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1 Stevens 2. Aufl. S. 200 General Linear Model Between-Subjects Factors 1,00 2,00 3,00 N Effect a. Exact statistic Pillai's Trace Wilks' Lambda Hotelling's Trace Roy's Largest Root Pillai's Trace Wilks' Lambda Hotelling's Trace Roy's Largest Root Multivariate Tests c Value F Hypothesis df Error df Sig., ,632 a 4,000 27,000,000, ,632 a 4,000 27,000, , ,632 a 4,000 27,000, , ,632 a 4,000 27,000,000,680 3,604 8,000 56,000,002,369 4,361 a 8,000 54,000,000 1,577 5,126 8,000 52,000,000 1,488 10,418 b 4,000 28,000,000 b. The statistic is an upper bound on F that yields a lower bound on the significance level. c. Design: + Seite 1

2 Source Corrected Model Error Total Corrected Total a. R Squared =,505 (Adjusted R Squared =,472) b. R Squared =,496 (Adjusted R Squared =,463) c. R Squared =,529 (Adjusted R Squared =,497) d. R Squared =,437 (Adjusted R Squared =,400) Stevens 2. Aufl. S. 200 Tests of Between-Subjects Effects Type III Sum of Squares df Mean Square F Sig. 12,061 a 2 6,030 15,308,000 23,091 b 2 11,545 14,767,000 20,788 c 2 10,394 16,814,000 14,970 d 2 7,485 11,651, , , ,231, , , ,395, , , ,696, , , ,821,000 12, ,030 15,308,000 23, ,545 14,767,000 20, ,394 16,814,000 14, ,485 11,651,000 11,818 30,394 23,455 30,782 18,545 30,618 19,273 30, , , , , , , , , Estimates B Std. Error t Sig. 4,091,189 21,617,000,182,268,679,502 1,364,268 5,095,000 4,273,267 16,027,000,091,377,241,811-1,727,377-4,581,000 4,273,237 18,024,000 -,091,335 -,271,788-1,727,335-5,152,000 4,091,242 16,928,000 -,273,342 -,798,431-1,545,342-4,522,000 Seite 2

3 Estimates 95% Confidence Interval Lower Bound Upper Bound 3,704 4,477 -,365,728,817 1,910 3,728 4,817 -,679,861-2,497 -,957 3,789 4,757 -,776,594-2,412-1,043 3,597 4,584 -,971,425-2,243 -,847 a. This parameter is set to zero because it is redundant. Stevens 2. Aufl. S. 200 Coefficients (L' ) 1,000,333,333,333 Based on Type III Sums of Squares. L2 L Based on Type III Sums of Squares. Seite 3

4 Custom Hypothesis Tests Index Stevens 2. Aufl. S Coefficients (L' ) Transformation Coefficients (M ) Results (K ) Coefficients (L' ) Transformation Coefficients (M ) Results (K ) LMATRIX Subcom mand 1 Identity Zero LMATRIX Subcom mand 2 Identity Zero Custom Hypothesis Tests #1 Coefficients (L' ),000 2,000-1,000-1,000 Estimate Hypothesized Value Difference (Estimate - Hypothesized) Std. Error Sig. 95% Confidence Interval for Difference Results (K ) a Lower Bound Upper Bound a. Based on the user-specified contrast coefficients (L') matrix number 1-1,000 1,909 1,545 1, ,000 1,909 1,545 1,000,464,653,581,592,039,007,012,102-1,947,575,360 -,209 -,053 3,243 2,731 2,209 Multivariate Test Results Pillai's trace Wilks' lambda Hotelling's trace Roy's largest root a. Exact statistic Value F Hypothesis df Error df Sig.,317 3,129 a 4,000 27,000,031,683 3,129 a 4,000 27,000,031,464 3,129 a 4,000 27,000,031,464 3,129 a 4,000 27,000,031 Seite 4

5 Stevens 2. Aufl. S. 200 Univariate Test Results Source Error Sum of Squares df Mean Square F Sig. 1, ,833 4,654,039 6, ,682 8,547,007 4, ,379 7,083,012 1, ,833 2,854,102 11,818 30,394 23,455 30,782 18,545 30,618 19,273 30,642 Custom Hypothesis Tests #2 Coefficients (L' ) Estimate Hypothesized Value Difference (Estimate - Hypothesized) Std. Error Sig. 95% Confidence Interval for Difference Results (K ) a Lower Bound Upper Bound a. Based on the user-specified contrast coefficients (L') matrix number 2 1,364-1,727-1,727-1, ,364-1,727-1,727-1,545,268,377,335,342,000,000,000,000,817-2,497-2,412-2,243 1,910 -,957-1,043 -,847 Multivariate Test Results Pillai's trace Wilks' lambda Hotelling's trace Roy's largest root a. Exact statistic Value F Hypothesis df Error df Sig.,527 7,517 a 4,000 27,000,000,473 7,517 a 4,000 27,000,000 1,114 7,517 a 4,000 27,000,000 1,114 7,517 a 4,000 27,000,000 Seite 5

6 Stevens 2. Aufl. S. 200 Univariate Test Results Source Error Sum of Squares df Mean Square F Sig. 10, ,227 25,962,000 16, ,409 20,988,000 16, ,409 26,544,000 13, ,136 20,448,000 11,818 30,394 23,455 30,782 18,545 30,618 19,273 30,642 Seite 6

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