Where Do Human Heuristics Come From?
Abstract
Human decision-making deviates from the optimal solution, that maximizes cumulative rewards, in many situations. Here we approach this discrepancy from the perspective of bounded rationality and our goal is to provide a justification for such seemingly sub-optimal strategies. More specifically we investigate the hypothesis, that humans do not know optimal decision-making algorithms in advance, but instead employ a learned, resource-bounded approximation. The idea is formalized through combining a recently proposed meta-learning model based on Recurrent Neural Networks with a resource-bounded objective. The resulting approach is closely connected to variational inference and the Minimum Description Length principle. Empirical evidence is obtained from a two-armed bandit task. Here we observe patterns in our family of models that resemble differences between individual human participants.
Cite
@article{arxiv.1902.07580,
title = {Where Do Human Heuristics Come From?},
author = {Marcel Binz and Dominik Endres},
journal= {arXiv preprint arXiv:1902.07580},
year = {2019}
}
Comments
Final version for CogSci 2019