In this paper, we address the ambitious task of formulating a general framework for data mining. We discuss the requirements that such a framework should fulfill: It should elegantly handle different types of data, different data mining tasks, and different types of patterns/models. We also discuss data mining languages and what they should support: this includes the design and implementation of data mining algorithms, as well as their composition into nontrivial multi-step knowledge discovery scenarios relevant for practical application. We proceed by laying out some basic concepts, starting with (structured) data and generalizations (e.g., patterns and models) and continuing with data mining tasks and basic components of data mining algorithms (i.e., refinement operators, distances, features and kernels). We next discuss how to use these concepts to formulate constraint-based data mining tasks and design generic data mining algorithms. We finally discuss how these components would fit in the overall framework and in particular into a language for data mining and knowledge discovery.
CITATION STYLE
Sašo. (2007). Knowledge Discovery in Inductive Databases. Matrix eigensystem … (Vol. 4747, pp. 259–300). Retrieved from https://link.springer.com/content/pdf/10.1007%2F978-3-540-75549-4.pdf http://www.ulb.tu-darmstadt.de/tocs/79304567.pdf%5Cnhttp://www.springerlink.com/index/10.1007/978-3-540-75549-4
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