Detection of cows with insemination problems using selected classification models |
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Authors: | Wilhelm Grzesiak Daniel Zaborski Piotr Sablik Agata ?ukiewicz Andrzej Dybus Iwona Szatkowska |
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Affiliation: | Department of Ruminants Science, West Pomeranian University of Technology in Szczecin, Doktora Judyma 10, 71-460 Szczecin, Poland |
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Abstract: | In the present study, the detection of cows with artificial insemination (AI) difficulties using selected statistical and machine learning methods is presented. Cows were divided into two classes: those that conceived after one or two services (“GOOD”) and those that required more than two services per conception (“POOR”). The best performance was exhibited by one of the artificial neural networks (ANN) and the multivariate adaptive regression spline (MARS) method (AIC, BIC, RMS and accuracy); whereas logistic regression (LR) and classification functions (CF) were of somewhat lower quality. The detection of cows with AI difficulties, performed on the basis of the test set comprising new instances, showed that the ANN and MARS were more precise in comparison with the statistical methods. Sensitivity and specificity were over 85% for the perceptron with two hidden layers (MLP2) and MARS and approximately 80% or lower for LR and CF. From among variables determining the AI category, the average calving interval and cow body condition index were the most important. Other significant variables were lactation number, pregnancy length, sex of calf from previous calving and cow age. The prognoses obtained using ANN and MARS can be used for the appropriate preparation of cows for AI. |
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Keywords: | LR, logistic regression ANN, artificial neural network CF, classification function MARS, multivariate adaptive regression spline LN, linear network MLP1, perceptron with one hidden layer MLP2, perceptron with two hidden layers RBF, network with radial basic function |
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