Royal Bank of Canada
SYSTEMS AND METHODS FOR MODELING CONTINUOUS STOCHASTIC PROCESSES WITH DYNAMIC NORMALIZING FLOWS

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Abstract:

Systems and methods for machine learning architecture for time series data prediction. The system may include a processor and a memory storing processor-executable instructions. The processor-executable instructions, when executed, may configure the processor to: obtain time series data associated with a data query; generate a predicted value based on a sampled realization of the time series data and a continuous time generative model, the continuous time generative model trained to define an invertible mapping to maximize a log-likelihood of a set of predicted values for a time range associated with the time series data; and generate a signal providing an indication of the predicted value associated with the data query.

Status:
Application
Type:

Utility

Filling date:

8 Feb 2021

Issue date:

19 Aug 2021