EMNLP2020
Weakly Supervised Learning of Nuanced Frames for Analyzing Polarization in News Media
Shamik Roy, Dan Goldwasser
42 citations
Abstract
In this paper, we suggest a minimallysupervised approach for identifying nuanced frames in news article coverage of politically divisive topics. We suggest to break the broad policy frames suggested by Boydstun et al., 2014 into fine-grained subframes which can capture differences in political ideology in a better way. We evaluate the suggested subframes and their embedding, learned using minimal supervision, over three topics, namely, immigration, gun-control, and abortion. We demonstrate the ability of the subframes to capture ideological differences and analyze political discourse in news media.