In this paper, we describe precedent-based explanations for case-based classification systems. Previous work has shown that explanation cases that are more marginal than the query case, in the sense of lying between the query case and the decision boundary, are more convincing explanations. We show how to retrieve such explanation cases in a way that requires lower knowledge engineering overheads than previously. We evaluate our approaches empirically, finding that the explanations that our systems retrieve are often more convincing than those found by the previous approach. The paper ends with a thorough discussion of a range of factors that affect precedent-based explanations, many of which warrant further research
. Discussions of case-based reasoning often reflect an implicit assumption that a case memory system...
A desired capability of automatic problem solvers is that they can explain the results. Such explana...
Abstract. We present an overview of different theories of explanation from the philosophy and cognit...
In this paper, we describe precedent-based explanations for case-based classification systems. Previ...
In this paper, we describe precedent-based explanations for case-based classification systems. Previ...
Abstract. By design, Case-Based Reasoning (CBR) systems do not need deep general knowledge. In contr...
Research on explanation in Case-Based Reasoning (CBR) is a topic that gains momentum. In this conte...
The explanation and justification of decisions is an important subject in contemporary data-driven a...
Proper indexing of cases is critically important to the functioning of a case-based reasoner. In rea...
This paper proposes a formal top-level model of explaining the outputs of machine-learning-based dec...
This paper brings together factor-based models of case-based reasoning (CBR) and the logical specif...
When tasks traditionally performed by humans are automated it is important thatthe machines are able...
Model-agnostic methods in eXplainable Artificial Intelligence (XAI) propose isolating the explanatio...
Case-Based Reasoning, in short, is the process of solving new problems based on solutions of similar...
Case-Based Reasoning (CBR) is a rapidly growing eld in AI. It is a memory-driven approach to problem...
. Discussions of case-based reasoning often reflect an implicit assumption that a case memory system...
A desired capability of automatic problem solvers is that they can explain the results. Such explana...
Abstract. We present an overview of different theories of explanation from the philosophy and cognit...
In this paper, we describe precedent-based explanations for case-based classification systems. Previ...
In this paper, we describe precedent-based explanations for case-based classification systems. Previ...
Abstract. By design, Case-Based Reasoning (CBR) systems do not need deep general knowledge. In contr...
Research on explanation in Case-Based Reasoning (CBR) is a topic that gains momentum. In this conte...
The explanation and justification of decisions is an important subject in contemporary data-driven a...
Proper indexing of cases is critically important to the functioning of a case-based reasoner. In rea...
This paper proposes a formal top-level model of explaining the outputs of machine-learning-based dec...
This paper brings together factor-based models of case-based reasoning (CBR) and the logical specif...
When tasks traditionally performed by humans are automated it is important thatthe machines are able...
Model-agnostic methods in eXplainable Artificial Intelligence (XAI) propose isolating the explanatio...
Case-Based Reasoning, in short, is the process of solving new problems based on solutions of similar...
Case-Based Reasoning (CBR) is a rapidly growing eld in AI. It is a memory-driven approach to problem...
. Discussions of case-based reasoning often reflect an implicit assumption that a case memory system...
A desired capability of automatic problem solvers is that they can explain the results. Such explana...
Abstract. We present an overview of different theories of explanation from the philosophy and cognit...