A deep learning approach for predicting the quality of online health expert question-answering services
Ze Hu, Zhan Zhang, Qing Chen, Haiqin Yang, Decheng Zuo

TL;DR
This paper introduces a deep learning framework using a deep belief network to predict the quality of online health expert answers, addressing data sparsity and lack of community features.
Contribution
It proposes novel non-textual features and a DBN-based model to improve answer quality prediction in online health services, overcoming short text and sparsity issues.
Findings
The framework effectively predicts answer quality.
It overcomes data sparsity in short texts.
It outperforms traditional methods.
Abstract
Currently, a growing number of health consumers are asking health-related questions online, at any time and from anywhere, which effectively lowers the cost of health care. The most common approach is using online health expert question-answering (HQA) services, as health consumers are more willing to trust answers from professional physicians. However, these answers can be of varying quality depending on circumstance. In addition, as the available HQA services grow, how to predict the answer quality of HQA services via machine learning becomes increasingly important and challenging. In an HQA service, answers are normally short texts, which are severely affected by the data sparsity problem. Furthermore, HQA services lack community features such as best answer and user votes. Therefore, the wisdom of the crowd is not available to rate answer quality. To address these problems, in this…
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Taxonomy
TopicsExpert finding and Q&A systems · Topic Modeling · Recommender Systems and Techniques
