SSL-QA: Analysis of Semi-Supervised Learning for QuestionAnswering
نویسندگان
چکیده
منابع مشابه
SSL-QA: Analysis of Semi-Supervised Learning for Question- Answering
Open domain natural language question answering (QA) is a process of automatically finding answers to questions searching collections of text files. Question answering (QA) is a long-standing challenge in NLP, and the community has introduced several paradigms and datasets for the task over the past few years. These patterns differ from each other in the type of questions and answers and the si...
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ژورنال
عنوان ژورنال: IOSR Journal of Computer Engineering
سال: 2017
ISSN: 2278-8727,2278-0661
DOI: 10.9790/0661-1903051415