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AMMI methodology in soybean: Cluster analysis with bootstrap resampling in genetic divergence and stability

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Academic year: 2019

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Table 1: AMMI analysis by the Gollob (1968) criterion for allocating degrees of freedom to principal components of interaction
Figure 1 shows the genotype performances on grain yield (GY), which is a character of great importance for  cul-tivar recommendation
Figure 1: Performance of 44 soybean cultivars in relation to the first principal component of the interaction for the GY character.
Figure 3: Dendrogram of Euclidean distances between the bootstrap scores of AMMI 2  genotype markers for grain yield data, in kg ha -1 .

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