Management of Semiconductor Manufacture--A Discussion on Multi-class Classification of Imbalanced Structure of IC Package Database

Y. Hung, K. Yu, C.P. Huang
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Abstract

In the past, for the imbalance class distribution, in most cases the representative class data were chosen by sampling, in order to improve the efficacy of the class distribution model in predicting the minority of classes in the imbalanced data set. The research attempts to present a new pre-processing method of data¡Xthe Orthogonal Transformation Method (OTM), which, by integrating the conceptions of Taguchi Orthogonal Arrays, without changing the original data structure, improves the Orthogonality of the data structure by adding variables so that the accuracy of the automatic class distribution database of IC products of imbalanced data set is improved, the range of information retrieval is accurately narrowed, the efficiency and the quality of retrieval can be exalted to a great extent and thus the performance of IC design is upgraded. For the first year, the programs to be implemented and expected results are: Orthogonal Transformation Method, programming and performance evaluation.
半导体制造管理——IC封装数据库不平衡结构的多类分类探讨
在过去,对于不平衡的类分布,大多数情况下都是通过抽样选择具有代表性的类数据,以提高类分布模型对不平衡数据集中少数类的预测效果。本研究尝试提出一种新的数据预处理方法——正交变换法(OTM),该方法在不改变原有数据结构的前提下,通过整合田口正交阵列的概念,通过增加变量来提高数据结构的正交性,从而提高不平衡数据集集成电路产品自动分类分布数据库的准确性,准确地缩小信息检索范围。在很大程度上提高了检索的效率和质量,从而提高了集成电路设计的性能。第一年要实施的方案和预期结果是:正交变换法、规划和绩效评价。
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