AP Statistics Curriculum 2007 Normal Std

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 Revision as of 17:21, 9 May 2008 (view source)IvoDinov (Talk | contribs) (→Experiments: typo on X_i definition)← Older edit Revision as of 17:23, 9 May 2008 (view source)IvoDinov (Talk | contribs) (→Standard Normal Distribution: slightly rearranged the StdNormal definition)Newer edit → Line 2: Line 2: === Standard Normal Distribution=== === Standard Normal Distribution=== - The Standard Normal Distribution is a continuous distribution where the following exact ''areas'' are bound between the Standard Normal Density Function and the x-axis on the symmetric intervals around the origin: + The Standard Normal Distribution is a continuous distribution with the following density: + * Standard Normal density function $f(x)= {e^{-x^2} \over \sqrt{2 \pi}}.$ + + Note that the following exact ''areas'' are bound between the Standard Normal Density Function and the x-axis on these symmetric intervals around the origin: * The area: -1 < x < 1 = 0.8413 - 0.1587 = 0.6826 * The area: -1 < x < 1 = 0.8413 - 0.1587 = 0.6826 * The area: -2.0 < x < 2.0 = 0.9772 - 0.0228 = 0.9544 * The area: -2.0 < x < 2.0 = 0.9772 - 0.0228 = 0.9544 * The area: -3.0 < x < 3.0 = 0.9987 - 0.0013 = 0.9974 * The area: -3.0 < x < 3.0 = 0.9987 - 0.0013 = 0.9974
[[Image:SOCR_EBook_Dinov_RV_Normal_013108_Fig0.jpg|600px]]
[[Image:SOCR_EBook_Dinov_RV_Normal_013108_Fig0.jpg|600px]]
- - * Standard Normal density function $f(x)= {e^{-x^2} \over \sqrt{2 \pi}}.$ * The Standard Normal distribution is also a special case of the [[AP_Statistics_Curriculum_2007_Normal_Prob | more general normal distribution]] where the mean is set to zero and a variance to one. The Standard Normal distribution is often called the ''bell curve'' because the graph of its probability density resembles a bell. * The Standard Normal distribution is also a special case of the [[AP_Statistics_Curriculum_2007_Normal_Prob | more general normal distribution]] where the mean is set to zero and a variance to one. The Standard Normal distribution is often called the ''bell curve'' because the graph of its probability density resembles a bell.

General Advance-Placement (AP) Statistics Curriculum - Standard Normal Variables and Experiments

Standard Normal Distribution

The Standard Normal Distribution is a continuous distribution with the following density:

• Standard Normal density function $f(x)= {e^{-x^2} \over \sqrt{2 \pi}}.$

Note that the following exact areas are bound between the Standard Normal Density Function and the x-axis on these symmetric intervals around the origin:

• The area: -1 < x < 1 = 0.8413 - 0.1587 = 0.6826
• The area: -2.0 < x < 2.0 = 0.9772 - 0.0228 = 0.9544
• The area: -3.0 < x < 3.0 = 0.9987 - 0.0013 = 0.9974
• The Standard Normal distribution is also a special case of the more general normal distribution where the mean is set to zero and a variance to one. The Standard Normal distribution is often called the bell curve because the graph of its probability density resembles a bell.

Experiments

Suppose we decide to test the state of 100 used batteries. To do that, we connect each battery to a volt-meter by randomly attaching the positive (+) and negative (-) battery terminals to the corresponding volt-meter's connections. Electrical current always flows from + to -, i.e., the current goes in the direction of the voltage drop. Depending upon which way the battery is connected to the volt-meter we can observe positive or negative voltage recordings (voltage is just a difference, which forces current to flow from higher to the lower voltage.) Denote Xi={measured voltage for battery i} - this is random variable with mean of 0 and unitary variance. Assume the distribution of all Xi is Standard Normal, $X_i \sim N(0,1)$. Use the Normal Distribution (with mean=0 and variance=1) in the SOCR Distribution applet to address the following questions. This Distributions help-page may be useful in understanding SOCR Distribution Applet. How many batteries, from the sample of 100, can we expect to have?

• Absolute Voltage > 1? P(X>1) = 0.1586, thus we expect 15-16 batteries to have voltage exceeding 1.
• |Absolute Voltage| > 1? P(|X|>1) = 1- 0.682689=0.3173, thus we expect 31-32 batteries to have absolute voltage exceeding 1.
• Voltage < -2? P(X<-2) = 0.0227, thus we expect 2-3 batteries to have voltage less than -2.
• Voltage <= -2? P(X<=-2) = 0.0227, thus we expect 2-3 batteries to have voltage less than or equal to -2.
• -1.7537 < Voltage < 0.8465? P(-1.7537 < X < 0.8465) = 0.761622, thus we expect 76 batteries to have voltage in this range.

References

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