Profiling Users for Question Answering Communities via Flow-Based Constrained Co-Embedding Model

Shangsong Liang, Yupeng Luo, Zaiqiao Meng
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引用次数: 9

Abstract

In this article, we study the task of user profiling in question answering communities (QACs). Previous user profiling algorithms suffer from a number of defects: they regard users and words as atomic units, leading to the mismatch between them; they are designed for other applications but not for QACs; and some semantic profiling algorithms do not co-embed users and words, leading to making the affinity measurement between them difficult. To improve the profiling performance, we propose a neural Flow-based Constrained Co-embedding Model, abbreviated as FCCM. FCCM jointly co-embeds the vector representations of both users and words in QACs such that the affinities between them can be semantically measured. Specifically, FCCM extends the standard variational auto-encoder model to enforce the inferred embeddings of users and words subject to the voting constraint, i.e., given a question and the users who answer this question in the community, representations of the users whose answers receive more votes are closer to the representations of the words associated with these answers, compared with representations of whose receiving fewer votes. In addition, FCCM integrates normalizing flow into the variational auto-encoder framework to avoid the assumption that the distributions of the embeddings are Gaussian, making the inferred embeddings fit the real distributions of the data better. Experimental results on a Chinese Zhihu question answering dataset demonstrate the effectiveness of our proposed FCCM model for the task of user profiling in QACs.
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基于流约束协同嵌入模型的问答社区用户分析
在本文中,我们研究了问答社区(QACs)中的用户分析任务。以前的用户分析算法存在一些缺陷:它们将用户和单词视为原子单位,导致它们之间的不匹配;它们是为其他应用而设计的,但不适用于qac;而一些语义分析算法没有将用户和单词共同嵌入,导致用户和单词之间的亲和力测量变得困难。为了提高分析性能,我们提出了一种基于神经流的约束共嵌入模型(简称FCCM)。FCCM将用户和单词的向量表示共同嵌入到qac中,从而可以在语义上测量它们之间的亲和力。具体来说,FCCM扩展了标准的变分自编码器模型,以强制执行受投票约束的用户和单词的推断嵌入,即给定一个问题和在社区中回答这个问题的用户,与其获得较少投票的用户的表示相比,其回答获得更多投票的用户的表示更接近与这些答案相关的单词的表示。此外,FCCM将归一化流程集成到变分自编码器框架中,避免了嵌入的分布是高斯分布的假设,使得推断的嵌入更符合数据的真实分布。在中文知乎问答数据集上的实验结果证明了我们提出的FCCM模型在问答用户分析任务中的有效性。
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