Abstract. Finding discords in time series database is an important problem in the last decade due to its variety of real-world applications, including data cleansing, fault diagnostics, and financial data analysis. The best known approach to our knowledge is HOT SAX technique based on the equiprobable distribution of SAX representations of time series. This characteristic, however, is not preserved in the reduced-dimensionality literature, especially on the lack of Gaussian distribution datasets. In this paper, we introduce a k-means based algorithm for symbolic representations of time series called adaptive Symbolic Aggregate approXimation (aSAX) and propose HOT aSAX algorithm for time series discords discovery. Due to the clustered charac...
Time series representation is one of key issues in time series data mining. Time series is simply a ...
AbstractWe present a semi-supervised time series classification method based on co-training which us...
Abstract—In this paper, we propose a novel method for discovering characteristic patterns in a time ...
Abstract—Since the last decade, we have seen an increasing level of interest in time series data min...
This paper deals with symbolic time series representation. It builds up on the popular mapping techn...
The problem of finding time series discord has attracted much attention recently due to its numerous...
International audienceSAX (Symbolic Aggregate approXimation) is one of the main symbolization techni...
International audienceSimilarity search in time series data mining is a problem that has attracted i...
Time-series representation is the most important task in time-series analysis. One of the most widel...
Discord Discovery is a recent approach for anomaly detection in time series that has attracted much ...
International audienceGiven the high data volumes in time series applications, or simply the need fo...
Technical Report Complex System Digital CampusThe advent of the Big Data hype and the consistent rec...
Time series data-mining algorithms usually scale poorly with regard to dimensionality. Symbolic repr...
Symbolic Time Series Analysis (STA) is an emerging methodology that involves coarse graining of the...
Abstract — In this work we introduce the new problem of finding time series discords. Time series di...
Time series representation is one of key issues in time series data mining. Time series is simply a ...
AbstractWe present a semi-supervised time series classification method based on co-training which us...
Abstract—In this paper, we propose a novel method for discovering characteristic patterns in a time ...
Abstract—Since the last decade, we have seen an increasing level of interest in time series data min...
This paper deals with symbolic time series representation. It builds up on the popular mapping techn...
The problem of finding time series discord has attracted much attention recently due to its numerous...
International audienceSAX (Symbolic Aggregate approXimation) is one of the main symbolization techni...
International audienceSimilarity search in time series data mining is a problem that has attracted i...
Time-series representation is the most important task in time-series analysis. One of the most widel...
Discord Discovery is a recent approach for anomaly detection in time series that has attracted much ...
International audienceGiven the high data volumes in time series applications, or simply the need fo...
Technical Report Complex System Digital CampusThe advent of the Big Data hype and the consistent rec...
Time series data-mining algorithms usually scale poorly with regard to dimensionality. Symbolic repr...
Symbolic Time Series Analysis (STA) is an emerging methodology that involves coarse graining of the...
Abstract — In this work we introduce the new problem of finding time series discords. Time series di...
Time series representation is one of key issues in time series data mining. Time series is simply a ...
AbstractWe present a semi-supervised time series classification method based on co-training which us...
Abstract—In this paper, we propose a novel method for discovering characteristic patterns in a time ...