As companies are increasingly measuring their products and services, the amount of time series data is rising and techniques to extract usable information are needed. One recently developed data mining technique for time series is the Matrix Profile. It consists of the smallest z-normalized Euclidean distance of each subsequence of a time series to all other subsequences of another series. It has been used for motif and discord discovery, for segmentation and as building block for other techniques. One side effect of the z-normalization used is that small fluctuations on flat signals are upscaled. This can lead to high and unintuitive distances for very similar subsequences from noisy data. We determined an analytic method to estimate and r...
Uncovering repeated behavior in time series is an important problem in many domains such as medicine...
A recently discovered universal rank-based matrix method to extract trends from noisy time series is...
Models or signals exhibiting low dimensional behavior (e.g., sparse signals, low rank matrices) play...
Companies are increasingly measuring their products and services, resulting in a rising amount of av...
The matrix profile (MP) is a data structure computed from a time series which encodes the data requi...
The Matrix Profile is a state-of-the-art time series analysis technique that can be used for motif d...
The last decade has seen a flurry of research on all-pairs-similarity-search (or, self-join) for tex...
Matrix profile has been recently proposed as a promising technique to the problem of all-pairs-simil...
The matrix profile is an effective data mining tool that provides similarity join functionality for ...
Time series data are significant, and are derived from temporal data, which involve real numbers rep...
Primitives such as motifs, discords, shapelets, etc., are widely used in time series data mining. A ...
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...
Two fundamental tasks in time series analysis are identifying anomalous events (“discords”) and repe...
Finding patterns from binary data is a classical problem in data mining, dating back to at least fre...
Uncovering repeated behavior in time series is an important problem in many domains such as medicine...
A recently discovered universal rank-based matrix method to extract trends from noisy time series is...
Models or signals exhibiting low dimensional behavior (e.g., sparse signals, low rank matrices) play...
Companies are increasingly measuring their products and services, resulting in a rising amount of av...
The matrix profile (MP) is a data structure computed from a time series which encodes the data requi...
The Matrix Profile is a state-of-the-art time series analysis technique that can be used for motif d...
The last decade has seen a flurry of research on all-pairs-similarity-search (or, self-join) for tex...
Matrix profile has been recently proposed as a promising technique to the problem of all-pairs-simil...
The matrix profile is an effective data mining tool that provides similarity join functionality for ...
Time series data are significant, and are derived from temporal data, which involve real numbers rep...
Primitives such as motifs, discords, shapelets, etc., are widely used in time series data mining. A ...
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...
Two fundamental tasks in time series analysis are identifying anomalous events (“discords”) and repe...
Finding patterns from binary data is a classical problem in data mining, dating back to at least fre...
Uncovering repeated behavior in time series is an important problem in many domains such as medicine...
A recently discovered universal rank-based matrix method to extract trends from noisy time series is...
Models or signals exhibiting low dimensional behavior (e.g., sparse signals, low rank matrices) play...