Publication | Closed Access
A Model for Temporal Dependencies in Event Streams
89
Citations
14
References
2011
Year
EngineeringMachine LearningSequential LearningNonlinear Temporal DependenciesProbabilistic ForecastingEvent StreamsData ScienceData MiningComplex Event ProcessingManagementTemporal DataStatisticsTemporal DependenciesEvent ProcessingPredictive AnalyticsKnowledge DiscoveryTemporal Pattern RecognitionProbability TheoryComputer ScienceForecastingData Stream MiningData Modeling
We introduce the Piecewise-Constant Conditional Intensity Model, a model for learning temporal dependencies in event streams. We describe a closed-form Bayesian approach to learning these models, and describe an importance sampling algorithm for forecasting future events using these models, using a proposal distribution based on Poisson superposition. We then use synthetic data, supercomputer event logs, and web search query logs to illustrate that our learning algorithm can efficiently learn nonlinear temporal dependencies, and that our importance sampling algorithm can effectively forecast future events.
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