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Egg Hatchability Prediction by Multiple Linear Regression and Artificial Neural Networks

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Academic year: 2019

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Figure 1 - Neural architecture of the system used to predict hatchability.
Table 1  – Evaluation criteria of estimate quality.
Figure 2A shows the variation of hatchability predictions for the Test of the proposed models

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