In this paper, we present the information graph (IG) formalism, which provides a precise account of the interplay between deductive and abductive inference and causal and evidential information, where ‘deduction’ is used for defeasible ‘forward’ inference. IGs formalise analyses performed by domain experts in the informal reasoning tools they are familiar with, such as mind maps used in crime analysis. Based on principles for reasoning with causal and evidential information given the evidence, we impose constraints on the inferences that may be performed with IGs. Our IG-formalism is intended to facilitate the construction of formal representations within AI systems by serving as an intermediary formalism between analyses performed using in...
Qualitative and quantitative systems to deal with uncertainty coexist. Bayesian networks are a well ...
This paper addresses the problem of learning Bayesian network structures from data by using an infor...
Errors in reasoning about probabilistic evidence can have severe consequences. In the legal domain a...
In this paper, we present the information graph (IG) formalism, which provides a precise account of ...
In this paper, we propose the information graph (IG) formalism, which provides a precise account of ...
Dependency graphs are models for representing probabilistic inter-dependencies among related concept...
Bayesian networks (BNs) are powerful tools that are well-suited for reasoning about the uncertain co...
Over the last decades the rise of forensic sciences has led to an increase in the availability of st...
Over the last decades the rise of forensic sciences has led to an increase in the availability of st...
Over the last decades the rise of forensic sciences has led to an increase in the availability of st...
In this paper, we propose a structured approach for transforming legal arguments to a Bayesian netwo...
In this paper, we propose a structured approach for transforming legal arguments to a Bayesian netwo...
Qualitative and quantitative systems to deal with uncertainty coexist. Bayesian networks are a well ...
This paper addresses the problem of learning Bayesian network structures from data by using an infor...
Errors in reasoning about probabilistic evidence can have severe consequences. In the legal domain a...
In this paper, we present the information graph (IG) formalism, which provides a precise account of ...
In this paper, we propose the information graph (IG) formalism, which provides a precise account of ...
Dependency graphs are models for representing probabilistic inter-dependencies among related concept...
Bayesian networks (BNs) are powerful tools that are well-suited for reasoning about the uncertain co...
Over the last decades the rise of forensic sciences has led to an increase in the availability of st...
Over the last decades the rise of forensic sciences has led to an increase in the availability of st...
Over the last decades the rise of forensic sciences has led to an increase in the availability of st...
In this paper, we propose a structured approach for transforming legal arguments to a Bayesian netwo...
In this paper, we propose a structured approach for transforming legal arguments to a Bayesian netwo...
Qualitative and quantitative systems to deal with uncertainty coexist. Bayesian networks are a well ...
This paper addresses the problem of learning Bayesian network structures from data by using an infor...
Errors in reasoning about probabilistic evidence can have severe consequences. In the legal domain a...