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Efficient spatial pattern analysis for variation decomposition via robust sparse regression
Wangyang Zhang
, Karthik Balakrishnan
, Xin Li
, Duane S. Boning
, Sharad Saxena
, Andrzej Strojwas
, Rob A. Rutenbar
Siebel School of Computing and Data Science
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Keyphrases
Sparse Regression
100%
Variation Decomposition
100%
Spatial Pattern Analysis
100%
Spatially Correlated
75%
Regression Algorithm
50%
Correlated Variation
50%
Order of Magnitude
25%
Computation Time
25%
Result-oriented
25%
Systematic Variation
25%
Linear Combination
25%
Process Variation
25%
Regression Techniques
25%
Fast numerical Methods
25%
Variation Pattern
25%
Measurement Outliers
25%
Engineering
Pattern Detection
100%
Experimental Result
50%
Linear Combination
50%
Computational Time
50%
Regression Technique
50%
Direct Implementation
50%
Process Variation
50%
Computer Science
Spatial Pattern Analysis
100%
Experimental Result
50%
Linear Combination
50%
Computational Time
50%
Process Variation
50%
Direct Implementation
50%