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User-Dependent Neural Sequence Models for Continuous-Time Event Data

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arxiv 2011.03231 v1 pith:AYFSVLYT submitted 2020-11-06 stat.ML cs.LG

User-Dependent Neural Sequence Models for Continuous-Time Event Data

classification stat.ML cs.LG
keywords dataeventmodelsapplicationsdifferentneuraluserapproach
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Continuous-time event data are common in applications such as individual behavior data, financial transactions, and medical health records. Modeling such data can be very challenging, in particular for applications with many different types of events, since it requires a model to predict the event types as well as the time of occurrence. Recurrent neural networks that parameterize time-varying intensity functions are the current state-of-the-art for predictive modeling with such data. These models typically assume that all event sequences come from the same data distribution. However, in many applications event sequences are generated by different sources, or users, and their characteristics can be very different. In this paper, we extend the broad class of neural marked point process models to mixtures of latent embeddings, where each mixture component models the characteristic traits of a given user. Our approach relies on augmenting these models with a latent variable that encodes user characteristics, represented by a mixture model over user behavior that is trained via amortized variational inference. We evaluate our methods on four large real-world datasets and demonstrate systematic improvements from our approach over existing work for a variety of predictive metrics such as log-likelihood, next event ranking, and source-of-sequence identification.

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