Consistent and asymptotically normal PLS estimators for linear structural equations

Computational Statistics and Data Analysis - Tập 81 - Trang 10-23 - 2015
Theo K. Dijkstra1, Jörg Henseler2
1University of Groningen, NL, Department of Economics and Econometrics, The Netherlands
2University of Twente, NL, Department of Design, Production and Management, The Netherlands

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