International audienceTemporal data are naturally everywhere, especially in the digital era that sees the advent of big data and internet of things. One major challenge that arises during temporal data analysis and mining is the comparison of time series or sequences, which requires to determine a proper distance or (dis)similarity measure. In this context, the Dynamic Time Warping (DTW) has enjoyed success in many domains, due to its 'temporal elasticity', a property particularly useful when matching temporal data. Unfortunately this dissimilarity measure suffers from a quadratic computational cost, which prohibits its use for large scale applications. This work addresses the sparsification of the alignment path search space for DTW-like m...
Dynamic time warping (DTW) is a popular time series distance measure that aligns the points in two s...
Time series clustering is the process of grouping sequential correspondences in similar clusters. Th...
Similarity search with respect to time series has received much attention from research and industry...
International audienceTemporal data are naturally everywhere, especially in the digital era that see...
Similarity search is a core module of many data analysis tasks including search by example classific...
Time-series data naturally arise in countless domains, such as meteorology, astrophysics, geology, m...
Time-series data naturally arise in countless domains, such as meteorology, astrophysics, geology, m...
International audienceDynamic Time Warping (DTW) is probably the most popular distance measure for t...
The dynamic time warping (DTW) distance is a popular similarity measure for comparing time series da...
Dynamic Time Warping (DTW) is a widely used distance measure for time series data mining. Its quadra...
Time series data is ubiquitous in real world, and the similarity search in time series data is of gr...
Dynamic Time Warping (DTW) coupled with k Nearest Neighbour classification, where k= 1, is the most ...
We present a new space-efficient approach, (SparseDTW), to compute the Dynamic Time Warping (DTW) di...
Insights from database research, notably in the areas of data mining and similarity search, and adva...
Given the ubiquity of time series data, the data mining community has spent significant time investi...
Dynamic time warping (DTW) is a popular time series distance measure that aligns the points in two s...
Time series clustering is the process of grouping sequential correspondences in similar clusters. Th...
Similarity search with respect to time series has received much attention from research and industry...
International audienceTemporal data are naturally everywhere, especially in the digital era that see...
Similarity search is a core module of many data analysis tasks including search by example classific...
Time-series data naturally arise in countless domains, such as meteorology, astrophysics, geology, m...
Time-series data naturally arise in countless domains, such as meteorology, astrophysics, geology, m...
International audienceDynamic Time Warping (DTW) is probably the most popular distance measure for t...
The dynamic time warping (DTW) distance is a popular similarity measure for comparing time series da...
Dynamic Time Warping (DTW) is a widely used distance measure for time series data mining. Its quadra...
Time series data is ubiquitous in real world, and the similarity search in time series data is of gr...
Dynamic Time Warping (DTW) coupled with k Nearest Neighbour classification, where k= 1, is the most ...
We present a new space-efficient approach, (SparseDTW), to compute the Dynamic Time Warping (DTW) di...
Insights from database research, notably in the areas of data mining and similarity search, and adva...
Given the ubiquity of time series data, the data mining community has spent significant time investi...
Dynamic time warping (DTW) is a popular time series distance measure that aligns the points in two s...
Time series clustering is the process of grouping sequential correspondences in similar clusters. Th...
Similarity search with respect to time series has received much attention from research and industry...