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Please use this identifier to cite or link to this item:
https://ir.lib.ncu.edu.tw/handle/987654321/107251
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| Title: | A support vector machine-based context-ranking model for question answering |
| Authors: | 楊接期;Yen, Show-Jane;Wu, Yu-Chieh;Yang, Jie-Chi;Lee, Yue-Shi;Lee, Chung-Jung;Liu, Jui-Jung |
| Contributors: | 資訊電機學院網路學習科技研究所 |
| Keywords: | Information retrieval;Passage retrieval;Question answering;Question classification;Support vector machines |
| Date: | 2013-03-01 |
| Issue Date: | 2026-04-23 14:02:35 (UTC+8) |
| Publisher: | Elsevier Inc.;Elsevier Inc |
| Abstract: | 摘要: Modern information technologies and Internet services are suffering from the problem of selecting and managing a growing amount of textual information, to which access is often critical. Machine learning techniques have recently shown excellent performance and flexibility in many applications, such as artificial intelligence and pattern recognition. Question answering (QA) is a method of locating exact answer sentences from vast document collections. This paper presents a machine learning-based question-answering framework, which integrates a question classifier, simple document/passage retrievers, and the proposed context-ranking models. The question classifier is trained to categorize the answer type of the given question and instructs the context-ranking model to re-rank the passages retrieved from the initial retrievers. This method provides flexible features to learners, such as word forms, syntactic features, and semantic word features. The proposed context-ranking model, which is based on the sequential labeling of tasks, combines rich features to predict whether the input passage is relevant to the question type. We employ TREC-QA tracks and question classification benchmarks to evaluate the proposed method. The experimental results show that the question classifier achieves 85.60% accuracy without any additional semantic or syntactic taggers, and reached 88.60% after we employed the proposed term expansion techniques and a predefined related-word set. In the TREC-10 QA task, by using the gold TREC-provided relevant document set, the QA model achieves a 0.563 mean reciprocal rank (MRR) score, and a 0.342 MRR score is achieved after using the simple document and passage retrieval algorithms. 出版者: Elsevier Inc 出版日期: 2013-03-01 出處: Information sciences, 2013-03, Vol.224, p.77-87 資源來源: Elsevier ScienceDirect Journals Complete 版權: 2012 Elsevier Inc. 識別號: ISSN: 0020-0255 識別號: DOI: 10.1016/j.ins.2012.10.014 |
| Appears in Collections: | [Graduate Institute of Network Learning Technology] journal & Dissertation
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