The ubiquity of time series data across almost all human endeavors has produced a great interest in time series data mining in the last decade. While dozens of classification algorithms have been applied to time series, recent empirical evidence strongly suggests that simple nearest neighbor classification is exceptionally difficult to beat. The choice of distance measure used by the nearest neighbor algorithm is important, and depends on the invariances required by the domain. For example, motion capture data typically requires invariance to warping, and cardiology data requires invariance to the baseline (the mean value). Similarly, recent work suggests that for time series clustering, the choice of clustering algorithm is much less impor...
Abstract—Data mining research into time series classification (TSC) has focussed on alternative dist...
Recently, the startling claim was made that sequential time series clustering is meaningless. This h...
The Fréchet distance is a popular distance measure for curves. We study the problem of clustering ti...
The ubiquity of time series data across almost all human endeavors has produced a great interest in ...
Clustering is an essential branch of data mining and statistical analysis that could help us explore...
At their core, many time series data mining algorithms reduce to reasoning about the shapes of time ...
Abstract—Distance and dissimilarity functions are of un-doubted importance to Time Series Data Minin...
International audienceConstrained clustering is becoming an increasingly popular approach in data mi...
To classify time series by nearest neighbors, we need to specify or learn one or several distance me...
At their core, many time series data mining algorithms can be reduced to reasoning about the shapes ...
The most useful data mining primitives are distance measures. With an effective distance measure, it...
International audienceA concerted research effort over the past two decades has heralded significant...
Abstract: Clustering algorithms have been actively used to identify similar time series, providing a...
Abstract To classify time series by nearest neighbors, we need to specify or learn one or several di...
The similarity of objects is one of the most fundamental concepts in any collection of complex infor...
Abstract—Data mining research into time series classification (TSC) has focussed on alternative dist...
Recently, the startling claim was made that sequential time series clustering is meaningless. This h...
The Fréchet distance is a popular distance measure for curves. We study the problem of clustering ti...
The ubiquity of time series data across almost all human endeavors has produced a great interest in ...
Clustering is an essential branch of data mining and statistical analysis that could help us explore...
At their core, many time series data mining algorithms reduce to reasoning about the shapes of time ...
Abstract—Distance and dissimilarity functions are of un-doubted importance to Time Series Data Minin...
International audienceConstrained clustering is becoming an increasingly popular approach in data mi...
To classify time series by nearest neighbors, we need to specify or learn one or several distance me...
At their core, many time series data mining algorithms can be reduced to reasoning about the shapes ...
The most useful data mining primitives are distance measures. With an effective distance measure, it...
International audienceA concerted research effort over the past two decades has heralded significant...
Abstract: Clustering algorithms have been actively used to identify similar time series, providing a...
Abstract To classify time series by nearest neighbors, we need to specify or learn one or several di...
The similarity of objects is one of the most fundamental concepts in any collection of complex infor...
Abstract—Data mining research into time series classification (TSC) has focussed on alternative dist...
Recently, the startling claim was made that sequential time series clustering is meaningless. This h...
The Fréchet distance is a popular distance measure for curves. We study the problem of clustering ti...