This paper deals with symbolic time series representation. It builds up on the popular mapping technique Symbolic Aggregate approXimation algorithm (SAX), which is extensively utilized in sequence classification, pattern mining, anomaly detection, time series indexing and other data mining tasks. However, the disadvantage of this method is, that it works reliably only for time series with Gaussian-like distribution. In our previous work we have proposed an improvement of SAX, called dwSAX, which can deal with Gaussian as well as non-Gaussian data distribution. Recently we have made further progress in our solution - edwSAX. Our goal was to optimally cover the information space by means of sufficient alphabet utilization; and to satisfy lowe...
National audienceSAX (Symbolic Aggregate approXimation) is one of the main symbolization techniques ...
In many practical situations, we monitor a system by continuously measuring the corresponding quanti...
AbstractWe present a semi-supervised time series classification method based on co-training which us...
Abstract—Since the last decade, we have seen an increasing level of interest in time series data min...
Abstract—The ever-increasing volume and complexity of time series data, emerging in various applicat...
International audienceSAX (Symbolic Aggregate approXimation) is one of the main symbolization techni...
Time-series representation is the most important task in time-series analysis. One of the most widel...
Abstract. Finding discords in time series database is an important problem in the last decade due to...
International audienceSimilarity search in time series data mining is a problem that has attracted i...
Abstract—In this paper, we propose a novel method for discovering characteristic patterns in a time ...
Time series data-mining algorithms usually scale poorly with regard to dimensionality. Symbolic repr...
The time series classification literature has expanded rapidly over the last decade, with many new c...
Symbolic Time Series Analysis (STA) is an emerging methodology that involves coarse graining of the...
Symbolic representations are a useful tool for the dimension reduction of temporal data, allowing fo...
A new symbolic representation of time series, called ABBA, is introduced. It is based on an adaptive...
National audienceSAX (Symbolic Aggregate approXimation) is one of the main symbolization techniques ...
In many practical situations, we monitor a system by continuously measuring the corresponding quanti...
AbstractWe present a semi-supervised time series classification method based on co-training which us...
Abstract—Since the last decade, we have seen an increasing level of interest in time series data min...
Abstract—The ever-increasing volume and complexity of time series data, emerging in various applicat...
International audienceSAX (Symbolic Aggregate approXimation) is one of the main symbolization techni...
Time-series representation is the most important task in time-series analysis. One of the most widel...
Abstract. Finding discords in time series database is an important problem in the last decade due to...
International audienceSimilarity search in time series data mining is a problem that has attracted i...
Abstract—In this paper, we propose a novel method for discovering characteristic patterns in a time ...
Time series data-mining algorithms usually scale poorly with regard to dimensionality. Symbolic repr...
The time series classification literature has expanded rapidly over the last decade, with many new c...
Symbolic Time Series Analysis (STA) is an emerging methodology that involves coarse graining of the...
Symbolic representations are a useful tool for the dimension reduction of temporal data, allowing fo...
A new symbolic representation of time series, called ABBA, is introduced. It is based on an adaptive...
National audienceSAX (Symbolic Aggregate approXimation) is one of the main symbolization techniques ...
In many practical situations, we monitor a system by continuously measuring the corresponding quanti...
AbstractWe present a semi-supervised time series classification method based on co-training which us...