IEEJ Transactions on Industry Applications
Online ISSN : 1348-8163
Print ISSN : 0913-6339
ISSN-L : 0913-6339
Paper
Analysis Methodology for Semiconductor Yield by Data Mining
Hidetaka TsudaHidehiro ShiraiMasahiro TerabeKazuo HashimotoAyumi Shinohara
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2009 Volume 129 Issue 12 Pages 1201-1211

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Abstract

The conventional semiconductor yield analysis is a hypothesis verification process, which heavily depends on engineers' knowledge. Data mining methodology, on the other hand, is a hypothesis discovery process that is free from this constraint. This paper proposes a data mining method for semiconductor yield analysis, which consists of the following two phases: discovering hypothetical failure causes by regression tree analysis and verifying the hypotheses by visualizing the measured data based on engineers' knowledge. It is shown, through experiment under the real environment, that the proposed method detects hypothetical failure causes, which were considered practically impossible to detect, and that yield improvement is achieved by taking preventive actions based on the detected failure causes.

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© 2009 by the Institute of Electrical Engineers of Japan
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