Visualizing the Yield Pattern for Multi Class Classification

M. M. Noor, S. Jusoh
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引用次数: 1

Abstract

This research attempts to generate an automatic prediction model in a hard disk media manufacturing process. This is to be done without human visual interpretation. Our research demonstrates that it can be achieved by visualizing the historical temporal data pattern generated from the inspection machine. From there, the data pattern is transformed and mapped into machine learning algorithm for training. In this paper, we have introduced the pattern visualization technique with trinary and quinary number and compared them with our previous binary pattern visualization technique. This is to deal with multi class classification. The result implied that, the performance of the multi class classification can be improved when all class instances were made higher in quantity and balance. Quinary pattern visualization techniques performed better compared with binary and trinary patterns when the multi class instances were made balanced and were significantly at higher quantity.
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多类别分类的收益模式可视化
本研究试图建立一个硬盘介质制造过程中的自动预测模型。这是在没有人类视觉解释的情况下完成的。我们的研究表明,它可以通过可视化从检测机产生的历史时间数据模式来实现。然后,将数据模式转换并映射到机器学习算法中进行训练。本文介绍了三位数和五位数的图形显示技术,并与以往的二进制图形显示技术进行了比较。这是为了处理多类分类。结果表明,提高分类实例的数量和平衡度可以提高多类分类的性能。当多类实例平衡且数量显著增加时,五元模式的可视化效果优于二元模式和三元模式。
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