Question

linear regression example

linear regression example

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Answer #1

Following is the simple example of linear regression .

Let be weight in kilograms and be height in centimetres.

we know that height and weight are correlated, we can write mathematically as,

where ,

is the parameters and is error which is normally distributed with mean 0.

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