Keith Maki
2017
Finding Structure in Figurative Language: Metaphor Detection with Topic-based Frames
Hyeju Jang
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Keith Maki
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Eduard Hovy
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Carolyn Rosé
Proceedings of the 18th Annual SIGdial Meeting on Discourse and Dialogue
In this paper, we present a novel and highly effective method for induction and application of metaphor frame templates as a step toward detecting metaphor in extended discourse. We infer implicit facets of a given metaphor frame using a semi-supervised bootstrapping approach on an unlabeled corpus. Our model applies this frame facet information to metaphor detection, and achieves the state-of-the-art performance on a social media dataset when building upon other proven features in a nonlinear machine learning model. In addition, we illustrate the mechanism through which the frame and topic information enable the more accurate metaphor detection.
Roles and Success in Wikipedia Talk Pages: Identifying Latent Patterns of Behavior
Keith Maki
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Michael Yoder
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Yohan Jo
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Carolyn Rosé
Proceedings of the Eighth International Joint Conference on Natural Language Processing (Volume 1: Long Papers)
In this work we investigate how role-based behavior profiles of a Wikipedia editor, considered against the backdrop of roles taken up by other editors in discussions, predict the success of the editor at achieving an impact on the associated article. We first contribute a new public dataset including a task predicting the success of Wikipedia editors involved in discussion, measured by an operationalization of the lasting impact of their edits in the article. We then propose a probabilistic graphical model that advances earlier work inducing latent discussion roles using the light supervision of success in the negotiation task. We evaluate the performance of the model and interpret findings of roles and group configurations that lead to certain outcomes on Wikipedia.
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