International audienceIn real applications, time series are generally of complex structure, exhibiting different global behaviors within classes. To discriminate such challenging time series, we propose a multiple temporal matching approach that reveals the commonly shared features within classes, and the most differential ones across classes. For this, we rely on a new framework based on the variance/covariance criterion to strengthen or weaken matched observations according to the induced variability within and between classes. The experiments performed on real and synthetic datasets demonstrate the ability of the multiple temporal matching approach to capture fine-grained distinctions between time series
Supervised classification is one of the most active areas of machine learning research. Most work ha...
In certain situations, observations are collected on a multivariate time series at a certain tempora...
This paper contributes multivariate versions of seven commonly used elastic similarity and distance ...
In real applications it is not rare for time series of the same class to exhibit dis- similarities i...
It is not rare in applications for global profiles of time series to be different within a class, or...
Il n'est pas rare dans les applications que les profils globaux des séries temporelles soient dissim...
Invited Session 7: Dissimilarities and dissimilarity based methods (with support of the Pascal Netwo...
Many applications generate and/or consume multi-variate temporal data, and experts often lack the me...
The increase in the number of complex temporal datasets collected today\ud has prompted the developm...
Time series represent the most widely spread type of data, occurring in a myriad of application doma...
In this thesis, a highly comparative framework for time-series analysis is developed. The approach d...
International audienceThe definition of a metric between time series is inherent to several data ana...
In this work we address the problem of comparing time series while taking into account both feature ...
Supervised classification is one of the most active areas of machine learning research. Most work ha...
In certain situations, observations are collected on a multivariate time series at a certain tempora...
This paper contributes multivariate versions of seven commonly used elastic similarity and distance ...
In real applications it is not rare for time series of the same class to exhibit dis- similarities i...
It is not rare in applications for global profiles of time series to be different within a class, or...
Il n'est pas rare dans les applications que les profils globaux des séries temporelles soient dissim...
Invited Session 7: Dissimilarities and dissimilarity based methods (with support of the Pascal Netwo...
Many applications generate and/or consume multi-variate temporal data, and experts often lack the me...
The increase in the number of complex temporal datasets collected today\ud has prompted the developm...
Time series represent the most widely spread type of data, occurring in a myriad of application doma...
In this thesis, a highly comparative framework for time-series analysis is developed. The approach d...
International audienceThe definition of a metric between time series is inherent to several data ana...
In this work we address the problem of comparing time series while taking into account both feature ...
Supervised classification is one of the most active areas of machine learning research. Most work ha...
In certain situations, observations are collected on a multivariate time series at a certain tempora...
This paper contributes multivariate versions of seven commonly used elastic similarity and distance ...