The swinging pendulum Mrs. Hanrahan's precalculus class collected data on the length (in centimeters) of a pendulum and the time (in seconds) the pendulum took to complete one back-and-forth swing (called it's period). The theoretical relationship between a pendulum's length and its period is

period=2πglength

where gis a constant representing the acceleration due to gravity (in this case, g=980cm/s2g=980cm/s2). Here is a graph of the period versus length, length, along with output from a linear regression analysis using these variables.

a. Give the equation of the least-squares regression line. Define any variables you use.

b. Use the model from part (a) to predict the period of a pendulum with length 80cm.

Short Answer

Expert verified

a). The equation of the least-squares regression line is y^=-0.08594+0.209999x.

b). The expected period is 1.7923 seconds.

Step by step solution

01

Part (a) Step 1: Given Information

Given data:

02

Part (a) Step 2: Explanation

Least square regression line's general equation

y^=b0+b1x

In the row "constant" and the column "Coef" of the computer's output, the calculated constant b0is mentioned.

b0=-0.08594

The computed slope b1 is listed in the row "sqrt(length)" and the column "Coef" of the computer output.

b1=0.209999
03

Part (a) Step 3: Explanation

Putting the value of b0and b1:

y^=b0+b1x

y^=-0.08594+0.209999x

The square root of the length is x, and the period is y.

y^=-0.08594+0.209999x

Where x denotes length and y denotes time.

04

Part (b) Step 1: Given Information

Given data:

05

Part (b) Step 2: Explanation

From the part (a)

y^=-0.08594+0.209999x

Where xdenotes length and ydenotes time.

Using the pendulum length as a variable in the equation

y^=-0.08594+0.20999980

y^=1.7923

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