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Machine Learning algorithms applied to the classification of robotic soccer formations and opponent teams

机译:机器学习算法应用于机器人足球队和对手球队的分类

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Machine Learning (ML) and Knowledge Discovery (KD) are research areas with several different applications but that share a common objective of acquiring more and new information from data. This paper presents an application of several ML techniques in the identification of the opponent team and also on the classification of robotic soccer formations in the context of RoboCup international robotic soccer competition. RoboCup international project includes several distinct leagues were teams composed by different types of real or simulated robots play soccer games following a set of pre-established rules. The simulated 2D league uses simulated robots encouraging research on artificial intelligence methodologies like high-level coordination and machine learning techniques. The experimental tests performed, using four distinct datasets, enabled us to conclude that the Support Vector Machines (SVM) technique has higher accuracy than the k-Nearest Neighbor, Neural Networks and Kernel Naïve Bayes in terms of adaptation to a new kind of data. Also, the experimental results enable to conclude that using the Principal Component Analysis SVM achieves worse results than using simpler methods that have as primary assumption the distance between samples, like k-NN.
机译:机器学习(ML)和知识发现(KD)是具有几种不同应用程序的研究领域,但它们的共同目标是从数据中获取更多和新的信息。在RoboCup国际机器人足球比赛的背景下,本文介绍了几种ML技术在识别对手球队以及在机器人足球编队分类中的应用。 RoboCup国际项目包括几个不同的联赛,这些联赛是由不同类型的真实或模拟机器人按照一组预先建立的规则进行足球比赛所组成的。模拟2D联盟使用模拟机器人鼓励对诸如高层协调和机器学习技术之类的人工智能方法进行研究。使用四个不同的数据集进行的实验测试使我们得出结论,在适应新型数据方面,支持向量机(SVM)技术比k最近邻居,神经网络和朴素贝叶斯算法具有更高的准确性。此外,实验结果还可以得出结论,与使用主要假设样本之间距离的简单方法(例如k-NN)相比,使用主成分分析SVM可获得较差的结果。

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