In the light of regularized dynamic time warping kernels, this paper re-considers the concept of a time elastic centroid for a set of time series. We derive a new algorithm based on a probabilistic interpretation of kernel alignment matrices. This algorithm expresses the averaging process in terms of stochastic alignment automata. It uses an iterative agglomerative heuristic method for averaging the aligned samples, while also averaging the times of their occurrence. By comparing classification accuracies for 45 heterogeneous time series data sets obtained by first nearest centroid/medoid classifiers, we show that (i) centroid-based approaches significantly outperform medoid-based ones, (ii) for the data sets considered, our algorithm, whic...
This thesis addresses scientific issues from a data science perspective as part of the analysis of t...
Time series clustering is an important data mining topic and a challenging task due to the sequences...
The problem of time-series retrieval arises in many fields of science and constitutes many important...
International audienceIn the light of regularized dynamic time warping kernels, this paper re-consid...
At the light of regularized dynamic time warping kernels, this paper reconsider the concept of time ...
Abstract—Recent years have seen significant progress in improving both the efficiency and effectiven...
We propose in this paper a new family of kernels to handle times series, notably speech data, within...
International audienceA concerted research effort over the past two decades has heralded significant...
International audienceIn this paper, we propose an innovative averaging of a set of time-series base...
Recent years have seen significant progress in improving both the efficiency and effectiveness of ti...
Sign language synthesis is a useful tool in addressing many of the issues faced by deaf communities....
Averaging time series under dynamic time warping is an important tool for improving nearest-neighbor...
Temporal alignment of human behaviour from visual data is a very challenging problem due to a numero...
Dynamic time warping (DTW) has been widely used for the alignment and comparison of two sequential p...
The recent introduction of Hankelets to describe time series relies on the assumption that the time ...
This thesis addresses scientific issues from a data science perspective as part of the analysis of t...
Time series clustering is an important data mining topic and a challenging task due to the sequences...
The problem of time-series retrieval arises in many fields of science and constitutes many important...
International audienceIn the light of regularized dynamic time warping kernels, this paper re-consid...
At the light of regularized dynamic time warping kernels, this paper reconsider the concept of time ...
Abstract—Recent years have seen significant progress in improving both the efficiency and effectiven...
We propose in this paper a new family of kernels to handle times series, notably speech data, within...
International audienceA concerted research effort over the past two decades has heralded significant...
International audienceIn this paper, we propose an innovative averaging of a set of time-series base...
Recent years have seen significant progress in improving both the efficiency and effectiveness of ti...
Sign language synthesis is a useful tool in addressing many of the issues faced by deaf communities....
Averaging time series under dynamic time warping is an important tool for improving nearest-neighbor...
Temporal alignment of human behaviour from visual data is a very challenging problem due to a numero...
Dynamic time warping (DTW) has been widely used for the alignment and comparison of two sequential p...
The recent introduction of Hankelets to describe time series relies on the assumption that the time ...
This thesis addresses scientific issues from a data science perspective as part of the analysis of t...
Time series clustering is an important data mining topic and a challenging task due to the sequences...
The problem of time-series retrieval arises in many fields of science and constitutes many important...