A landmarker selection algorithm based on correlation and efficiency criteria

AI 2004: ADVANCES IN ARTIFICIAL INTELLIGENCE, PROCEEDINGS(2004)

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摘要
Landmarking is a recent and promising meta-learning strategy, which defines meta-features that are themselves efficient learning algorithms However, the choice of landmarkers is often made in an ad hoc manner In this paper, we propose a new perspective and set of criteria for landmarkers Based on the new criteria, we propose a landmarker generation algorithm, which generates a set of landmarkers that are each subsets of the algorithms being landmarked Our experiments show that the landmarkers formed, when used with linear regression are able to estimate the accuracy of a set of candidate algorithms well, while only utilising a small fraction of the computational cost required to evaluate those candidate algorithms via ten-fold cross-validation.
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关键词
small fraction,promising meta-learning strategy,landmarker generation algorithm,candidate algorithm,new perspective,linear regression,new criterion,efficiency criterion,computational cost,landmarker selection algorithm,ten-fold cross-validation,efficient learning,cross validation,generic algorithm
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