Correlation study is at the heart of time-varying multivariate volume data analysis and visualization. In this paper, we study hierarchical clustering of volumetric samples based on the similarity of their correlation relation. Samples are selected from a time-varying multivariate climate data set according to knowledge provided by the domain experts. We present three different hierarchical clustering methods based on quality threshold, k-means, and random walks, to investigate the correlation relation with varying levels of detail. In conjunction with qualitative clustering results integrated with volume rendering, we leverage parallel coordinates to show quantitative correlation information for a complete visualization. We also evaluate t...
Publisher Copyright: © 2021, Crown.Correlation determination brings out relationships in data that h...
In high dimensional data, clusters often only exist in ar-bitrarily oriented subspaces of the featur...
Due to the technological progress over the last decades, today’s scientific and commercial applicati...
Finding correlations among data is one of the most essential tasks in many scientific investigations...
Sets of multiple scalar fields can be used to model many types of variation in data, such as uncerta...
The detection of correlations between different fea-tures in high dimensional data sets is a very im...
The detection of correlations between different fea-tures in high dimensional data sets is a very im...
<p>A correlation matrix together with clustering (i.e., Pearson uncentered) of the feature points is...
This thesis studies two unsupervised pattern discovery problems within the context of scientific app...
6th Workshop on Statistics, mathematics and Computation – 3 rd Portuguese-Polish workshop on Biometr...
This paper addresses the task of analyzing the correlation between two related domains X and Y . Our...
6th Workshop on Statistics, mathematics and Computation – 3 rd Portuguese-Polish workshop on Biometr...
Correlation clustering aims at grouping the data set into correlation clusters such that the objects...
AbstractClustering data streams is an important task in data mining research. Recently, some algorit...
Publisher Copyright: © 2021, Crown.Correlation determination brings out relationships in data that h...
Publisher Copyright: © 2021, Crown.Correlation determination brings out relationships in data that h...
In high dimensional data, clusters often only exist in ar-bitrarily oriented subspaces of the featur...
Due to the technological progress over the last decades, today’s scientific and commercial applicati...
Finding correlations among data is one of the most essential tasks in many scientific investigations...
Sets of multiple scalar fields can be used to model many types of variation in data, such as uncerta...
The detection of correlations between different fea-tures in high dimensional data sets is a very im...
The detection of correlations between different fea-tures in high dimensional data sets is a very im...
<p>A correlation matrix together with clustering (i.e., Pearson uncentered) of the feature points is...
This thesis studies two unsupervised pattern discovery problems within the context of scientific app...
6th Workshop on Statistics, mathematics and Computation – 3 rd Portuguese-Polish workshop on Biometr...
This paper addresses the task of analyzing the correlation between two related domains X and Y . Our...
6th Workshop on Statistics, mathematics and Computation – 3 rd Portuguese-Polish workshop on Biometr...
Correlation clustering aims at grouping the data set into correlation clusters such that the objects...
AbstractClustering data streams is an important task in data mining research. Recently, some algorit...
Publisher Copyright: © 2021, Crown.Correlation determination brings out relationships in data that h...
Publisher Copyright: © 2021, Crown.Correlation determination brings out relationships in data that h...
In high dimensional data, clusters often only exist in ar-bitrarily oriented subspaces of the featur...
Due to the technological progress over the last decades, today’s scientific and commercial applicati...