/*! This file is auto-generated */ .wp-block-button__link{color:#fff;background-color:#32373c;border-radius:9999px;box-shadow:none;text-decoration:none;padding:calc(.667em + 2px) calc(1.333em + 2px);font-size:1.125em}.wp-block-file__button{background:#32373c;color:#fff;text-decoration:none} Q8BSC In Exercises 5鈥8, we want to c... [FREE SOLUTION] | 91影视

91影视

In Exercises 5鈥8, we want to consider the correlation between heights of fathers and mothers and the heights of their sons. Refer to the

StatCrunch display and answer the given questions or identify the indicated items.

The display is based on Data Set 5 鈥淔amily Heights鈥 in Appendix B.

A son will be born to a father who is 70 in. tall and a mother who is 60 in. tall. Use the multiple regression equation to predict the height of the son. Is the result likely to be a good predicted value? Why or why not?

Short Answer

Expert verified

Thepredictedheight of the sonborn to a father who is 70 in. tall and a mother who is 60 in. tallis 69.8 in.

The predicted value is not ideal as the model is not a good fit due to relatively lower values of R-squared measures.

Step by step solution

01

Given information

The analysis of variance table for multiple regression model is provided.

02

State the general equation of multiple regression

The multiple regression equation is

\(\hat y = {b_0} + {b_1}{x_1} + {b_2}{x_2} + ... + {b_n}{x_n}\).

03

Obtain the equation of multiple regression

The multiple regression equation for the provided scenario is represented:

\(\begin{array}{c}Son = {b_0} + {b_1}\;Father + {b_2}\;Mother\\ = 17.9666 + 0.504\;Father + 0.277\;Mother\end{array}\)

Here, each coefficient is obtained from the output table.

Therefore,the multiple regression equation for predicting the height of the son is

\(Son = 18 + 0.504\;Father + 0.277\;Mother\).

04

Predict the height of the son

The predictedheight of the sonborn to a father who is 70 in. tall and a mother who is 60 in. tallis

\(\begin{array}{c}Son = 18 + 0.504\;Father + 0.277\;Mother\\ = 18 + \left( {0.504 \times 70} \right) + \left( {0.277 \times 60} \right)\\ = 69.84.\end{array}\)

05

State if the result is likely to be a good predicted value

Based on the output, the P-valuein the last column ofthevariance table for the multiple regression model is low. It is less than 0.0001, indicating a significant model.

But the coefficient of determination and the adjusted coefficient of determination at 0.3249 and 0.3552, respectively, are not high.

Therefore,the multiple regression equation fits the sample data, but it is not a good fit.

Thus, the value is not a good predicted value.

Unlock Step-by-Step Solutions & Ace Your Exams!

  • Full Textbook Solutions

    Get detailed explanations and key concepts

  • Unlimited Al creation

    Al flashcards, explanations, exams and more...

  • Ads-free access

    To over 500 millions flashcards

  • Money-back guarantee

    We refund you if you fail your exam.

Over 30 million students worldwide already upgrade their learning with 91影视!

One App. One Place for Learning.

All the tools & learning materials you need for study success - in one app.

Get started for free

Most popular questions from this chapter

Outlier Refer to the accompanying Minitab-generated scatterplot. a. Examine the pattern of all 10 points and subjectively determine whether there appears to be a correlation between x and y. b. After identifying the 10 pairs of coordinates corresponding to the 10 points, find the value of the correlation coefficient r and determine whether there is a linear correlation. c. Now remove the point with coordinates (10, 10) and repeat parts (a) and (b). d. What do you conclude about the possible effect from a single pair of values?

In Exercises 5鈥8, use a significance level of A = 0.05 and refer to theaccompanying displays.Garbage Data Set 31 鈥淕arbage Weight鈥 in Appendix B includes weights of garbage discarded in one week from 62 different households. The paired weights of paper and glass were used to obtain the XLSTAT results shown here. Is there sufficient evidence to support the claim that there is a linear correlation between weights of discarded paper and glass?

let the predictor variable x be the first variable given. Use the given data to find the regression equation and the best predicted value of the response variable. Be sure to follow the prediction procedure summarized in Figure 10-5 on page 493. Use a 0.05 significance level.

Head widths (in.) and weights (lb) were measured for 20 randomly selected bears (from Data Set 9 鈥淏ear Measurements鈥 in Appendix B). The 20 pairs of measurements yield\(\bar x = 6.9\)in.,\(\bar y = 214.3\)lb, r= 0.879, P-value = 0.000, and\(\hat y = - 212 + 61.9x\). Find the best predicted value of\(\hat y\)(weight) given a bear with a head width of 6.5 in.

Exercises 13鈥28 use the same data sets as Exercises 13鈥28 in Section 10-1. In each case, find the regression equation, letting the first variable be the predictor (x) variable. Find the indicated predicted value by following the prediction procedure summarized in Figure 10-5 on page 493.

Use the shoe print lengths and heights to find the best predicted height of a male who has a shoe print length of 31.3 cm. Would the result be helpful to police crime scene investigators in trying to describe the male?

Stocks and Sunspots. Listed below are annual high values of the Dow Jones Industrial Average (DJIA) and annual mean sunspot numbers for eight recent years. Use the data for Exercises 1鈥5. A sunspot number is a measure of sunspots or groups of sunspots on the surface of the sun. The DJIA is a commonly used index that is a weighted mean calculated from different stock values.

DJIA

14,198

13,338

10,606

11,625

12,929

13,589

16,577

18,054

Sunspot

Number

7.5

2.9

3.1

16.5

55.7

57.6

64.7

79.3

Confidence Interval Construct a 95% confidence interval estimate of the mean sunspot number. Write a brief statement interpreting the confidence interval.

See all solutions

Recommended explanations on Math Textbooks

View all explanations

What do you think about this solution?

We value your feedback to improve our textbook solutions.

Study anywhere. Anytime. Across all devices.