Matrix profile has been recently proposed as a promising technique to the problem of all-pairs-similarity search on time series. Efficient algorithms have been proposed for computing it, e.g., STAMP [13], STOMP [15] and SCRIMP++ [10]. All these algorithms use the z-normalized Euclidean distance to measure the distance between subsequences. However, as we observed, for some datasets other Euclidean measurements are more useful for knowledge discovery from time series. In this paper, we propose efficient algorithms for computing matrix profile for a general class of Euclidean distances. We first propose a simple but efficient algorithm called AAMP for computing matrix profile with the "pure" (non-normalized) Euclidean distance. Then, we exten...
Primitives such as motifs, discords, shapelets, etc., are widely used in time series data mining. A ...
The matrix profile (MP) is a data structure computed from a time series which encodes the data requi...
Time series data are significant, and are derived from temporal data, which involve real numbers rep...
Matrix profile has been recently proposed as a promising technique to the problem of all-pairs-simil...
As companies are increasingly measuring their products and services, the amount of time series data ...
Companies are increasingly measuring their products and services, resulting in a rising amount of av...
The last decade has seen a flurry of research on all-pairs-similarity-search (or, self-join) for tex...
The matrix profile is an effective data mining tool that provides similarity join functionality for ...
The Matrix Profile is a state-of-the-art time series analysis technique that can be used for motif d...
At their core, many time series data mining algorithms can be reduced to reasoning about the shapes ...
Nearest neighbour similarity measures are widely used in many time series data analysis applications...
Fast indexing in time sequence databases for similarity searching has attracted a lot of research re...
The Closest Pair problem aims to identify the closest pair (using some similarity measure, e.g., Euc...
The most useful data mining primitives are distance measures. With an effective distance measure, it...
To classify time series by nearest neighbors, we need to specify or learn one or several distance me...
Primitives such as motifs, discords, shapelets, etc., are widely used in time series data mining. A ...
The matrix profile (MP) is a data structure computed from a time series which encodes the data requi...
Time series data are significant, and are derived from temporal data, which involve real numbers rep...
Matrix profile has been recently proposed as a promising technique to the problem of all-pairs-simil...
As companies are increasingly measuring their products and services, the amount of time series data ...
Companies are increasingly measuring their products and services, resulting in a rising amount of av...
The last decade has seen a flurry of research on all-pairs-similarity-search (or, self-join) for tex...
The matrix profile is an effective data mining tool that provides similarity join functionality for ...
The Matrix Profile is a state-of-the-art time series analysis technique that can be used for motif d...
At their core, many time series data mining algorithms can be reduced to reasoning about the shapes ...
Nearest neighbour similarity measures are widely used in many time series data analysis applications...
Fast indexing in time sequence databases for similarity searching has attracted a lot of research re...
The Closest Pair problem aims to identify the closest pair (using some similarity measure, e.g., Euc...
The most useful data mining primitives are distance measures. With an effective distance measure, it...
To classify time series by nearest neighbors, we need to specify or learn one or several distance me...
Primitives such as motifs, discords, shapelets, etc., are widely used in time series data mining. A ...
The matrix profile (MP) is a data structure computed from a time series which encodes the data requi...
Time series data are significant, and are derived from temporal data, which involve real numbers rep...