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Diana Inkpen
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Journal Articles
Publisher: Journals Gateway
Computational Linguistics (2018) 44 (4): 663–681.
Published: 01 December 2018
Abstract
View articletitled, Introduction to the Special Issue on Language in Social Media: Exploiting Discourse and Other Contextual Information
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for article titled, Introduction to the Special Issue on Language in Social Media: Exploiting Discourse and Other Contextual Information
Social media content is changing the way people interact with each other and share information, personal messages, and opinions about situations, objects, and past experiences. Most social media texts are short online conversational posts or comments that do not contain enough information for natural language processing (NLP) tools, as they are often accompanied by non-linguistic contextual information, including meta-data (e.g., the user’s profile, the social network of the user, and their interactions with other users). Exploiting such different types of context and their interactions makes the automatic processing of social media texts a challenging research task. Indeed, simply applying traditional text mining tools is clearly sub-optimal, as, typically, these tools take into account neither the interactive dimension nor the particular nature of this data, which shares properties with both spoken and written language. This special issue contributes to a deeper understanding of the role of these interactions to process social media data from a new perspective in discourse interpretation. This introduction first provides the necessary background to understand what context is from both the linguistic and computational linguistic perspectives, then presents the most recent context-based approaches to NLP for social media. We conclude with an overview of the papers accepted in this special issue, highlighting what we believe are the future directions in processing social media texts.
Journal Articles
Publisher: Journals Gateway
Computational Linguistics (2006) 32 (2): 223–262.
Published: 01 June 2006
Abstract
View articletitled, Building and Using a Lexical Knowledge Base of Near-Synonym Differences
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for article titled, Building and Using a Lexical Knowledge Base of Near-Synonym Differences
Choosing the wrong word in a machine translation or natural language generation system can convey unwanted connotations, implications, or attitudes. The choice between near-synonyms such as error , mistake , slip , and blunder —words that share the same core meaning, but differ in their nuances—can be made only if knowledge about their differences is available. We present a method to automatically acquire a new type of lexical resource: a knowledge base of near-synonym differences. We develop an unsupervised decision-list algorithm that learns extraction patterns from a special dictionary of synonym differences. The patterns are then used to extract knowledge from the text of the dictionary. The initial knowledge base is later enriched with information from other machine-readable dictionaries. Information about the collocational behavior of the near-synonyms is acquired from free text. The knowledge base is used by Xenon, a natural language generation system that shows how the new lexical resource can be used to choose the best near-synonym in specific situations.