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Meta-learning: Strategies, Implementations, And Evaluations for Algorithm Selection Book

Meta-learning: Strategies, Implementations, And Evaluations for Algorithm Selection
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Meta-learning: Strategies, Implementations, And Evaluations for Algorithm Selection, Data analysis via supervised learning tasks is among the most common data mining techniques. The objective of meta-learning is to generate a user-supporting system for selection of the most appropriate supervised learning algorithms for such tasks. The me, Meta-learning: Strategies, Implementations, And Evaluations for Algorithm Selection
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  • Meta-learning: Strategies, Implementations, And Evaluations for Algorithm Selection
  • Written by author C. R. Kopf
  • Published by IOS Press, Incorporated, 11/1/2005
  • Data analysis via supervised learning tasks is among the most common data mining techniques. The objective of meta-learning is to generate a user-supporting system for selection of the most appropriate supervised learning algorithms for such tasks. The me
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Data analysis via supervised learning tasks is among the most common data mining techniques. The objective of meta-learning is to generate a user-supporting system for selection of the most appropriate supervised learning algorithms for such tasks. The meta-learning framework is usually based upon a classification on the meta-level often disregarding a large amount of information gained during the induction process. The performance of supervised learning algorithms is also clearly dependent on the quality of the data. And, considering only a small subset of meta-attributes may significantly reduce both the time and effort applied for the corresponding measurement process. In this book, the extent to which the issues above impact the performance of a meta-learning system is evaluated and solutions for remedying the difficulties observed are presented. In particular, the accuracies of the base learners are predicted, thus avoiding the rigid decision on a single-best learner. Subsequently, the severity of data quality issues is investigated.

IOS Press is an international science, technical and medical publisher of high-quality books for academics, scientists, and professionals in all fields.

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• Medical informatics
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Meta-learning: Strategies, Implementations, And Evaluations for Algorithm Selection, Data analysis via supervised learning tasks is among the most common data mining techniques. The objective of meta-learning is to generate a user-supporting system for selection of the most appropriate supervised learning algorithms for such tasks. The me, Meta-learning: Strategies, Implementations, And Evaluations for Algorithm Selection

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Meta-learning: Strategies, Implementations, And Evaluations for Algorithm Selection, Data analysis via supervised learning tasks is among the most common data mining techniques. The objective of meta-learning is to generate a user-supporting system for selection of the most appropriate supervised learning algorithms for such tasks. The me, Meta-learning: Strategies, Implementations, And Evaluations for Algorithm Selection

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Meta-learning: Strategies, Implementations, And Evaluations for Algorithm Selection, Data analysis via supervised learning tasks is among the most common data mining techniques. The objective of meta-learning is to generate a user-supporting system for selection of the most appropriate supervised learning algorithms for such tasks. The me, Meta-learning: Strategies, Implementations, And Evaluations for Algorithm Selection

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