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Adaptive Topic Tracking Based on Dirichlet Process Mixture Model

机译:基于狄利克雷过程混合模型的自适应主题跟踪

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This paper proposes a Dirichlet Process Mixture Model (DPMM) considering relevant topical information for adaptive topic tracking.The method has two characters: 1) It uses DPMM to implement topic tracking.Prior knowledge of known topics is combined in Gibbs sampling for model inference,and correlation between a story and each known topics can be estimated.2) To alleviate topic excursion problem and topic deviation problem brought by existing adaptive tracking methods,the paper presents a new adaptive learning mechanism,the basic idea of which is to introduce tracking feedback with a reliability metric into the topic tracking procedure and make tracking feedback influence tracing computation under the condition of the reliability metric.The empirical results on TDT3 evaluation data show that the model,without a large scale of in-domain data,can solve topic excursion problem of topic tracking task and topic deviation problem brought by existing adaptive learning mechanisms significantly even with a few on-topic stories.
机译:本文提出一种考虑相关主题信息的Dirichlet过程混合模型(DPMM),用于自适应主题跟踪,该方法具有两个特点:1)利用DPMM进行主题跟踪,将已知主题的先验知识结合到Gibbs采样中进行模型推理, 2)为缓解现有的自适应跟踪方法带来的话题偏移问题和话题偏离问题,本文提出了一种新的自适应学习机制,其基本思想是引入跟踪反馈TDT3评估数据的实证结果表明,该模型在没有大规模域内数据的情况下,能够解决主题漂移问题,并在可靠性指标的条件下进行跟踪反馈影响跟踪计算。现有的自适应学习机制带来的话题跟踪任务和话题偏差问题即使有一些主题故事。

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