Interactive exploration of multidimensional data sets is challenging because: (1) it is difficult to comprehend patterns in more than three dimensions, and (2) current systems often are a patchwork of graphical and statistical methods leaving many researchers uncertain about how to explore their data in an orderly manner. We offer a set of principles and a novel rank-by-feature framework that could enable users to better understand distributions in one (1D) or two dimensions (2D), and then discover relationships, clusters, gaps, outliers, and other features. Users of our framework can view graphical presentations (histograms, boxplots, and scatterplots), and then choose a feature detection criterion to rank 1D or 2D axis-parallel projection...
Users can better understand complex data sets by combining insights from multiple coordinated visual...
Due to the technological progress over the last decades, today’s scientific and commercial applicati...
We are beginning to see an overload in the amount of information packed into a given visualization. ...
Exploratory analysis of multidimensional data sets is challenging because of the difficulty in compr...
Interactive exploration of multidimensional data sets is challenging because: (1) it is difficult to...
Interactive exploration of multidimensional data sets is challenging because: (1) it is difficult to...
Knowledge discovery in high dimensional data is a challenging enterprise, but new visual analytic to...
Numerous multivariate visualization techniques and systems have been developed in the past three dec...
Abstract—Visual exploration of multivariate data typically requires projection onto lower dimensiona...
To my parents The analysis of multidimensional multivariate data has been studied in various re-sear...
Linking and brushing is a proven approach to analyzing multi-dimensional datasets in the context of ...
Cluster analysis of multidimensional data is widely used in many research areas including financial,...
Many graphical methods for displaying multivariate data consist of arrangements of multiple displays...
Visual exploration of multivariate data typically requires projection onto lower dimensional represe...
Multidimensional data sets often include categorical information. When most columns have categorical...
Users can better understand complex data sets by combining insights from multiple coordinated visual...
Due to the technological progress over the last decades, today’s scientific and commercial applicati...
We are beginning to see an overload in the amount of information packed into a given visualization. ...
Exploratory analysis of multidimensional data sets is challenging because of the difficulty in compr...
Interactive exploration of multidimensional data sets is challenging because: (1) it is difficult to...
Interactive exploration of multidimensional data sets is challenging because: (1) it is difficult to...
Knowledge discovery in high dimensional data is a challenging enterprise, but new visual analytic to...
Numerous multivariate visualization techniques and systems have been developed in the past three dec...
Abstract—Visual exploration of multivariate data typically requires projection onto lower dimensiona...
To my parents The analysis of multidimensional multivariate data has been studied in various re-sear...
Linking and brushing is a proven approach to analyzing multi-dimensional datasets in the context of ...
Cluster analysis of multidimensional data is widely used in many research areas including financial,...
Many graphical methods for displaying multivariate data consist of arrangements of multiple displays...
Visual exploration of multivariate data typically requires projection onto lower dimensional represe...
Multidimensional data sets often include categorical information. When most columns have categorical...
Users can better understand complex data sets by combining insights from multiple coordinated visual...
Due to the technological progress over the last decades, today’s scientific and commercial applicati...
We are beginning to see an overload in the amount of information packed into a given visualization. ...