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Republic of the Philippines Mindanao State University ILIGAN INSTITUTE OF TECHNOLOGY COLLEGE OF ENGINEERING Iligan City SYLLABUS Course Number: ES 85 Course Title: Probability and Statistics in Engineering Credits: 3 units (3 hrs. lec.) Course Description: Introduction to probability, combinations, random variables; probability distribution and frequency distribution; average and measures of variation; linear regression and correlation; acceptance sampling; applications in engineering. Prerequisite: Math 61 (Analytic Geometry and Calculus III) Textbooks: Probability and Statistics for Engineers and Scientists (7th edition) By: Walpole, Myers, Myers, Ye Reference: 1. Probability and Statistics for Engineers and Scientists (5th ed.) By: Walpole, Myers, Ye 2. Design and Analysis of Experiments (3rd ed.) By: D.C. Montgomery, General Objectives: 1. To introduce the fundamental terms used in probability and statistics. 2. To gain working knowledge in statistical inference, sampling and data analysis. 3. To provide the students the basic probability and discrete and continuous random variables. 4. To instill additional material on graphical methods as well as an introduction to sampling distribution. 5. To apply one and two sample point and interval estimation and hypothesis testing. 6. To develop understanding and expertise on the statistical tools used in engineering applications. 7. To cultivate the inventiveness and creative instinct of the students in designing which methods of statistical analysis he is going to apply in the data results from experimental samples. Course outlines: I. Introduction to Statistics and Data Analysis Statistical inference, samples, populations, experimental design, sampling procedure, measures of location, measures of variability, discrete and continuous data, graphical methods and data description. Duration (hrs) 3.0 II. Probability Sample space, events, sample points, probability of an event, conditional probability, additive rule, multiplicative rule, Baye’s rule III. Random Variable and Probability Distributions Random variable, discrete probability, additive rule, continuous probability distribution, joint probability distribution. IV. Mathematical Expectation Mean of random variables, variance and covariance, means and variances of linear combinations of random variables, Chebyshev’s theorem First Preliminary Exam V. Some Discrete Probability Distributions Discrete uniform distribution, binomial and multinomial distribution, hypergeometric distribution, poisson`s distributions VI. Normal Distribution Continuous uniform distribution, normal distribution (Gaussian), normal curve, gamma and exponential distribution, Weibull distribution VII. Function of Random Variables VIII. Fundamental Sampling Distributions and Data Description Random sampling, sampling distribution, Chi-squared distribution, tdistribution, f-distribution Second Preliminary Exam IX. One- and Two-Sample Estimation Problems Population parameters, estimating population means, estimating the population variance, estimating the difference of two means, estimating the population variance, estimating the population proportion, estimating the difference of proportions of two population X. One- and Two-Sample Tests of Hypotheses One and two-tailed tests, test concerning means, choice of sample size, test concerning variances, test concerning proporitions, test for goodness-of-fit, test for equality of several proportions XI. Simple Linear Regression and Correlation Correlation analysis, regression analysis, linear regression coefficients, analysis of variance method, data plots and transformations Final Examination Total 5.0 3.0 3.0 3.0 6.0 6.0 2.0 5.0 3.0 6.0 5.0 3.0 3.0 54.0