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Title: | 基於英文維基百科之文字蘊涵 Text Entailment based on English Wikipedia |
Authors: | 林柏誠 Lin, Po Cheng |
Contributors: | 劉昭麟 Liu , Chao Lin 林柏誠 Lin, Po Cheng |
Keywords: | 自然語言處理 Nature Language Processing |
Date: | 2014 |
Issue Date: | 2015-01-05 11:22:29 (UTC+8) |
Abstract: | 近年來文字蘊涵研究在自然語言處理中逐漸受到重視,從2005年Recognizing Textual Entailment (RTE)舉辦英文語料相關評比開始,越來越多人開始投入文字蘊涵的相關研究,而NII Testbeds and Community for information access Research(NTCIR) 也從第九屆開始舉辦Recognizing Inference in Text(RITE) 的相關評比,除了英文語料以外,亦包含繁體中文、簡體中文以及日文等等的語料,開始引起亞洲地區相關研究者的關注參加。 本研究以文字蘊涵技術為基底,透過維基百科,判斷任一論述句其含義是與事實相符,或與事實違背,我們依據論述句的語文資訊,在維基百科中找出與論述句相關的文章,並從中尋找有無相關的句子,支持或反對該論述句的論點,藉以判斷其結果。 我們將本系統大致分成了三個程序,第一步是先從維基百科中擷取與論述句的相關文章,接著我們從相關文章中擷取與論述句有關聯的相關句,最後則是從找出的相關句中,判別那些相關句是支持還是反對該論述句,並透過Linearly Weighted Functions(LWFs) 藉以判別每個相關特徵的權重和各項推論的門檻值,期許透過上述的方法以及各項有效的語言特徵,能夠推論出論述句的真實與否。 In recent years, the research of textual entailment is getting more important in Natural Language Processing. Since Recognizing Textual Entailment (RTE) began to hold the contest of English corpus in 2005, more and more people start to engage in the related research. Besides, NTCIR ninth has held the related task Recognizing Inference in Text (RITE) in Chinese, Japanese, and others languages corpus. Therefore it has gradually attracted Asian people to focus on this area. In this paper, we based on the skill of textual entailment. Trying to validate any of input sentences which are truth or against to the fact. According to the language information in input sentences, we extract the related articles on Wikipedia. Then, we extract the related sentences from those articles and recognizing them which are support or against the input sentence. Hence, we can use that information to validate the input sentences. Our system is roughly departed into three parts. First is extract related articles from Wikipedia, second is extract related sentences from related articles. The last is validate those sentences which are support or against the input sentence. We also adopt Linear Weight Functions (LWFs) to adjust every features parameters and entailment’s threshold. By the information and useful language features above, we hope it can validate whether input sentences is truth or not. |
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Description: | 碩士 國立政治大學 資訊科學學系 101753028 103 |
Source URI: | http://thesis.lib.nccu.edu.tw/record/#G1017530281 |
Data Type: | thesis |
Appears in Collections: | [資訊科學系] 學位論文
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