In this paper a kernel for time-series data is introduced so that it can be used for any data mining task that relies on a similarity or distance metric. The main idea of our kernel is that it should recognize as highly similar time-series that are essentially the same but may be slightly perturbed from each other: for example, if one series is shifted with respect to the other or if it slightly misaligned. Namely, our kernel tries to focus on the shape of the time-series and ignores small perturbations such as misalignments or shifts. First, a recursive formulation of the kernel directly based on its definition is proposed. Then it is shown how to efficiently compute the kernel using an equivalent matrix-based formulation. To validate the ...
International audienceWhile most of statistical methods for prediction or data mining have been buil...
Clustering is an essential branch of data mining and statistical analysis that could help us explore...
This paper contributes multivariate versions of seven commonly used elastic similarity and distance ...
In this paper a kernel for time-series data is introduced so that it can be used for any data mining...
In this paper a kernel for time-series data is presented. The main idea of the kernel is that it is ...
In this paper a kernel for time-series data is presented. The main idea of the kernel is that it is...
There exist a variety of distance measures which operate on time series kernels. The objective of th...
Today, scientific experiments and simulations produce massive amounts of heterogeneous data that nee...
Time series are ubiquitous, and a measure to assess their similarity is a core part of many computat...
A new similarity measure, called SimilB, for time series analysis, based on the cross-ΨB-energy o...
Time series prediction and control may involve the study of massive data archive and require some ki...
This paper presents a kernel-based approach for the change detection of remote sensing images. It de...
The recent introduction of Hankelets to describe time series relies on the assumption that the time ...
Time series analysis is an important and complex problem in machine learning and statistics. Real-wo...
The huge amount of daily generated data in smart cities has called for more effective data storage, ...
International audienceWhile most of statistical methods for prediction or data mining have been buil...
Clustering is an essential branch of data mining and statistical analysis that could help us explore...
This paper contributes multivariate versions of seven commonly used elastic similarity and distance ...
In this paper a kernel for time-series data is introduced so that it can be used for any data mining...
In this paper a kernel for time-series data is presented. The main idea of the kernel is that it is ...
In this paper a kernel for time-series data is presented. The main idea of the kernel is that it is...
There exist a variety of distance measures which operate on time series kernels. The objective of th...
Today, scientific experiments and simulations produce massive amounts of heterogeneous data that nee...
Time series are ubiquitous, and a measure to assess their similarity is a core part of many computat...
A new similarity measure, called SimilB, for time series analysis, based on the cross-ΨB-energy o...
Time series prediction and control may involve the study of massive data archive and require some ki...
This paper presents a kernel-based approach for the change detection of remote sensing images. It de...
The recent introduction of Hankelets to describe time series relies on the assumption that the time ...
Time series analysis is an important and complex problem in machine learning and statistics. Real-wo...
The huge amount of daily generated data in smart cities has called for more effective data storage, ...
International audienceWhile most of statistical methods for prediction or data mining have been buil...
Clustering is an essential branch of data mining and statistical analysis that could help us explore...
This paper contributes multivariate versions of seven commonly used elastic similarity and distance ...