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Statistics / Mathematics / Multivariate statistics / Number theory / Normal distribution / Distribution / Factor analysis / Principal component analysis
Date: 2015-07-01 09:59:09
Statistics
Mathematics
Multivariate statistics
Number theory
Normal distribution
Distribution
Factor analysis
Principal component analysis

WORKING PAPER N° How important is innovation? A Bayesian factor-augmented productivity model on panel data

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