The paper displays the similarity between the theory of probabilistic causation developed by Glymour et al. since 1983 and mine developed since 1976: the core of both is that causal graphs are Bayesian nets. The similarity extends to the treatment of actions or interventions in the two theories. But there is also a crucial difference. Glymour et al. take causal dependencies as primitive and argue them to behave like Bayesian nets under wide circumstances. By contrast, I argue the behavior of Bayesian nets to be ultimately the defining characteristic of causal dependence
Although no universally accepted definition of causality exists, in practice one is often faced with...
We introduce Causal Bayesian Networks as a formalism for representing and explaining probabilistic c...
INTRODUCTION This chapter surveys the development of graphical models known as Bayesian networks, s...
The paper displays the similarity between the theory of probabilistic causation developed by Glymour...
There are too many theories of causation to get into the focus of a small paper. But there are two i...
Abstract. Bayes nets are seeing increasing use in expert systems [2, 6], and structural equations mo...
This article considers the extent to which Bayesian networks with imprecise probabilities, which are...
Whereas acausal Bayesian networks represent probabilistic independence, causal Bayesian networks rep...
We start this paper by arguing that causality should, in analogy with force in Newtonian physics, be...
this paper another misguided attempt to reduce causation to probability. But causation leaves a dist...
Humans possess considerable causal knowledge about the world. For example, one might have beliefs ab...
The theory of causal independence is frequently used to facilitate the assessment of the probabilist...
Abstract We clarify the status of the so-called causal minimality condition in the theory of causal ...
Explanations in Bayesian networks are usually probabilistic measures of how well a hypothesis is sup...
The framework of causal Bayes nets, currently influential in several scientific disciplines, provide...
Although no universally accepted definition of causality exists, in practice one is often faced with...
We introduce Causal Bayesian Networks as a formalism for representing and explaining probabilistic c...
INTRODUCTION This chapter surveys the development of graphical models known as Bayesian networks, s...
The paper displays the similarity between the theory of probabilistic causation developed by Glymour...
There are too many theories of causation to get into the focus of a small paper. But there are two i...
Abstract. Bayes nets are seeing increasing use in expert systems [2, 6], and structural equations mo...
This article considers the extent to which Bayesian networks with imprecise probabilities, which are...
Whereas acausal Bayesian networks represent probabilistic independence, causal Bayesian networks rep...
We start this paper by arguing that causality should, in analogy with force in Newtonian physics, be...
this paper another misguided attempt to reduce causation to probability. But causation leaves a dist...
Humans possess considerable causal knowledge about the world. For example, one might have beliefs ab...
The theory of causal independence is frequently used to facilitate the assessment of the probabilist...
Abstract We clarify the status of the so-called causal minimality condition in the theory of causal ...
Explanations in Bayesian networks are usually probabilistic measures of how well a hypothesis is sup...
The framework of causal Bayes nets, currently influential in several scientific disciplines, provide...
Although no universally accepted definition of causality exists, in practice one is often faced with...
We introduce Causal Bayesian Networks as a formalism for representing and explaining probabilistic c...
INTRODUCTION This chapter surveys the development of graphical models known as Bayesian networks, s...