While it has been realized for quite some time within AI that abduction is a general model of explanation for a variety of tasks, there have been no empirical investigations into the practical feasibility of a general, logic-based abductive approach to explanation. In this paper we present extensive empirical results on applying a general abductive system, Accel, to moderately complex problems in plan recognition and diagnosis. In plan recognition, Accel has been tested on 50 short narrative texts, inferring characters' plans from actions described in a text. In medical diagnosis, Accel has diagnosed 50 real-world patient cases involving brain damage due to stroke (previously addressed by set-covering methods). Accel also uses abduct...
We investigate how abduction and induction can be integrated into a common learning framework throug...
This paper presents a new system, called the A-System, performing abductive reasoning within the fra...
Abductive reasoning involves generating an explanation for a given set of observations about the wor...
A new inductive learning system, Lab (Learning for ABduction), is presented which acquires abductive...
Abduction is an important inference process underlying much of human intelligent activities, includ...
This paper discusses the integration of traditional abductive and inductive reasoning methods in the...
A new system for learning by induction, called Lab, is presented. Lab (Learning for ABduction) lear...
This paper presents a theoretical discussion and a logi-cal framework for a generalised model of abd...
Current discussions of Explainable AI (XAI) do not much consider the role of abduction in explanat...
Abduction is a form of non-monotonic reasoning that has gained increasing interest in the last few y...
Summary. Most logic–based approaches characterize abduction as a kind of back-wards deduction plus a...
Abduction was first introduced in the epistemological context of scientific discovery. It was more r...
We discuss the PID-abductive framework, in which explanations are selected depending on how they are...
Abstract. Plan recognition is the task of predicting an agent’s top-level plans based on its observe...
Plan recognition is a form of abductive reasoning that involves inferring plans that best explain se...
We investigate how abduction and induction can be integrated into a common learning framework throug...
This paper presents a new system, called the A-System, performing abductive reasoning within the fra...
Abductive reasoning involves generating an explanation for a given set of observations about the wor...
A new inductive learning system, Lab (Learning for ABduction), is presented which acquires abductive...
Abduction is an important inference process underlying much of human intelligent activities, includ...
This paper discusses the integration of traditional abductive and inductive reasoning methods in the...
A new system for learning by induction, called Lab, is presented. Lab (Learning for ABduction) lear...
This paper presents a theoretical discussion and a logi-cal framework for a generalised model of abd...
Current discussions of Explainable AI (XAI) do not much consider the role of abduction in explanat...
Abduction is a form of non-monotonic reasoning that has gained increasing interest in the last few y...
Summary. Most logic–based approaches characterize abduction as a kind of back-wards deduction plus a...
Abduction was first introduced in the epistemological context of scientific discovery. It was more r...
We discuss the PID-abductive framework, in which explanations are selected depending on how they are...
Abstract. Plan recognition is the task of predicting an agent’s top-level plans based on its observe...
Plan recognition is a form of abductive reasoning that involves inferring plans that best explain se...
We investigate how abduction and induction can be integrated into a common learning framework throug...
This paper presents a new system, called the A-System, performing abductive reasoning within the fra...
Abductive reasoning involves generating an explanation for a given set of observations about the wor...