Affiliation:
1. Institute of Scientific and Technical Information of China
Abstract
Data mining discovers knowledge and useful information from large amounts of data stored in databases. With the increasing popularity of object-oriented database system in advanced database applications, it is significantly important to study the data mining methods for object-oriented database. This paper proposes that higher-order logic programming languages and techniques is very suitable for object-oriented data mining, and presents a framework for object-oriented data mining based on higher-order logic programming. Such a framework is inductive logic programming which adopts higher-order logic programming language Escher as knowledge representation formalism. In addition, Escher is a generalization of the attribute-value representation, thus many higher-order logic learners under this framework can be upgraded directly from corresponding propositional learners.
Publisher
Trans Tech Publications, Ltd.
Reference19 articles.
1. Han, J.W., S. Nishio, S., Kawano, H.: Knowledge Discovery in Object-Oriented and Active databases. Journal of Knowledge Building and Knowledge Sharing. (1994), pp.221-230.
2. Han, J.W., Nishio, S.: Generalization-based data mining in object-oriented databases using an object cube model. Data & Knowledge Engineering. 25: 1-2, (1998), pp.55-97.
3. Huang, Y.M., Lin, S.H.: An Efficient Inductive Learning Method for Object-Oriented Database Using Attribute Entropy. IEEE Transactions on Knowledge and Data Engineering. 8: 6(1996), pp.946-951.
4. Waiyamai, K., Songsiri, C., Rakthanmanon, T.: Object-Oriented Database Mining: Use of Object Oriented Concepts for Improving Data Classification Technique. Computational Science. 3036(2004), pp.303-309.
5. Fortin, S., Liu, L.: An Object-Oriented Approach to Multi-Level association Rule Mining. In: CIKM'96 Proceedings of the Fifth International Conference on Information and Knowledge Management. ACM New York, NY, USA(1996), pp.65-72.
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