Discretisation in Lazy Learning Algorithms
作者:Kai Ming Ting
摘要
This paper adopts the idea of discretising continuous attributes (Fayyad and Irani 1993) and applies it to lazy learning algorithms (Aha 1990; Aha, Kibler and Albert 1991). This approach converts continuous attributes into nominal attributes at the outset. We investigate the effects of this approach on the performance of lazy learning algorithms and examine it empirically using both real-world and artificial data to characterise the benefits of discretisation in lazy learning algorithms. Specifically, we have showed that discretisation achieves an effect of noise reduction and increases lazy learning algorithms' tolerance for irrelevant continuous attributes.
论文关键词:lazy learning, discretisation, bias, axis-orthogonal representation, empirical evaluation
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论文官网地址:https://doi.org/10.1023/A:1006504622008