People can often outperform statistical methods and machine learning algorithms in situations that involve making inferences about the relationship between causes and effects. While people are remarkably good at causal reasoning in many situations, there are several instances where they deviate from expected responses. This paper examines three situations where judgments related to causal inference problems produce unexpected results and describes a quantum inference model based on the axiomatic principles of quantum probability theory that can explain these effects. Two of the three phenomena arise from the comparison of predictive judgments (i.e., the conditional probability of an effect given a cause) with diagnostic judgments (i.e., the...
Traditional cognitive science rests on a foundation of classical logic and probability theory. This ...
Growing empirical evidence reveals that traditional set-theoretic structures cannot in general be ap...
International audienceGrowing empirical evidence reveals that traditional set-theoretic structures c...
People can often outperform statistical methods and machine learning algorithms in situations that i...
People can often outperform statistical methods and machine learning algorithms in situ-ations that ...
A quantum probability model is introduced and used to explain human probability judgment errors incl...
We use quantum probability (QP) theory to investigate individual differences in causal reasoning. By...
Traditional approaches to cognitive psychology are founded on a classical vision of logic and probab...
What type of probability theory best describes the way humans make judgments under uncertainty and d...
Recent work in cognitive psychology has revealed that quantum probability theory provides another me...
We describe 4 experiments testing contrasting predictions of two recent models of probability judgme...
There is considerable variety in human inference (e.g., a doctor inferring the presence of a disease...
This article presents the results of an experiment, called the ABA experiment, designed to test a fu...
We describe 4 experiments testing contrasting predictions of two recent models of probability judgme...
The psychology of judgment and decision making can provide useful guidance to the task of medical de...
Traditional cognitive science rests on a foundation of classical logic and probability theory. This ...
Growing empirical evidence reveals that traditional set-theoretic structures cannot in general be ap...
International audienceGrowing empirical evidence reveals that traditional set-theoretic structures c...
People can often outperform statistical methods and machine learning algorithms in situations that i...
People can often outperform statistical methods and machine learning algorithms in situ-ations that ...
A quantum probability model is introduced and used to explain human probability judgment errors incl...
We use quantum probability (QP) theory to investigate individual differences in causal reasoning. By...
Traditional approaches to cognitive psychology are founded on a classical vision of logic and probab...
What type of probability theory best describes the way humans make judgments under uncertainty and d...
Recent work in cognitive psychology has revealed that quantum probability theory provides another me...
We describe 4 experiments testing contrasting predictions of two recent models of probability judgme...
There is considerable variety in human inference (e.g., a doctor inferring the presence of a disease...
This article presents the results of an experiment, called the ABA experiment, designed to test a fu...
We describe 4 experiments testing contrasting predictions of two recent models of probability judgme...
The psychology of judgment and decision making can provide useful guidance to the task of medical de...
Traditional cognitive science rests on a foundation of classical logic and probability theory. This ...
Growing empirical evidence reveals that traditional set-theoretic structures cannot in general be ap...
International audienceGrowing empirical evidence reveals that traditional set-theoretic structures c...