Key | The Comprehensive Final Examination | Math 1107 |
Fall Semester 2010 | CJ Alverson
Protocol
You will use only the
following resources: Your
individual calculator; Your individual tool-sheets
(two (2) 8.5 by 11 inch sheets); Your writing utensils; Blank Paper (provided
by me); This copy of the hourly and the tables provided by me. Do not share
these resources with anyone else. Show complete detail and work for full
credit. Follow case study solutions and sample hourly keys in presenting
your solutions. Work all four cases. Using only one side of the blank
sheets provided, present your work. Do not write on both sides of the sheets
provided, and present your work only on these sheets. When you’re done:
Print your name on a blank sheet of paper. Place your tool-sheets, test and
work under this sheet, and turn it all in to me. Do not share information
with any other students during this test.
Sign and Acknowledge: I
agree to follow this protocol. Initial: ______
______________________________________________________________________________
Name
(PRINTED)
Signature
Date
Case One | Conditional Probability | Color Slot Machine
Here is our slot machine
– on each trial, it produces an 8-color sequence, using the table below:
Sequence* |
Probability |
RRBBRRYR |
.10 |
RRRGBRRB |
.11 |
BYGGYGBR |
.14 |
GRGYBRGG |
.10 |
YYYRYGYY |
.20 |
RYGRRBBY |
.15 |
YYYYBGRR |
.20 |
Total |
1.00 |
Compute the following conditional probabilities: Show full work and detail for full credit.
Pr{ “BR” Shows | Yellow Shows }
Sequence* |
Probability |
Prior(Yellow) |
Joint(“BR” and Yellow) |
RRBBRRYR |
.10 |
.10 |
.10 |
RRRGBRRB |
.11 |
|
|
BYGGYGBR |
.14 |
.14 |
.14 |
GRGYBRGG |
.10 |
.10 |
.10 |
YYYRYGYY |
.20 |
.20 |
|
RYGRRBBY |
.15 |
.15 |
|
YYYYBGRR |
.20 |
.20 |
|
Total |
1.00 |
0.89 |
0.34 |
Prior: Pr{
Yellow Shows }
Pr{ Yellow Shows } = Pr{ One of RRBBRRYR, BYGGYGBR,
GRGYBRGG, YYYRYGYY, RYGRRBBY or
YYYYBGRR Shows } = Pr{
RRBBRRYR } + Pr{ BYGGYGBR } + Pr{ GRGYBRGG } + Pr{ YYYRYGYY} + Pr{ RYGRRBBY } + Pr{ YYYYBGRR } = .10 + .14 + .10 + .20 + .15 + .20 = 0.89
Joint: Pr{
“BR” and Yellow Show }
Pr{ “BR” and Yellow Shows } = Pr{ One of RRBBRRYR,
BYGGYGBR or GRGYBRGG Shows } =
Pr{ RRBBRRYR } +
Pr{ BYGGYGBR } + Pr{ GRGYBRGG } =
.10 + .14 + .10 = 0.34
Pr{ “BR” Shows | Yellow Shows } = Joint/Prior = Pr{
“BR” and Yellow Show }/ Pr{ Yellow Shows } = .34/.89
Pr{ “RBB” Shows | Yellow Shows }
Sequence* |
Probability |
Prior(Yellow) |
Joint(“RBB” and Yellow) |
RRBBRRYR |
.10 |
.10 |
.10 |
RRRGBRRB |
.11 |
|
|
BYGGYGBR |
.14 |
.14 |
|
GRGYBRGG |
.10 |
.10 |
|
YYYRYGYY |
.20 |
.20 |
|
RYGRRBBY |
.15 |
.15 |
.15 |
YYYYBGRR |
.20 |
.20 |
|
Total |
1.00 |
0.89 |
0.25 |
Prior: Pr{
Yellow Shows }
Pr{ Yellow Shows } = Pr{ One of RRBBRRYR, BYGGYGBR,
GRGYBRGG, YYYRYGYY, RYGRRBBY or
YYYYBGRR Shows } = Pr{
RRBBRRYR } + Pr{ BYGGYGBR } + Pr{ GRGYBRGG } + Pr{ YYYRYGYY} + Pr{ RYGRRBBY } + Pr{ YYYYBGRR } = .10 + .14 + .10 + .20 + .15 + .20 = 0.89
Joint: Pr{
“RBB” and Yellow Show }
Pr{ “RBB” and Yellow
Shows } = Pr{ RRBBRRYR } + Pr{ RYGRRBBY } = .10 + .15 = 0.25
Pr{ “RBB” Shows | Yellow Show } = Joint/Prior = Pr{
“RBB” and Yellow Show }/ Pr{ Yellow Shows } = .25/.89
Pr{ Red Shows | Blue Shows }
Sequence* |
Probability |
Prior(Blue) |
Joint(Red and Blue) |
.10 |
.10 |
.10 |
|
RRRGBRRB |
.11 |
.11 |
.11 |
BYGGYGBR |
.14 |
.14 |
.14 |
GRGYBRGG |
.10 |
.10 |
.10 |
YYYRYGYY |
.20 |
|
|
RYGRRBBY |
.15 |
.15 |
.15 |
YYYYBGRR |
.20 |
.20 |
.20 |
Total |
1.00 |
0.80 |
0.80 |
Prior: Pr{
Blue Shows }
Pr{ Blue Shows } = Pr{ One of RRBBRRYR, RRRGBRRB,
BYGGYGBR, GRGYBRGG, RYGRRBBY or
YYYYBGRR Shows } = Pr{
RRBBRRYR } + Pr{ RRRGBRRB } + Pr{ BYGGYGBR } + Pr{ GRGYBRGG } + Pr{ RYGRRBBY }
+ Pr{ YYYYBGRR } = .10 + .11 + .14 + .10 + .15 + .20 = 0.80
Joint: Pr{
Red and Blue Show }
Pr{ Red and Blue Show } =
Pr{ One of RRBBRRYR, RRRGBRRB, BYGGYGBR, GRGYBRGG, RYGRRBBY or YYYYBGRR Shows }
= Pr{ RRBBRRYR } + Pr{ RRRGBRRB } + Pr{ BYGGYGBR } + Pr{ GRGYBRGG } + Pr{
RYGRRBBY } + Pr{ YYYYBGRR } = .10 + .11 + .14 + .10 + .15 + .20 = 0.80
Pr{ Red Shows | Blue Shows } = Joint/Prior = Pr{ Red
and Blue Show }/ Pr{ Blue Shows } = .80/.80
Case Two | Descriptive Statistics |
2009 Fictitious City Iron Man
An Iron Man
event comprises a 2.4 mile swim, 112 mile
bike course and a full marathon (26.2 mile run). Suppose that we have a random sample of finishers of the
2009 Fictitious City Iron Man, whose finishing times (in hours) are listed
below:
8.25, 8.56, 8.75, 9.10, 9.12, 9.20, 9.22, 9.25,
9.45, 9.85, 10.15, 10.18, 10.20, 10.25, 10.30, 10.46, 10.56, 10.80, 11.05
11.23, 11.30, 11.52, 11.56, 11.60, 11.75, 11.80, 11.95, 12.05, 12.15, 12.18,
12.20, 12.25, 12.28, 12.30, 12.35, 12.45 12.50 12.59, 12.60, 12.70, 12.73,
12.85, 12.90, 13.10, 13.25, 14.15, 15.25, 16.75, 17.30, 18.10
Compute and interpret the following statistics: sample size, p00,
p25, p50, p75, p100,
(p25 – p00), (p50 – p25), (p75 – p50),
(p100 – p75). Show your work.
Completely discuss and interpret your results, as indicated in class and case
study summaries.
n p0
p25 p50 p75
p100 R10 R21
R32 R43
50 8.25
10.2 11.775 12.59
18.1 1.95 1.575
0.815 5.51
There are 50 people who
finished the 2009 Fictitious City Iron Man in our sample.
The fastest finisher in
our sample finished the 2009 Fictitious City Iron Man in 8.25 hours.
Approximately 25% of the
2009 Fictitious City Iron Man finishers in our sample finished in 10.2 hours or
less.
Approximately 50% of the
2009 Fictitious City Iron Man finishers in our sample finished in 11.775 hours
or less.
Approximately 75% of the
2009 Fictitious City Iron Man finishers in our sample finished in 12.59 hours
or less.
The slowest finisher in
our sample finished the 2009 Fictitious City Iron Man in 18.10 hours.
range10 = p25
– p00 = 10.2 – 8.25 = 1.95
Approximately 25% of the 2009
Fictitious City Iron Man finishers in our sample finished in between 8.25 and 10.2
hours. The largest possible difference in finish time between any pair of finishers
in our lower quarter sample is 1.95 hours.
range21 = p50
– p25 = 11.775 – 10.2 = 1.575
Approximately 25% of the 2009
Fictitious City Iron Man finishers in our sample finished in between 10.2 and
11.775 hours. The largest possible difference in finish time between any pair
of finishers in our lower middle quarter sample is 1.575 hours.
range32 = p75
– p50 = 12.59 – 11.775 = 0.815
Approximately 25% of the 2009
Fictitious City Iron Man finishers in our sample finished in between 12.59 and 11.775
hours. The largest possible difference in finish time between any pair of finishers
in our upper middle quarter sample is 0.815 hours.
range43 = p100
– p75 = 18.1 – 12.59 = 5.51
Approximately 25% of the 2009
Fictitious City Iron Man finishers in our sample finished in between 12.59 and
18.1 hours. The largest possible difference in finish time between any pair of finishers
in our upper quarter sample is 5.51 hours.
Case Three | Confidence Interval, Population
Proportion | 2009 Fictitious
City Iron Man
Using the context and data of
Case Two, consider the proportion of finishers of the
2009 Fictitious City Iron Man who finish in 12.5 or more hours. Compute and interpret a 90% confidence
interval for this population proportion. Show your work.
Completely discuss and interpret your results, as indicated in class and case
study summaries.
8.25,
8.56, 8.75, 9.10, 9.12 | 9.20, 9.22, 9.25, 9.45, 9.85 | 10.15, 10.18, 10.20,
10.25, 10.30
10.46,
10.56, 10.80, 11.05 11.23 | 11.30, 11.52, 11.56, 11.60, 11.75 | 11.80, 11.95,
12.05, 12.15, 12.18
12.20,
12.25, 12.28, 12.30, 12.35 | 12.45 12.50 12.59, 12.60, 12.70
| 12.73, 12.85, 12.90, 13.10, 13.25
14.15,
15.25, 16.75, 17.30, 18.10
sample size n = 50
event=“2009 Fictitious City Iron Man finish time is 12.5
or more hours”
event count = e = 14
p = e /n = 14/50 = 0.28
1 – p
= 1 – (.28) = 0.72
sdp = sqrt(p*(1 – p)/n) = sqrt( .28*.72 / 50 ) ≈ 0.063498
from 1.65 0.04947 0.90106, Z ≈ 1.65
lower90 = p – ( 1.65*sdp ) ≈ 0.28 – ( 1.65* 0.063498)
≈ 0.175228
upper90 = p + ( 1.65*sdp ) ≈ 0.28
+ ( 1.65* 0.063498) ≈ 0.384772
Our population is the
population of finishers of the 2009 Fictitious City Iron Man, and our
population proportion is the population proportion of finishers with finish
times strictly below 10 hours.
Each member of the Family of Samples is a
single random sample of 50 finishers of the 2009 Fictitious City Iron Man.
From
each member sample, compute: the sample number e of finishers with finish times at 12.5 or more
hours, the sample proportion p = e /
50 and the standard error for proportion sdp = sqrt(
p*(1 – p)/50 ). Then from the means table row 1.65 0.04947
0.90106, use Z ≈ 1.65. Then compute the
interval
[lower90
= p – ( Z*sdp ), upper90 = p
+ ( Z*sdp )].
Doing this for each member of the family of
samples yields a family of intervals.
Approximately 90% of the intervals in the family
cover the unknown population proportion. If our interval resides in this 90%
supermajority of member intervals, then between 17.5% and 38.5% of finishers of the 2009 Fictitious City Iron
Man have finish times at 12.5 hours or more.
Case Four | Probability and Random Variables |
Pair of Dice
We have a pair of four-sided dice. We assume
that the dice operate separately and independently of each other. Here are
their probability models:
1st Die |
Probability |
|
2nd Die |
Probability |
1 |
1/4 |
|
3 |
1/10 |
2 |
1/4 |
|
4 |
2/10 |
7 |
1/4 |
|
5 |
3/10 |
8 |
1/4 |
|
6 |
4/10 |
Total |
4/4 |
|
Total |
10/10 |
Our
experiment consists of tossing the pair of dice, and noting the resulting pair
of face values as (1st Die, 2nd Die).
List the possible face-pairs, and
compute a probability for each pair.
|
1(1/4) |
2(1/4) |
7(1/4) |
8(1/4) |
3(1/10) |
(1,3) |
(2,3) |
(7,3) |
(8,3) |
4(2/10) |
(1,4) |
(2,4) |
(7,4) |
(8,4) |
5(3/10) |
(1,5) |
(2,5) |
(7,5) |
(8,5) |
6(4/10) |
(1,6) |
(2,6) |
(7,6) |
(8,6) |
Pr{(1,3)} = Pr{1 from 1st}*Pr{3
from 2nd} = (1/4)*(1/10) =
1/40
Pr{(1,4)} = Pr{1 from 1st}*Pr{4
from 2nd} = (1/4)*(2/10) = 2/40
Pr{(1,5)} = Pr{1 from 1st}*Pr{5
from 2nd} = (1/4)*(3/10) = 3/40
Pr{(1,6)} = Pr{1 from 1st}*Pr{6
from 2nd} = (1/4)*(4/10) = 4/40
Pr{(2,3)} = Pr{2 from 1st}*Pr{3
from 2nd} = (1/4)*(1/10) =
1/40
Pr{(2,4)} = Pr{2 from 1st}*Pr{4
from 2nd} = (1/4)*(2/10) = 2/40
Pr{(2,5)} = Pr{2 from 1st}*Pr{5
from 2nd} = (1/4)*(3/10) = 3/40
Pr{(2,6)} = Pr{2 from 1st}*Pr{6
from 2nd} = (1/4)*(4/10) = 4/40
Pr{(7,3)} = Pr{7 from 1st}*Pr{3
from 2nd} = (1/4)*(1/10) =
1/40
Pr{(7,4)} = Pr{7 from 1st}*Pr{4
from 2nd} = (1/4)*(2/10) = 2/40
Pr{(7,5)} = Pr{7 from 1st}*Pr{5
from 2nd} = (1/4)*(3/10) = 3/40
Pr{(7,6)} = Pr{7 from 1st}*Pr{6
from 2nd} = (1/4)*(4/10) = 4/40
Pr{(8,3)} = Pr{8 from 1st}*Pr{3
from 2nd} = (1/4)*(1/10) =
1/40
Pr{(8,4)} = Pr{8 from 1st}*Pr{4
from 2nd} = (1/4)*(2/10) = 2/40
Pr{(8,5)} = Pr{8 from 1st}*Pr{5
from 2nd} = (1/4)*(3/10) = 3/40
Pr{(8,6)} = Pr{8 from 1st}*Pr{6
from 2nd} = (1/4)*(4/10) = 4/40
Define
HIGH as the higher of the two face
values in the pair, and LOW as the
lower of the two face values in the pair and MID as MID = (HIGH + LOW)/2.
Compute the values and probabilities for MID.
Show all work in full detail for full credit.
|
1(1/4) |
2(1/4) |
7(1/4) |
8(1/4) |
3(1/10) |
(1,3) | 2 |
(2,3) | 2.5 |
(7,3) | 5 |
(8,3) | 5.5 |
4(2/10) |
(1,4) | 2.5 |
(2,4) | 3 |
(7,4) | 5.5 |
(8,4) | 6 |
5(3/10) |
(1,5) | 3 |
(2,5) | 3.5 |
(7,5) | 6 |
(8,5) | 6.5 |
6(4/10) |
(1,6) | 3.5 |
(2,6) | 4 |
(7,6) | 6.5 |
(8,6) | 7 |
MID {(1,3)} = (3 + 1)/2 = 2 @ 1/40
MID {(1,4)} = (4 + 1)/2 = 2.5 @ 2/40
MID {(1,5)} = (5 + 1)/2 = 3 @ 3/40
MID {(1,6)} = (6 + 1)/2 = 3.5 @ 4/40
MID {(2,3)} = (3 + 2)/2 = 2.5 @ 1/40
MID {(2,4)} = (4 + 2)/2 = 3 @ 2/40
MID {(2,5)} = (5 + 2)/2 = 3.5 @ 3/40
MID {(2,6)} = (6 + 2)/2 = 4 @ 4/40
MID {(7,3)} = (7 + 3)/2 = 5 @
1/40
MID {(7,4)} = (7 + 4)/2 = 5.5 @
2/40
MID {(7,5)} = (7 + 5)/2 = 6 @
3/40
MID {(7,6)} = (7 + 6)/2 = 6.5 @ 4/40
MID {(8,3)} = (8 + 3)/2 = 5.5 @ 1/40
MID {(8,4)} = (8 + 4)/2 = 6 @ 2/40
MID {(8,5)} = (8 + 5)/2 = 6.5 @ 3/40
MID {(8,6)} = (8 + 6)/2 = 7 @ 4/40
Regrouping pairs by MID…
MID {(1,3)} = (3 + 1)/2 = 2 @ 1/40
MID {(1,4)} = (4 + 1)/2 = 2.5 @ 2/40
MID {(2,3)} = (3 + 2)/2 = 2.5 @ 1/40
MID {(1,5)} = (5 + 1)/2 = 3 @ 3/40
MID {(2,4)} = (4 + 2)/2 = 3 @ 2/40
MID {(1,6)} = (6 + 1)/2 = 3.5 @ 4/40
MID {(2,5)} = (5 + 2)/2 = 3.5 @ 3/40
MID {(2,6)} = (6 + 2)/2 = 4 @ 4/40
MID {(7,3)} = (7 + 3)/2 = 5 @
1/40
MID {(7,4)} = (7 + 4)/2 = 5.5 @ 2/40
MID {(8,3)} = (8 + 3)/2 = 5.5 @ 1/40
MID {(7,5)} = (7 + 5)/2 = 6 @
3/40
MID {(8,4)} = (8 + 4)/2 = 6 @ 2/40
MID {(7,6)} = (7 + 6)/2 = 6.5 @ 4/40
MID {(8,5)} = (8 + 5)/2 = 6.5 @ 3/40
MID {(8,6)} = (8 + 6)/2 = 7 @ 4/40
Probability Model for
MID
Pr{ MID = 2 } = Pr{ (1,3) }
= 1/40
Pr{ MID = 2.5 } = Pr{
(1,4) or (2,3) Shows } = Pr{ (1,4) } + Pr{ (2,3) } = (2/40) + (1/40) = 3/40
Pr{ MID = 3 } = Pr{
(1,5) or (2,4) Shows } = Pr{ (1,5) } + Pr{ (2,4) } = (3/40) + (2/40) = 5/40
Pr{ MID = 3.5 } = Pr{
(1,6) or (2,4) Shows } = Pr{ (1,6) } + Pr{ (2,5) } = (4/40) + (3/40) = 7/40
Pr{ MID = 4 } = Pr{ (2,6) }
= 4/40
Pr{ MID = 5 } = Pr{ (7,3) }
= 1/40
Pr{ MID = 5.5 } = Pr{
(7,4) or (8,3) Shows } = Pr{ (7,4) } + Pr{ (8,3) } = (2/40) + (1/40) = 3/40
Pr{ MID = 6 } = Pr{
(7,5) or (8,4) Shows } = Pr{ (7,5) } + Pr{ (8,4) } = (3/40) + (2/40) = 5/40
Pr{ MID = 6.5 } = Pr{
(7,6) or (8,5) Shows } = Pr{ (7,6) } + Pr{ (8,5) } = (4/40) + (3/40) = 7/40
Pr{ MID = 7 } = Pr{ (8,6) }
= 4/40
Table 1: Means and Proportions
Z(k) PROBRT ROBCENT 0.05 0.48006
0.03988 0.10 0.46017
0.07966 0.15 0.44038
0.11924 0.20 0.42074
0.15852 0.25 0.40129
0.19741 0.30 0.38209
0.23582 0.35 0.36317
0.27366 0.40 0.34458
0.31084 0.45 0.32636
0.34729 0.50 0.30854
0.38292 0.55 0.29116
0.41768 0.60 0.27425
0.45149 0.65 0.25785
0.48431 0.70 0.24196
0.51607 0.75 0.22663
0.54675 0.80 0.21186
0.57629 0.85 0.19766
0.60467 0.90 0.18406
0.63188 0.95 0.17106
0.65789 1.00 0.15866
0.68269 |
Z(k) PROBRT PROBCENT 1.05 0.14686
0.70628 1.10 0.13567
0.72867 1.15 0.12507
0.74986 1.20 0.11507
0.76986 1.25 0.10565
0.78870 1.30 0.09680
0.80640 1.35 0.08850
0.82298 1.40 0.08075
0.83849 1.45 0.07352
0.85294 1.50 0.06680
0.86639 1.55 0.06057
0.87886 1.60 0.05479
0.89040 1.65 0.04947
0.90106 1.70 0.04456
0.91087 1.75 0.04005
0.91988 1.80 0.03593
0.92814 1.85 0.03215
0.93569 1.90 0.02871 0.94257 1.95 0.02558
0.94882 2.00 0.02275
0.95450 |
Z(k) PROBRT PROBCENT 2.05 0.020182
0.95964 2.10 0.017864
0.96427 2.15 0.015778
0.96844 2.20 0.013903
0.97219 2.25 0.012224
0.97555 2.30 0.010724
0.97855 2.35 0.009387
0.98123 2.40 0.008198
0.98360 2.45 0.007143
0.98571 2.50 0.006210
0.98758 2.55 0.005386
0.98923 2.60 0.004661
0.99068 2.65 0.004025
0.99195 2.70 .0034670
0.99307 2.75 .0029798
0.99404 2.80 .0025551
0.99489 2.85 .0021860
0.99563 2.90 .0018658
0.99627 2.95 .0015889
0.99682 3.00 .0013499
0.99730 |