International audienceSAX (Symbolic Aggregate approXimation) is one of the main symbolization techniques for time series. A well-known limitation of SAX is that trends are not taken into account in the symbolization. This paper proposes 1d-SAX a method to represent a time series as a sequence of symbols that each contain information about the average and the trend of the series on a segment. We compare the efficiency of SAX and 1d-SAX in terms of goodness-of-fit, retrieval and classification performance for querying a time series database with an asymmetric scheme. The results show that 1d-SAX improves performance using equal quantity of information, especially when the compression rate increases
International audienceGiven the high data volumes in time series applications, or simply the need fo...
The present study proposes a new symbolization algorithm for multidimensional time series. We view t...
The time series classification literature has expanded rapidly over the last decade, with many new c...
International audienceSAX (Symbolic Aggregate approXimation) is one of the main symbolization techni...
National audienceSAX (Symbolic Aggregate approXimation) is one of the main symbolization techniques ...
Abstract—Since the last decade, we have seen an increasing level of interest in time series data min...
Time series representation is one of key issues in time series data mining. Time series is simply a ...
This paper deals with symbolic time series representation. It builds up on the popular mapping techn...
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 ...
The abundance and value of mining large time series data sets has long been acknowledged. Ubiquitous...
Abstract. Finding discords in time series database is an important problem in the last decade due to...
Time-series representation is the most important task in time-series analysis. One of the most widel...
Symbolization of time-series has successfully been used to extract temporal patterns from experiment...
Symbolic Time Series Analysis (STA) is an emerging methodology that involves coarse graining of the...
International audienceGiven the high data volumes in time series applications, or simply the need fo...
The present study proposes a new symbolization algorithm for multidimensional time series. We view t...
The time series classification literature has expanded rapidly over the last decade, with many new c...
International audienceSAX (Symbolic Aggregate approXimation) is one of the main symbolization techni...
National audienceSAX (Symbolic Aggregate approXimation) is one of the main symbolization techniques ...
Abstract—Since the last decade, we have seen an increasing level of interest in time series data min...
Time series representation is one of key issues in time series data mining. Time series is simply a ...
This paper deals with symbolic time series representation. It builds up on the popular mapping techn...
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 ...
The abundance and value of mining large time series data sets has long been acknowledged. Ubiquitous...
Abstract. Finding discords in time series database is an important problem in the last decade due to...
Time-series representation is the most important task in time-series analysis. One of the most widel...
Symbolization of time-series has successfully been used to extract temporal patterns from experiment...
Symbolic Time Series Analysis (STA) is an emerging methodology that involves coarse graining of the...
International audienceGiven the high data volumes in time series applications, or simply the need fo...
The present study proposes a new symbolization algorithm for multidimensional time series. We view t...
The time series classification literature has expanded rapidly over the last decade, with many new c...