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Feature selection and feature design for machine learning indirect test: a tutorial review
2019
2019 16th International Conference on Synthesis, Modeling, Analysis and Simulation Methods and Applications to Circuit Design (SMACD)
Machine learning indirect test replaces costly specification measurements by simpler signatures and use modern learning algorithms to map these signatures to specifications. Defining a set of relevant signatures that appropriately captures the circuit performance degradation mechanisms is then a key point for enabling machine learning indirect test. In this tutorial we review some methodologies for selecting and designing such a set of information rich signatures.
doi:10.1109/smacd.2019.8795292
dblp:conf/smacd/BarraganL19
fatcat:hz6z6n6paffcrhxg7f7abnyucm