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Accounting for heterogeneous variances in multitrait evaluation of Jersey type traits

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Academic year: 2021

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Figure

Table 1. Numbers of cows and bulls represented in the data by birth year group for animals born 1981 and later
Table 2. Correlations within birth year for bulls between parent average from truncated data and EBV from full data with and without heterogeneous variance (HV) adjustment
Table 5. Differences between bull EBV calculated with and without heterogeneous variance (HV) adjustment, and their SD by reliability of final score
Table 7. Differences between bull EBV calculated with and without heterogeneous variance (HV) adjustment and their SD by mean daughter final score
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