Linear Dynamical Systems are widely used to study the underlying patterns of multivariate time series. A basic assumption of these models is that high-dimensional time series can be characterized by some underlying, low-dimensional and time-varying latent states. However, existing approaches to LDS modeling mostly learn the latent space with a prescribed dimensionality. When dealing with short-length high- dimensional time series data, such models would be easily overfitted. We propose Reduced-Rank Linear Dynamical Systems (RRLDS), to automatically retrieve the intrinsic dimensionality of the latent space during model learning. Our key observation is that the rank of the dynamics matrix of LDS captures the intrinsic dimensionality, and the ...
Time series analysis aims to extract meaningful information from data that has been generated in seq...
Population neural recordings with long-range temporal structure are often best un-derstood in terms ...
1 Introduction Many problems in machine learning involve sequences of real-valued multivariate obser...
Linear Dynamical System (LDS) is an elegant mathematical framework for modeling and learning Multiva...
Linear Dynamical System (LDS) is an elegant mathematical framework for mod-eling and learning multiv...
Linear Dynamical System (LDS) is an elegant mathematical framework for mod-eling and learning multiv...
International audienceAbstract A large body of work has suggested that neural populations exhibit lo...
Recordings from large populations of neurons make it possible to search for hy-pothesized low-dimens...
High dimensional time series are endemic in applications of machine learning such as robotics (senso...
The goal of this work is to learn a parsimonious and informative representation for high-dimensional...
The growing capabilities in generating and collecting data has risen unique opportunities and challe...
Latent linear dynamical systems with generalised-linear observation models arise in a variety of app...
We seek informative representations of the processes underlying time series data. As a first step, w...
Learning interpretable representations of neural dynamics at a population level is a crucial first s...
The goal of this work is to learn a parsimonious and informative representation for high-dimensional...
Time series analysis aims to extract meaningful information from data that has been generated in seq...
Population neural recordings with long-range temporal structure are often best un-derstood in terms ...
1 Introduction Many problems in machine learning involve sequences of real-valued multivariate obser...
Linear Dynamical System (LDS) is an elegant mathematical framework for modeling and learning Multiva...
Linear Dynamical System (LDS) is an elegant mathematical framework for mod-eling and learning multiv...
Linear Dynamical System (LDS) is an elegant mathematical framework for mod-eling and learning multiv...
International audienceAbstract A large body of work has suggested that neural populations exhibit lo...
Recordings from large populations of neurons make it possible to search for hy-pothesized low-dimens...
High dimensional time series are endemic in applications of machine learning such as robotics (senso...
The goal of this work is to learn a parsimonious and informative representation for high-dimensional...
The growing capabilities in generating and collecting data has risen unique opportunities and challe...
Latent linear dynamical systems with generalised-linear observation models arise in a variety of app...
We seek informative representations of the processes underlying time series data. As a first step, w...
Learning interpretable representations of neural dynamics at a population level is a crucial first s...
The goal of this work is to learn a parsimonious and informative representation for high-dimensional...
Time series analysis aims to extract meaningful information from data that has been generated in seq...
Population neural recordings with long-range temporal structure are often best un-derstood in terms ...
1 Introduction Many problems in machine learning involve sequences of real-valued multivariate obser...