StateSpaceModels.jl: a Julia Package for Time-Series Analysis in a State-Space Framework

08/05/2019
by   Raphael Saavedra, et al.
0

StateSpaceModels.jl is an open-source Julia package for modeling, forecasting and simulating time series in a state-space framework. The package represents a straightforward tool that can be useful for a wide range of applications that deal with time series. In addition, it contains features that are not present in related commercial software, such as Monte Carlo simulation and the possibility of setting any user-defined linear model.

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