College of Natural Sciences, University of Rzeszów, Rzeszow, Poland.
Institute of Technical Engineering, State University of Technology and Economics in Jarosław, Jarosław, Poland.
PLoS One. 2022 Jul 26;17(7):e0271340. doi: 10.1371/journal.pone.0271340. eCollection 2022.
The aim of this study was to evaluate factors influencing the performance of Hucul horses and to develop a prediction model, based on artificial neural (AI) networks for predict horses' classification, relying on their performance value assessment during the annual Hucul championships. The Feedforward multilayer artificial neural networks, learned using supervised methods and implemented in Matlab programming environment were applied. Artificial neural networks with one and two hidden layers with different numbers of neurons equipped with a tangensoidal transition function, learned using the Levenberg-Marqiuardt method, were applied for the analysis. Although results showed that 7-year-old horses had the highest number of wins, the 11-year-old horses were observed to have had the best results when accessed relative to the total number of horses for a given year. Although horses from the Hroby line had the most starts in 2009-2019, those of the Goral line had the most wins. While predicting the horses' efficiency for the first 6 positions during the utility championship, the neural network consisting of 12 neurons in hidden layer performed the best, obtaining 69,65% efficiency. The highest horse efficiency classification was obtained for the four-layered network with 12 and 8 neurons in the hidden layers. An 81.3% efficiency was obtained while evaluating the correctness of the prediction for horses occupying positions 1 to 3. The use of AI seems to be indispensable in assessing the performance value of Hucul horses. It is necessary to determine the relation between horses' traits and their utility value by means of trait selection methods, accompanied with expert advice. It is also advisable to conduct research using deep neural networks.
本研究旨在评估影响乌克兰走马表演性能的因素,并开发一个预测模型,该模型基于其在年度乌克兰走马锦标赛期间的性能评估值,预测马匹的分类。应用了前馈多层人工神经网络,采用有监督的方法学习,并在 Matlab 编程环境中实现。应用了具有不同神经元数量的一层和两层隐藏层的人工神经网络,配备了双曲正切转移函数,使用 Levenberg-Marqiuardt 方法进行学习,用于分析。虽然结果表明 7 岁的马获胜次数最多,但与特定年份的总马匹数量相比,11 岁的马表现最佳。虽然 Hroby 系的马在 2009-2019 年的参赛次数最多,但 Goral 系的马获胜次数最多。在预测实用锦标赛前 6 名的马匹效率时,由隐藏层中具有 12 个神经元的神经网络表现最佳,效率为 69.65%。在评估前 3 名位置的马匹预测正确性时,获得了最高的马效率分类,使用具有 12 和 8 个神经元的四层网络获得了 81.3%的效率。人工智能的使用似乎在评估乌克兰走马的性能值方面是不可或缺的。需要通过特征选择方法,结合专家建议,确定马的特征与其使用价值之间的关系。使用深度神经网络进行研究也是明智的。