Gamifying optimization: a Wasserstein distance-based analysis of human search
Antonio Candelieri, Andrea Ponti, Francesco Archetti

TL;DR
This paper introduces a theoretical framework using Wasserstein distance to analyze human decision-making strategies in uncertain optimization tasks, revealing deviations from Pareto rationality and identifying behavioral patterns.
Contribution
It models human search strategies as probability distributions and applies Wasserstein distance for behavioral analysis, including clustering and decision tree insights.
Findings
Human search strategies can be characterized by probability distributions.
Deviations from Pareto rationality are quantifiable via Wasserstein distance.
Clustering reveals distinct behavioral patterns and decision dynamics.
Abstract
The main objective of this paper is to outline a theoretical framework to characterise humans' decision-making strategies under uncertainty, in particular active learning in a black-box optimization task and trading-off between information gathering (exploration) and reward seeking (exploitation). Humans' decisions making according to these two objectives can be modelled in terms of Pareto rationality. If a decision set contains a Pareto efficient strategy, a rational decision maker should always select the dominant strategy over its dominated alternatives. A distance from the Pareto frontier determines whether a choice is Pareto rational. To collect data about humans' strategies we have used a gaming application that shows the game field, with previous decisions and observations, as well as the score obtained. The key element in this paper is the representation of behavioural patterns…
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Taxonomy
TopicsDecision-Making and Behavioral Economics
