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STAT10050 – Course Outline Lecture Topic Code Chapter Utts & Heckard Topic Learning Goals 1 A 1 Introduction and Motivation 1 B 2.1, 2.2, 5 Statistical Concepts: Samples and Populations, Variability, Bias in Questions and Bias in Sampling, Types of Variables and Data The students will know the following: the difference between sample and population; spread in data set; how to word questions correctly in questionnaire; how to avoid mistakes in sampling; the different types of variables and data. 2/3 C 5 Collecting Data 1: Sampling and surveys The students will discover the different types of sampling. They will also know how to carry out surveys in a correct manner, and identify when there is misleading information from surveys in the newspapers. 2/3 D 6 Collecting Data 2: Experiments and Observational Studies The students should identify the difference between observational studies and experimental studies, and the various different methods used in each of these. 4/5 E 2 Summarising Data 1 Numerical Summary Measures – Mean, Median, Mode, Trimmed Means, Quartiles, Percentiles, Range, Variance, Standard Deviation, Interquartile Range The students will know how to, calculate these quantities, and be able to use them to make statements about a data set. STAT10050 – Course Outline 5/6 F 2 Summarising Data 2 Graphical Techniques for Displaying Data – Stem and Leaf Plots, Histograms, Box Plots The students will know how to, construct these various graphical techniques, and display data visually. They will be able to identify when each is used. 6 G 7 Probability Concepts: Probability of Events, Probability for Discrete and Continuous Random Variables (probability distribution function, probability density function) The students will familiarise themselves with different axioms of probability. They will know the difference between discrete and Continuous Random Variables, and how to calculate their respective probabilities. 7 I 9 Sampling Distributions and the Central Limit Theorem. The students will discover how to form a distribution, and the different issues with small and large sample. 8 – Reading week H 8 Particular Probability Distributions: Bernoulli, Binomial, Geometric, Negative Binomial and Normal Distributions. The students will discover how to, identify the different distributions, and calculate their respective probabilities. STAT10050 – Course Outline 9/10 J 10, 11 Margin of Error, Confidence Interval Estimation for population mean and proportion using a single sample. The students will discover how to calculate these quantities. They will also know how to interpret them. 11/12 K 12,13 Hypothesis testing: Principle of a Hypothesis Test, Errors in Hypothesis Testing, P-values, Tests for population means and proportions in a single sample The students will know the following: different steps and errors involved in Hypothesis Testing; how to calculate P-values from the statistical tables; when to use the t-Distribution or normal Distribution function, how to calculate the t or z statistic; how to carry out the Tests for population means and proportions in a single sample. 12 L Summary