改进了社交问答门户的答案排名

SMUC '11 Pub Date : 2011-10-28 DOI:10.1145/2065023.2065030
F. Hieber, S. Riezler
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引用次数: 24

摘要

社区QA门户为非事实性的问题回答提供了重要的资源。用户生成数据的固有噪声使得高质量内容的识别具有挑战性,但也更加重要。我们提出了一种答案排名的方法,并展示了明确建模答案质量的特征的有用性。此外,我们还介绍了利用网页搜索结果片段在答案排名中进行查询扩展的想法。我们提出了一种评估设置,以避免早期工作中报告的虚假结果。我们的结果显示了我们的特征和查询扩展技术的有用性,并指出了在从噪声数据中学习时正则化的重要性。
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Improved answer ranking in social question-answering portals
Community QA portals provide an important resource for non-factoid question-answering. The inherent noisiness of user-generated data makes the identification of high-quality content challenging but all the more important. We present an approach to answer ranking and show the usefulness of features that explicitly model answer quality. Furthermore, we introduce the idea of leveraging snippets of web search results for query expansion in answer ranking. We present an evaluation setup that avoids spurious results reported in earlier work. Our results show the usefulness of our features and query expansion techniques, and point to the importance of regularization when learning from noisy data.
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