Inference from an observed or hypothesized condition to a plausible cause or explanation for this condition is known as abduction. For many tasks, the acquisition of the necessary knowledge by machine learning has been widely found to be highly effective. However, the semantics of learned knowledge are weaker than the usual classical semantics, and this necessitates new formulations of many tasks. We focus on a recently introduced formulation of the abductive inference task that is thus adapted to the semantics of machine learning. A key problem is that we cannot expect that our causes or explanations will be perfect, and they must tolerate some error due to the world being more complicated than our formalization allows. This is a version o...
The purpose of this piece is to provide a critical analysis on some key aspects of abduction, as con...
Summary. Most logic–based approaches characterize abduction as a kind of back-wards deduction plus a...
. An abductive framework is described for validating theories using a library of known or desired be...
We consider a new formulation of abduction in which degrees of "plausibility" of explanations, along...
We consider a new formulation of abduction. Our formulation differs from the existing approaches in ...
Our work extends Juba’s formulation of learning abductive reasoning from examples, in which both the...
Juba recently proposed a formulation of learning abductive reasoning from examples, in which both th...
We propose an integration of abduction and induction where the two inference processes cooperate in...
This paper discusses the integration of traditional abductive and inductive reasoning methods in the...
In real-life domains, learning systems often have to deal with various kinds of imperfections in dat...
The growing range of applications of Machine Learning (ML) in a multitude of settings motivates the ...
Most logic–based approaches characterize abduction as a kind of backwards deduction plus additional ...
In this paper, we propose a reconstruction of logic-based approaches to abductive reasoning in terms...
Abduction is a logical inference technique used in explanation finding and a variety of consequence ...
We investigate how abduction and induction can be integrated into a common learning framework throug...
The purpose of this piece is to provide a critical analysis on some key aspects of abduction, as con...
Summary. Most logic–based approaches characterize abduction as a kind of back-wards deduction plus a...
. An abductive framework is described for validating theories using a library of known or desired be...
We consider a new formulation of abduction in which degrees of "plausibility" of explanations, along...
We consider a new formulation of abduction. Our formulation differs from the existing approaches in ...
Our work extends Juba’s formulation of learning abductive reasoning from examples, in which both the...
Juba recently proposed a formulation of learning abductive reasoning from examples, in which both th...
We propose an integration of abduction and induction where the two inference processes cooperate in...
This paper discusses the integration of traditional abductive and inductive reasoning methods in the...
In real-life domains, learning systems often have to deal with various kinds of imperfections in dat...
The growing range of applications of Machine Learning (ML) in a multitude of settings motivates the ...
Most logic–based approaches characterize abduction as a kind of backwards deduction plus additional ...
In this paper, we propose a reconstruction of logic-based approaches to abductive reasoning in terms...
Abduction is a logical inference technique used in explanation finding and a variety of consequence ...
We investigate how abduction and induction can be integrated into a common learning framework throug...
The purpose of this piece is to provide a critical analysis on some key aspects of abduction, as con...
Summary. Most logic–based approaches characterize abduction as a kind of back-wards deduction plus a...
. An abductive framework is described for validating theories using a library of known or desired be...