DESCRIPTION OF THE RELATIONSHIPS BETWEEN DIFFERENT PLANT CHARACTERISTICS IN SOYBEAN USING MULTIVARIATE ADAPTIVE REGRESSION SPLINES (MARS) ALGORITHM
Abstract
The aim of this study was to reveal the relationships between several
morphological characteristics of the soybean (Glycine max (L.) Men.)
plants in the year 2014. For this aim, plant height (PH), first pod
height (FPH), branch number (BN), number of nodes (NN), pod number per
plant (PNP), seed number per pod (SNP), 1000-seed weight (1000SW), yield
per decare (YD) and harvest index (HI) were measured. Five different
MARS models were developed for the plant height, first pod height, pod
number, harvest index and yield per decare characteristics. The
constructed models were evaluated based on the criteria of minimum
generalized cross-validation (GCV), SDratio, RMSE, AIC, AICc and maximum
coefficient of determination (R-2) in predictive performance. The R-2
values of the MARS models were determined to be 0.902, 0.924, 0.949,
0.987 and 0.998, respectively. For the prediction of PH, FPH and HI, the
second degree interaction model was determined to be the most suitable
model. For predicting PNP and YD, the third degree interaction MARS
model was determined to be the best model. The dependent variables
considered here was predicted with a high accuracy by all models
established with the MARS algorithm.
As a result, application of the MARS algorithm may allow plant breeders
to obtain influential clues in selecting promising soybean varieties.
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