Affiliation:
1. Ljubljana Univ., Ljubljana, Slovenia
2. Oxford Univ., Oxford, UK
Abstract
Techniques of machine learning have been successfully applied to various problems [1, 12]. Most of these applications rely on attribute-based learning, exemplified by the induction of decision trees as in the program C4.5 [20]. Broadly speaking, attribute-based learning also includes such approaches to learning as neural networks and nearest neighbor techniques. The advantages of attribute-based learning are: relative simplicity, efficiency, and existence of effective techniques for handling noisy data. However, attribute-based learning is limited to non-relational descriptions of objects in the sense that the learned descriptions do
not
specify
relations
among the objects' parts. Attribute-based learning thus has two strong limitations:
the background knowledge can be expressed in rather limited form, and
the lack of relations makes the concept description language inappropriate for some domains.
Publisher
Association for Computing Machinery (ACM)
Cited by
86 articles.
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