Similarity search is a fundamental problem in information technology. The main difficulty of this problem is the high dimensionality of the data objects. In large time series databases, it’s important to reduce the dimensionality of these data objects, so that we can manage them. Symbolic representation is a promising technique of dimensionality reduction. In this paper we propose a new distance metric, which is applied to symbolic sequential data objects, and we test it on time series databases in classification task experiments. We also compare it to other distances that are well known in the literature for symbolic data objects, and we prove that it’s metric
We survey a new area of parameter-free similarity distance measures useful in data-mining, pattern r...
Abstract—Since the last decade, we have seen an increasing level of interest in time series data min...
Fast similarity searching in large time-sequence databases has attracted a lot of research interest ...
International audienceSimilarity search in time series data mining is a problem that has attracted i...
The chapter is organized as follows. Section 2 will introduce the similarity matching problem on tim...
Time series data-mining algorithms usually scale poorly with regard to dimensionality. Symbolic repr...
Nowadays sequences of symbols are becoming more important, as they are the standard format for repre...
Similarity-based retrieval has attracted an increasing amount of attention in recent years. Although...
A recent study on symbolic data analysis literature reveals that symbolic distance measures are play...
Abstract. A time series consists of a series of values or events obtained over repeated measurements...
Integration of rich sensor technologies with everyday applications, such as gesture recognition and ...
Similarity search in large time series databases has attracted much research interest recently. It i...
Efficiently and accurately searching for similarities among time series and discovering interesting ...
Efficiently and accurately searching for similarities among time series and discovering interesting ...
The similarity of objects is one of the most fundamental concepts in any collection of complex infor...
We survey a new area of parameter-free similarity distance measures useful in data-mining, pattern r...
Abstract—Since the last decade, we have seen an increasing level of interest in time series data min...
Fast similarity searching in large time-sequence databases has attracted a lot of research interest ...
International audienceSimilarity search in time series data mining is a problem that has attracted i...
The chapter is organized as follows. Section 2 will introduce the similarity matching problem on tim...
Time series data-mining algorithms usually scale poorly with regard to dimensionality. Symbolic repr...
Nowadays sequences of symbols are becoming more important, as they are the standard format for repre...
Similarity-based retrieval has attracted an increasing amount of attention in recent years. Although...
A recent study on symbolic data analysis literature reveals that symbolic distance measures are play...
Abstract. A time series consists of a series of values or events obtained over repeated measurements...
Integration of rich sensor technologies with everyday applications, such as gesture recognition and ...
Similarity search in large time series databases has attracted much research interest recently. It i...
Efficiently and accurately searching for similarities among time series and discovering interesting ...
Efficiently and accurately searching for similarities among time series and discovering interesting ...
The similarity of objects is one of the most fundamental concepts in any collection of complex infor...
We survey a new area of parameter-free similarity distance measures useful in data-mining, pattern r...
Abstract—Since the last decade, we have seen an increasing level of interest in time series data min...
Fast similarity searching in large time-sequence databases has attracted a lot of research interest ...