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The Random Forest is a powerful classification method because of the following. First, errors are minimized as a result of a random forest, synthesizing through training (learner). The second, random choice at every stage in the Random Forest will reduce the correlation between the learners in the synthesis of the results. In addition, we also found that the total error of layered forest trees depends on their individual errors in forest trees, as well as the correlation between the trees. The article uses the wrapper model (Christopher Tong, 2000) with the objective function for the evaluation, Random Forest algorithm is shown in figure 5.
https://www.edusoft.ro/brain/index.php/brain/article/view/620/680
Random Forest, anthropometry, 3D-model, data classification, artificial intelligence
Random Forest, anthropometry, 3D-model, data classification, artificial intelligence
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