A symbolic analysis of observed time series requires a discrete partition of a continuous state space containing the dynamics. A particular kind of partition, called "generating," preserves all deterministic dynamical information in the symbolic representation, but such partitions are not obvious beyond one dimension. Existing methods to find them require significant knowledge of the dynamical evolution operator. We introduce a statistic and algorithm to refine empirical partitions for symbolic state reconstruction. This method optimizes an essential property of a generating partition, avoiding topological degeneracies, by minimizing the number of "symbolic false nearest neighbors." It requires only the observed time series and is sensible ...
State space lumping is one of the classical means to fight the state space explosion problem in stat...
There are many instances in which time series measurements are used to derive an empirical model of ...
We propose a novel approach to discovering latent structures from multimodal time series. We view a ...
We introduce a relaxation algorithm to estimate approximations to generating partitions for observed...
The concept of symbolic dynamics, entropy and complexity measures has been widely utilized for the ...
Symbolic time series analysis D-Markov machines a b s t r a c t A recent publication has reported a ...
In symbolic dynamics, the definition of a symbolic sequence from a continuous times series depends o...
This paper presents symbolic time series analysis (STSA) of multi-dimensional measurement data for p...
State-space exploration is an essential step in many modeling and analysis problems. Its goal is to ...
Abstract — A recent publication has shown a Hilbert-transform-based partitioning method, called anal...
Predictive equivalence in discrete stochastic processes has been applied with great success to ident...
Symbolic dynamics is a powerful tool in the study of dynamical systems. The purpose of symbolic dyna...
The Partition Markov Model characterizes the process by a partition L of the state space, wher...
This paper deals with symbolic time series representation. It builds up on the popular mapping techn...
Network reconstruction, i.e., obtaining network structure from data, is a central theme in systems b...
State space lumping is one of the classical means to fight the state space explosion problem in stat...
There are many instances in which time series measurements are used to derive an empirical model of ...
We propose a novel approach to discovering latent structures from multimodal time series. We view a ...
We introduce a relaxation algorithm to estimate approximations to generating partitions for observed...
The concept of symbolic dynamics, entropy and complexity measures has been widely utilized for the ...
Symbolic time series analysis D-Markov machines a b s t r a c t A recent publication has reported a ...
In symbolic dynamics, the definition of a symbolic sequence from a continuous times series depends o...
This paper presents symbolic time series analysis (STSA) of multi-dimensional measurement data for p...
State-space exploration is an essential step in many modeling and analysis problems. Its goal is to ...
Abstract — A recent publication has shown a Hilbert-transform-based partitioning method, called anal...
Predictive equivalence in discrete stochastic processes has been applied with great success to ident...
Symbolic dynamics is a powerful tool in the study of dynamical systems. The purpose of symbolic dyna...
The Partition Markov Model characterizes the process by a partition L of the state space, wher...
This paper deals with symbolic time series representation. It builds up on the popular mapping techn...
Network reconstruction, i.e., obtaining network structure from data, is a central theme in systems b...
State space lumping is one of the classical means to fight the state space explosion problem in stat...
There are many instances in which time series measurements are used to derive an empirical model of ...
We propose a novel approach to discovering latent structures from multimodal time series. We view a ...