A theory of best choice selection through objective arguments grounded in Linear Response Theory concepts
March 30, 2024 Β· Declared Dead Β· π Physics
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Authors
Marcel Ausloos, Giulia Rotundo, Roy Cerqueti
arXiv ID
2405.00041
Category
physics.soc-ph
Cross-listed
cond-mat.stat-mech,
cs.IT
Citations
6
Venue
Physics
Last Checked
4 months ago
Abstract
In this paper, we propose how to use objective arguments grounded in statistical mechanics concepts in order to obtain a single number, obtained after aggregation, which would allow to rank "agents", "opinions", ..., all defined in a very broad sense. We aim toward any process which should a priori demand or lead to some consensus in order to attain the presumably best choice among many possibilities. In order to precise the framework, we discuss previous attempts, recalling trivial "means of scores", - weighted or not, Condorcet paradox, TOPSIS, etc. We demonstrate through geometrical arguments on a toy example, with 4 criteria, that the pre-selected order of criteria in previous attempts makes a difference on the final result. However, it might be unjustified. Thus, we base our "best choice theory" on the linear response theory in statistical mechanics: we indicate that one should be calculating correlations functions between all possible choice evaluations, thereby avoiding an arbitrarily ordered set of criteria. We justify the point through an example with 6 possible criteria. Applications in many fields are suggested. Beside, two toy models serving as practical examples and illustrative arguments are given in an Appendix.
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