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Identifying Morality Frames in Political Tweets using Relational Learning (2109.04535v1)

Published 9 Sep 2021 in cs.CL, cs.AI, cs.CY, and cs.LG

Abstract: Extracting moral sentiment from text is a vital component in understanding public opinion, social movements, and policy decisions. The Moral Foundation Theory identifies five moral foundations, each associated with a positive and negative polarity. However, moral sentiment is often motivated by its targets, which can correspond to individuals or collective entities. In this paper, we introduce morality frames, a representation framework for organizing moral attitudes directed at different entities, and come up with a novel and high-quality annotated dataset of tweets written by US politicians. Then, we propose a relational learning model to predict moral attitudes towards entities and moral foundations jointly. We do qualitative and quantitative evaluations, showing that moral sentiment towards entities differs highly across political ideologies.

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Authors (3)
  1. Shamik Roy (10 papers)
  2. Maria Leonor Pacheco (16 papers)
  3. Dan Goldwasser (48 papers)
Citations (32)

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