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Matrix / Euclidean vector / Vector space / Array data type / Array programming / R / Column space / Principal component analysis / Algebra / Mathematics / Linear algebra
Date: 2003-09-09 07:42:07
Matrix
Euclidean vector
Vector space
Array data type
Array programming
R
Column space
Principal component analysis
Algebra
Mathematics
Linear algebra

Notes on the use of R for psychology experiments and questionnaires Jonathan Baron Department of Psychology, University of Pennsylvania Yuelin Li Center for Outcomes Research, Children’s Hospital of Philadelphia ∗

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