International audienceGiven the high data volumes in time series applications, or simply the need for fast response times, it is usually necessary to rely on alternative, shorter representations of these series, usually with loss. This incurs approximate comparisons of time series where precision is a major issue.In this paper, we propose a new parallel approach for segmenting time series before their transformation into symbolic representations. It can reduce significantly the error incurred by possible splittings at different steps of the representation calculation, by taking into account the sum of squared errors (SSE). This is particularly useful for time series similarity search, which is the core of many data analytics tasks. We provi...
As advances in science and technology have continually increased the existence of, and capability fo...
Abstract. This paper introduces a symbolic time series representation using monotonic sub-sequences ...
Widespread interest in time-series similarity search has made more in need of efficient technique, w...
International audienceGiven the high data volumes in time series applications, or simply the need fo...
International audienceGiven the high data volumes in time series applications, or simply the need fo...
International audienceExisting approaches for time series similarity computing are the core of many ...
Many applications in different domains generate time series data at an increasing rate. The continuo...
Because time series are a ubiquitous and increasingly prevalent type of data, there has been much re...
Time series data-mining algorithms usually scale poorly with regard to dimensionality. Symbolic repr...
Efficiently and accurately searching for similarities among time series and discovering interesting ...
Efficiently and accurately searching for similarities among time series and discovering interesting ...
Abstract—Since the last decade, we have seen an increasing level of interest in time series data min...
Similarity search is a core module of many data analysis tasks including search by example classific...
International audienceSimilarity search in time series data mining is a problem that has attracted i...
Efficiently searching for similarities among time series and discovering interesting patterns is an ...
As advances in science and technology have continually increased the existence of, and capability fo...
Abstract. This paper introduces a symbolic time series representation using monotonic sub-sequences ...
Widespread interest in time-series similarity search has made more in need of efficient technique, w...
International audienceGiven the high data volumes in time series applications, or simply the need fo...
International audienceGiven the high data volumes in time series applications, or simply the need fo...
International audienceExisting approaches for time series similarity computing are the core of many ...
Many applications in different domains generate time series data at an increasing rate. The continuo...
Because time series are a ubiquitous and increasingly prevalent type of data, there has been much re...
Time series data-mining algorithms usually scale poorly with regard to dimensionality. Symbolic repr...
Efficiently and accurately searching for similarities among time series and discovering interesting ...
Efficiently and accurately searching for similarities among time series and discovering interesting ...
Abstract—Since the last decade, we have seen an increasing level of interest in time series data min...
Similarity search is a core module of many data analysis tasks including search by example classific...
International audienceSimilarity search in time series data mining is a problem that has attracted i...
Efficiently searching for similarities among time series and discovering interesting patterns is an ...
As advances in science and technology have continually increased the existence of, and capability fo...
Abstract. This paper introduces a symbolic time series representation using monotonic sub-sequences ...
Widespread interest in time-series similarity search has made more in need of efficient technique, w...