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      Comparison of predictive performance of data mining algorithms in predicting body weight in Mengali rams of Pakistan

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          Abstract

          ABSTRACT The present study aimed at comparing predictive performance of some data mining algorithms (CART, CHAID, Exhaustive CHAID, MARS, MLP, and RBF) in biometrical data of Mengali rams. To compare the predictive capability of the algorithms, the biometrical data regarding body (body length, withers height, and heart girth) and testicular (testicular length, scrotal length, and scrotal circumference) measurements of Mengali rams in predicting live body weight were evaluated by most goodness of fit criteria. In addition, age was considered as a continuous independent variable. In this context, MARS data mining algorithm was used for the first time to predict body weight in two forms, without (MARS_1) and with interaction (MARS_2) terms. The superiority order in the predictive accuracy of the algorithms was found as CART > CHAID ≈ Exhaustive CHAID > MARS_2 > MARS_1 > RBF > MLP. Moreover, all tested algorithms provided a strong predictive accuracy for estimating body weight. However, MARS is the only algorithm that generated a prediction equation for body weight. Therefore, it is hoped that the available results might present a valuable contribution in terms of predicting body weight and describing the relationship between the body weight and body and testicular measurements in revealing breed standards and the conservation of indigenous gene sources for Mengali sheep breeding. Therefore, it will be possible to perform more profitable and productive sheep production. Use of data mining algorithms is useful for revealing the relationship between body weight and testicular traits in describing breed standards of Mengali sheep.

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          A method of choosing multiway partitions for classification and decision trees

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            Use of RSM and CHAID data mining algorithm for predicting mineral nutrition of hazelnut

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              Modeling some mineral nutrient requirements for micropropagated wild apricot shoot cultures

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                Author and article information

                Contributors
                Role: ND
                Role: ND
                Role: ND
                Role: ND
                Journal
                rbz
                Revista Brasileira de Zootecnia
                R. Bras. Zootec.
                Sociedade Brasileira de Zootecnia (Viçosa, MG, Brazil )
                1806-9290
                November 2017
                : 46
                : 11
                : 863-872
                Affiliations
                [3] Igdir orgnameIgdir University orgdiv1Agricultural Faculty orgdiv2Department of Agricultural Economics Turkey
                [1] Bingol orgnameBingöl University orgdiv1Agricultural Faculty orgdiv2Department of Animal Science Turkey
                [4] Quetta Balochistan orgnameUniversity of Balochistan orgdiv1Center for Advanced Studies in Vaccinology and Biotechnology Pakistan
                [2] Igdir orgnameIgdir University orgdiv1Agricultural Faculty orgdiv2Department of Animal Science Turkey
                Article
                S1516-35982017001100863
                10.1590/s1806-92902017001100005
                440d55ee-37bd-4004-8814-82652e8273f3

                This work is licensed under a Creative Commons Attribution 4.0 International License.

                History
                : 11 November 2016
                : 08 June 2017
                Page count
                Figures: 0, Tables: 0, Equations: 0, References: 37, Pages: 10
                Product

                SciELO Brazil


                decision tree,MARS algorithm,ANN,artificial intelligence,data mining

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