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Supervised learning methods in sort yield modeling

机译:排序产量建模中的监督学习方法

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Supervised learning consists of a large variety of methods that explore data relationships. The techniques described in this paper cover those methods that are robust and relevant to semiconductor data, sufficiently simple for use by non-statisticians, and proven effective in yield modeling. We first apply the classification and regression tree (CART) technique to detect the source of yield variations from electrical parameters and process equipment. Yield prediction models, including multinomial logistic regression (MNL) and the random forest (RF) method, will also be discussed. Case studies demonstrate the strength of combining traditional regression with machine learning techniques.
机译:监督学习由多种探索数据关系的方法组成。本文介绍的技术涵盖了那些健壮且与半导体数据相关的方法,这些方法对于非统计人员来说足够简单,并且在产率建模中被证明是有效的。我们首先应用分类和回归树(CART)技术来检测电气参数和工艺设备的产量变化来源。还将讨论产量预测模型,包括多项逻辑回归(MNL)和随机森林(RF)方法。案例研究证明了将传统回归与机器学习技术相结合的优势。

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