Literature DB >> 33733129

Toward a Taxonomy for Adaptive Data Visualization in Analytics Applications.

Tristan Poetzsch1, Panagiotis Germanakos2, Lynn Huestegge1.   

Abstract

Data analytics as a field is currently at a crucial point in its development, as a commoditization takes place in the context of increasing amounts of data, more user diversity, and automated analysis solutions, the latter potentially eliminating the need for expert analysts. A central hypothesis of the present paper is that data visualizations should be adapted to both the user and the context. This idea was initially addressed in Study 1, which demonstrated substantial interindividual variability among a group of experts when freely choosing an option to visualize data sets. To lay the theoretical groundwork for a systematic, taxonomic approach, a user model combining user traits, states, strategies, and actions was proposed and further evaluated empirically in Studies 2 and 3. The results implied that for adapting to user traits, statistical expertise is a relevant dimension that should be considered. Additionally, for adapting to user states different user intentions such as monitoring and analysis should be accounted for. These results were used to develop a taxonomy which adapts visualization recommendations to these (and other) factors. A preliminary attempt to validate the taxonomy in Study 4 tested its visualization recommendations with a group of experts. While the corresponding results were somewhat ambiguous overall, some aspects nevertheless supported the claim that a user-adaptive data visualization approach based on the principles outlined in the taxonomy can indeed be useful. While the present approach to user adaptivity is still in its infancy and should be extended (e.g., by testing more participants), the general approach appears to be very promising.
Copyright © 2020 Poetzsch, Germanakos and Huestegge.

Entities:  

Keywords:  analytics; data visualization; graph adaptivity; graph ergonomics; recommendation engine; user model

Year:  2020        PMID: 33733129      PMCID: PMC7861272          DOI: 10.3389/frai.2020.00009

Source DB:  PubMed          Journal:  Front Artif Intell        ISSN: 2624-8212


  20 in total

1.  D³: Data-Driven Documents.

Authors:  Michael Bostock; Vadim Ogievetsky; Jeffrey Heer
Journal:  IEEE Trans Vis Comput Graph       Date:  2011-12       Impact factor: 4.579

Review 2.  Peripheral vision and pattern recognition: a review.

Authors:  Hans Strasburger; Ingo Rentschler; Martin Jüttner
Journal:  J Vis       Date:  2011-12-01       Impact factor: 2.240

3.  Learning Perceptual Kernels for Visualization Design.

Authors:  Çağatay Demiralp; Michael S Bernstein; Jeffrey Heer
Journal:  IEEE Trans Vis Comput Graph       Date:  2014-12       Impact factor: 4.579

4.  Further explorations of perceptual speed abilities in the context of assessment methods, cognitive abilities, and individual differences during skill acquisition.

Authors:  Phillip L Ackerman; Margaret E Beier
Journal:  J Exp Psychol Appl       Date:  2007-12

5.  Measuring Graph Literacy without a Test: A Brief Subjective Assessment.

Authors:  Rocio Garcia-Retamero; Edward T Cokely; Saima Ghazal; Alexander Joeris
Journal:  Med Decis Making       Date:  2016-06-27       Impact factor: 2.583

6.  Graph literacy: a cross-cultural comparison.

Authors:  Mirta Galesic; Rocio Garcia-Retamero
Journal:  Med Decis Making       Date:  2010-07-29       Impact factor: 2.583

7.  Spatial legend compatibility within versus between graphs in multiple graph comprehension.

Authors:  Eva Riechelmann; Lynn Huestegge
Journal:  Atten Percept Psychophys       Date:  2018-05       Impact factor: 2.199

Review 8.  Does print size matter for reading? A review of findings from vision science and typography.

Authors:  Gordon E Legge; Charles A Bigelow
Journal:  J Vis       Date:  2011-08-09       Impact factor: 2.240

9.  A componential model of human interaction with graphs: 1. Linear regression modeling.

Authors:  D J Gillan; R Lewis
Journal:  Hum Factors       Date:  1994-09       Impact factor: 2.888

10.  SeeDB: Efficient Data-Driven Visualization Recommendations to Support Visual Analytics.

Authors:  Manasi Vartak; Sajjadur Rahman; Samuel Madden; Aditya Parameswaran; Neoklis Polyzotis
Journal:  Proceedings VLDB Endowment       Date:  2015-09
View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.