CLJun 9, 2015

Connotation Frames: A Data-Driven Investigation

arXiv:1506.02739v329 citations
Originality Incremental advance
AI Analysis

This addresses the challenge of capturing nuanced connotative meanings in natural language processing, with potential applications in bias detection, though it is incremental in building on existing representation formalisms.

The paper tackled the problem of representing subtle implied sentiments and presuppositions in language by introducing connotation frames as a formalism, and found that these frames can be induced from data sources and used to analyze biases in online news media.

Through a particular choice of a predicate (e.g., "x violated y"), a writer can subtly connote a range of implied sentiments and presupposed facts about the entities x and y: (1) writer's perspective: projecting x as an "antagonist"and y as a "victim", (2) entities' perspective: y probably dislikes x, (3) effect: something bad happened to y, (4) value: y is something valuable, and (5) mental state: y is distressed by the event. We introduce connotation frames as a representation formalism to organize these rich dimensions of connotation using typed relations. First, we investigate the feasibility of obtaining connotative labels through crowdsourcing experiments. We then present models for predicting the connotation frames of verb predicates based on their distributional word representations and the interplay between different types of connotative relations. Empirical results confirm that connotation frames can be induced from various data sources that reflect how people use language and give rise to the connotative meanings. We conclude with analytical results that show the potential use of connotation frames for analyzing subtle biases in online news media.

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