The aim of the paper is to show that linear dynamical systems can be quite useful when dealing with sequence learning tasks. According to the complexity of the problem to face, linear dynamical systems may directly contribute to provide a good solution at a reduced computational cost, or indirectly provide support at a pre-training stage for nonlinear models. We present and discuss several approaches, both linear and nonlinear, where linear dynamical systems play an important role. These approaches are empirically assessed on two nontrivial datasets of sequences on a prediction task. Experimental results show that indeed linear dynamical systems can either directly provide a satisfactory solution, as well as they may be crucial for the succ...
Learning Classifier Systems (LCS) traditionally use a ternary encoding to generalise over the enviro...
We address the problem of performing decision tasks and, in particular, classification and recogniti...
In this paper, based on the deterministic learning mechanism, we present an alternative systematic s...
The aim of the paper is to explore how models based on a linear dynamic can be used in order to perf...
With the diffusion of cheap sensors, sensor-equipped devices (e.g., drones), and sensor networks (su...
In this paper, based on deterministic learning, we propose a method for rapid recognition of dynamic...
Stability is a desirable characteristic for linear dynamical systems, but it is often ignored by alg...
Dynamical systems are used to model physical phenomena whose state changes over time. This paper pro...
Recently, a deterministic learning theory was proposed for identification and rapid pattern recognit...
1 Introduction Many problems in machine learning involve sequences of real-valued multivariate obser...
Dynamical systems have been used to describe a vast range of phenomena, including physical sciences...
Despite the recent widespread success of machine learning, we still do not fully understand its fund...
This paper introduces a new rationale for learning nonlinear dynamical systems. The method makes use...
Recently, a number of researchers have proposed spectral algorithms for learning models of nonlinear...
Abstract We consider the problem of nding an optimal path through a trellis graph when the arc costs...
Learning Classifier Systems (LCS) traditionally use a ternary encoding to generalise over the enviro...
We address the problem of performing decision tasks and, in particular, classification and recogniti...
In this paper, based on the deterministic learning mechanism, we present an alternative systematic s...
The aim of the paper is to explore how models based on a linear dynamic can be used in order to perf...
With the diffusion of cheap sensors, sensor-equipped devices (e.g., drones), and sensor networks (su...
In this paper, based on deterministic learning, we propose a method for rapid recognition of dynamic...
Stability is a desirable characteristic for linear dynamical systems, but it is often ignored by alg...
Dynamical systems are used to model physical phenomena whose state changes over time. This paper pro...
Recently, a deterministic learning theory was proposed for identification and rapid pattern recognit...
1 Introduction Many problems in machine learning involve sequences of real-valued multivariate obser...
Dynamical systems have been used to describe a vast range of phenomena, including physical sciences...
Despite the recent widespread success of machine learning, we still do not fully understand its fund...
This paper introduces a new rationale for learning nonlinear dynamical systems. The method makes use...
Recently, a number of researchers have proposed spectral algorithms for learning models of nonlinear...
Abstract We consider the problem of nding an optimal path through a trellis graph when the arc costs...
Learning Classifier Systems (LCS) traditionally use a ternary encoding to generalise over the enviro...
We address the problem of performing decision tasks and, in particular, classification and recogniti...
In this paper, based on the deterministic learning mechanism, we present an alternative systematic s...