The way similarity is measured among time series is of paramount importance in many data mining and machine learning tasks. For instance, Elastic Similarity Measures are widely used to determine whether two time series are similar to each other. Indeed, in off-line time series mining, these measures have been shown to be very effective due to their ability to handle time distortions and mitigate their effect on the resulting distance. In the on-line setting, where available data increase continuously over time and not necessary in a stationary manner, stream mining approaches are required to be fast with limited memory consumption and capable of adapting to different stationary intervals. In this sense, the computational complexity of Elast...
Dynamic Time Warping (DTW) is a widely used distance measure for time series data mining. Its quadra...
A new similarity measure, called SimilB, for time series analysis, based on the cross-ΨB-energy o...
none2Invited paper. Extended version of the SBBD'05 paper, selected for publication on a special is...
A sequence is a collection of data instances arranged in a structured manner. When this arrangement ...
Dynamic Time Warping is a well-known measure of dissimilarity between time series. Due to its flexib...
Elastic similarity measures are a class of similarity measures specifically designed to work with ti...
Time series similarity measures are highly relevant in a wide range of emerging applications includi...
This paper contributes multivariate versions of seven commonly used elastic similarity and distance ...
The huge amount of daily generated data in smart cities has called for more effective data storage, ...
In streaming time series classification problems, the goal is to predict the label associated to the...
Similarity-based retrieval has attracted an increasing amount of attention in recent years. Although...
Similarity search is a core module of many data analysis tasks including search by example classific...
Abstract. A time series consists of a series of values or events obtained over repeated measurements...
Time series data is ubiquitous in real world, and the similarity search in time series data is of gr...
The chapter is organized as follows. Section 2 will introduce the similarity matching problem on tim...
Dynamic Time Warping (DTW) is a widely used distance measure for time series data mining. Its quadra...
A new similarity measure, called SimilB, for time series analysis, based on the cross-ΨB-energy o...
none2Invited paper. Extended version of the SBBD'05 paper, selected for publication on a special is...
A sequence is a collection of data instances arranged in a structured manner. When this arrangement ...
Dynamic Time Warping is a well-known measure of dissimilarity between time series. Due to its flexib...
Elastic similarity measures are a class of similarity measures specifically designed to work with ti...
Time series similarity measures are highly relevant in a wide range of emerging applications includi...
This paper contributes multivariate versions of seven commonly used elastic similarity and distance ...
The huge amount of daily generated data in smart cities has called for more effective data storage, ...
In streaming time series classification problems, the goal is to predict the label associated to the...
Similarity-based retrieval has attracted an increasing amount of attention in recent years. Although...
Similarity search is a core module of many data analysis tasks including search by example classific...
Abstract. A time series consists of a series of values or events obtained over repeated measurements...
Time series data is ubiquitous in real world, and the similarity search in time series data is of gr...
The chapter is organized as follows. Section 2 will introduce the similarity matching problem on tim...
Dynamic Time Warping (DTW) is a widely used distance measure for time series data mining. Its quadra...
A new similarity measure, called SimilB, for time series analysis, based on the cross-ΨB-energy o...
none2Invited paper. Extended version of the SBBD'05 paper, selected for publication on a special is...