Statistically Sound Visual Data Analysis: Difference between revisions

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* [https://arxiv.org/pdf/1612.01040.pdf Controlling False Discoveries during Interactive Data Exploration]: the paper reports case study results on applying a new procedure for controlling FDR during data exploration and reports; not much emphasis on the interface yet but it sounds like Emanuel is working on that; the case study could provide inspirations for ways in which visualizations could help users better understand the FDR control procedural.
* [https://arxiv.org/pdf/1612.01040.pdf Controlling False Discoveries during Interactive Data Exploration]: the paper reports case study results on applying a new procedure for controlling FDR during data exploration and reports; not much emphasis on the interface yet but it sounds like Emanuel is working on that; the case study could provide inspirations for ways in which visualizations could help users better understand the FDR control procedural.
* [https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3427907/ Graphical approaches for multiple comparison procedures using weighted Bonferroni, Simes, or parametric tests]: presents a graphical representation to illustrate test procedures that control family-wise error rate (FWER)


Previous work on visualizations and statistical analysis
Previous work on visualizations and statistical analysis

Revision as of 15:58, 1 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