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  • × author_ss:"Cheng, J.C.Y."
  • × theme_ss:"Data Mining"
  1. Wong, M.L.; Leung, K.S.; Cheng, J.C.Y.: Discovering knowledge from noisy databases using genetic programming (2000) 0.00
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    Abstract
    In data mining, we emphasize the need for learning from huge, incomplete, and imperfect data sets. To handle noise in the problem domain, existing learning systems avoid overfitting the imperfect training examples by excluding insignificant patterns. The problem is that these systems use a limiting attribute-value language for representing the training examples and the induced knowledge. Moreover, some important patterns are ignored because they are statistically insignificant. In this article, we present a framework that combines genetic programming and inductive logic programming to induce knowledge represented in various knowledge representation formalisms from noisy databases (LOGENPRO). Moreover, the system is applied to one real-life medical database. The knowledge discovered provides insights to and allows better understanding of the medical domains
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