Several methods exist in classification literature to quantify the similarity between two time series data sets. Applications of these methods range from the traditional Euclidean type metric to the more advanced Dynamic Time Warping metric. Most of these adequately address structural similarity but fail in meeting goals outside it. For example, a tool that could be excellent to identify the seasonal similarity between two time series vectors might prove inadequate in the presence of outliers. In this paper, we have proposed a unifying measure for binary classification that performed well while embracing several aspects of dissimilarity. This statistic is gaining prominence in various fields, such as geology and finance, and is crucial in t...
Abstract: Clustering algorithms have been actively used to identify similar time series, providing a...
In the last decade there has been an increasing interest in mining time series data and many distanc...
In the last decade there has been an increasing interest in mining time series data and many distanc...
Several methods exist in classification literature to quantify the similarity between two time serie...
Time series prediction and control may involve the study of massive data archive and require some ki...
Time series prediction and control may involve the study of massive data archive and require some ki...
Time series prediction and control may involve the study of massive data archive and require some ki...
Time series similarity measures are highly relevant in a wide range of emerging applications includi...
Time series are ubiquitous, and a measure to assess their similarity is a core part of many computat...
Time series similarity measures are highly relevant in a wide range of emerging applications includi...
Time series similarity measures are highly relevant in a wide range of emerging applications includ...
Time series similarity measures are highly relevant in a wide range of emerging applications includ...
Time series similarity measures are highly relevant in a wide range of emerging applications includ...
Time series similarity measures are highly relevant in a wide range of emerging applications includ...
Abstract—Distance and dissimilarity functions are of un-doubted importance to Time Series Data Minin...
Abstract: Clustering algorithms have been actively used to identify similar time series, providing a...
In the last decade there has been an increasing interest in mining time series data and many distanc...
In the last decade there has been an increasing interest in mining time series data and many distanc...
Several methods exist in classification literature to quantify the similarity between two time serie...
Time series prediction and control may involve the study of massive data archive and require some ki...
Time series prediction and control may involve the study of massive data archive and require some ki...
Time series prediction and control may involve the study of massive data archive and require some ki...
Time series similarity measures are highly relevant in a wide range of emerging applications includi...
Time series are ubiquitous, and a measure to assess their similarity is a core part of many computat...
Time series similarity measures are highly relevant in a wide range of emerging applications includi...
Time series similarity measures are highly relevant in a wide range of emerging applications includ...
Time series similarity measures are highly relevant in a wide range of emerging applications includ...
Time series similarity measures are highly relevant in a wide range of emerging applications includ...
Time series similarity measures are highly relevant in a wide range of emerging applications includ...
Abstract—Distance and dissimilarity functions are of un-doubted importance to Time Series Data Minin...
Abstract: Clustering algorithms have been actively used to identify similar time series, providing a...
In the last decade there has been an increasing interest in mining time series data and many distanc...
In the last decade there has been an increasing interest in mining time series data and many distanc...