In this paper a kernel for time-series data is presented. The main idea of the kernel is that it is designed to recognize as similar time series that may be slightly shifted with one another. Namely, it tries to focus on the shape of the time-series and ignores the fact that the series may not be perfectly aligned. The proposed kernel has been validated on several datasets based on the UCR time-series repository [1]. A comparison with the well-known Dynamic Time Warping (DTW) distance and Euclidean distance shows that the proposed kernel outperforms the Euclidean distance and is competitive with respect to the DTW distance while having a much lower computational cost
Time series classification is an increasing research topic due to the vast amount of time series dat...
We present novel, efficient, model based kernels for time series data rooted in the reservoir comput...
In the time-series classification context, the majority of themost accurate core methods are based o...
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...
In this paper a kernel for time-series data is introduced so that it can be used for any data mining...
There exist a variety of distance measures which operate on time series kernels. The objective of th...
International audienceIn the time-series classification context, the majority of the most accurate c...
We demonstrate a simple connection between dictionary methods for time series classification, which ...
The recent introduction of Hankelets to describe time series relies on the assumption that the time ...
Abstract. We propose in this paper a new kernel for time series on structured data in the dynamic ti...
We propose in this paper a new family of kernels to handle times series, notably speech data, within...
Time series classification is an increasing research topic due to the vast amount of time series dat...
We present novel, efficient, model based kernels for time series data rooted in the reservoir comput...
In the time-series classification context, the majority of themost accurate core methods are based o...
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...
In this paper a kernel for time-series data is introduced so that it can be used for any data mining...
There exist a variety of distance measures which operate on time series kernels. The objective of th...
International audienceIn the time-series classification context, the majority of the most accurate c...
We demonstrate a simple connection between dictionary methods for time series classification, which ...
The recent introduction of Hankelets to describe time series relies on the assumption that the time ...
Abstract. We propose in this paper a new kernel for time series on structured data in the dynamic ti...
We propose in this paper a new family of kernels to handle times series, notably speech data, within...
Time series classification is an increasing research topic due to the vast amount of time series dat...
We present novel, efficient, model based kernels for time series data rooted in the reservoir comput...
In the time-series classification context, the majority of themost accurate core methods are based o...