The Subtlety of Optimal Paternalism in a Population with Bounded Rationality
Charles F. Manski, Eytan Sheshinski

TL;DR
This paper explores the complexities of designing optimal paternalistic policies in populations with bounded rationality, emphasizing the importance of detailed knowledge about preferences, errors, and decision-making processes.
Contribution
It introduces a nuanced analysis of how bounded rationality affects optimal choice set design and highlights the challenges in implementing effective paternalistic policies.
Findings
Optimal policies depend on population preferences and choice probabilities.
Knowledge of measurement errors is crucial for effective planning.
Bounded rationality complicates the determination of truly optimal policies.
Abstract
We study the subtlety of optimal paternalism when a utilitarian planner has the power to design a discrete choice set for a heterogeneous population with bounded rationality. We first consider the planning problem in abstraction. We show that the policy that most effectively constrains or influences choices depends multiplicatively on the preferences of the population and the choice probabilities conditional on preferences that measure the suboptimality of behavior. We then study two settings in which the planner may mandate an action or decentralize decision making. One setting supposes that individuals measure utility with additive random error and maximize mismeasured rather than actual utility. Then optimal planning requires knowledge of the distribution of measurement errors. The other setting studies binary treatment choice when the planner can mandate a treatment conditional on…
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Taxonomy
TopicsPsychology of Moral and Emotional Judgment
MethodsSparse Evolutionary Training
