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In syntax of linear model lm(formula,dat...
Q.
In syntax of linear model lm(formula,data,..), data refers to ______
A.
Matrix
B.
Vector
C.
Array
D.
List
Answer» B. Vector
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In syntax of linear model lm(formula,data,..), data refers to
In syntax of linear model lm(formula,data,..), data refers to
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