Recognition of culling reasons in Polish dairy cows using data mining methods
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Krzysztof Adamczyk | Daniel Zaborski | Wilhelm Grzesiak | Joanna Makulska | Wojciech Jagusiak | D. Zaborski | W. Grzesiak | K. Adamczyk | W. Jagusiak | J. Makulska
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