Clustering time series data is of great significance since it could extract meaningful statistics and other characteristics. Especially in biomedical engineering, outstanding clustering algorithms for time series may help improve the health level of people. Considering data scale and time shifts of time series, in this paper, we introduce two incremental fuzzy clustering algorithms based on a Dynamic Time Warping (DTW) distance. For recruiting Single-Pass and Online patterns, our algorithms could handle large-scale time series data by splitting it into a set of chunks which are processed sequentially. Besides, our algorithms select DTW to measure distance of pair-wise time series and encourage higher clustering accuracy because DTW could de...
Clustering of numerical series (time series, longitudinal data, ...) has application in various doma...
The traditional approaches to clustering a set of time series are generally applicable if there is a...
The high dimensionality of time series data presents challenges for direct mining, including time an...
<p>Comparison of the <i>Online</i> fuzzy clustering algorithms in terms of p-value on two datasets, ...
<p>Comparison of the <i>Single</i>-<i>Pass</i> fuzzy clustering algorithms in terms of p-value on tw...
<p>Medoids of the TR dataset using (a) spFCM, (b) spFCMdd, (c) spFDTW, (d) oFCM, (e) oFCMdd, (f) oFD...
<p>Medoids of the SY dataset using (a) spFCM, (b) spFCMdd, (c) spFDTW, (d) oFCM, (e) oFCMdd, (f) oFD...
International audienceThis paper proposes two new incremental fuzzy c medoids clustering algorithms ...
Clustering is an essential branch of data mining and statistical analysis that could help us explore...
Often, it is desirable to represent a set of time series through typical shapes in order to detect c...
Given the ubiquity of time series data, the data mining community has spent significant time investi...
The detection of patterns in multivariate time series is a relevant task, especially for large datas...
International audienceMost time-series clustering methods, such as k-means or k-medoids, are initial...
In finance, cluster analysis is a tool particularly useful for classifying stock market multivariate...
. There has been much recent interest in adapting data mining algorithms to time series databases. M...
Clustering of numerical series (time series, longitudinal data, ...) has application in various doma...
The traditional approaches to clustering a set of time series are generally applicable if there is a...
The high dimensionality of time series data presents challenges for direct mining, including time an...
<p>Comparison of the <i>Online</i> fuzzy clustering algorithms in terms of p-value on two datasets, ...
<p>Comparison of the <i>Single</i>-<i>Pass</i> fuzzy clustering algorithms in terms of p-value on tw...
<p>Medoids of the TR dataset using (a) spFCM, (b) spFCMdd, (c) spFDTW, (d) oFCM, (e) oFCMdd, (f) oFD...
<p>Medoids of the SY dataset using (a) spFCM, (b) spFCMdd, (c) spFDTW, (d) oFCM, (e) oFCMdd, (f) oFD...
International audienceThis paper proposes two new incremental fuzzy c medoids clustering algorithms ...
Clustering is an essential branch of data mining and statistical analysis that could help us explore...
Often, it is desirable to represent a set of time series through typical shapes in order to detect c...
Given the ubiquity of time series data, the data mining community has spent significant time investi...
The detection of patterns in multivariate time series is a relevant task, especially for large datas...
International audienceMost time-series clustering methods, such as k-means or k-medoids, are initial...
In finance, cluster analysis is a tool particularly useful for classifying stock market multivariate...
. There has been much recent interest in adapting data mining algorithms to time series databases. M...
Clustering of numerical series (time series, longitudinal data, ...) has application in various doma...
The traditional approaches to clustering a set of time series are generally applicable if there is a...
The high dimensionality of time series data presents challenges for direct mining, including time an...