This paper considers learning when the distinction between risk and ambiguity (Knightian uncertainty) matters. Working within the framework of recursive multiple-priors utility, the paper formulates a counterpart of the Bayesian model of learning about an uncertain parameter from conditionally i.i.d. signals. Ambiguous signals capture responses to information that cannot be captured by noisy signals. They induce nonmonotonic changes in agent confidence and prevent ambiguity from vanishing in the limit. In a dynamic portfolio choice model, learning about ambiguous returns leads to endogenous stock market participation costs that depend on past market performance. Hedging of ambiguity provides a new reason why the investment horizon matters f...
A prominent approach to modelling ambiguity about stock return distribution is to assume that invest...
Modern portfolio theory, developed in the expected utility paradigm, focuses on the relationship bet...
Many economic decisions can be described as an option exercise or optimal stopping problem under unc...
This paper considers learning when the distinction between risk and ambigu-ity (Knightian uncertaint...
Over the past two decades, the growing literature on ambiguity aversion has shed light on a number o...
Over the past two decades, the growing literature on ambiguity aversion has shed light on a number o...
This paper considers learning when the distinction between risk and ambiguity matters. It first de-s...
the prior support is finite, long-run ambiguity is known to be a possible outcome only if the learni...
We propose a novel generalized recursive smooth ambiguity model which allows a three-way separation ...
We develop a consumption-based asset-pricing model in which the representative agent is ambiguous ab...
We study an investor's optimal consumption and portfolio choice problem when he confronts with two p...
textThis dissertation consists of three economic experiments that investigate behavioral differences...
This paper considers a portfolio allocation problem between a risky asset and an ambiguous asset, an...
We model inter-temporal ambiguity as the scenario in which a Bayesian learner holds more than one pr...
Epstein and Schneider (2007) develop a framework of learning under ambiguity, generalizing maxmin pr...
A prominent approach to modelling ambiguity about stock return distribution is to assume that invest...
Modern portfolio theory, developed in the expected utility paradigm, focuses on the relationship bet...
Many economic decisions can be described as an option exercise or optimal stopping problem under unc...
This paper considers learning when the distinction between risk and ambigu-ity (Knightian uncertaint...
Over the past two decades, the growing literature on ambiguity aversion has shed light on a number o...
Over the past two decades, the growing literature on ambiguity aversion has shed light on a number o...
This paper considers learning when the distinction between risk and ambiguity matters. It first de-s...
the prior support is finite, long-run ambiguity is known to be a possible outcome only if the learni...
We propose a novel generalized recursive smooth ambiguity model which allows a three-way separation ...
We develop a consumption-based asset-pricing model in which the representative agent is ambiguous ab...
We study an investor's optimal consumption and portfolio choice problem when he confronts with two p...
textThis dissertation consists of three economic experiments that investigate behavioral differences...
This paper considers a portfolio allocation problem between a risky asset and an ambiguous asset, an...
We model inter-temporal ambiguity as the scenario in which a Bayesian learner holds more than one pr...
Epstein and Schneider (2007) develop a framework of learning under ambiguity, generalizing maxmin pr...
A prominent approach to modelling ambiguity about stock return distribution is to assume that invest...
Modern portfolio theory, developed in the expected utility paradigm, focuses on the relationship bet...
Many economic decisions can be described as an option exercise or optimal stopping problem under unc...