Seminar | November 4 | 11:10 a.m.-12:30 p.m. | 210 South Hall

 Valentin Hofmann

 Information, School of

The increasing polarization of online political discourse calls for computational tools that automatically monitor ideological divides in social media. While many methods to track ideological polarization have been proposed, most of them rely on knowing in advance the political orientation of text, a requirement seldom met in practice.

In this talk, I will discuss recent research that fully dispenses with the need for labeled data and instead leverages the ubiquitous network structure of online discussion forums, specifically Reddit, to detect ideological polarization. I will first give an overview of prior research on polarization in NLP, highlighting salience and framing as two key mechanisms by which ideology manifests itself in language. I will then present Slap4slip, a method that combines graph neural networks with structured sparsity learning to determine the polarization of political issues (e.g., abortion) along the dimensions of salience and framing. In the third part of the talk, I will show that polarization is also reflected by the existence of an ideological subspace in contextualized embeddings, which can be found by adding orthogonality regularization to Slap4slip. The ideological subspace encodes abstract evaluative semantics and indicates pronounced changes in the political left-right spectrum during the presidency of Donald Trump.

 510-642-1464

 Catherine Cronquist Browning,  catherine@ischool.berkeley.edu,  

Event Date
-
Status
Happening As Scheduled
Primary Event Type
Seminar
Location
210 South Hall
Performers
Valentin Hofmann (Speaker)
Event ID
149370