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1
00:00:07,390 --> 00:00:09,890
So last time, we discussed how to find the

2
00:00:09,890 --> 00:00:14,570
probabilities underneath the normal curve for

3
00:00:14,570 --> 00:00:20,450
three cases. If the point lies in the lower tail,

4
00:00:21,690 --> 00:00:28,150
as this one, or upper tail, or between. So we can

5
00:00:28,150 --> 00:00:32,290
do the computations for this kind of

6
00:00:32,290 --> 00:00:36,090
probabilities. And I think we gave two examples.

7
00:00:36,620 --> 00:00:40,400
For example, if we are looking for probability of

8
00:00:40,400 --> 00:00:45,020
Z is smaller than 0.1, and Z, as we mentioned last

9
00:00:45,020 --> 00:00:48,660
time, is the standardized normal distribution that

10
00:00:48,660 --> 00:00:53,120
has mean of 0 and sigma is 1. In this case, just

11
00:00:53,120 --> 00:00:57,540
go to the table you have. Now we are looking for 0

12
00:00:57,540 --> 00:01:03,700
.12, for example. So here we have 0.1. Under 2, we

13
00:01:03,700 --> 00:01:07,260
get this result. This value is the probability of

14
00:01:07,260 --> 00:01:10,480
Z smaller than 0.5. But you have to keep in mind

15
00:01:10,480 --> 00:01:14,460
that we have to transform first from normal

16
00:01:14,460 --> 00:01:17,580
distribution to standardized normal distribution.

17
00:01:18,620 --> 00:01:21,220
For this specific example, if we are looking for

18
00:01:21,220 --> 00:01:26,960
mean of 8 and standard deviation of 5, that's for

19
00:01:26,960 --> 00:01:30,020
the normal distribution. In this case, the z-score

20
00:01:30,020 --> 00:01:32,920
is given by this equation, which is x minus 3

21
00:01:32,920 --> 00:01:37,060
divided by sigma. So 8.6 minus 8 divided by 5

22
00:01:37,060 --> 00:01:41,360
gives 0.12. In this case, we can use the

23
00:01:41,360 --> 00:01:46,480
standardized normal table. Now, for the other

24
00:01:46,480 --> 00:01:48,700
case, we are looking for the probability of x

25
00:01:48,700 --> 00:01:51,880
greater than 8.6. So we are looking for the upper

26
00:01:51,880 --> 00:01:56,900
tail probability. The table we have gives the area

27
00:01:56,900 --> 00:02:01,640
to the left side. And we know that the total area

28
00:02:01,640 --> 00:02:04,760
underneath the normal curve is 1. So the

29
00:02:04,760 --> 00:02:08,980
probability of x greater than 8.6 is the same as 1

30
00:02:08,980 --> 00:02:13,720
minus the probability of x smaller than x less

31
00:02:13,720 --> 00:02:19,100
than 8.6. So here, for 8.6, we got z squared to be

32
00:02:19,100 --> 00:02:24,300
0.12. So the probability of z greater than 0.12 is

33
00:02:24,300 --> 00:02:27,620
the same as 1 minus z of z is smaller than 0.12.

34
00:02:28,850 --> 00:02:33,050
So 1 minus the answer we just got from part A will

35
00:02:33,050 --> 00:02:35,930
get us to something. So this is the probability of

36
00:02:35,930 --> 00:02:41,170
X is greater than 8.6. So all of the time, if you

37
00:02:41,170 --> 00:02:45,390
are asking about computing the probability in the

38
00:02:45,390 --> 00:02:48,290
upper tail, you have to first find the probability

39
00:02:48,290 --> 00:02:52,630
in the lower tail, then subtract that value from

40
00:02:52,630 --> 00:02:56,710
1. So that's the probability for the upper tail.

41
00:02:58,110 --> 00:03:02,470
The last one, we are looking for probability

42
00:03:02,470 --> 00:03:06,970
between two values. For example, x. What's the

43
00:03:06,970 --> 00:03:10,190
probability of x greater than 8 and smaller than 8

44
00:03:10,190 --> 00:03:15,670
.6? So we are looking for this area, the red area.

45
00:03:16,250 --> 00:03:18,710
So the probability of x between these two values

46
00:03:18,710 --> 00:03:21,850
actually equals the probability of x smaller than.

47
00:03:23,040 --> 00:03:27,560
8.6 minus the probability of X smaller than 8A.

48
00:03:27,880 --> 00:03:31,140
And that, in this case, you have to compute two

49
00:03:31,140 --> 00:03:34,780
values of this score. One for the first value,

50
00:03:34,880 --> 00:03:40,020
which is A. This value is zero because the mean is

51
00:03:40,020 --> 00:03:45,240
zero. And we know that Z can be negative. If X is

52
00:03:45,240 --> 00:03:49,460
smaller than Mu, Z can positive if X is greater

53
00:03:49,460 --> 00:03:55,220
than Mu and equals zero only if X equals Mu. In

54
00:03:55,220 --> 00:03:59,340
this case, X equals Mu, so Z score is zero. The

55
00:03:59,340 --> 00:04:03,220
other one as we got before is 0.12. So now, we

56
00:04:03,220 --> 00:04:07,340
transform actually the probability of X between

57
00:04:08,870 --> 00:04:13,870
8 and 8.6 to z-score between 0 and 0.12. In this

58
00:04:13,870 --> 00:04:17,170
case, we can use the normal theorem. Now, this

59
00:04:17,170 --> 00:04:21,130
area is, as we mentioned, just b of x smaller than

60
00:04:21,130 --> 00:04:28,850
0.12 minus b of x, b of z smaller than 0. This

61
00:04:28,850 --> 00:04:34,330
probability, we know that, 0.54878. Now, the

62
00:04:34,330 --> 00:04:38,170
probability of z smaller than 0 is one-half.

63
00:04:38,860 --> 00:04:41,380
Because the total area underneath the normal curve

64
00:04:41,380 --> 00:04:45,860
is 1, and 0 divided the curve into two equally

65
00:04:45,860 --> 00:04:49,100
parts. So the area to the right of 0 is the same

66
00:04:49,100 --> 00:04:52,100
as the area to the left of 0. So in this case,

67
00:04:52,880 --> 00:04:57,160
minus 0.5. So this is your answer. So the

68
00:04:57,160 --> 00:05:04,040
probability of Z between 8 and 8.6 is around 0478.

69
00:05:04,320 --> 00:05:07,020
I think we stopped last time at this point.

70
00:05:09,860 --> 00:05:17,760
This is another example to compute the probability

71
00:05:17,760 --> 00:05:24,020
of X greater than 7.4 and 8. Also, it's the same

72
00:05:24,020 --> 00:05:29,700
idea here, just find these scores for the two

73
00:05:29,700 --> 00:05:30,160
values.

74
00:05:33,850 --> 00:05:38,670
L with B of Z greater than minus 0.12 up to 0. Now

75
00:05:38,670 --> 00:05:47,010
this red area equals the area below 0. I mean B of

76
00:05:47,010 --> 00:05:50,330
Z smaller than 0 minus the probability of Z

77
00:05:50,330 --> 00:05:57,090
smaller than minus 0.12. Now by using symmetric

78
00:05:57,090 --> 00:06:00,470
probability of the normal distribution, we know

79
00:06:00,470 --> 00:06:04,620
that The probability of Z smaller than minus 0.12

80
00:06:04,620 --> 00:06:11,420
equals the probability of Z greater than 0.12.

81
00:06:11,780 --> 00:06:15,520
Because this area, if we have Z smaller than minus

82
00:06:15,520 --> 00:06:19,300
0.12, the area to the left, that equals the area

83
00:06:19,300 --> 00:06:21,560
to the right of the same point, because of

84
00:06:21,560 --> 00:06:25,480
symmetry. And finally, you will end with this

85
00:06:25,480 --> 00:06:25,740
result.

86
00:06:30,670 --> 00:06:36,730
D of z minus 0.12, all the way up to 0, this area,

87
00:06:37,630 --> 00:06:43,130
is the same as the area from 0 up to 0.5. So this

88
00:06:43,130 --> 00:06:46,530
area actually is the same as D of z between 0 and

89
00:06:46,530 --> 00:06:51,270
0.5. So if you have negative sign, and then take

90
00:06:51,270 --> 00:06:54,390
the opposite one, the answer will be the same

91
00:06:54,390 --> 00:06:57,610
because the normal distribution is symmetric

92
00:06:57,610 --> 00:07:04,690
around 0.9. The questions, I think we stopped

93
00:07:04,690 --> 00:07:09,330
here. And also we talked about empirical rules.

94
00:07:10,930 --> 00:07:13,250
The one we mentioned in chapter three, in chapter

95
00:07:13,250 --> 00:07:16,170
three. And we know that, as we mentioned before,

96
00:07:16,310 --> 00:07:25,550
that is 68.16% of the observations fall within one

97
00:07:25,550 --> 00:07:30,660
standard deviation around the mean. So this area

98
00:07:30,660 --> 00:07:35,380
from mu minus one sigma up to mu plus sigma, this

99
00:07:35,380 --> 00:07:42,080
area covers around 68%. Also

100
00:07:42,080 --> 00:07:50,700
95% or actually 95.44% of the data falls within

101
00:07:50,700 --> 00:07:54,840
two standard deviations of the mean. And finally,

102
00:07:55,040 --> 00:08:00,220
around most of the data, around 99.73% of the data

103
00:08:00,220 --> 00:08:06,860
falls within three subdivisions of the population

104
00:08:06,860 --> 00:08:07,160
mean.

105
00:08:11,550 --> 00:08:14,970
And now the new topic is how can we find the X

106
00:08:14,970 --> 00:08:18,510
value if the probability is given. It's vice

107
00:08:18,510 --> 00:08:21,810
versa. In the previous questions, we were asking

108
00:08:21,810 --> 00:08:26,130
about find the probability, for example, if X is

109
00:08:26,130 --> 00:08:30,450
smaller than a certain number. Now suppose this

110
00:08:30,450 --> 00:08:34,070
probability is given, and we are looking to find

111
00:08:34,070 --> 00:08:38,710
this value. I mean, for example, suppose in the

112
00:08:38,710 --> 00:08:39,850
previous examples here,

113
00:08:43,380 --> 00:08:46,760
Suppose we know this probability. So the

114
00:08:46,760 --> 00:08:50,220
probability is given. The question is, how can we

115
00:08:50,220 --> 00:08:54,140
find this value? It's the opposite, sometimes

116
00:08:54,140 --> 00:08:57,180
called backward normal calculations.

117
00:09:01,660 --> 00:09:05,580
There are actually two steps. to find the x value

118
00:09:05,580 --> 00:09:10,040
for a certain probability or for a given or for a

119
00:09:10,040 --> 00:09:12,900
known probability the first step we have to find

120
00:09:12,900 --> 00:09:20,540
the z score then use this equation to find the x

121
00:09:20,540 --> 00:09:25,100
value corresponding to the z score you have and x

122
00:09:25,100 --> 00:09:30,120
is just mu plus sigma times mu so first step you

123
00:09:30,120 --> 00:09:31,740
have to find the z score

124
00:09:35,350 --> 00:09:38,690
corresponding to the probability we have. So find

125
00:09:38,690 --> 00:09:43,870
the z value for the non-probability, then use that

126
00:09:43,870 --> 00:09:47,910
z score to find the value of x by using this

127
00:09:47,910 --> 00:09:52,010
equation. So x equals mu plus z sigma. z could be

128
00:09:52,010 --> 00:09:54,490
negative, could be positive, depends on the

129
00:09:54,490 --> 00:09:59,170
probability you have. If the probability is above

130
00:09:59,170 --> 00:10:03,390
0.5, I mean 0.5 and greater than 0.5, this

131
00:10:03,390 --> 00:10:08,880
corresponds to 10. But if z-score is negative, I'm

132
00:10:08,880 --> 00:10:10,680
sorry, if z-score is negative, then the

133
00:10:10,680 --> 00:10:14,880
probability should be smaller than 0.5. So if the

134
00:10:14,880 --> 00:10:19,360
probability is given less than 0.5, then your z

135
00:10:19,360 --> 00:10:21,100
-score should be negative, otherwise should be

136
00:10:21,100 --> 00:10:23,720
positive. So you have to be careful in this case.

137
00:10:25,700 --> 00:10:31,240
Now look at this example. Let x represent the time

138
00:10:31,240 --> 00:10:35,770
it takes in seconds. to download an image file

139
00:10:35,770 --> 00:10:39,730
from the internet. The same example as we did

140
00:10:39,730 --> 00:10:43,590
before. And here we assume that x is normal

141
00:10:43,590 --> 00:10:46,330
distribution with mean of 8 and standard deviation

142
00:10:46,330 --> 00:10:51,710
of 5. Now, let's see how can we find the value of

143
00:10:51,710 --> 00:10:58,050
x such that 20% of download times are smaller than

144
00:10:58,050 --> 00:10:58,410
x.

145
00:11:01,060 --> 00:11:04,580
So, this probability is a fraction. Also, always

146
00:11:04,580 --> 00:11:07,840
the probability is between 0 and 1. So, the

147
00:11:07,840 --> 00:11:11,820
probability here is 20%. In this case, your z

148
00:11:11,820 --> 00:11:15,560
-score should be negative. Because 20% is more

149
00:11:15,560 --> 00:11:18,660
than 0.5. So, z-score should be in this side, in

150
00:11:18,660 --> 00:11:19,320
the left side.

151
00:11:22,340 --> 00:11:26,380
So, again, he asks about finding x-value such that

152
00:11:26,380 --> 00:11:27,140
20%.

153
00:11:31,740 --> 00:11:35,400
So here again we are looking for this value, for

154
00:11:35,400 --> 00:11:40,760
the value of x, which is smaller than the area to

155
00:11:40,760 --> 00:11:45,680
the left of this x, equals 0.2.

156
00:11:47,480 --> 00:11:51,100
Now, the first step, we have to find the z-score.

157
00:11:52,650 --> 00:11:56,430
It's backward, z-score first, then x. Find a z

158
00:11:56,430 --> 00:12:00,450
-score corresponding to the probability of 0.2.

159
00:12:02,510 --> 00:12:07,710
The approximate one, the near value, I mean, to

160
00:12:07,710 --> 00:12:12,190
the 0.2 is 0.2005. Sometimes you have the exact

161
00:12:12,190 --> 00:12:16,570
value from the table you have, but most of the

162
00:12:16,570 --> 00:12:19,050
time you don't have it. So you have to look at the

163
00:12:19,050 --> 00:12:21,790
approximate value, which is very close to the one

164
00:12:21,790 --> 00:12:25,840
you have. So here, we are looking for 0.2. The

165
00:12:25,840 --> 00:12:30,660
closest value to 0.2 is 0.2005. Now, the

166
00:12:30,660 --> 00:12:34,720
corresponding value to this probability is minus 0

167
00:12:34,720 --> 00:12:40,120
.8 all the way up to 4. So your z-score is

168
00:12:40,120 --> 00:12:47,840
negative 0.84. So this is the first step. Any

169
00:12:47,840 --> 00:12:51,120
question? Again.

170
00:12:53,950 --> 00:12:57,050
Now if we just go back to this equation,

171
00:12:59,930 --> 00:13:03,670
z equals x minus mu over sigma. A cross

172
00:13:03,670 --> 00:13:07,810
multiplication, I mean if you multiply both sides

173
00:13:07,810 --> 00:13:16,110
by sigma, you will get sigma times z equals x

174
00:13:16,110 --> 00:13:17,510
minus mu.

175
00:13:32,120 --> 00:13:35,500
Now, in this question,

176
00:13:37,960 --> 00:13:43,160
he asks about, find the value of x such that 20%

177
00:13:43,160 --> 00:13:46,560
of download times are less than x.

178
00:13:50,740 --> 00:13:54,080
Now the probability is less than 0.5, so your z

179
00:13:54,080 --> 00:13:57,780
-score should be on the left side. So here we need

180
00:13:57,780 --> 00:14:03,660
to find the value of z first. Go back to the

181
00:14:03,660 --> 00:14:04,640
normal table you have.

182
00:14:07,680 --> 00:14:08,860
This is the normal table.

183
00:14:16,800 --> 00:14:21,250
We are looking for minus 0.2. I'm sorry, we are

184
00:14:21,250 --> 00:14:28,910
looking for 0.2. So the closest value to 0.2 is

185
00:14:28,910 --> 00:14:34,750
this one, 0.2005. So this is the closest value.

186
00:14:49,630 --> 00:14:54,470
So the exact answer is sometimes not given. So the

187
00:14:54,470 --> 00:14:59,190
approximate one, minus 0.8, all the way up to 4.

188
00:15:00,030 --> 00:15:06,410
So z-score minus 0.8. Any question?

189
00:15:10,330 --> 00:15:15,330
So the value of z-score is minus 0.84. So my

190
00:15:15,330 --> 00:15:21,430
corresponding x-value equals X equal mu. The mu is

191
00:15:21,430 --> 00:15:31,770
given as A plus Z is minus 0.84 times sigma. Sigma

192
00:15:31,770 --> 00:15:42,150
is 5. You will end with 3.8. So this means the

193
00:15:42,150 --> 00:15:47,550
probability of X less than 3.8. Equal point.

194
00:15:47,810 --> 00:15:48,950
Exactly, equal point.

195
00:15:52,430 --> 00:15:57,230
So in this case, the probability is given, which

196
00:15:57,230 --> 00:16:01,710
is 0.20. And we ask about what's the value of x in

197
00:16:01,710 --> 00:16:07,830
this case. So the first step was find the z-score.

198
00:16:09,210 --> 00:16:15,250
Then use this value. I mean, plug this value in.

199
00:16:17,380 --> 00:16:22,520
to find the corresponding X score. That's the

200
00:16:22,520 --> 00:16:25,240
backward normal calculations.

201
00:16:28,820 --> 00:16:34,920
Let's do one problem from the practice, which is

202
00:16:34,920 --> 00:16:36,820
number 18.

203
00:16:53,390 --> 00:16:56,310
Is it clear?

204
00:17:00,590 --> 00:17:10,310
The owners of a fish market determined

205
00:17:10,310 --> 00:17:20,570
that the average weight for a catfish is 3.2 So

206
00:17:20,570 --> 00:17:27,230
this is the

207
00:17:27,230 --> 00:17:39,150
value of the mean 40

208
00:17:48,310 --> 00:17:57,010
So again, the owner of a fish market determined

209
00:17:57,010 --> 00:18:02,350
that the average weight for a catfish is 3.2

210
00:18:02,350 --> 00:18:08,950
pounds. So the mean is 3.2 with a standard

211
00:18:08,950 --> 00:18:18,280
deviation of 0.8. So sigma is 0.8. Now, assuming

212
00:18:18,280 --> 00:18:22,640
the weights of catfish are normally distributed.

213
00:18:23,580 --> 00:18:27,220
In this case, you ask about what's the probability

214
00:18:27,220 --> 00:18:31,800
that a randomly selected catfish will weigh more

215
00:18:31,800 --> 00:18:38,870
than 4.4. So what's the probability of X More

216
00:18:38,870 --> 00:18:41,090
than. So greater than 4.

217
00:18:45,830 --> 00:18:49,290
I just gave the idea to solve this problem. At

218
00:18:49,290 --> 00:18:54,190
home, you can compute it to find the exact answer.

219
00:18:54,590 --> 00:18:59,570
So first step, find z score. z is 4.4.

220
00:19:01,730 --> 00:19:02,590
Divide by z.

221
00:19:05,910 --> 00:19:12,360
Just compute this value. It's 0.8 divided by 0.8

222
00:19:12,360 --> 00:19:13,100
equals 1.

223
00:19:18,560 --> 00:19:22,660
So z-score is 1. So we are looking for the

224
00:19:22,660 --> 00:19:24,700
probability of z greater than 1.

225
00:19:28,340 --> 00:19:35,220
1.5. 1.2. 1.5. 1.5. 1.5. So I'm looking for the

226
00:19:35,220 --> 00:19:37,760
probability of x of z greater than

227
00:19:40,980 --> 00:19:48,700
1 minus P

228
00:19:48,700 --> 00:19:52,700
of Z less than or equal to 1.5. Now go back to the

229
00:19:52,700 --> 00:19:53,040
table.

230
00:20:01,540 --> 00:20:07,260
Now 1.5 under 0. It's 0.9332.

231
00:20:11,410 --> 00:20:19,750
So, 1 minus this probability gives 0.668.

232
00:20:21,210 --> 00:20:24,350
That's the probability of X greater than 4.4.

233
00:20:28,130 --> 00:20:31,590
So, the answer is 0.0668.

234
00:20:34,870 --> 00:20:37,550
Now, for the same question.

235
00:20:41,320 --> 00:20:44,380
What's the probability that a randomly selected

236
00:20:44,380 --> 00:20:47,080
fish will weigh between 3 and 5 pounds?

237
00:20:49,660 --> 00:20:50,400
3?

238
00:20:52,940 --> 00:21:01,040
Up to 5. So first we have to find the score for 3

239
00:21:01,040 --> 00:21:11,260
out of 5. For it to be just 3 minus 3.2. Divide by

240
00:21:11,260 --> 00:21:17,380
0.8 is the first z value. Negative 0.2 divided by

241
00:21:17,380 --> 00:21:30,360
0.8 minus 0.25. The other one, 5 minus 3.2 divided

242
00:21:30,360 --> 00:21:36,680
by 0.8. 1 minus 0.8 divided by 0.8 equals

243
00:21:42,680 --> 00:21:44,120
2.25.

244
00:21:50,840 --> 00:21:57,020
Just double check this result. So here, the

245
00:21:57,020 --> 00:22:04,520
probability of X between 3 and 5 equals minus 0

246
00:22:04,520 --> 00:22:08,200
.25, smaller than Z, smaller than 2.5.

247
00:22:12,650 --> 00:22:17,210
So it's transformed from normal distribution to

248
00:22:17,210 --> 00:22:20,750
standardized normal distribution. So here instead

249
00:22:20,750 --> 00:22:23,530
of computing the probability of X between three

250
00:22:23,530 --> 00:22:26,070
and five, we are looking for the probability

251
00:22:26,070 --> 00:22:31,350
between Z between actually minus. It's minus

252
00:22:31,350 --> 00:22:34,590
because your value here is smaller than the

253
00:22:34,590 --> 00:22:37,790
average. The average was 3.2, so it should be

254
00:22:37,790 --> 00:22:42,630
negative. So z score between minus 0.25 all the

255
00:22:42,630 --> 00:22:48,150
way up to 2.25. So now, this is the probability we

256
00:22:48,150 --> 00:22:56,590
are looking for. Zero in the middle minus one

257
00:22:56,590 --> 00:23:03,610
-fourth to the left of z of zero, mu of zero. And

258
00:23:03,610 --> 00:23:08,560
this is the value of 2.25. Now we are looking

259
00:23:08,560 --> 00:23:09,940
actually for this probability.

260
00:23:12,960 --> 00:23:18,360
The area between minus 0.25 all the way up to 2.5.

261
00:23:19,980 --> 00:23:25,200
So this area equals the

262
00:23:25,200 --> 00:23:29,000
probability of Z less than 2.25 minus.

263
00:23:34,280 --> 00:23:38,780
And again, use the normal. table to give this

264
00:23:38,780 --> 00:23:39,860
value and another one.

265
00:23:42,980 --> 00:23:52,400
Any questions? So first step here, we compute the

266
00:23:52,400 --> 00:23:56,880
z-score for each value x. So the problem is

267
00:23:56,880 --> 00:24:01,380
transformed from normal distribution to

268
00:24:01,380 --> 00:24:05,060
standardized normal distribution. So it becomes z

269
00:24:05,060 --> 00:24:11,500
between minus 1.25 up to 2.25. Now, this area,

270
00:24:11,960 --> 00:24:19,900
this dashed area equals the area below 2.25 minus

271
00:24:19,900 --> 00:24:25,000
the area below minus 1.25. Now, by using the

272
00:24:25,000 --> 00:24:27,760
similar way we did before, you will compute the

273
00:24:27,760 --> 00:24:30,960
value of z. The probability of z is smaller than 2

274
00:24:30,960 --> 00:24:39,580
.25 by using The normal table. So here, 2.2 up to

275
00:24:39,580 --> 00:24:47,900
5. So 9, 8, 7, 8. 9, 8, 7, 8.

276
00:24:53,900 --> 00:25:00,260
So the area below 2.25, 2.2, this value. All the

277
00:25:00,260 --> 00:25:03,940
way up to 5 gives 987.

278
00:25:05,540 --> 00:25:08,860
Now, what's about the probability of Z smaller

279
00:25:08,860 --> 00:25:15,320
than minus 0.25? If you go back to the Z table,

280
00:25:15,380 --> 00:25:18,960
but for the other one, the negative one.

281
00:25:23,120 --> 00:25:28,540
Minus 2 minus 0.2 up

282
00:25:28,540 --> 00:25:34,780
to 5. 0.4013 minus,

283
00:25:36,620 --> 00:25:43,100
that will give the probability between three and

284
00:25:43,100 --> 00:25:43,280
five.

285
00:25:46,180 --> 00:25:48,900
This is the second part.

286
00:25:51,120 --> 00:25:52,460
So the final answer.

287
00:26:00,630 --> 00:26:05,450
So this is the probability that the selected cash

288
00:26:05,450 --> 00:26:10,650
fish will weigh between three and five pounds.

289
00:26:11,810 --> 00:26:20,770
Now, other question is, for the same problem, you

290
00:26:20,770 --> 00:26:28,020
said a citation Catfish should be one of the top 2

291
00:26:28,020 --> 00:26:33,860
% in the weight. Assuming the weights of catfish

292
00:26:33,860 --> 00:26:38,660
are normally distributed, at what weight in bounds

293
00:26:38,660 --> 00:26:43,680
should the citation, the notation be established?

294
00:26:45,800 --> 00:26:50,600
So in this board, he asked about what's the value

295
00:26:50,600 --> 00:26:52,120
of x, for example.

296
00:26:57,160 --> 00:27:01,680
is greater than what value here. And this

297
00:27:01,680 --> 00:27:07,880
probability equals 2%. Because you said the

298
00:27:07,880 --> 00:27:14,720
citation catfish should be one of the top 2%. So

299
00:27:14,720 --> 00:27:23,560
the area in the right here, this area is 2%.

300
00:27:26,000 --> 00:27:34,080
What's the value of x in this case? So here, the

301
00:27:34,080 --> 00:27:38,420
value of x greater than a equals 0.02, and we are

302
00:27:38,420 --> 00:27:39,460
looking for this value.

303
00:27:45,750 --> 00:27:49,170
gives the area to the left side. So this

304
00:27:49,170 --> 00:27:54,490
probability actually, the area to the right is 2%,

305
00:27:54,490 --> 00:28:00,810
so the area to the left is 98%. So this is the

306
00:28:00,810 --> 00:28:01,410
same as,

307
00:28:04,610 --> 00:28:07,930
as we know, the equal sign does not matter because

308
00:28:07,930 --> 00:28:09,090
we have continuous distribution.

309
00:28:12,050 --> 00:28:14,650
continuous distribution, so equal sign does not

310
00:28:14,650 --> 00:28:18,510
matter. So now, if you ask about P of X greater

311
00:28:18,510 --> 00:28:22,190
than a certain value equals a probability of, for

312
00:28:22,190 --> 00:28:27,330
example, 0.02, you have to find the probability to

313
00:28:27,330 --> 00:28:31,890
the left, which is 0.98, because our table gives

314
00:28:31,890 --> 00:28:36,470
the area to the left. Now, we have to find the

315
00:28:36,470 --> 00:28:40,820
value of A such that Probability of X is more than

316
00:28:40,820 --> 00:28:44,820
or equal to 0.98. So again, we have to look at the

317
00:28:44,820 --> 00:28:50,140
normal table, but backwards, because this value is

318
00:28:50,140 --> 00:28:53,720
given. If the probability is given, we have to

319
00:28:53,720 --> 00:28:58,900
look inside the body of the table in order to find

320
00:28:58,900 --> 00:28:59,580
the z-score.

321
00:29:03,350 --> 00:29:07,850
x equals mu plus z sigma in order to find the

322
00:29:07,850 --> 00:29:12,290
corresponding value x. So again, go back to the

323
00:29:12,290 --> 00:29:22,010
normal table, and we are looking for 98%. The

324
00:29:22,010 --> 00:29:27,930
closest value to 98%, look here, if you stop here

325
00:29:27,930 --> 00:29:30,850
at 2, go to the right,

326
00:29:33,660 --> 00:29:39,380
Here we have 9798 or

327
00:29:39,380 --> 00:29:41,480
9803.

328
00:29:42,640 --> 00:29:50,460
So the answer might be your z-score could be 2.05

329
00:29:50,460 --> 00:29:59,440
or 2.06. So again, in this case, the table does

330
00:29:59,440 --> 00:30:04,400
not give the exact. So the approximate one might

331
00:30:04,400 --> 00:30:08,920
be between them exactly. Or just take one of

332
00:30:08,920 --> 00:30:13,140
these. So either you can take 9798, which is

333
00:30:13,140 --> 00:30:19,500
closer to 98% than 9803, because it's three

334
00:30:19,500 --> 00:30:23,780
distant apart. So maybe we can take this value.

335
00:30:24,500 --> 00:30:27,640
Again, if you take the other one, you will be OK.

336
00:30:28,540 --> 00:30:36,730
So you take either 2.05. or 2.06. So let's take

337
00:30:36,730 --> 00:30:45,270
the first value, for example. So my x equals mu, z

338
00:30:45,270 --> 00:30:56,570
is 2.05, times sigma, 0.8. Multiply 2.05 by 8, 0

339
00:30:56,570 --> 00:31:03,610
.8, then add 3.2, you will get What's your answer?

340
00:31:08,390 --> 00:31:17,450
3.2 plus 2 point... So around 4.8. So your answer

341
00:31:17,450 --> 00:31:18,890
is 4.84.

342
00:31:23,810 --> 00:31:29,470
Now if you go back to the problem, and suppose you

343
00:31:29,470 --> 00:31:30,830
know the value of x.

344
00:31:34,250 --> 00:31:36,010
So the probability of X.

345
00:31:42,990 --> 00:31:45,110
Double check to the answer.

346
00:31:49,490 --> 00:31:58,010
4.84. Just check. V of X greater than this value

347
00:31:58,010 --> 00:32:03,290
should

348
00:32:03,290 --> 00:32:09,500
be Two percent. Two percent. So the probability of

349
00:32:09,500 --> 00:32:13,440
X greater than this value should be equal to one

350
00:32:13,440 --> 00:32:18,980
zero. So this problem is called backward normal

351
00:32:18,980 --> 00:32:24,960
calculation because here first step we find the

352
00:32:24,960 --> 00:32:28,040
value of this score corresponding to this

353
00:32:28,040 --> 00:32:33,420
probability. Be careful. The probability of X

354
00:32:33,420 --> 00:32:38,740
greater than 2 is 0.02. So my value here should be

355
00:32:38,740 --> 00:32:44,980
to the right. Because it says greater than A is

356
00:32:44,980 --> 00:32:51,240
just 2%. If you switch the position of A, for

357
00:32:51,240 --> 00:32:57,130
example, if A is on this side, And he asked about

358
00:32:57,130 --> 00:33:02,850
E of X greater than E is 2%. This area is not 2%.

359
00:33:02,850 --> 00:33:10,050
From A up to infinity here, this area is not 2%

360
00:33:10,050 --> 00:33:14,070
because at least it's greater than 0.5. Make

361
00:33:14,070 --> 00:33:16,610
sense? So your A should be to the right side.

362
00:33:17,590 --> 00:33:21,810
Because the value of X greater than E, 2% is on

363
00:33:21,810 --> 00:33:26,400
the other side. Let's move to the next one.

364
00:33:36,180 --> 00:33:37,660
For the same question.

365
00:33:52,790 --> 00:33:57,150
Again, the owner of Catfish Market determined the

366
00:33:57,150 --> 00:34:00,930
average weight of a catfish 3.2 with

367
00:34:00,930 --> 00:34:04,670
standardization 0.8 and we are assuming the

368
00:34:04,670 --> 00:34:08,270
weights of catfish are normally distributed, kiosk

369
00:34:08,270 --> 00:34:17,390
above. Above what weight? Do 89.8% of the weights

370
00:34:17,390 --> 00:34:18,070
care?

371
00:34:20,630 --> 00:34:27,980
Above? And above, so x greater than. X minus. And

372
00:34:27,980 --> 00:34:34,900
98, 89, sorry, 89. So this is a percentage he's

373
00:34:34,900 --> 00:34:45,860
looking for. 89.8%. Now what's the value of A? Or

374
00:34:45,860 --> 00:34:51,560
above what weight? Do 89.8% of the weights occur?

375
00:34:57,730 --> 00:35:02,670
You just make the normal curve in order to

376
00:35:02,670 --> 00:35:07,010
understand the probability. Now, A should be to

377
00:35:07,010 --> 00:35:11,550
the right or to the left side? Imagine A in the

378
00:35:11,550 --> 00:35:15,990
right side here. Do you think the area above A is

379
00:35:15,990 --> 00:35:21,670
89%? It's smaller than 0.5 for sure. So it should

380
00:35:21,670 --> 00:35:29,950
be the other side. So this is your 8. Now, this

381
00:35:29,950 --> 00:35:36,690
area makes sense that it's above 0.5. It's 0.8980.

382
00:35:38,750 --> 00:35:42,850
Now, B of X greater than equals this value. And

383
00:35:42,850 --> 00:35:46,990
again, the table gives the area to the left. So

384
00:35:46,990 --> 00:35:53,740
this is actually X less than A, 1 minus this

385
00:35:53,740 --> 00:35:56,600
value, equals 0.1020.

386
00:36:01,480 --> 00:36:08,760
Now go back to

387
00:36:08,760 --> 00:36:14,400
the normal table. Here it's 0.1020. So it should

388
00:36:14,400 --> 00:36:17,500
be negative. I mean, your z-scope should be

389
00:36:17,500 --> 00:36:17,800
negative.

390
00:36:22,000 --> 00:36:25,640
Now look at 0.102.

391
00:36:28,560 --> 00:36:38,680
Exactly this value. 0.102 is minus 1.2 up to 7. So

392
00:36:38,680 --> 00:36:39,900
minus 1.27.

393
00:36:49,120 --> 00:36:57,900
Minus 1.2. All the way up to 7 is 0.102. So the

394
00:36:57,900 --> 00:37:04,160
corresponding z-score is minus 1.17. Now x again

395
00:37:04,160 --> 00:37:05,980
equals mu plus z sigma.

396
00:37:10,280 --> 00:37:19,960
Mu is 3.2 plus z is negative 1.17 times sigma.

397
00:37:24,250 --> 00:37:34,390
So it's equal to 3.2 minus 127 times 0.3. By

398
00:37:34,390 --> 00:37:36,510
calculator, you'll get the final result.

399
00:37:51,120 --> 00:37:56,180
If the probability is smaller than 0.5, then this

400
00:37:56,180 --> 00:38:00,480
one is negative. Go to the other one. If the

401
00:38:00,480 --> 00:38:04,040
probability is above 0.5, then use the positive z

402
00:38:04,040 --> 00:38:09,600
-score. So what's the answer? 2.18.

403
00:38:12,680 --> 00:38:19,850
Be careful. In the previous one, We had a

404
00:38:19,850 --> 00:38:28,870
probability of X greater than A equal 2%. In

405
00:38:28,870 --> 00:38:33,070
this case, the value of A, for example, is located

406
00:38:33,070 --> 00:38:35,930
in the upper tail here.

407
00:38:40,210 --> 00:38:45,530
For this part, you ask about B of X greater than A

408
00:38:45,530 --> 00:38:51,090
equal 0.89. It's here more than 0.5 should be on

409
00:38:51,090 --> 00:38:54,290
the other side. So you have U of X greater than

410
00:38:54,290 --> 00:38:58,910
equal this value, which is the score in this case

411
00:38:58,910 --> 00:39:02,490
minus 1.17. So the corresponding guess score

412
00:39:02,490 --> 00:39:11,810
actually is 2.24. So this is the weight that 89.8%

413
00:39:11,810 --> 00:39:17,970
of the weights are above it. So around 90% of the

414
00:39:17,970 --> 00:39:25,350
catch fish have weights above this value. So

415
00:39:25,350 --> 00:39:31,170
around 2 pounds. So around 90% of the weights are

416
00:39:31,170 --> 00:39:37,070
above 2.18 pounds. Maybe this is one of the most

417
00:39:37,070 --> 00:39:41,690
important questions in this chapter. Any question?

418
00:39:51,660 --> 00:39:57,580
The last part here, for the same problem he asked

419
00:39:57,580 --> 00:40:01,700
about, what's the probability that a randomly

420
00:40:01,700 --> 00:40:06,120
selected fish will weigh less than 2.2 pounds? I

421
00:40:06,120 --> 00:40:12,680
think straightforward. We did similar in part A.

422
00:40:14,900 --> 00:40:23,880
So B of X less than 0.2. So he's looking for this

423
00:40:23,880 --> 00:40:28,300
probability, which is straightforward one. This

424
00:40:28,300 --> 00:40:38,800
score, 3.2 minus, I'm sorry, it's 2.2 minus minus.

425
00:40:39,280 --> 00:40:43,420
It's 2.2 minus 3.2 divided by sigma.

426
00:41:04,900 --> 00:41:10,240
So again, find the probability now of Z less than

427
00:41:10,240 --> 00:41:11,120
or equal to negative 1.5.

428
00:41:14,870 --> 00:41:19,710
Now, in this case, we have to use the negative z.

429
00:41:20,370 --> 00:41:25,010
It's negative 1.15 minus 1.2 up to 5.

430
00:41:28,150 --> 00:41:30,070
So 0.1056.

431
00:41:33,730 --> 00:41:40,660
So the answer is around 10% of the catfish will

432
00:41:40,660 --> 00:41:46,420
weigh less than 2 pounds. So the answer is 0.1056.

433
00:41:48,340 --> 00:41:49,220
Questions?

434
00:41:52,780 --> 00:41:56,100
So go back to the PowerPoint presentation we have.

435
00:41:57,780 --> 00:41:59,580
The last topic,

436
00:42:02,560 --> 00:42:03,900
evaluating normality.

437
00:42:06,930 --> 00:42:09,350
Many times we mentioned something about normality

438
00:42:09,350 --> 00:42:14,750
and outliers. For sure, if outliers exist, in this

439
00:42:14,750 --> 00:42:19,410
case, the situation is not normal. Now, how can we

440
00:42:19,410 --> 00:42:21,370
tell if a data point is an outlier?

441
00:42:24,650 --> 00:42:28,270
If you remember, we talked about outliers in

442
00:42:28,270 --> 00:42:32,510
Chapter 3. By two ways.

443
00:42:36,750 --> 00:42:38,270
By this score.

444
00:42:42,650 --> 00:42:47,390
And we mentioned that any data point.

445
00:42:54,950 --> 00:42:59,010
Below minus 3, I mean smaller than minus 3, or

446
00:42:59,010 --> 00:43:04,010
above 3, these points are suspected to be

447
00:43:04,010 --> 00:43:04,750
outliers.

448
00:43:09,230 --> 00:43:16,230
So any point, any data value smaller than minus 3

449
00:43:16,230 --> 00:43:22,330
in this form, or above plus 3 is considered to be

450
00:43:22,330 --> 00:43:30,250
an outlier. If we compute the lower limit, which

451
00:43:30,250 --> 00:43:37,310
is Q1 minus 1.5 IQR over the upper limit.

452
00:43:40,170 --> 00:43:47,490
So we

453
00:43:47,490 --> 00:43:51,690
have lower limit, upper limit. So lower limit.

454
00:43:55,400 --> 00:43:56,480
And upper limit.

455
00:43:59,980 --> 00:44:08,420
Any data point below lower limit or above upper

456
00:44:08,420 --> 00:44:13,080
limit is considered to be a type. So therefore, we

457
00:44:13,080 --> 00:44:18,320
have two methods to determine or to examine if the

458
00:44:18,320 --> 00:44:20,960
observation is enough there or not. One by using

459
00:44:20,960 --> 00:44:24,060
this score, straightforward. And the other one, we

460
00:44:24,060 --> 00:44:27,420
have to look for The lower limit and upper limit.

461
00:44:28,960 --> 00:44:34,200
The other method by using software and later on

462
00:44:34,200 --> 00:44:39,380
you will take SPSS in order to determine if the

463
00:44:39,380 --> 00:44:43,100
data is normally distributed by using something

464
00:44:43,100 --> 00:44:52,540
called QQ plot or normal probability plot. So I'm

465
00:44:52,540 --> 00:44:56,710
going to skip this part. Because data is taken by

466
00:44:56,710 --> 00:45:00,970
using software. But in general,

467
00:45:04,330 --> 00:45:11,750
you may look at this graph. Generally speaking, if

468
00:45:11,750 --> 00:45:17,730
you have a probability plot of a data, and the

469
00:45:17,730 --> 00:45:25,530
points lie on a straight line, or close to it, In

470
00:45:25,530 --> 00:45:29,650
this case, the distribution is normal. It's hard

471
00:45:29,650 --> 00:45:33,390
to make this graph manual. It's better to use

472
00:45:33,390 --> 00:45:38,510
software. But at least if we have this graph, and

473
00:45:38,510 --> 00:45:42,150
the points are close to the straight line. I mean,

474
00:45:42,250 --> 00:45:45,950
the points are either on the straight line, lies

475
00:45:45,950 --> 00:45:49,550
on the straight line, or close it. In this case,

476
00:45:50,870 --> 00:45:55,030
the data is normally distributed. If the data

477
00:45:55,030 --> 00:46:00,870
points scattered away of the straight line, then

478
00:46:00,870 --> 00:46:04,390
the distribution is not normal either skewed to

479
00:46:04,390 --> 00:46:08,690
the right or skewed to the left. So for this

480
00:46:08,690 --> 00:46:14,150
specific graph, the plot is normally distributed,

481
00:46:14,290 --> 00:46:17,550
approximately normally distributed. Because most

482
00:46:17,550 --> 00:46:23,230
of the points here lie close to the line and few

483
00:46:24,260 --> 00:46:29,660
are scattered away. Or it means that there are few

484
00:46:29,660 --> 00:46:31,940
outliers in this case, we can ignore these values.

485
00:46:33,100 --> 00:46:35,620
So here plot is approximately a straight line

486
00:46:35,620 --> 00:46:40,360
except for a few outliers at the low and the

487
00:46:40,360 --> 00:46:44,780
right, those points. So generally speaking, the

488
00:46:44,780 --> 00:46:51,200
distribution is normal distribution. That's all

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00:46:51,200 --> 00:46:53,700
for this chapter.