A data mining approach to optimize pellets manufacturing process based on a decision tree algorithm.
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Jerzy Krysiński | Peter Kleinebudde | Markus Thommes | Joanna Ronowicz | P. Kleinebudde | J. Krysiński | M. Thommes | Joanna Ronowicz
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