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Landmarking Various Learning Algorithms Bernhard Pfahringer...



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Abstract: Landmarking is a novel approachtodescribing tasks in meta-learning. Previous approaches to meta-learning mostly considered only statistics-inspired measures of the data as a source for the de#nition of metaattributes. (Update)

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BibTeX entry:   (Update)

@misc{ learning-tell,
  author = "Landmarking Various Learning",
  title = "Tell me who can learn you and I can tell you who you are:",
  url = "citeseer.ist.psu.edu/742226.html" }
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