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The Standard Normal Distribution

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1 The Standard Normal Distribution
Lecture 20 Section 6.3.1 Wed, Oct 13, 2004

2 The Standard Normal Distribution
The standard normal distribution – The normal distribution with mean 0 and standard deviation 1. It is denoted by the letter Z. Therefore, Z is N(0, 1).

3 The Standard Normal Distribution
1 2 3 -1 -2 -3 N(0, 1)

4 Areas Under the Standard Normal Curve
What proportion of values of Z will fall below 0? What proportion of values of Z will fall below +1? What proportion of values of Z will fall above +1? What proportion of values of Z will fall below –1?

5 Areas Under the Standard Normal Curve
How do we find the area under the curve to the left of +1? -3 -2 -1 1 2 3

6 Areas Under the Standard Normal Curve
This is too hard to calculate by hand. We will use two methods. Standard normal table. The TI-83 function normalcdf.

7 The Standard Normal Table
See pages 372 – 373 or pages 942 – 943. The entries in the table are the areas to the left of the z-value. To find the area to the left of +1, locate 1.00 in the table and read the entry.

8 The Standard Normal Table
z .00 .01 .02 : 0.9 0.8159 0.8186 0.8212 1.0 0.8413 0.8438 0.8461 1.1 0.8643 0.8665 0.8686

9 The Standard Normal Table
The area to the left of 1.00 is That means that 84.13% of that population is below 1.00. 0.8413 -3 -2 -1 1 2 3

10 Standard Normal Areas What is the area to the right of +1?
What is the area to the left of –1? What is the area to the right of –1? What is the area between –1 and +1?

11 Let’s Do It! Let’s Do It! 6.1, p. 332 – More Standard Normal Areas.
Use the standard normal table.

12 TI-83 – Standard Normal Areas
Press 2nd DISTR. Select normalcdf (Item #2). Enter the lower and upper bounds of the interval. If the interval is infinite to the left, enter -99 as the lower bound. If the interval is infinite to the right, enter 99 as the upper bound.

13 TI-83 – Standard Normal Areas
Press ENTER. Examples: normalcdf(-99, 1) = normalcdf(1, 99) = normalcdf(-99, -1) = normalcdf(-1, 99) = normalcdf(-1, 1) =

14 Let’s Do It Again! Let’s Do It! 6.1, p. 332 – More Standard Normal Areas. Use the TI-83.

15 The “ Rule” The Rule: For any normal distribution N(, ), 68% of the values lie within  of . 95% of the values lie within 2 of . 99.7% of the values lie within 3 of .

16 The “68-95-99.7 Rule” Equivalently,
68% of the values lie in the interval [ – ,  + ], or   . 95% of the values lie in the interval [ – 2,  + 2], or   2. 99.7% of the values lie in the interval [ – 3,  + 3], or   3.

17 The Empirical Rule The well-known Empirical Rule is similar, but more general. If X has a “mound-shaped” distribution, then Approximately 68% lie within  of . Approximately 95% lie within 2 of . Approximately 99.7% lie within 3 of .

18 Let’s Do It! Let’s Do It! 6.4, p. 335 – Pine Needles.
Let’s Do It! 6.5, p. 335 – Last Longer?


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