation requirements. We demonstrate the viability and utility across a variety of data sets involving several low-resource languages. Second, we present an analysis on temporal trends of pro-peace and pro-war intent observing that when tensions between the two nations were at their peak, pro-peace intent in the corpus was at its highest point. Finally, in the context of heated discussions in a politically tense situation where two nations are at the brink of a full-fledged war, we argue the importance of automatic identification of user-generated web content that can diffuse hostility and address this prediction task, dubbed \emph{hope-speech detection}.

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