The aim of the paper is to explore how models based on a linear dynamic can be used in order to perform a prediction task in sequential domains. In the literature, it has already been shown that Linear Dynamical Systems (LDSs) can be quite useful when dealing with sequence learning tasks. Our aim is to study whether it is possible to use LDSs as building blocks for constructing more complex and powerful models. Specifically, we propose a model dubbed Linear System Network, that exploits several LDSs in order to compute a nonlinear projection of the input. Moreover, we explore whether is it possible to apply a co-learning technique in order to improve the performance of LDSs for the considered prediction task
We propose a novel approach for building finite memory predictive models similar in spirit to variab...
In this thesis, the theory of reinforcement learning is described and its relation to learning in bi...
AbstractIn this work, we propose a dynamic graphical model as a tool for Bayesian inference and fore...
The aim of the paper is to show that linear dynamical systems can be quite useful when dealing with ...
With the diffusion of cheap sensors, sensor-equipped devices (e.g., drones), and sensor networks (su...
Dynamical systems are used to model physical phenomena whose state changes over time. This paper pro...
Dynamical systems have been used to describe a vast range of phenomena, including physical sciences...
Learning Classifier Systems (LCS) traditionally use a ternary encoding to generalise over the enviro...
This paper explores the use of a real-valued modular genetic algorithm to evolve continuous-time rec...
This thesis deals with the methodology of building data driven models of nonlinear systems through ...
Developing general purpose algorithms for learning an accurate model of dynamical systems from examp...
International audienceSupervised learning is about learning functions given a set of input and corre...
The difficult problems of predicting chaotic time series and modelling chaotic systems is approached...
Time series datasets are usually composed of a variety of sequences from the same domain, but from ...
Traditional machine learning sequence models, such as RNN and LSTM, can solve sequential data proble...
We propose a novel approach for building finite memory predictive models similar in spirit to variab...
In this thesis, the theory of reinforcement learning is described and its relation to learning in bi...
AbstractIn this work, we propose a dynamic graphical model as a tool for Bayesian inference and fore...
The aim of the paper is to show that linear dynamical systems can be quite useful when dealing with ...
With the diffusion of cheap sensors, sensor-equipped devices (e.g., drones), and sensor networks (su...
Dynamical systems are used to model physical phenomena whose state changes over time. This paper pro...
Dynamical systems have been used to describe a vast range of phenomena, including physical sciences...
Learning Classifier Systems (LCS) traditionally use a ternary encoding to generalise over the enviro...
This paper explores the use of a real-valued modular genetic algorithm to evolve continuous-time rec...
This thesis deals with the methodology of building data driven models of nonlinear systems through ...
Developing general purpose algorithms for learning an accurate model of dynamical systems from examp...
International audienceSupervised learning is about learning functions given a set of input and corre...
The difficult problems of predicting chaotic time series and modelling chaotic systems is approached...
Time series datasets are usually composed of a variety of sequences from the same domain, but from ...
Traditional machine learning sequence models, such as RNN and LSTM, can solve sequential data proble...
We propose a novel approach for building finite memory predictive models similar in spirit to variab...
In this thesis, the theory of reinforcement learning is described and its relation to learning in bi...
AbstractIn this work, we propose a dynamic graphical model as a tool for Bayesian inference and fore...