How do people learn? We assess, in a distribution-free manner, subjects?learning and choice rules in dynamic two-armed bandit (probabilistic reversal learning) experiments. To aid in identification and estimation, we use auxiliary measures of subjects?beliefs, in the form of their eye-movements during the experiment. Our estimated choice probabilities and learning rules have some distinctive features; notably that subjects tend to update in a non-smooth manner following choices made in accordance with current beliefs. Moreover, the beliefs implied by our nonparametric learning rules are closer to those from a (non-Bayesian) reinforcement learning model, than a Bayesian learning model.
A major open question is whether computational strategies thought to be used during experiential lea...
Computational models of learning have proved largely successful in characterizing potential mechanis...
Computational models of learning have proved largely successful in characterizing potential mechanis...
How do people learn? We assess, in a distribution-free manner, subjects’ learning and choice rules i...
How do people learn? We assess, in a distribution-free manner, subjects’ learning and choice rules i...
How do people learn? We assess, in a model-free manner, subjectsʼ belief dynamics in a two-armed ban...
How do people learn? We assess, in a model-free manner, subjectsʼ belief dynamics in a two-armed ban...
How do people learn? We assess, in a model-free manner, subjectsʼ belief dynamics in a two-armed ban...
This dissertation consists of two essays that focus on learning under state uncertainty and economet...
Economists and psychologists have recently been developing new theories of decision making under unc...
Economists and psychologists have recently been developing new theories of decision making under unc...
Economists and psychologists have recently been developing new theories of decision making under unc...
We study human learning & decision-making in tasks with probabilistic rewards. Recent studies in...
Making intelligent decisions from incomplete information is critical in many applications: for examp...
A major open question is whether computational strategies thought to be used during experiential lea...
A major open question is whether computational strategies thought to be used during experiential lea...
Computational models of learning have proved largely successful in characterizing potential mechanis...
Computational models of learning have proved largely successful in characterizing potential mechanis...
How do people learn? We assess, in a distribution-free manner, subjects’ learning and choice rules i...
How do people learn? We assess, in a distribution-free manner, subjects’ learning and choice rules i...
How do people learn? We assess, in a model-free manner, subjectsʼ belief dynamics in a two-armed ban...
How do people learn? We assess, in a model-free manner, subjectsʼ belief dynamics in a two-armed ban...
How do people learn? We assess, in a model-free manner, subjectsʼ belief dynamics in a two-armed ban...
This dissertation consists of two essays that focus on learning under state uncertainty and economet...
Economists and psychologists have recently been developing new theories of decision making under unc...
Economists and psychologists have recently been developing new theories of decision making under unc...
Economists and psychologists have recently been developing new theories of decision making under unc...
We study human learning & decision-making in tasks with probabilistic rewards. Recent studies in...
Making intelligent decisions from incomplete information is critical in many applications: for examp...
A major open question is whether computational strategies thought to be used during experiential lea...
A major open question is whether computational strategies thought to be used during experiential lea...
Computational models of learning have proved largely successful in characterizing potential mechanis...
Computational models of learning have proved largely successful in characterizing potential mechanis...