EP INTRODUCTION TO PROBABILITY+STAT.
EP INTRODUCTION TO PROBABILITY+STAT.
14th Edition
ISBN: 2810019974203
Author: Mendenhall
Publisher: CENGAGE L
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Chapter 14.4, Problem 14.18E

i.

To determine

No of degrees of freedom associated with x2 statistic.

i.

Expert Solution
Check Mark

Answer to Problem 14.18E

No of degrees of freedom associated with x2 statistic is 2 .

Explanation of Solution

Given:

    Columns
    Rows123Total
    1373493164
    26657113236
    Total10391206400

Formula Used:

Degrees of freedom for contingency table:

  df=(r1)(c1)

Calculation:

Consider null and alternative hypothesis.

Null hypothesis, H0 : Response falls in any one row is independent of the column if falls in.

Alternative hypothesis, H1: Response falls in any one row is dependent of the column if falls in.

To find degrees of freedom for contingency table:

  df=(r1)(c1)

Where,

  r= no of rows.

  c= no of columns.

So, the contingency table contains two rows and three columns.

Degree of freedom,

  df=(r1)(c1)=(21)(31)=1×2=2

Thus, 2 degrees of freedom are associated with the Chi-square test statistic.

Conclusion:

Thus, no. of degrees of freedom associated with x2 statistic is 2 .

ii.

To determine

To find: the value of test statistic.

ii.

Expert Solution
Check Mark

Answer to Problem 14.18E

The value of test statistic is 3.059 .

Explanation of Solution

Given:

    Columns
    Rows123Total
    1373493164
    26657113236
    Total10391206400

Formula Used:

Test statistic:

  Ef=Rt×CtT

Where, Ef= expected frequency.

  Rt= Row total.

  Ct= Column total.

  T= Grand total.

Calculation:

    ObservedOiExpected Ei(OiEi)(OiEi)2x2=( O i E i )2Ei
    37164×103400=42.235.2327.3530.648
    34164×91400=37.313.3110.9560.294
    93164×206400=84.468.5472.9320.864
    66236×103400=60.775.2327.3530.450
    57236×91400=53.693.3110.9560.204
    113236×206400=121.548.5472.9320.600
    400400

From the above table, the test statistic which is observed is 3.059 .

Conclusion:

Thus, 3.059 is the observed test statistic.

iii.

To determine

To find:

Rejection region for α=0.01 .

iii.

Expert Solution
Check Mark

Answer to Problem 14.18E

the test statistic (x0.012) is 9.21034 with level of significance α=0.01 and degrees of freedom df=2 .

Explanation of Solution

Given:

  α=0.01= level of significance.

    Columns
    Rows123Total
    1373493164
    26657113236
    Total10391206400

Calculation:

The given level of significance (α) is 0.01

The rejection region,

  RR={x2>x0.012|rejecttheH0}

The critical value with α=0.01 and degrees of freedom df=2 is obtained from the chi-square table as x0.012=9.21034 .

Conclusion:

Thus, the rejection region (x0.012) is 9.21034 with level of significance α=0.01 and degrees of freedom df=2 .

iv.

To determine

To identify: test and its conclusion.

iv.

Expert Solution
Check Mark

Answer to Problem 14.18E

The probability that a response falls in any row is independent of the columns if falls in.

Explanation of Solution

Given:

    Columns
    Rows123Total
    1373493164
    26657113236
    Total10391206400

Calculation:

For getting test initially compare the calculated value with the critical value.

By using the rejection region, the calculated value of test statistic less than the level of significance than fails to reject the null hypothesis.

Conclusion:

Thus, the probability that a response falls in any row is independent of the columns if falls in.

v.

To determine

To identify: The P-value for the test.

v.

Expert Solution
Check Mark

Answer to Problem 14.18E

The P-value for the test is 0.217 .

Explanation of Solution

Given:

    Columns
    Rows123Total
    1373493164
    26657113236
    Total10391206400

Calculation:

Critical value is calculated as:

P-value =0.217 (by using Excel’s Chidist (probability, deg_freedom)).

So, here x=3.059 and degrees of freedom df=2 .

Conclusion:

Thus, the required P-value is 0.217 .

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