Input parameters 1, 2, …, n Values of each denoted X 1, X 2, X n For each setting of X 1, X 2, X...
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Transcript of Input parameters 1, 2, …, n Values of each denoted X 1, X 2, X n For each setting of X 1, X 2, X...
![Page 1: Input parameters 1, 2, …, n Values of each denoted X 1, X 2, X n For each setting of X 1, X 2, X n observe a Y Each set (X 1, X 2, X n,Y) is one.](https://reader036.fdocuments.in/reader036/viewer/2022082713/5697bfa61a28abf838c9836e/html5/thumbnails/1.jpg)
REGRESSION ANALYSISWITH A SIMULATION SPIN
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BASICS & NOTATION Input parameters 1, 2, …, n Values of each denoted X1, X2, Xn
For each setting of X1, X2, Xn observe a Y Each set (X1, X2, Xn ,Y) is one observation As we vary the X-values, Y changes in a
linear (scaled proportional) manner Some of the X’s don’t matter much,
some are key
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BASICS
nnxxY ...110
Assumptions• e is independent from sample to sample• e is independent of the X’s• e ~N(0, s2)
So we will examine the “noise”
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MOTIVATING EXAMPLE: Close Air Support
Troops patrol their assigned area Discover targets for destruction from
the air Call for CAS May need an aircraft with laser-
designation-capable weapons May have a time deadline Have a distance from the FARP to the
target Effects measured on 1..100 scale
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EXPIRATION DEADLINES
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DAMAGE SCORE vs EXPIRATION DEADLINE
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REGRESSION OUTPUT(Excel)Regression Statistics
Multiple R 0.985R Square 0.97
Adjusted R Square 0.97
Standard Error 4.744Observations 100
ANOVA
df SS MS FSignificanc
e FRegression 1 71324 71324 3169 2E-76Residual 98 2206 22.51Total 99 73530
Coefficient
sStandard
Error t Stat P-value Lower 95% Upper 95%Intercept 10.74 0.66 16.28 1E-29 9.43 12.05X Variable 1 0.551 0.01 56.29 2E-76 0.532 0.571
Y= 10.7 + .55 EXP
Test for b = 0
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REGRESSION LINE
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} ERROR
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SERIAL RESIDUALS
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MULTIPLE REGRESSION Look at all of the independent
variables Builds the complex multidimensional
function in n-space
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MULTIPLE REGRESSION Regression Statistics
Multiple R 0.999985
R Square 0.99997
Adjusted R Square 0.999969
Standard Error 0.157982
Observations 100
ANOVA
df SS MS F Significance F
Regression 3 79706.99 26569 1064529 6.9E-217
Residual 96 2.396011 0.024958
Total 99 79709.39
CoefficientsStandard
Error t Stat P-value Lower 95% Upper 95%
Intercept 0.392709 0.041394 9.487206 1.88E-15 0.310543 0.474874
X Variable 1 0.812893 0.031872 25.50533 1.52E-44 0.749629 0.876158
X Variable 2 0.185655 0.000587 316.3272 1.1E-146 0.18449 0.18682
X Variable 3 0.535199 0.000303 1768.023 2E-218 0.534598 0.5358
Y=.39 + .81 LAZ + .19 DIST + .54 EXP
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REGRESSION DIAGNOSTICS
Residuals that depend on one of the X’s
Residuals that have different variance at different values of an X