Comparison of the Predictive Capabilities of Several Data Mining Algorithms and Multiple Linear Regression in the Prediction of Body Weight by Means of Body Measurements in the Indigenous Beetal Goat of Pakistan
Tarih
2017Yazar
Eyduran, Ecevit and Zaborski, Daniel and Waheed, Abdul and Celik, Senol
and Karadas, Koksal and Grzesiak, Wilhelm
Üst veri
Tüm öğe kaydını gösterÖzet
The main goal of this study was to establish the algorithm with the best
predictive capability among classification and regression trees (CART),
chi-square automatic interaction detector (CHAID), radial basis function
(RBF) networks and multilayer perceptrons with one (MLP1) and two (MLP2)
hidden layers in body weight (BW) prediction from selected body
measurements in the indigenous Beetal goat of Pakistan Moreover, the
results obtained with the data mining algorithms were compared with
multiple linear regression (MR). A total of 205 BW records including one
categorical (sex) and six contmuous (head girth above eyes, neck length,
diagonal body length, belly sprung, shank circumference and rump height)
predictors were utilized The Pearson correlation coefficient between the
actual and predicted BW (r) and root-mean-square error (RMSE) were used
as goodness-of-fit criteria, among others A 10-fold-cross validation was
applied to tram and test CART, CHAID and ANN and to estimate MR
coefficients. The most significant BW predictors were sex, rump height,
shank circumference and head girth The r value ranged from 0.82 (MLPI)
to 0 86 (RBF and MR) The lowest RMSE (3.94 kg) was found for RBF and the
highest one (4.49 kg) for MLPI In general, the applied algorithms quite
accurately predicted BW of Beetal goats, which may be helpful in making
decisions upon standards, favourable drug doses and required feed amount
for animals. The ascertainment of the body measurements associated with
BW using data mining algorithms can be considered as an indirect
selection criterion for future goat breeding studies.
Koleksiyonlar
DSpace@BİNGÖL by Bingöl University Institutional Repository is licensed under a Creative Commons Attribution-NonCommercial-NoDerivs 4.0 Unported License..