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Cluster-based instance selection for machine classification

机译:基于集群的实例选择以进行机器分类

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Instance selection in the supervised machine learning, often referred to as the data reduction, aims at deciding which instances from the training set should be retained for further use during the learning process. Instance selection can result in increased capabilities and generalization properties of the learning model, shorter time of the learning process, or it can help in scaling up to large data sources. The paper proposes a cluster-based instance selection approach with the learning process executed by the team of agents and discusses its four variants. The basic assumption is that instance selection is carried out after the training data have been grouped into clusters. To validate the proposed approach and to investigate the influence of the clustering method used on the quality of the classification, the computational experiment has been carried out.
机译:在有监督的机器学习中,实例选择(通常称为数据约简)旨在确定应保留训练集中的哪些实例,以便在学习过程中进一步使用。实例选择可以提高学习模型的功能和泛化属性,缩短学习过程的时间,或者可以帮助扩展到大型数据源。本文提出了一种基于集群的实例选择方法,其中由代理团队执行学习过程,并讨论了它的四个变体。基本的假设是在训练数据被分组为集群之后执行实例选择。为了验证所提出的方法并研究聚类方法对分类质量的影响,已进行了计算实验。

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