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Simone Teufel
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Journal Articles
Statistical Metaphor Processing
Open AccessPublisher: Journals Gateway
Computational Linguistics (2013) 39 (2): 301–353.
Published: 01 June 2013
Abstract
View articletitled, Statistical Metaphor Processing
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Metaphor is highly frequent in language, which makes its computational processing indispensable for real-world NLP applications addressing semantic tasks. Previous approaches to metaphor modeling rely on task-specific hand-coded knowledge and operate on a limited domain or a subset of phenomena. We present the first integrated open-domain statistical model of metaphor processing in unrestricted text. Our method first identifies metaphorical expressions in running text and then paraphrases them with their literal paraphrases. Such a text-to-text model of metaphor interpretation is compatible with other NLP applications that can benefit from metaphor resolution. Our approach is minimally supervised, relies on the state-of-the-art parsing and lexical acquisition technologies (distributional clustering and selectional preference induction), and operates with a high accuracy.
Journal Articles
Publisher: Journals Gateway
Computational Linguistics (2002) 28 (4): 409–445.
Published: 01 December 2002
Abstract
View articletitled, Summarizing Scientific Articles: Experiments with Relevance and Rhetorical Status
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for article titled, Summarizing Scientific Articles: Experiments with Relevance and Rhetorical Status
In this article we propose a strategy for the summarization of scientific articles that concentrates on the rhetorical status of statements in an article: Material for summaries is selected in such a way that summaries can highlight the new contribution of the source article and situate it with respect to earlier work. We provide a gold standard for summaries of this kind consisting of a substantial corpus of conference articles in computational linguistics annotated with human judgments of the rhetorical status and relevance of each sentence in the articles. We present several experiments measuring our judges' agreement on these annotations. We also present an algorithm that, on the basis of the annotated training material, selects content from unseen articles and classifies it into a fixed set of seven rhetorical categories. The output of this extraction and classification system can be viewed as a single-document summary in its own right; alternatively, it provides starting material for the generation of task-oriented and user-tailored summaries designed to give users an overview of a scientific field.