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Comparison of Machine Learning Algorithms for Shelter Animal Classification

机译:庇护动物分类的机器学习算法比较

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摘要

Establishing characteristics of the shelter animal which determine its outcome is an important task for solving the problem of homeless and abused animals. The main goal of this research was to identify which machine learning algorithm can provide the most accurate prediction of the outcome for an animal, based on its main features. The first step in this research was the transformation of data into a proper form for the implementation of the algorithms. Furthermore, several machine learning algorithms were trained in order to achieve the best possible classification results. The results of the algorithms were compared and the most suitable algorithms were selected based on their performance metrics. This research proposes using a combination of multiple data preprocessing techniques, imbalanced data and machine learning algorithms for predicting the outcome for shelter animal based on its characteristics. K-Nearest Neighbors and C4.5 algorithms provided the best classification results in this research.
机译:建立能够确定其结果的庇护动物的特性是解决无家可归和受虐待动物问题的重要任务。这项研究的主要目的是基于动物的主要特征,确定哪种机器学习算法可以为动物的结果提供最准确的预测。这项研究的第一步是将数据转换为用于实现算法的适当形式。此外,对几种机器学习算法进行了训练,以实现最佳的分类结果。比较了算法的结果,并根据其性能指标选择了最合适的算法。这项研究建议结合多种数据预处理技术,不平衡数据和机器学习算法,根据其特征预测庇护动物的结果。 K最近邻和C4.5算法在这项研究中提供了最好的分类结果。

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