Classification of Individuals with Complex Structure
Abstract
This paper introduces a foundation for inductive learning based on the use of higher-order logic for knowledge representation. In particular, the paper (i) provides a systematic individuals-as-terms approach to knowledge representation for inductive learning, and demonstrates the utility of types and higherorder constructs for this purpose; (ii) introduces a systematic way to construct predicates for use in induced definitions; and (iii) widens the applicability of decision-tree algorithms beyond the usual attribute-value setting to the classification of individuals with complex internal structure. The paper contains several illustrative applications. The effectiveness of the approach is demonstrated by applying the decision-tree learning system to two benchmark problems. 1. Introduction Traditionally, inductive learners have used the attribute-value language to represent individuals in (supervised) learning from examples. Though the relative simplicity of this attri...
Cite
Text
Bowers et al. "Classification of Individuals with Complex Structure." International Conference on Machine Learning, 2000.Markdown
[Bowers et al. "Classification of Individuals with Complex Structure." International Conference on Machine Learning, 2000.](https://mlanthology.org/icml/2000/bowers2000icml-classification/)BibTeX
@inproceedings{bowers2000icml-classification,
title = {{Classification of Individuals with Complex Structure}},
author = {Bowers, Antony Francis and Giraud-Carrier, Christophe G. and Lloyd, John W.},
booktitle = {International Conference on Machine Learning},
year = {2000},
pages = {81-88},
url = {https://mlanthology.org/icml/2000/bowers2000icml-classification/}
}