Statistically Sound Visual Data Analysis: Difference between revisions

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* Visual estimation of coefficients of statistical models
* Visual estimation of coefficients of statistical models
** [http://journals.sagepub.com/doi/pdf/10.1057/ivs.2008.13 Judging correlation from scatterplots and parallel coordinate plots], Li, Martens, and van Wijk, 2008. This paper reports experimental results on how well people can assess correlation under varying sample size and visualization methods (scatter plots v.s. parallel coordinate plots). The results suggest that the accuracy of statistical judgements varies across visualization designs, motivating careful analysis and experimentation when designing visualizations to facilitate statistical data analysis.
** [http://journals.sagepub.com/doi/pdf/10.1057/ivs.2008.13 Judging correlation from scatterplots and parallel coordinate plots], Li, Martens, and van Wijk, 2008. This paper reports experimental results on how well people can assess correlation under varying sample size and visualization methods (scatter plots v.s. parallel coordinate plots). The results suggest that the accuracy of statistical judgements varies across visualization designs, motivating careful analysis and experimentation when designing visualizations to facilitate statistical data analysis.
* Visualization of statistics parameters
** [https://publik.tuwien.ac.at/files/PubDat_242383.pdf Visual Encodings of Temporal Uncertainty: A Comparative User Study] Evaluation of six methods for visualization temporal uncertainty, three of which are for statistical uncertainty.
* Integrating statistics and visualizations for exploratory analysis
** [http://hcil.cs.umd.edu/trs/2008-03/2008-03.pdf Integrating Statistics and Visualization: Case Studies of Gaining Clarity during Exploratory Data Analysis] "Statistics" refers to network metrics specifically, e.g. node degrees, betweenness, closeness. The paper focus on using statistics to help with navigation (e.g. filter and zoom based on network metric values).

Latest revision as of 03:41, 21 March 2017

Overview

This page documents our research effort towards developing visual interfaces that help people perform statistically sound visual data analysis.

Proposals

  • BIGDATA: F: Statistically Sound and Computationally Efficient Massive Data Analysis - Sample Complexity, Uniform Convergence, and False Discovery Rate

References

Vision and use case papers

Interactive control of false discover rate during data exploration

Previous work on visualizations and statistical analysis