More and more, physical systems are being fitted with various kinds of sensors in order to monitor their behavior, health or intensity of use. The large quantities of time series data collected from these complex systems often exhibit two important characteristics: the data is a combination of various superimposed effects operating at different time scales, and each effect shows a fair degree of repetition. Each of these effects can be described by a small collection of motifs: recurring temporal patterns in the data. We propose a method to discover characteristic and potentially overlapping motifs at multiple time scales, taking into account systemic deformations and temporal warping. Our method is based on a combination of scale-space the...
Analysis of Time-Evolving Systems is an important and challenging problem. Although it is a necessar...
We introduce the concept of time series motifs for time series analysis. Time series motifs consider...
Many real world systems consist of multiple parts and processes that nonlinearly interact with each ...
More and more, physical systems are being fitted with various kinds of sensors in order to monitor t...
Time series motifs are approximately repeated patterns found within the data. Such motifs have utili...
The problem of locating motifs in real-valued, multivariate time series data involves the discovery ...
Last decades witness a huge growth in medical applications, genetic analysis,and in performance of m...
In many time series data mining problems, the analysis can be reduced to frequent pattern mining. Sp...
International audienceDiscovering motifs in time series data has been widely explored. Various techn...
In recent years, time series motif discovery has emerged as perhaps the most important primitive for...
Abstract. Discovering approximately recurrent motifs (ARMs) in time-series is an active area of rese...
The behavior of many complex physical systems is affected by a variety of phenomena occurring at dif...
This paper addresses the problem of activity and event discovery in multi dimensional time series da...
Most real-world time series data is produced by complex systems. For example, the economy is a socia...
The detection of very similar patterns in a time series, commonly called motifs, has received contin...
Analysis of Time-Evolving Systems is an important and challenging problem. Although it is a necessar...
We introduce the concept of time series motifs for time series analysis. Time series motifs consider...
Many real world systems consist of multiple parts and processes that nonlinearly interact with each ...
More and more, physical systems are being fitted with various kinds of sensors in order to monitor t...
Time series motifs are approximately repeated patterns found within the data. Such motifs have utili...
The problem of locating motifs in real-valued, multivariate time series data involves the discovery ...
Last decades witness a huge growth in medical applications, genetic analysis,and in performance of m...
In many time series data mining problems, the analysis can be reduced to frequent pattern mining. Sp...
International audienceDiscovering motifs in time series data has been widely explored. Various techn...
In recent years, time series motif discovery has emerged as perhaps the most important primitive for...
Abstract. Discovering approximately recurrent motifs (ARMs) in time-series is an active area of rese...
The behavior of many complex physical systems is affected by a variety of phenomena occurring at dif...
This paper addresses the problem of activity and event discovery in multi dimensional time series da...
Most real-world time series data is produced by complex systems. For example, the economy is a socia...
The detection of very similar patterns in a time series, commonly called motifs, has received contin...
Analysis of Time-Evolving Systems is an important and challenging problem. Although it is a necessar...
We introduce the concept of time series motifs for time series analysis. Time series motifs consider...
Many real world systems consist of multiple parts and processes that nonlinearly interact with each ...