TY - GEN
T1 - Self-organizing maps for multi-objective Pareto Frontiers
AU - Chen, Shahar
AU - Amid, David
AU - Shir, Ofer M.
AU - Limonad, Lior
AU - Boaz, David
AU - Anaby-Tavor, Ateret
AU - Schreck, Tobias
PY - 2013/12/9
Y1 - 2013/12/9
N2 - Decision makers often need to take into account multiple conflicting objectives when selecting a solution for their problem. This can result in a potentially large number of candidate solutions to be considered. Visualizing a Pareto Frontier, the optimal set of solutions to a multi-objective problem, is considered a difficult task when the problem at hand spans more than three objective functions. We introduce a novel visual-interactive approach to facilitate coping with multi-objective problems. We propose a characterization of the Pareto Frontier data and the tasks decision makers face as they reach their decisions. Following a comprehensive analysis of the design alternatives, we show how a semantically-enhanced Self-Organizing Map, can be utilized to meet the identified tasks. We argue that our newly proposed design provides both consistent orientation of the 2D mapping as well as an appropriate visual representation of individual solutions. We then demonstrate its applicability with two real-world multi-objective case studies. We conclude with a preliminary empirical evaluation and a qualitative usefulness assessment.
AB - Decision makers often need to take into account multiple conflicting objectives when selecting a solution for their problem. This can result in a potentially large number of candidate solutions to be considered. Visualizing a Pareto Frontier, the optimal set of solutions to a multi-objective problem, is considered a difficult task when the problem at hand spans more than three objective functions. We introduce a novel visual-interactive approach to facilitate coping with multi-objective problems. We propose a characterization of the Pareto Frontier data and the tasks decision makers face as they reach their decisions. Following a comprehensive analysis of the design alternatives, we show how a semantically-enhanced Self-Organizing Map, can be utilized to meet the identified tasks. We argue that our newly proposed design provides both consistent orientation of the 2D mapping as well as an appropriate visual representation of individual solutions. We then demonstrate its applicability with two real-world multi-objective case studies. We conclude with a preliminary empirical evaluation and a qualitative usefulness assessment.
KW - [Computing Methodologies]: Machine Learning - Machine Learning Approaches Neural Networks
KW - [Human-Centered Computing]: Visualization - Visualization Design and Evaluation Methods
KW - [Information Systems]: Information Systems Applications - Decision Support Systems
UR - https://www.scopus.com/pages/publications/84889069849
U2 - 10.1109/PacificVis.2013.6596140
DO - 10.1109/PacificVis.2013.6596140
M3 - Conference contribution
AN - SCOPUS:84889069849
SN - 9781467347976
T3 - IEEE Pacific Visualization Symposium
SP - 153
EP - 160
BT - IEEE Symposium on Pacific Visualization 2013, PacificVis 2013 - Proceedings
T2 - 6th IEEE Symposium on Pacific Visualization, PacificVis 2013
Y2 - 26 February 2013 through 1 March 2013
ER -