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      Cross-Domain Learning forClassifying Propaganda in Online Contents

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          Abstract

          As news and social media exhibit an increasing amount of manipulative polarized content, detecting such propaganda has received attention as a new task for content analysis. Prior work has focused on supervised learning with training data from the same domain. However, as propaganda can be subtle and keeps evolving, manual identification and proper labeling are very demanding. As a consequence, training data is a major bottleneck. In this paper, we tackle this bottleneck and present an approach to leverage cross-domain learning, based on labeled documents and sentences from news and tweets, as well as political speeches with a clear difference in their degrees of being propagandistic. We devise informative features and build various classifiers for propaganda labeling, using cross-domain learning. Our experiments demonstrate the usefulness of this approach, and identify difficulties and limitations in various configurations of sources and targets for the transfer step. We further analyze the influence of various features, and characterize salient indicators of propaganda.

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          Author and article information

          Journal
          13 November 2020
          Article
          2011.06844
          2155be92-71cc-4d87-b94c-d2226f289aee

          http://creativecommons.org/licenses/by/4.0/

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          Custom metadata
          TTO 2020
          cs.CL

          Theoretical computer science
          Theoretical computer science

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