International audienceThis paper presents a data-driven approach for analyzing multivariate time series. It relies on the hypothesis that high-dimensional data often lie on a low-dimensional manifold whose geometry may be revealed using manifold learning techniques. We define a notion of distance between multi-variate time series and use it to determine a low-dimensional embedding capable of describing the statistics of the signals at hand using just a few parameters. We illustrate our method on two simulated examples and two real datasets containing electroencephalographic recordings (EEG)
Time-dependent natural phenomena and artificial processes can often be quantitatively expressed as m...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
International audienceMost existing methods for time series clustering rely on distances calculated ...
International audienceThis paper presents a data-driven approach for analyzing multivariate time ser...
Time series analysis aims to extract meaningful information from data that has been generated in seq...
Analyzing signals arising from dynamical systems typically requires many modeling assumptions. In hi...
133 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2006.We apply our manifold learnin...
This master´s thesis focuses on developing and testing methods that can automatically classify a giv...
<p>The analysis of time series and sequences has been challenging in both statistics and machine lea...
Over the last two decades, topological data analysis (TDA) has emerged as a very powerful data analy...
This paper contributes multivariate versions of seven commonly used elastic similarity and distance ...
A multivariate time series is a time-indexed sequence of multidimensional samples. Such a kind of da...
Univariate time series (UTS) classification has been reported in several papers, where various effic...
The applicability of time series data mining in many different fields has motivated the scientific c...
This thesis is about the analysis of two data sets consisting of human brain data measured by electr...
Time-dependent natural phenomena and artificial processes can often be quantitatively expressed as m...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
International audienceMost existing methods for time series clustering rely on distances calculated ...
International audienceThis paper presents a data-driven approach for analyzing multivariate time ser...
Time series analysis aims to extract meaningful information from data that has been generated in seq...
Analyzing signals arising from dynamical systems typically requires many modeling assumptions. In hi...
133 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2006.We apply our manifold learnin...
This master´s thesis focuses on developing and testing methods that can automatically classify a giv...
<p>The analysis of time series and sequences has been challenging in both statistics and machine lea...
Over the last two decades, topological data analysis (TDA) has emerged as a very powerful data analy...
This paper contributes multivariate versions of seven commonly used elastic similarity and distance ...
A multivariate time series is a time-indexed sequence of multidimensional samples. Such a kind of da...
Univariate time series (UTS) classification has been reported in several papers, where various effic...
The applicability of time series data mining in many different fields has motivated the scientific c...
This thesis is about the analysis of two data sets consisting of human brain data measured by electr...
Time-dependent natural phenomena and artificial processes can often be quantitatively expressed as m...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
International audienceMost existing methods for time series clustering rely on distances calculated ...