C-NTPP: Learning Cluster-Aware Neural Temporal Point Process

Fangyu Ding, Junchi Yan, Haiyang Wang
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引用次数: 0

Abstract

Event sequences in continuous time space are ubiquitous across applications and have been intensively studied with both classic temporal point process (TPP) and its recent deep network variants. This work is motivated by an observation that many of event data exhibit inherent clustering patterns in terms of the sparse correlation among events, while such characteristics are seldom explicitly considered in existing neural TPP models whereby the history encoders are often embodied by RNNs or Transformers. In this work, we propose a c-NTPP (Cluster-Aware Neural Temporal Point Process) model, which leverages a sequential variational autoencoder framework to infer the latent cluster each event belongs to in the sequence. Specially, a novel event-clustered attention mechanism is devised to learn each cluster and then aggregate them together to obtain the final representation for each event. Extensive experiments show that c-NTPP achieves superior performance on both real-world and synthetic datasets, and it can also uncover the underlying clustering correlations.
C-NTPP:学习簇感知神经时间点过程
连续时间空间中的事件序列在各种应用中普遍存在,并已被经典的时间点过程(TPP)及其最近的深度网络变体所深入研究。这项工作的动机是观察到许多事件数据在事件之间的稀疏相关性方面表现出固有的聚类模式,而这些特征在现有的神经TPP模型中很少被明确考虑,其中历史编码器通常由rnn或transformer体现。在这项工作中,我们提出了一个c-NTPP(聚类感知神经时间点过程)模型,该模型利用顺序变分自编码器框架来推断序列中每个事件所属的潜在聚类。特别地,设计了一种新的事件聚类注意机制来学习每个聚类,然后将它们聚集在一起以获得每个事件的最终表示。大量的实验表明,c-NTPP在真实世界和合成数据集上都取得了卓越的性能,并且它还可以揭示潜在的聚类相关性。
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