Benefits of visualization in the mammography problem

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Benefits of visualization in the mammography problem. / Khan, Azam; Breslav, Simon; Glueck, Michael; Hornbæk, Kasper.

In: International Journal of Human-Computer Studies, Vol. 83, 2015, p. 94-113.

Research output: Contribution to journalJournal articleResearchpeer-review

Harvard

Khan, A, Breslav, S, Glueck, M & Hornbæk, K 2015, 'Benefits of visualization in the mammography problem', International Journal of Human-Computer Studies, vol. 83, pp. 94-113. https://doi.org/10.1016/j.ijhcs.2015.07.001

APA

Khan, A., Breslav, S., Glueck, M., & Hornbæk, K. (2015). Benefits of visualization in the mammography problem. International Journal of Human-Computer Studies, 83, 94-113. https://doi.org/10.1016/j.ijhcs.2015.07.001

Vancouver

Khan A, Breslav S, Glueck M, Hornbæk K. Benefits of visualization in the mammography problem. International Journal of Human-Computer Studies. 2015;83:94-113. https://doi.org/10.1016/j.ijhcs.2015.07.001

Author

Khan, Azam ; Breslav, Simon ; Glueck, Michael ; Hornbæk, Kasper. / Benefits of visualization in the mammography problem. In: International Journal of Human-Computer Studies. 2015 ; Vol. 83. pp. 94-113.

Bibtex

@article{3ad9a5f7174a469f8b5b3f2e82d808dc,
title = "Benefits of visualization in the mammography problem",
abstract = "Abstract Trying to make a decision between two outcomes, when there is some level of uncertainty, is inherently difficult because it involves probabilistic reasoning. Previous studies have shown that most people do not correctly apply Bayesian inference to solve probabilistic problems for decision making under uncertainty. In an effort to improve decision making with Bayesian problems, previous work has studied supplementing the textual description of problems with visualizations, such as graphs and charts. However, results have been varied and generally indicate that visualization is not an effective technique. As these studies were performed over many years with a variety of goals and experimental conditions, we sought to re-evaluate the use of visualization as an aid in solving Bayesian problems. Many of these studies used the classic Mammography Problem with visualizations portraying the problem structure, the quantities involved, or the nested-set relations of the populations involved. We selected three representative visualizations from this work and developed two hybrid visualizations, combining structure types and frequency with structure. We also included a text-only baseline condition and a text-legend condition where all nested-set problem values were given to eliminate the need for participants to estimate or calculate values. Seven hundred participants evaluated these seven conditions on the classic Mammography Problem in a crowdsourcing system, where micro-interaction data was collected from the participants. Our analysis of the user input and of the results indicates that participants made use of the visualizations but that the visualizations did not help participants to perform more accurately. Overall, static visualizations do not seem to aid a majority of people in solving the Mammography Problem.",
keywords = "Mammography Problem",
author = "Azam Khan and Simon Breslav and Michael Glueck and Kasper Hornb{\ae}k",
year = "2015",
doi = "10.1016/j.ijhcs.2015.07.001",
language = "English",
volume = "83",
pages = "94--113",
journal = "International Journal of Human-Computer Studies",
issn = "1071-5819",
publisher = "Academic Press",

}

RIS

TY - JOUR

T1 - Benefits of visualization in the mammography problem

AU - Khan, Azam

AU - Breslav, Simon

AU - Glueck, Michael

AU - Hornbæk, Kasper

PY - 2015

Y1 - 2015

N2 - Abstract Trying to make a decision between two outcomes, when there is some level of uncertainty, is inherently difficult because it involves probabilistic reasoning. Previous studies have shown that most people do not correctly apply Bayesian inference to solve probabilistic problems for decision making under uncertainty. In an effort to improve decision making with Bayesian problems, previous work has studied supplementing the textual description of problems with visualizations, such as graphs and charts. However, results have been varied and generally indicate that visualization is not an effective technique. As these studies were performed over many years with a variety of goals and experimental conditions, we sought to re-evaluate the use of visualization as an aid in solving Bayesian problems. Many of these studies used the classic Mammography Problem with visualizations portraying the problem structure, the quantities involved, or the nested-set relations of the populations involved. We selected three representative visualizations from this work and developed two hybrid visualizations, combining structure types and frequency with structure. We also included a text-only baseline condition and a text-legend condition where all nested-set problem values were given to eliminate the need for participants to estimate or calculate values. Seven hundred participants evaluated these seven conditions on the classic Mammography Problem in a crowdsourcing system, where micro-interaction data was collected from the participants. Our analysis of the user input and of the results indicates that participants made use of the visualizations but that the visualizations did not help participants to perform more accurately. Overall, static visualizations do not seem to aid a majority of people in solving the Mammography Problem.

AB - Abstract Trying to make a decision between two outcomes, when there is some level of uncertainty, is inherently difficult because it involves probabilistic reasoning. Previous studies have shown that most people do not correctly apply Bayesian inference to solve probabilistic problems for decision making under uncertainty. In an effort to improve decision making with Bayesian problems, previous work has studied supplementing the textual description of problems with visualizations, such as graphs and charts. However, results have been varied and generally indicate that visualization is not an effective technique. As these studies were performed over many years with a variety of goals and experimental conditions, we sought to re-evaluate the use of visualization as an aid in solving Bayesian problems. Many of these studies used the classic Mammography Problem with visualizations portraying the problem structure, the quantities involved, or the nested-set relations of the populations involved. We selected three representative visualizations from this work and developed two hybrid visualizations, combining structure types and frequency with structure. We also included a text-only baseline condition and a text-legend condition where all nested-set problem values were given to eliminate the need for participants to estimate or calculate values. Seven hundred participants evaluated these seven conditions on the classic Mammography Problem in a crowdsourcing system, where micro-interaction data was collected from the participants. Our analysis of the user input and of the results indicates that participants made use of the visualizations but that the visualizations did not help participants to perform more accurately. Overall, static visualizations do not seem to aid a majority of people in solving the Mammography Problem.

KW - Mammography Problem

U2 - 10.1016/j.ijhcs.2015.07.001

DO - 10.1016/j.ijhcs.2015.07.001

M3 - Journal article

VL - 83

SP - 94

EP - 113

JO - International Journal of Human-Computer Studies

JF - International Journal of Human-Computer Studies

SN - 1071-5819

ER -

ID: 154406164