AbstractThe logical and algorithmic properties of stable conditional independence (CI) as an alternative structural representation of conditional independence information are investigated. We utilize recent results concerning a complete axiomatization of stable conditional independence relative to discrete probability measures to derive perfect model properties of stable conditional independence structures. We show that stable CI can be interpreted as a generalization of Markov networks and establish a connection between sets of stable CI statements and propositional formulas in conjunctive normal form. Consequently, we derive that the implication problem for stable CI is coNP-complete. Finally, we show that Boolean satisfiability (SAT) sol...
Abstract. Conditional independence provides an essential framework to deal with knowledge and uncert...
We consider the problem of learning conditional independencies, ex-pressed as a Markov network, from...
AbstractIndependence—the study of what is relevant to a given problem of reasoning—is an important A...
AbstractThe logical and algorithmic properties of stable conditional independence (CI) as an alterna...
The logical and algorithmic properties of stable conditional independence (CI) as an alternative str...
A lattice-theoretic framework is introduced that permits the study of the conditional independence (...
Abstract. Conditional independence provides an essential framework to deal with knowledge and uncert...
AbstractThe concept of conditional independence (CI) within the framework of natural conditional fun...
Independence of Conditionals (IC) has recently been proposed as a basic rule for causal structure le...
Independence of Conditionals (IC) has recently been proposed as a basic rule for causal structure le...
AbstractWe propose a notion of conditional independence with respect to prepositional logic and stud...
In this paper, we deal with conditional independence models closed with respect to graphoid properti...
AbstractIn this paper, we deal with conditional independence models closed with respect to graphoid ...
Independence and conditional independence are fundamental concepts for reasoning about groups of ran...
We explore the conditional probabilistic independences of systems of random variables (I ; J jK), to...
Abstract. Conditional independence provides an essential framework to deal with knowledge and uncert...
We consider the problem of learning conditional independencies, ex-pressed as a Markov network, from...
AbstractIndependence—the study of what is relevant to a given problem of reasoning—is an important A...
AbstractThe logical and algorithmic properties of stable conditional independence (CI) as an alterna...
The logical and algorithmic properties of stable conditional independence (CI) as an alternative str...
A lattice-theoretic framework is introduced that permits the study of the conditional independence (...
Abstract. Conditional independence provides an essential framework to deal with knowledge and uncert...
AbstractThe concept of conditional independence (CI) within the framework of natural conditional fun...
Independence of Conditionals (IC) has recently been proposed as a basic rule for causal structure le...
Independence of Conditionals (IC) has recently been proposed as a basic rule for causal structure le...
AbstractWe propose a notion of conditional independence with respect to prepositional logic and stud...
In this paper, we deal with conditional independence models closed with respect to graphoid properti...
AbstractIn this paper, we deal with conditional independence models closed with respect to graphoid ...
Independence and conditional independence are fundamental concepts for reasoning about groups of ran...
We explore the conditional probabilistic independences of systems of random variables (I ; J jK), to...
Abstract. Conditional independence provides an essential framework to deal with knowledge and uncert...
We consider the problem of learning conditional independencies, ex-pressed as a Markov network, from...
AbstractIndependence—the study of what is relevant to a given problem of reasoning—is an important A...