会议专题

Answer Quality Prediction Joint Textual and Non-Textual Features

  Community question answering (CQA) is a popular online service for people to ask and answer questions.But along with the increasing of user generating contents, the quality of answers provided by different users varies widely.So the quality of the answer caused wide attention.In this paper, we propose an answer quality prediction model to evaluate the answer quality considering both aspects of textual and non-textual features.We firstly employ Bidirectional long Short-Term Memory (BLSTM) based RNN model to evaluate textual quality of the answers.And we extract 11 features of the answers to evaluate the non-textual quality of answers.Finally, we jointly consider the score of answers textual and non-textual qualities.We evaluate our model in a benchmark dataset and the experimental results show that our model outperforms other existing approaches.

community question answering Bidirectional long short term memory answer quality prediction

Hongmei Liu Chao An Jiuming Huang Xiaolei Fu

College of Computer National University of Defense Technology Changsha, China

国际会议

The 13th Web Information Systems and Applications Conference(第十三届全国web信息系统及其应用学术会议)(WISA2016)、The 1st Symposium on Big Data Processing and Analysis)( BDPA 2016)第一届全国大数据处理与分析学术研讨会、The 1st Workshop on Information System Security)(ISS2016)(第一届全国信息系统安全研讨会

武汉

英文

144-148

2016-09-23(万方平台首次上网日期,不代表论文的发表时间)