GROUP NO-8
BHAVI SHAH
ROLL NO-2013007
Linear regression models are
often fitted using the least squares approach,
Linear regression analysis
is a technique used for predicting the unknown value of a variable from the
known value of another variable
More efficiency if X and Y are two related variables then
linear regression analysis helps us to imagine the value of Y for a given value
of X or imagine the value of x for a given value of y
For example age of a human being and maturity are related variables.
Then linear regression analyses can predict level of maturity given age of a
human being.
The linear regression is based on two variable dependent and independent
The linear regression is based on two variable dependent and independent
Dependent
variable-The variable whose
value is to be predicted is known as the dependent
variable
Independent
variable-the one whose known value is
used for prediction is known as the independent
variable
THERE
ARE TWO LINE OF REGRESSION
Y
ON X and X ON Y
The line of regression of Y
on X is given by Y = a + Bx this
is used to know the unknown value of variable Y when value of variable X is
known.
The line of regression of X
on Y is given by X = c + Dy which is
used to predict the unknown value of variable X using the known value of
variable Y.
Linear regression does
not test whether data is linear. It finds the slope and the intercept relation between the independent and dependent
variable can be best explained by a straight line.
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