Imputing Missing Events in Continuous-Time Event Streams

Pages: 4475 - 4485
Published: May 24, 2019
Abstract
Events in the world may be caused by other, unobserved events. We consider sequences of events in continuous time. Given a probability model of complete sequences, we propose particle smoothing---a form of sequential importance sampling---to impute the missing events in an incomplete sequence. We develop a trainable family of proposal distributions based on a type of bidirectional continuous-time LSTM: Bidirectionality lets the proposals...
Paper Details
Title
Imputing Missing Events in Continuous-Time Event Streams
Published Date
May 24, 2019
Pages
4475 - 4485
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