Standard accident models are based on the expected utility framework and represent agents’ beliefs about accident risk with a probability distribution. Consequently, they do not allow for Knightian uncertainty, or ambiguity, with respect to accident risk and cannot accommodate optimism (ambiguity loving) or pessimism (ambiguity aversion). This paper presents a unilateral accident model under ambiguity. To incorporate ambiguity, I adopt the Choquet expected utility framework and represent the injurer’s beliefs with a neoadditive capacity. I show that neither strict liability nor negligence is generally efficient in the presence of ambiguity. In addition, I generally find that the injurer’s level of care decreases (increases) with ambiguity i...
none1noThis article investigates the implications of uncertainty aversion on optimal liability law. ...
Ambiguity aversion is defined as an aversion to any mean-preserving spread in the probability space....
Ambiguity refers to a decision situation under uncertainty when there is incomplete information abou...
Standard accident models are based on the expected utility framework and represent agents’ beliefs a...
This paper analyzes liability rules, when agents, both the potential injurer and the potential victi...
In this paper we revise the results about the efficiency of (strict) unlimited, then limited liabili...
This paper develops an original mean-variance model able to capture the disposition of the parties t...
Environmental accidents often involve ambiguous risks, i.e. the relevant probabilities are unknown. ...
This paper analyzes the meaning of comparing the economic performance of strict liability and neglig...
Abstract: This paper reviews the foundations of the unilateral standard accident model underKnightia...
Working Papers, Fondazione Enrico MatteiThis paper analyzes the meaning of comparing the economic pe...
We introduce a model of the decision between precaution and insurance under an ambiguous probability...
In this paper we modify the standard tort model by introducing role-type uncertainty. That is, we as...
Many tort cases are characterized by two interrelated elements: “role uncertainty”, which occurs whe...
Different models of uncertainty aversion imply strikingly different economic behavior. The key to un...
none1noThis article investigates the implications of uncertainty aversion on optimal liability law. ...
Ambiguity aversion is defined as an aversion to any mean-preserving spread in the probability space....
Ambiguity refers to a decision situation under uncertainty when there is incomplete information abou...
Standard accident models are based on the expected utility framework and represent agents’ beliefs a...
This paper analyzes liability rules, when agents, both the potential injurer and the potential victi...
In this paper we revise the results about the efficiency of (strict) unlimited, then limited liabili...
This paper develops an original mean-variance model able to capture the disposition of the parties t...
Environmental accidents often involve ambiguous risks, i.e. the relevant probabilities are unknown. ...
This paper analyzes the meaning of comparing the economic performance of strict liability and neglig...
Abstract: This paper reviews the foundations of the unilateral standard accident model underKnightia...
Working Papers, Fondazione Enrico MatteiThis paper analyzes the meaning of comparing the economic pe...
We introduce a model of the decision between precaution and insurance under an ambiguous probability...
In this paper we modify the standard tort model by introducing role-type uncertainty. That is, we as...
Many tort cases are characterized by two interrelated elements: “role uncertainty”, which occurs whe...
Different models of uncertainty aversion imply strikingly different economic behavior. The key to un...
none1noThis article investigates the implications of uncertainty aversion on optimal liability law. ...
Ambiguity aversion is defined as an aversion to any mean-preserving spread in the probability space....
Ambiguity refers to a decision situation under uncertainty when there is incomplete information abou...