Automatic Clustering Of Wafer Spatial Signatures

DAC '13: The 50th Annual Design Automation Conference 2013 Austin Texas May, 2013(2013)

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摘要
In this paper, we propose a methodology based on unsupervised learning for automatic clustering of wafer spatial signatures to aid yield improvement. Our proposed methodology is based on three steps. First, we apply sparse regression to automatically capture wafer spatial signatures by a small number of features. Next, we apply an unsupervised hierarchical clustering algorithm to divide wafers into a few clusters where all wafers within the same cluster are similar. Finally, we develop a modified L-method to determine the appropriate number of clusters from the hierarchical clustering result. The accuracy of the proposed methodology is demonstrated by several industrial data sets of silicon measurements.
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关键词
elemental semiconductors,pattern clustering,regression analysis,semiconductor technology,silicon,sparse matrices,unsupervised learning,L-method,Si,industrial data sets,sparse regression,unsupervised hierarchical clustering,unsupervised learning,wafer spatial signatures clustering,
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