Esprit LTR Project METAL 26.357 A Meta–Learning Assistant for Providing User Support in Machine Learning and Data Mining
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The Focused Multi-Criteria Ranking Approach to Machine Learning Algorithm Selection - An Incremental Meta Learning Assistant f
The main goal of the ESPRIT METAL project is to use metalearning to develop an incrementally adaptable assistant system to provide usersupport in machine learning and data mining. Meta data consists of performance outcomes of ML algorithms on known datasets. Using new models of data envelopment analysis to deal with multiple criteria, an ordered ranking of algorithms is obtained for each datase...
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تاریخ انتشار 2002