Contrary to symbolic learning approaches, that represent a learned concept explicitly, case-based approaches describe concepts implicitly by a pair (CB; sim), i.e. by a measure of similarity sim and a set CB of cases. This poses the question if there are any differences concerning the learning power of the two approaches. In this article we will study the relationship between the case base, the measure of similarity, and the target concept of the learning process. To do so, we transform a simple symbolic learning algorithm (the version space algorithm) into an equivalent case-based variant. The achieved results strengthen the hypothesis of the equivalence of the learning power of symbolic and casebased methods and show the interdependency b...
Case-based learning (CBL) algorithms are CBR systems that focus on the topic of learning. This paper...
Case-based learning (CBL) algorithms are CBR systems that focus on the topic of learning. This paper...
We present an empirical analysis of symbolic prototype learners for synthetic and real domains. The ...
Contrary to symbolic learning approaches, which represent a learned concept explicitly, case-based a...
While symbolic learning approaches encode the knowledge provided by the presentation of the cases ex...
. In order to learn more about the behaviour of case-based reasoners as learning systems, we formali...
A desired capability of automatic problem solvers is that they can explain the results. Such explana...
The explanation of the results is a key point of auto-matic problem solvers. CBR systems solve a new...
Abstract. CBR systems solve problems by assessing their similarity with already solved problems (cas...
. Discussions of case-based reasoning often reflect an implicit assumption that a case memory system...
Case-based reasoning is deemed an important technology to alleviate the bottleneck of knowledge acqu...
Case-based reasoning is deemed an important technology to alleviate the bottleneck of knowledge acqu...
CBR systems solve problems by assessing their similarity with already solved problems (cases). Expla...
AbstractPattern languages seem to suit case-based reasoning particularly well. Therefore, the proble...
This chapter introduces symbolic machine learning in which decision trees, rules, or case-based clas...
Case-based learning (CBL) algorithms are CBR systems that focus on the topic of learning. This paper...
Case-based learning (CBL) algorithms are CBR systems that focus on the topic of learning. This paper...
We present an empirical analysis of symbolic prototype learners for synthetic and real domains. The ...
Contrary to symbolic learning approaches, which represent a learned concept explicitly, case-based a...
While symbolic learning approaches encode the knowledge provided by the presentation of the cases ex...
. In order to learn more about the behaviour of case-based reasoners as learning systems, we formali...
A desired capability of automatic problem solvers is that they can explain the results. Such explana...
The explanation of the results is a key point of auto-matic problem solvers. CBR systems solve a new...
Abstract. CBR systems solve problems by assessing their similarity with already solved problems (cas...
. Discussions of case-based reasoning often reflect an implicit assumption that a case memory system...
Case-based reasoning is deemed an important technology to alleviate the bottleneck of knowledge acqu...
Case-based reasoning is deemed an important technology to alleviate the bottleneck of knowledge acqu...
CBR systems solve problems by assessing their similarity with already solved problems (cases). Expla...
AbstractPattern languages seem to suit case-based reasoning particularly well. Therefore, the proble...
This chapter introduces symbolic machine learning in which decision trees, rules, or case-based clas...
Case-based learning (CBL) algorithms are CBR systems that focus on the topic of learning. This paper...
Case-based learning (CBL) algorithms are CBR systems that focus on the topic of learning. This paper...
We present an empirical analysis of symbolic prototype learners for synthetic and real domains. The ...