منابع مشابه
Contradiction Detection with Contradiction-Specific Word Embedding
Contradiction detection is a task to recognize contradiction relations between a pair of sentences. Despite the effectiveness of traditional context-based word embedding learning algorithms in many natural language processing tasks, such algorithms are not powerful enough for contradiction detection. Contrasting words such as “overfull” and “empty” are mostly mapped into close vectors in such e...
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abstract the main purpose of this study was to investigate whether there was any significant difference between the speaking achievement of learners who were trained by means of consciousness raising of sociolinguistic skills and that of learners who were trained without the above mentioned task. the participants of this study consist of 60 intermediate level students participating languag...
Classification of Contradiction Patterns
Solving conflicts between overlapping databases requires an understanding of the reasons that lead to the inconsistencies. Provided that conflicts do not occur randomly but follow certain regularities, patterns in the form of ”If condition Then conflict” provide a valuable means to facilitate their understanding. In previous work, we adopt existing association rule mining algorithms to identify...
متن کاملConjunction and Contradiction
The Law of Non-Contradiction (hereafter: LNC) says that no contradiction can be true. But what is a contradiction? And what does it take for a contradiction to be true? As Patrick Grim [5] has pointed out, a quick look at the literature will reveal a large menagerie of different interpretations of the basic terms and, consequently, of LNC. Grim actually identifies as many as 240 different optio...
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ژورنال
عنوان ژورنال: Work, Employment and Society
سال: 2018
ISSN: 0950-0170,1469-8722
DOI: 10.1177/0950017018759204