Lectures' Notes STAT – 324  Probability and Statistics for Engineers First Semester 1431/1432 1190 and 5735 Teacher: Dr. Abdel-Hamid El-Zaid Department.

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Lectures' Notes STAT – 324  Probability and Statistics for Engineers First Semester 1431/1432 1190 and 5735 Teacher: Dr. Abdel-Hamid El-Zaid Department of Statistics and Operations Research College of Science, King Saud University   Textbook: Probability and Statistics for Engineers and Scientists By: R. E. Walpole, R. H. Myers, and S. L. Myers (Sixth Edition)

Chapter 1 Introduction to Statistics and Data Analysis: 1 Chapter 1 Introduction to Statistics and Data Analysis: 1.1 Introduction: * Populations and Samples: Sample = Observations (We calculate Some Statistics) Example: 20 Students from KSU (Sample Mean) n = Sample Size Population (Some Unknown Parameters) Example: KSU Students (Height Mean) N=Population Size

·  Let X1,X2,…,XN be the population values (in general, they are unknown) · Let x1,x2,…,xn be the sample values (these values are known) ·      Statistics obtained from the sample are used to estimate (approximate) the parameters of the population. * Scientific Data * Statistical Inference (1) Estimation:  Point Estimation  Interval Estimation (Confidence Interval) (2) Hypotheses Testing

1. 3 Measures of Location (Central Tendency): 1.3 Measures of Location (Central Tendency): * The data (observations) often tend to be concentrated around the center of the data. * Some measures of location are: the mean, mode, and median. * These measures are considered as representatives (or typical values) of the data. They are designed to give some quantitative measures of where the center of the data is in the sample. (unit) The Sample mean of the observations ( ): If are the sample values, then the sample mean is

Example: Suppose that the following sample represents the ages (in year) of a sample of 3 men: (n=3) Then, the sample mean is: Note:

1.4 Measures of Variability (Dispersion or Variation): The variation or dispersion in a set of data refers to how spread out the observations are from each other. The variation is small when the observations are close together. There is no variation if the observations are the same. Some measures of dispersion are range, variance, and standard deviation These measures are designed to give some quantitative measures of the variability in the data.

The Sample Variance (S2): Let be the observations of the sample. The sample variance is denoted by S2 and is defined by: (unit)2 where is the sample mean. Note: (n 1) is called the degrees of freedom (df) associated with the sample variance S2.

 The Standard Deviation (S): The standard deviation is another measure of variation. It is the square root of the variance, i.e., it is: (unit)

Example: Compute the sample variance and standard deviation of the following observations (ages in year): 10, 21, 33, 53, 54. Solution: n=5 (year)

The sample standard deviation is: (year) * Another Formula for Calculating S2: (It is simple and more accurate) For the previous Example, 10 21 33 53 54 100 441 1089 2809 2916 (year)2