Ensemble learning based on relative accuracy approach and diversity teams

Mahmoud B. Rokaya, Kholod D. Alsufiani
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Abstract

Ensemble learning, which involves combining the opinions of multiple experts to arrive at a better result, has been used for centuries. In this work, a review of the major voting methods in ensemble learning is explored. This work will focus on a new method for combining the results of individual learners. The method depends on the relative accuracy and diversity of teams. Instead of trying to assign weight to each different trainer, the concept of diversity teams is presented. Each team will vote as one player; however, the individual accuracies of each learner still be implemented. The concept of relaxing parameters that deal with each team as one player is presented. Our experiments demonstrate that traditional ensemble voting methods outperform individual learners. There is a limit to the superiority of the ensemble learner that any ensemble learner cannot go beyond. The proposed voting method gives the same results as the traditional ensemble voting methods, however, a different diversity of the proposed method from the traditional voting method or for different values of the relaxing parameter can be achieved.
基于相对准确性方法和多样性团队的集合学习
集合学习是指综合多位专家的意见以得出更好的结果,这种方法已经应用了几个世纪。在这项工作中,我们对集合学习中的主要投票方法进行了回顾。这项工作将重点关注一种结合单个学习者结果的新方法。该方法取决于团队的相对准确性和多样性。我们提出了多样性团队的概念,而不是试图给每个不同的训练者分配权重。每个团队将作为一个选手进行投票;但是,每个学习者的个人准确度仍将得到落实。我们提出了放宽参数的概念,将每个团队视为一个参与者。我们的实验证明,传统的集合投票方法优于单个学习者。集合学习器的优越性有一个极限,任何集合学习器都不能超越这个极限。建议的投票方法与传统的集合投票方法结果相同,但是,建议的方法与传统投票方法或不同的松弛参数值可以实现不同的多样性。
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