Toward Annotating Commonsense Inferences in Text: INCOMPLETE DRAFT
نویسنده
چکیده
The objective of the TACIT (Toward Annotating Commonsense Inferences in Text) project is to identify all or most of the commonsense inferences needed to understand a small collection of short narrative texts; to characterize those inferences in terms of features in different dimensions; and to characterize the commonsense knowledge that underlies those inferences. The primary purpose of this analysis is to help map out the space of commonsense knowledge as a guide for research in knowledge representation. Secondarily, the corpus could be used to evaluate progress in automated commonsense reasoning and in the integration of commonsense reasoning into automated natural language interpretation. To date, we have developed a framework for the annotation and a standard representation in XML; and we have analyzed T short texts with a total of S sentences and characterized Q commonsense inferences in
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