多元幂次Dirichlet Hawkes过程

Gael Poux-Medard, Julien Velcin, Sabine Loudcher
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引用次数: 1

摘要

文档的发布时间包含了其语义内容的相关信息。Dirichlet-Hawkes过程被提出来联合建模文本信息和出版动态。这种方法在最近的几项工作中得到了成功的应用,并扩展到解决特定的具有挑战性的问题——通常是短文本或纠缠的出版物动态。但是,当前形式的先验不允许复杂的发布动态。特别是,推断的主题是相互独立的——例如,假设有关金融的出版物对有关政治的出版物没有影响。在这项工作中,我们开发了多元幂次Dirichlet-Hawkes过程(MPDHP),减轻了这一假设。各种主题的出版物现在可以相互影响。我们详细介绍并克服了由于考虑交互主题而产生的技术挑战。我们在一系列合成数据集上对MPDHP进行了系统评估,以定义其应用领域和局限性。最后,我们在Reddit数据上开发了MPDHP的一个用例。在本文的最后,感兴趣的读者将知道如何以及何时使用MPDHP,何时不使用。
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Multivariate Powered Dirichlet Hawkes Process
The publication time of a document carries a relevant information about its semantic content. The Dirichlet-Hawkes process has been proposed to jointly model textual information and publication dynamics. This approach has been used with success in several recent works, and extended to tackle specific challenging problems --typically for short texts or entangled publication dynamics. However, the prior in its current form does not allow for complex publication dynamics. In particular, inferred topics are independent from each other --a publication about finance is assumed to have no influence on publications about politics, for instance. In this work, we develop the Multivariate Powered Dirichlet-Hawkes Process (MPDHP), that alleviates this assumption. Publications about various topics can now influence each other. We detail and overcome the technical challenges that arise from considering interacting topics. We conduct a systematic evaluation of MPDHP on a range of synthetic datasets to define its application domain and limitations. Finally, we develop a use case of the MPDHP on Reddit data. At the end of this article, the interested reader will know how and when to use MPDHP, and when not to.
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