A Knowledge-Enhanced Pretraining Model for Commonsense Story Generation
نویسندگان
چکیده
منابع مشابه
Using English for commonsense knowledge
The work reported here arises from an attempt to provide a body of simple information about diet and its effect on various common medical conditions. Expressing this knowledge in natural language has a number of advantages. It also raises a number of difficult issues. We will consider solutions, and partial solutions, to these issues below. 1 Commonse knowledge Suppose you wanted to have a syst...
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Introduction My research project consists of building a story generator which will explore the use of reader modelling for plot generation. The project will make use of an emerging body of work at the intersection of literature and psychology that investigates reader engagement. Although there are existing systems that use formal reader models in a narrative generation context, most of them are...
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A critical prerequisite for human-level cognitive systems is having a rich conceptual understanding of the world. We describe a system that learns conceptual knowledge by deep understanding of WordNet glosses. While WordNet is often criticized for having a too fine-grained approach to word senses, the set of glosses do generally capture useful knowledge about the world and encode a substantial ...
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Significant advances in artificial intelligence, including machines that play master level chess, or make medical diagnoses, highlight an intriguing paradox. While systems can compete with highly qualified experts in many fields, there has been much less progress in constructing machines that exhibit simple commonsense, the kind expected of any normally intelligent child. As a result, commonsen...
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Early attempts to implement systems that understand commonsense knowledge did so for very restricted domains. For example, the Planes system [Waltz, 1978] knew real world facts about a fleet of airplanes and could answer questions about them put to it in English. It had, however, no behaviors, could not interpret the facts, draw inferences from them or solve problems, other than those that have...
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ژورنال
عنوان ژورنال: Transactions of the Association for Computational Linguistics
سال: 2020
ISSN: 2307-387X
DOI: 10.1162/tacl_a_00302