1ICAR-Indian Institute of Oilseeds Research, Hyderabad
2ICAR-Indian Institute of Rice Research, Hyderabad
3ICAR-National Institute of Veternary Epidomology and Disease Informatics, Bengaluru
4ICAR-Directorate of Groundnut Research, Junagadh, Gujarat
5ICAR-Indian Institute of Wheat and Barley Research, Karnal
Regional Research Station, ICAR-Directorate of Groundnut Research, Anantapur
*Corresponding author’s e-mail: ajaygpb@yahoo.co.in
Online published on 16 August, 2021.
Outliers are a common phenomenon when genotypes are evaluated over locations and years under field conditions and such outliers makes studying genotype-environment Interactions difficult. Robust-AMMI models which use a combination of robust fit and robust SVD approaches, denoted as 'R-AMMI-RLM' have been proposed to study GEI in presence of such outliers. Instead of 'R-AMMI-RLM' we propose a model which uses a combination of linear fit and robust SVD to study GEI in presence of outliers and we denote this model as 'R-AMMI-LM'. Here we prove that 'R-AMMI-LM' was superior over 'R-AMMI-RLM' as it recorded very low residual sum of squares and low RMSE values. Thus proposed, 'R-AMMI-LM' model could explain the GEI more precisely even in presence of outliers.
Genotype x environment interactions (GEI), R-AMMI-RLM, R-AMMI-LM, Outliers