Emmanuel Yashchin
IWISQC 2010
We consider situations where the observed data is of categorical type and the underlying parameters are subject to abrupt changes of unpredictable magnitude at unknown points in time. We derive change-point detection schemes based on generalized likelihood ratio tests and develop procedures for their design and analysis. We also discuss problems related to parameter estimation for categorical data in the presence of abrupt changes. We illustrate use of the proposed methodology for fault characterization and monitoring in the semiconductor industry.
Emmanuel Yashchin
IWISQC 2010
Emmanuel Yashchin, Baozhen Li, et al.
IRPS 2012
Mary Y.L. Wisniewski, Emmanuel Yashchin, et al.
IEEE Transactions on Computer-Aided Design of Integrated Circuits and Systems
Betty J. Flehinger, Benjamin Reiser, et al.
Lifetime Data Analysis