Case-based reasoning is deemed an important technology to alleviate the bottleneck of knowledge acquisition in Artificial Intelligence (AI). In case-based reasoning, knowledge is represented in the form of particular cases with an appropriate similarity measure rather than any form of rules. The case-based reasoning paradigm adopts the view that an Al system is dynamically changing during its life-cycle which immediately leads to learning considerations. Within the present paper, we investigate the problem of case-based learning of indexable classes of formal languages. Prior to learning considerations, we study the problem of case-based representability and show that every indexable class is case-based representable with respect to a fixe...
Case-based learning (CBL) algorithms are CBR systems that focus on the topic of learning. This paper...
This paper gives an overview of the foundational issues related to case based reasoning, describes s...
Contrary to symbolic learning approaches, that represent a learned concept explicitly, case-based ap...
Case-based reasoning is deemed an important technology to alleviate the bottleneck of knowledge acqu...
AbstractPattern languages seem to suit case-based reasoning particularly well. Therefore, the proble...
Case-based reasoning is deemed an important technology to alleviate the bottleneck of knowledge acqu...
. In order to learn more about the behaviour of case-based reasoners as learning systems, we formali...
. Discussions of case-based reasoning often reflect an implicit assumption that a case memory system...
In this paper, we discuss the benefits and limitations of Ma-chine Learning (ML) for Case-Based Reas...
AbstractPattern languages seem to suit case-based reasoning particularly well. Therefore, the proble...
While symbolic learning approaches encode the knowledge provided by the presentation of the cases ex...
Case-based reasoning (CBR) is now a mature subfield of artificial intelligence. The fundamental prin...
This thesis makes several contributions to the study of Case-based Reasoning. It presents * a compre...
Case-based reasoning is a recent approach to problem solving and learning that has got a lot of atte...
This thesis addresses the problem of learning in the context of case-based reasoning (CBR). More spe...
Case-based learning (CBL) algorithms are CBR systems that focus on the topic of learning. This paper...
This paper gives an overview of the foundational issues related to case based reasoning, describes s...
Contrary to symbolic learning approaches, that represent a learned concept explicitly, case-based ap...
Case-based reasoning is deemed an important technology to alleviate the bottleneck of knowledge acqu...
AbstractPattern languages seem to suit case-based reasoning particularly well. Therefore, the proble...
Case-based reasoning is deemed an important technology to alleviate the bottleneck of knowledge acqu...
. In order to learn more about the behaviour of case-based reasoners as learning systems, we formali...
. Discussions of case-based reasoning often reflect an implicit assumption that a case memory system...
In this paper, we discuss the benefits and limitations of Ma-chine Learning (ML) for Case-Based Reas...
AbstractPattern languages seem to suit case-based reasoning particularly well. Therefore, the proble...
While symbolic learning approaches encode the knowledge provided by the presentation of the cases ex...
Case-based reasoning (CBR) is now a mature subfield of artificial intelligence. The fundamental prin...
This thesis makes several contributions to the study of Case-based Reasoning. It presents * a compre...
Case-based reasoning is a recent approach to problem solving and learning that has got a lot of atte...
This thesis addresses the problem of learning in the context of case-based reasoning (CBR). More spe...
Case-based learning (CBL) algorithms are CBR systems that focus on the topic of learning. This paper...
This paper gives an overview of the foundational issues related to case based reasoning, describes s...
Contrary to symbolic learning approaches, that represent a learned concept explicitly, case-based ap...