Texas Instruments TINSPIRE Reference Guide - Page 70

Catalog &gt, mRowAdd, MultReg, Output variable, Description, Regression coefficients

Page 70 highlights

mod( ) mod(Value1, Value2) ⇒ expression mod(List1, List2) ⇒ list mod(Matrix1, Matrix2) ⇒ matrix Returns the first argument modulo the second argument as defined by the identities: mod(x,0) = x mod(x,y) = x - y floor(x/y) When the second argument is non-zero, the result is periodic in that argument. The result is either zero or has the same sign as the second argument. If the arguments are two lists or two matrices, returns a list or matrix containing the modulo of each pair of corresponding elements. Note: See also remain(), page 83 mRow( ) mRow(Value, Matrix1, Index) ⇒ matrix Returns a copy of Matrix1 with each element in row Index of Matrix1 multiplied by Value. mRowAdd() mRowAdd(Value, Matrix1, Index1, Index2) ⇒ matrix Returns a copy of Matrix1 with each element in row Index2 of Matrix1 replaced with: Value · row Index1 + row Index2 MultReg MultReg Y, X1[,X2[,X3,...[,X10]]] Calculates multiple linear regression of list Y on lists X1, X2, ..., X10. A summary of results is stored in the stat.results variable. (See page 97.) All the lists must have equal dimension. For information on the effect of empty elements in a list, see "Empty (void) elements" on page 131. Output variable stat.RegEqn stat.b0, stat.b1, ... stat.R2 y stat. List stat.Resid Description Regression Equation: b0+b1·x1+b2·x2+ ... Regression coefficients Coefficient of multiple determination yList = b0+b1·x1+ ... Residuals from the regression 64 TI-Nspire™ Reference Guide Catalog > Catalog > Catalog > Catalog >

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64
TI-Nspire™ Reference Guide
mod()
Catalog >
mod(
Value1
,
Value2
)
expression
mod(
List1
,
List2
)
list
mod(
Matrix1
,
Matrix2
)
matrix
Returns the first argument modulo the second argument as defined
by the identities:
mod(x,0) = x
mod(x,y) = x
-
y floor(x/y)
When the second argument is non-zero, the result is periodic in that
argument. The result is either zero or has the same sign as the second
argument.
If the arguments are two lists or two matrices, returns a list or matrix
containing the modulo of each pair of corresponding elements.
Note:
See also
remain()
, page 83
mRow()
Catalog >
mRow(
Value
,
Matrix1
,
Index
)
matrix
Returns a copy of
Matrix1
with each element in row
Index
of
Matrix1
multiplied by
Value
.
mRowAdd()
Catalog >
mRowAdd(
Value
,
Matrix1
,
Index1
,
Index2
)
matrix
Returns a copy of
Matrix1
with each element in row
Index2
of
Matrix1
replaced with:
Value
·
row
Index1
+ row
Index2
MultReg
Catalog >
MultReg
Y
,
X1
[
,
X2
[,
X3
,…
[
,
X10
]]]
Calculates multiple linear regression of list
Y
on lists
X1
,
X2
,
,
X10
.
A summary of results is stored in the
stat.results
variable. (See page
97.)
All the lists must have equal dimension.
For information on the effect of empty elements in a list, see “Empty
(void) elements” on page 131.
Output variable
Description
stat.RegEqn
Regression Equation: b0+b1
·
x1+b2
·
x2+ ...
stat.b0, stat.b1, ...
Regression coefficients
stat.R
2
Coefficient of multiple determination
stat.
y
List
y
List = b0+b1
·
x1+ ...
stat.Resid
Residuals from the regression