We introduce a method to discover optimal local patterns, which concisely describe the main trends in a time series. Our approach examines the time series at multiple time scales (i.e., window sizes) and efficiently discovers the key patterns in each. We also introduce a criterion to select the best window sizes, which most concisely capture the key oscillatory as well as aperiodic trends. Our key insight lies in learning an optimal orthonormal transform from the data itself, as opposed to using a predetermined basis or approximating function (such as piecewise constant, shortwindow Fourier or wavelets), which essentially restricts us to a particular family of trends. Our method lifts that limitation, while lending itself to fast, increment...
Abstract. Discovering frequent patterns over event sequences is an important data mining problem. Ex...
In the field of Big Data, multivariate time series collect high dimensional data of observed subject...
Most real-world time series data is produced by complex systems. For example, the economy is a socia...
In this paper, we introduce SPIRIT (Stream-ing Pattern dIscoveRy in multIple Time-series). Given n n...
Similarity-based time-series retrieval has been a subject of long-term study due to its wide usage i...
Time series motifs are approximately repeated patterns found within the data. Such motifs have utili...
This paper introduces a multiscale analysis based on optimal piecewise linear approximations of time...
The bias-variance trade-off is an important issue is spectrum estimation. In 1982, Thomson introduce...
Nowadays, overwhelming volumes of sequential data are very common in scientific and business applica...
Subsequences-based time series classification algorithms provide interpretable and generally more ac...
<p>The analysis of time series and sequences has been challenging in both statistics and machine lea...
In recent years, time series motif discovery has emerged as perhaps the most important primitive for...
In streaming time series classification problems, the goal is to predict the label associated to the...
Continuously identifying pre-defined patterns in a streaming time series has strong demand in variou...
Efficiently finding similar segments or motifs in time series data is a fundamental task that, due t...
Abstract. Discovering frequent patterns over event sequences is an important data mining problem. Ex...
In the field of Big Data, multivariate time series collect high dimensional data of observed subject...
Most real-world time series data is produced by complex systems. For example, the economy is a socia...
In this paper, we introduce SPIRIT (Stream-ing Pattern dIscoveRy in multIple Time-series). Given n n...
Similarity-based time-series retrieval has been a subject of long-term study due to its wide usage i...
Time series motifs are approximately repeated patterns found within the data. Such motifs have utili...
This paper introduces a multiscale analysis based on optimal piecewise linear approximations of time...
The bias-variance trade-off is an important issue is spectrum estimation. In 1982, Thomson introduce...
Nowadays, overwhelming volumes of sequential data are very common in scientific and business applica...
Subsequences-based time series classification algorithms provide interpretable and generally more ac...
<p>The analysis of time series and sequences has been challenging in both statistics and machine lea...
In recent years, time series motif discovery has emerged as perhaps the most important primitive for...
In streaming time series classification problems, the goal is to predict the label associated to the...
Continuously identifying pre-defined patterns in a streaming time series has strong demand in variou...
Efficiently finding similar segments or motifs in time series data is a fundamental task that, due t...
Abstract. Discovering frequent patterns over event sequences is an important data mining problem. Ex...
In the field of Big Data, multivariate time series collect high dimensional data of observed subject...
Most real-world time series data is produced by complex systems. For example, the economy is a socia...