This paper proposes a method for clustering of time series, based upon the ability of deep Reservoir Computing networks to grasp the dynamical structure of the series that is presented as input. A standard clustering algorithm, such as k-means, is applied to the network states, rather than the input series themselves. Clustering is thus embedded into the network dynamical evolution, since a clustering result is obtained at every time step, which in turn serves as initialisation at the next step. We empirically assess the performance of deep reservoir systems in time series clustering on benchmark datasets, considering the influence of crucial hyper-parameters. Experimentation with the proposed model shows enhanced clustering quality, measur...
We present a comprehensive, detailed review of time-series data analysis, with emphasis on deep time...
With the increasing need for real-time human health monitoring and the advent of activity tracking d...
Distributed monitoring sensor networks are used in an ever increasing number of applications, partic...
This paper proposes a method for clustering of time series, based upon the ability of deep Reservoir...
In this paper we illustrate a new method of visualizing and projecting time series data using reserv...
Reservoir computing provides a simpler paradigm of training recurrent networks by initialising and a...
International audienceTime series are ubiquitous in data mining applications. Similar to other types...
Clustering is an attempt to form groups of similar objects, and it is a powerful tool for discoverin...
Time series is one of the forms of data presentation that is used in many studies. It is convenient,...
In this paper we combine wavelet decomposition and recurrent neural networks to provide fast and acc...
We evaluate two approaches for time series classification based on reservoir computing. In the first...
Abstract—Time series clustering provides underpinning tech-niques for discovering the intrinsic stru...
77 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2006.The classical approaches to cl...
The aerospace industry develops prognosis and health management algorithms to ensure better safety o...
The development of tools for characterizing current and predicting future states of higher-dimension...
We present a comprehensive, detailed review of time-series data analysis, with emphasis on deep time...
With the increasing need for real-time human health monitoring and the advent of activity tracking d...
Distributed monitoring sensor networks are used in an ever increasing number of applications, partic...
This paper proposes a method for clustering of time series, based upon the ability of deep Reservoir...
In this paper we illustrate a new method of visualizing and projecting time series data using reserv...
Reservoir computing provides a simpler paradigm of training recurrent networks by initialising and a...
International audienceTime series are ubiquitous in data mining applications. Similar to other types...
Clustering is an attempt to form groups of similar objects, and it is a powerful tool for discoverin...
Time series is one of the forms of data presentation that is used in many studies. It is convenient,...
In this paper we combine wavelet decomposition and recurrent neural networks to provide fast and acc...
We evaluate two approaches for time series classification based on reservoir computing. In the first...
Abstract—Time series clustering provides underpinning tech-niques for discovering the intrinsic stru...
77 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2006.The classical approaches to cl...
The aerospace industry develops prognosis and health management algorithms to ensure better safety o...
The development of tools for characterizing current and predicting future states of higher-dimension...
We present a comprehensive, detailed review of time-series data analysis, with emphasis on deep time...
With the increasing need for real-time human health monitoring and the advent of activity tracking d...
Distributed monitoring sensor networks are used in an ever increasing number of applications, partic...