1 / 11

Normal Distribution

Normal Distribution. The Bell Curve. Questions. What are the parameters that drive the normal distribution? What does each control? Draw a picture to illustrate. Identify proportions of the normal, e.g., what percent falls above the mean? Between 1 and 2 SDs above the mean?

Download Presentation

Normal Distribution

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Normal Distribution The Bell Curve

  2. Questions • What are the parameters that drive the normal distribution? What does each control? Draw a picture to illustrate. • Identify proportions of the normal, e.g., what percent falls above the mean? Between 1 and 2 SDs above the mean? • What is the 95 percent confidence interval for the mean? • How can the confidence interval be computed?

  3. Function • The Normal is a theoretical distribution specified by its two parameters. • It is unimodal and symmetrical. The mode, median and mean are all just in the middle.

  4. Function (2) • There are only 2 variables that determine the curve, the mean and the variance. The rest are constants. • 2 is 2. Pi is about 3.14, and e is the natural exponent (a number between 2 and 3). • In z scores (M=0, SD=1), the equation becomes: (Negative exponent means that big |z| values give small function values in the tails.)

  5. Areas and Probabilities • Cumulative probability:

  6. Areas and Probabilities (2) • Probability of an Interval

  7. Areas and Probabilities (3) • Howell Table 3.1 shows a table with cumulative and split proportions Graph illustrates z = 1. The shaded portion is about 16 percent of the area under the curve.

  8. Areas and Probabilities (3) • Using the unit normal (z), we can find areas and probabilities for any normal distribution. • Suppose X=120, M=100, SD=10. Then z=(120-100)/10 = 2. About 98 % of cases fall below a score of 120 if the distribution is normal. In the normal, most (95%) are within 2 SD of the mean. Nearly everybody (99%) is within 3 SD of the mean.

  9. Review • What are the parameters that drive the normal distribution? What does each control? Draw a picture to illustrate. • Identify proportions of the normal, e.g., what percent falls below a z of .4? What part falls below a z of –1?

  10. Importance of the Normal • Errors of measures, perceptions, predictions (residuals, etc.) X = T+e (true score theory) • Distributions of real scores (e.g., height); if normal, can figure much • Math implications (e.g., inferences re variance) • Will have big role in statistics, described after the sampling distribution is introduced

  11. Computer Exercise • Get data from class (e.g., height in inches) • Compute mean, SD, StErr of Mean in Excel • Compute same in SAS PROC UNIVARIATE • Show plots (stem-leaf & Boxplot) • Show test of normality

More Related