TY  - JOUR
T1  - Genetic Variability and Factor Analysis in Rapeseed (<i>Brassica Rapa</i> L.)
Germplasm Collection for Yield Related Traits
AU - Ara, Asmat AU - Rashid, Munezeh AU - Rather, M.A. AU - Dar, Z. A. AU - Sofi, P.A. AU - Gull, Musharib 
JO  - Agricultural Journal
VL  - 14
IS  - 4
SP  - 66
EP  - 69
PY  - 2019
DA  - 2001/08/19
SN  - 1816-9155
DO  - aj.2019.66.69
UR  - https://makhillpublications.co/view-article.php?doi=aj.2019.66.69
KW  - eigen values
KW  -variation
KW  -trait
KW  -principal component
KW  -Genotype
KW  -euclidean distances
AB  - The Principal Component Analysis (PCA), one of multivariate analysis methods elucidates among
a set of the traits which ones are decisive in genotypic differentiation and selection. The present study was
undertaken in rabi 2013-14 at three locations. The collection comprising of 10 genotypes including two checks
namely SS-1 and farmer&#146;s variety was studied using factor analysis. Ten quantitative traits related to seed yield
namely days to flowering, days to maturity, plant height, primary branches plant-1, length of main raceme (cm),
number of siliquae on main raceme, number of siliqua/plant, number of seeds siliqua-1, 1000-seed weight and
seed yield/plant. Analysis of variance revealed that there were significant differences between checks and
accessions between accessions and between checks for all the traits. It indicated presence of substantial amount
of variation among the test entries. The factor analysis was based on Pearson correlation matrix and euclidean
distances. Total variance explained by the first principal component was 67.03% and the variation explained
by the second component with 10.6%. Latent roots (eigen values) are between 6.703 for the first and 1.06 for
the second. Plant height and 1000-seed weight were the important traits in the first principal component.
Primary branches per plant and number of siliqua on main raceme were the important traits in second principal
component.
ER  - 