Applications of inductive logic programming
- 1 November 1995
- journal article
- Published by Association for Computing Machinery (ACM) in Communications of the ACM
- Vol. 38 (11) , 65-70
- https://doi.org/10.1145/219717.219771
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 donotspecifyrelationsamong 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.Keywords
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