...
首页> 外文期刊>Data technologies and applications >Explanatory Q&A recommendation algorithm in community question answering
【24h】

Explanatory Q&A recommendation algorithm in community question answering

机译:解释性问答推荐算法社区问答

获取原文
获取原文并翻译 | 示例
           

摘要

Purpose In community question answering (CQA), people who answer questions assume readers have mastered the content in the answers. Nevertheless, some readers cannot understand all content. Thus, there is a need for further explanation of the concepts that appear in the answers. Moreover, the large number of question and answer (Q&A) documents make manual retrieval difficult. This paper aims to alleviate these issues for CQA websites. Design/methodology/approach In the paper, an algorithm for recommending explanatory Q&A documents is proposed. Q&A documents are modeled with the biterm topic model (BTM) (Yan et al., 2013). Then, the growing neural gas (GNG) algorithm (Fritzke, 1995) is used to cluster Q&A documents. To train multiple classifiers, three features are extracted from the Q&A categories. Thereafter, an ensemble classification model is constructed to identify the explanatory relationships. Finally, the explanatory Q&A documents are recommended. Findings The GNG algorithm shows good clustering performance. The ensemble classification model performs better than other classifiers. The both effect and quality scores of explanatory Q&A recommendations are high. These scores indicate the practicality and good performance of the proposed recommendation algorithm. Research limitations/implications The proposed algorithm alleviates information overload in CQA from the new perspective of recommending explanatory knowledge. It provides new insight into research on recommendations in CQA. Moreover, in practice, CQA websites can use it to help retrieve Q&A documents and facilitate understanding of their contents. However, the algorithm is for the general recommendation of Q&A documents which does not consider individual personalized characteristics. In future work, personalized recommendations will be evaluated. Originality/value A novel explanatory Q&A recommendation algorithm is proposed for CQA to alleviate the burden of manual retrieval and Q&A overload. The novel GNG clustering algorithm and ensemble classification model provide a more accurate way to identify explanatory Q&A documents. The method of ranking the explanatory Q&A documents improves the effectiveness and quality of the recommendation. The proposed algorithm improves the accuracy and efficiency of retrieving explanatory Q&A documents. It assists users in grasping answers easily.
机译:目的在社区问答(CQA),回答问题的人假定读者掌握的内容回答。然而,有些读者无法理解内容。的解释中出现的概念的答案。做手工检索和答案(问答)文件困难。问题CQA网站。设计/方法/方法,一个推荐算法解释问答提出了文件。与biterm主题模型(BTM) (Yan et al .,2013)。算法(Fritzke, 1995)用于集群的问答文档。特征提取的问答类。此后,一个分类模型构造识别解释的关系。文档是推荐的。算法显示了良好的聚类性能。系综分类模型的性能更好比其他分类器。质量分数的解释问答的建议是很高的。和良好的性能推荐算法。该算法的局限性/影响在CQA从缓解信息过载新视角的建议说明知识。在CQA建议。CQA网站可以使用它来帮助检索问答文档和促进他们的理解内容。一般建议的问答文件不考虑个人个性化特征。建议将评估。创意/值小说解释问答对CQA推荐算法减轻负担的手工检索和问答过载。提供一个更系综分类模型准确识别解释的问答方式文档。提高了效率和问答文件推荐的质量。算法改进的精度和效率检索说明问答文件。用户容易掌握答案。

著录项

相似文献

  • 外文文献
  • 中文文献
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号