Abstract: The competence being investigated is causal modelling, whereby the behavior of a physical system is understood through the creation of an explanation or description of the underlying causal relations. After developing a model of causality, I show how the causal modelling competence can arise from a combination of inductive and deductive inference employing knowledge of the general form of causal relations and of the kinds of causal mechanisms that exist in a domain. The hypotheses generated by the causal modelling system range from purely empirical to more and more strongly justified. Hypotheses are justified by explanations derived from the domain theory and by perceptions which instantiate those explanations. Hypotheses never ca...
This paper presents an analysis of the different types of reasoning and physical explanation used in...
We focused on three theories of causal meaning: mental model, force dynamics, and causal model theor...
Recent work in the field of machine learning has demon-strated the utility of explanation formation ...
Causal models are representations of causal structures and processes in the world. In this thesis tw...
The anti-causal prophecies of last century have been disproved. Causality is neither a ‘relic of a b...
This dissertation studies how the mechanism-based view of causality can assist in construction and u...
This dissertation studies how the mechanism-based view of causality can assist in construction and u...
This dissertation studies how the mechanism-based view of causality can assist in construction and u...
PhDAlthough human causal reasoning is widely acknowledged as an object of scientific enquiry, there...
In this essay a dialogue is established between the main epistemological theories about causality th...
Experiments have always been the way to study what the effect is of interventions. Causal inference ...
A model is defined that predicts an agent's ascriptions of causality (and related notions of facilit...
[Introduction] 'Causal modelling' is a general term that applies to a wide variety of formal method...
The manipulationist account of causation provides a conceptual analysis of cause-effect relationship...
Purpose – The purpose of this paper is the study of the causal relationship. The concept called “nai...
This paper presents an analysis of the different types of reasoning and physical explanation used in...
We focused on three theories of causal meaning: mental model, force dynamics, and causal model theor...
Recent work in the field of machine learning has demon-strated the utility of explanation formation ...
Causal models are representations of causal structures and processes in the world. In this thesis tw...
The anti-causal prophecies of last century have been disproved. Causality is neither a ‘relic of a b...
This dissertation studies how the mechanism-based view of causality can assist in construction and u...
This dissertation studies how the mechanism-based view of causality can assist in construction and u...
This dissertation studies how the mechanism-based view of causality can assist in construction and u...
PhDAlthough human causal reasoning is widely acknowledged as an object of scientific enquiry, there...
In this essay a dialogue is established between the main epistemological theories about causality th...
Experiments have always been the way to study what the effect is of interventions. Causal inference ...
A model is defined that predicts an agent's ascriptions of causality (and related notions of facilit...
[Introduction] 'Causal modelling' is a general term that applies to a wide variety of formal method...
The manipulationist account of causation provides a conceptual analysis of cause-effect relationship...
Purpose – The purpose of this paper is the study of the causal relationship. The concept called “nai...
This paper presents an analysis of the different types of reasoning and physical explanation used in...
We focused on three theories of causal meaning: mental model, force dynamics, and causal model theor...
Recent work in the field of machine learning has demon-strated the utility of explanation formation ...