Prediction is based on past cases. We assume that a predictor can rank eventualities according to their plausibility given any memory that consists of repetitions of past cases. In a companion paper, we show that under mild consistency requirements, these rankings can be represented by numerical functions, such that the function corresponding to each eventuality is linear in the number of case repetitions. In this paper we extend the analysis to rankings of events. Our main result is that a cancellation condition a la de Finetti implies that these functions are additive with respect to union of disjoint sets. If the set of past cases coincides with the set of possible eventualities, natural conditions are equivalent to ranking events by the...
International audienceDo individuals unfamiliar with probability and statistics need a specific type...
In this article we demonstrate how algorithmic probability the-ory is applied to situations that inv...
AbstractThis paper presents a new theory of syllogistic reasoning. The proposed model assumes there ...
Prediction is based on past cases. We assume that a predictor can rank eventualities according to th...
We suggest an axiomatic approach to the way in which past cases, or observations, are or should be u...
International audienceA predictor is asked to rank eventualities according to their plausibility, ba...
A predictor is asked to rank eventualities according to their plau-sibility, based on past cases. We...
Many errors in probabilistic judgment have been attributed to people’s inability to think in statist...
We are interested in the question of how to learn rules, when those rules make probabilistic stateme...
Item does not contain fulltextA fundamental empirical question regarding judgments about events is w...
International audienceIs the human mind inherently unable to reason probabilistically, or is it able...
In many economic decisions, people estimate probabilities, such as the likelihood that a risk materi...
35th Annual Conference of the Cognitive Science Society, Berlin, Germany, 31 July - 3 August 2013In ...
In this article we demonstrate how algorithmic probability theory is applied to situations that invo...
International audienceThe aim of this work is to provide a unified framework for ordinal representat...
International audienceDo individuals unfamiliar with probability and statistics need a specific type...
In this article we demonstrate how algorithmic probability the-ory is applied to situations that inv...
AbstractThis paper presents a new theory of syllogistic reasoning. The proposed model assumes there ...
Prediction is based on past cases. We assume that a predictor can rank eventualities according to th...
We suggest an axiomatic approach to the way in which past cases, or observations, are or should be u...
International audienceA predictor is asked to rank eventualities according to their plausibility, ba...
A predictor is asked to rank eventualities according to their plau-sibility, based on past cases. We...
Many errors in probabilistic judgment have been attributed to people’s inability to think in statist...
We are interested in the question of how to learn rules, when those rules make probabilistic stateme...
Item does not contain fulltextA fundamental empirical question regarding judgments about events is w...
International audienceIs the human mind inherently unable to reason probabilistically, or is it able...
In many economic decisions, people estimate probabilities, such as the likelihood that a risk materi...
35th Annual Conference of the Cognitive Science Society, Berlin, Germany, 31 July - 3 August 2013In ...
In this article we demonstrate how algorithmic probability theory is applied to situations that invo...
International audienceThe aim of this work is to provide a unified framework for ordinal representat...
International audienceDo individuals unfamiliar with probability and statistics need a specific type...
In this article we demonstrate how algorithmic probability the-ory is applied to situations that inv...
AbstractThis paper presents a new theory of syllogistic reasoning. The proposed model assumes there ...