User Personalized Satisfaction Prediction via Multiple Instance Deep Learning

November 24, 2016 ยท Declared Dead ยท ๐Ÿ› The Web Conference

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Authors Zheqian Chen, Ben Gao, Huimin Zhang, Zhou Zhao, Deng Cai arXiv ID 1611.08096 Category cs.IR: Information Retrieval Cross-listed cs.CL Citations 18 Venue The Web Conference Last Checked 3 months ago
Abstract
Community based question answering services have arisen as a popular knowledge sharing pattern for netizens. With abundant interactions among users, individuals are capable of obtaining satisfactory information. However, it is not effective for users to attain answers within minutes. Users have to check the progress over time until the satisfying answers submitted. We address this problem as a user personalized satisfaction prediction task. Existing methods usually exploit manual feature selection. It is not desirable as it requires careful design and is labor intensive. In this paper, we settle this issue by developing a new multiple instance deep learning framework. Specifically, in our settings, each question follows a weakly supervised learning multiple instance learning assumption, where its obtained answers can be regarded as instance sets and we define the question resolved with at least one satisfactory answer. We thus design an efficient framework exploiting multiple instance learning property with deep learning to model the question answer pairs. Extensive experiments on large scale datasets from Stack Exchange demonstrate the feasibility of our proposed framework in predicting askers personalized satisfaction. Our framework can be extended to numerous applications such as UI satisfaction Prediction, multi armed bandit problem, expert finding and so on.
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