Preference-based Learning of Ideal Solutions in TOPSIS-like Decision Models

Preference-based Learning of Ideal Solutions in TOPSIS-like Decision Models

0.00 Avg rating0 Votes
Article ID: iaor201526632
Volume: 22
Issue: 3-4
Start Page Number: 175
End Page Number: 183
Publication Date: May 2015
Journal: Journal of Multi-Criteria Decision Analysis
Authors: , ,
Keywords: decision theory: multiple criteria
Abstract:

Combining established modelling techniques from multiple‐criteria decision aiding with recent algorithmic advances in the emerging field of preference learning, we propose a new method that can be seen as an adaptive version of TOPSIS, the technique for order preference by similarity to ideal solution decision model (or at least a simplified variant of this model). On the basis of exemplary preference information in the form of pairwise comparisons between alternatives, our method seeks to induce an ‘ideal solution’ that, in conjunction with a weight factor for each criterion, represents the preferences of the decision maker. To this end, we resort to probabilistic models of discrete choice and make use of maximum likelihood inference. First experimental results on suitable preference data suggest that our approach is not only intuitively appealing and interesting from an interpretation point of view but also competitive to state‐of‐the‐art preference learning methods in terms of prediction accuracy.

Reviews

Required fields are marked *. Your email address will not be published.