Nowadays, great quantities of data are produced by a large and diverse family of sensors (e.g., remote sensors, biochemical sensors, wearable devices), which typically measure multiple variables over time, resulting in data streams that can be profitably organized as multivariate time-series. In practical scenarios, the speed at which such information is collected often makes the data labeling task uneasy and too expensive, so that limit the use of supervised approaches. For this reason, unsupervised and exploratory methods represent a fundamental tool to deal with the analysis of multivariate time series. In this paper we propose a deep-learning based framework for clustering multivariate time series data with varying lengths. Our framewor...
Following a nonparametric approach, we suggest a time-series clustering method. Our clustering appro...
Following a nonparametric approach, we suggest a time series clustering method. Our clustering appro...
This thesis proposes a hierarchical clustering algorithm for time series, comprised of a variational...
International audienceNowadays, great quantities of data are produced by a large and diverse family ...
International audienceHuge amount of data are nowadays produced by a large and disparate family of s...
International audienceTime series are ubiquitous in data mining applications. Similar to other types...
With the advance of sensor technologies, the Multivariate Time Series classification (MTSC) problem,...
We present a comprehensive, detailed review of time-series data analysis, with emphasis on deep time...
Abstract Clustering and segmentation of temporal data is an important task across several fields, w...
The increasing capability to collect data gives us the possibility to collect a massive amount of he...
Time-series data is generated ubiquitously from Internet-of-Things (IoT) infrastructure, connected a...
We present a novel approach for clustering sequences of multi-dimensional trajectory data obtained f...
Most of the existing research on multivariate time series concerns supervised forecasting problems. ...
The increase in the number of complex temporal datasets collected today\ud has prompted the developm...
This paper presents DeepStream, a novel data stream temporal clustering algorithm that dynamically d...
Following a nonparametric approach, we suggest a time-series clustering method. Our clustering appro...
Following a nonparametric approach, we suggest a time series clustering method. Our clustering appro...
This thesis proposes a hierarchical clustering algorithm for time series, comprised of a variational...
International audienceNowadays, great quantities of data are produced by a large and diverse family ...
International audienceHuge amount of data are nowadays produced by a large and disparate family of s...
International audienceTime series are ubiquitous in data mining applications. Similar to other types...
With the advance of sensor technologies, the Multivariate Time Series classification (MTSC) problem,...
We present a comprehensive, detailed review of time-series data analysis, with emphasis on deep time...
Abstract Clustering and segmentation of temporal data is an important task across several fields, w...
The increasing capability to collect data gives us the possibility to collect a massive amount of he...
Time-series data is generated ubiquitously from Internet-of-Things (IoT) infrastructure, connected a...
We present a novel approach for clustering sequences of multi-dimensional trajectory data obtained f...
Most of the existing research on multivariate time series concerns supervised forecasting problems. ...
The increase in the number of complex temporal datasets collected today\ud has prompted the developm...
This paper presents DeepStream, a novel data stream temporal clustering algorithm that dynamically d...
Following a nonparametric approach, we suggest a time-series clustering method. Our clustering appro...
Following a nonparametric approach, we suggest a time series clustering method. Our clustering appro...
This thesis proposes a hierarchical clustering algorithm for time series, comprised of a variational...