问题路由的时态上下文感知表示学习

Xuchao Zhang, Wei Cheng, Bo Zong, Yuncong Chen, Jianwu Xu, Ding Li, Haifeng Chen
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引用次数: 23

摘要

问题路由(QR)旨在将新发布的问题推荐给最有可能回答问题的潜在答题者。现有的从用户过去的问答活动中学习用户专业知识的方法通常面临两个方面的挑战:1)专业知识的多面性和2)回答行为的时间动态性。本文提出了一种新的时间动态多粒度的时间上下文感知模型,同时解决了上述挑战。具体而言,时间上下文感知注意同时表征了回答者在问题语义和时间信息方面的多面专业知识。此外,多位移和多分辨率模块的设计使我们的模型能够处理不同时间粒度的时间影响。在不同领域的六个数据集上进行的大量实验表明,所提出的模型显著优于竞争性基线模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Temporal Context-Aware Representation Learning for Question Routing
Question routing (QR) aims at recommending newly posted questions to the potential answerers who are most likely to answer the questions. The existing approaches that learn users' expertise from their past question-answering activities usually suffer from challenges in two aspects: 1) multi-faceted expertise and 2) temporal dynamics in the answering behavior. This paper proposes a novel temporal context-aware model in multiple granularities of temporal dynamics that concurrently address the above challenges. Specifically, the temporal context-aware attention characterizes the answerer's multi-faceted expertise in terms of the questions' semantic and temporal information simultaneously. Moreover, the design of the multi-shift and multi-resolution module enables our model to handle temporal impact on different time granularities. Extensive experiments on six datasets from different domains demonstrate that the proposed model significantly outperforms competitive baseline models.
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