Quality-Based Visualization Matrices
نویسندگان
چکیده
Parallel coordinates and scatterplot matrices are widely used to visualize multi-dimensional data sets. But these visualization techniques are insufficient when the number of dimensions grows. To solve this problem, different approaches to preselect the best views or dimensions have been proposed in the last years. However, there are still several shortcomings to these methods. In this paper we present three new methods to explore multivariate data sets: a parallel coordinates matrix, in analogy to the well-known scatterplot matrix, a classbased scatterplot matrix that aims at finding good projections for each class pair, and an importance aware algorithm to sort the dimensions of scatterplot and parallel coordinates matrices.
منابع مشابه
Quality Metrics Driven Approach to Visualize Multidimensional Data in Scatterplot Matrix
Extracting meaningful information out of vast amounts of high-dimensional data is challenging. Prior research studies have been trying to solve these problems through either automatic data analysis or interactive visualization approaches. Our grand goal is to derive representative and generalizable quality metrics and to apply these to amplify interesting patterns as well as to mute the uninter...
متن کاملEffectiveness of Guided Visualization and Mental Imagery on Perceived Stress, Psychological Well –Being and Sleep Quality in Armed Forces Retirement
Background and Aim: The effect of retirement as a significant stage of a turning point in the person's life and its effect on various physiological and psychological capacities in different aspects are significant. Hence, the importance of identifying interventions in order to increase body and mental health among retirees is important. The purpose of this study was to evaluate the effect of gu...
متن کاملChasing Science Culture
Representing networks is a major interest of researchers in information visualization. In this article, I present novel visualization techniques based on Jacques Bertin’s reorderable matrices. As the human brain is particularly effective at processing visual information, researchers in computer science developed a number of visual exploration systems to analyze graphs and networks. In the last ...
متن کاملCreation of Text Document Matrices and Visualization by Self-Organizing Map
In the paper, text mining and visualization by self-organizing map (SOM) are investigated. At first, textual information must be converted into numerical one. The results of text mining and visualization depend on the conversion. So, the influence of some control factors (the common word list and usage of the stemming algorithm) on text mining results, when a document dictionary is created, is ...
متن کاملGraph-Based Visualization of Neuronal Connectivity Using Matrix Block Partitioning and Edge Bundling
Neuronal connectivity matrices contain information vital to the understanding of brain structure and function. In this work we present graph-based visualization techniques for macroscale connectivity matrices that retain anatomical context while reducing the clutter and occlusion problems that plague 2D and 3D node-link diagrams. By partitioning the connectivity matrix into blocks corresponding...
متن کامل