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Statistics: A Step-By-Step Introduction - Panter - 22.07.2022 Statistics: A Step-By-Step Introduction Published 6/2022 MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz Language: English | Size: 9.35 GB | Duration: 7h 11m Lessons and examples from a former Google data scientist to master hypothesis tests, confidence intervals, and more What you'll learn Build a strong statistical vocabulary and foundation in probability Learn to tests hypotheses for proportions and means Learn how to create confidence intervals, and their connection to hypothesis tests Learn how to perform chi-square tests for categorical data Requirements Basic arithmetic skills Basic algebra (ability to understand equations with variables) Description This 51 lesson course teaches the foundational material of statistics covered in an introductory college course, with a focus on mastering hypothesis testing for proportions, means, and categorical data.The course includes:51 video lectures, using the innovative lightboard technology to deliver face-to-face lectures157 pages of lecture notes covering important vocabulary, examples and explanations from the 51 lessons19 quizzes to check your understanding9 assignments with solutions to practice what you have learnedYou will learn about:Common terminology to describe different types of data and learn about commonly used graphsBasic probability, including the concept of a random variable, probability mass functions, cumulative distribution functions, and the binomial distributionWhat is the normal distribution, why it is so important, and how to use z-scores and z-tables to compute probabilitiesType I errors, alpha, critical values, and p-valuesHow to conduct hypothesis tests for one and two proportions using a z-testHow to conduct hypothesis tests for one and two means using a t-testConfidence Intervals for proportions and means, and the connection between hypothesis testing and confidence intervalsHow to conduct a chi-square goodness-of-fit testHow to conduct a chi-square test of homogeneity and independence.This course is ideal for many types of students:Anyone who wants to learn the foundations of statistics and understand concepts like p-values and confidence intervalsStudents taking an introductory college or high school statistics class who would like further explanations and detailed examplesData science professionals who would like to refresh and expand their statistics knowledge to prepare for job interviews Overview Section 1: Introduction, Data, and Graphs Lecture 1 Introduction (Download Lecture Notes and Assignments here!) Lecture 2 Statistics, data, and variables Lecture 3 Categorical Variables, Frequency and Proportion, Bar Charts Lecture 4 Discrete and Continuous Variables, Dot Plots Lecture 5 Stem-and-leaf plots and Histograms Lecture 6 Shape, Skewness. and Symmetry Lecture 7 Central Tendency: Mean, Median, Mode Lecture 8 Spread: Range, IQR, Boxplots Lecture 9 Spread: Variance and Standard Deviation Section 2: Probability Lecture 10 Observed vs. Expected Lecture 11 Outcomes, Events, Sample Space, Complements Lecture 12 Probability of A or B: Unions of Events Lecture 13 Probability of A and B: Intersections and Conditional Probability Lecture 14 Random Variables, PDF/PMF, CDF Lecture 15 Binomial distribution Lecture 16 Expected value Section 3: Normal distributions Lecture 17 The Standard Normal Distribution and the Empirical Rule Lecture 18 More on the Empirical Rule Lecture 19 Z-table Lecture 20 Normal distribution parameters: mu and sigma Lecture 21 Z-scores Lecture 22 The Central Limit Theorem Section 4: One Proportion: Z-test Lecture 23 The Null and Alternative Hypothesis Lecture 24 Critical values and Decision Rules Lecture 25 P-values Lecture 26 P-values with normal approximation Lecture 27 Type I errors and Alpha Lecture 28 One proportion z-test example Section 5: Two Proportions:: Z-test Lecture 29 Hypothesis testing for two proportions Lecture 30 Hypothesis testing for two proportion example Section 6: One Mean: Z-test, t-test Lecture 31 One sample z-test Lecture 32 One sample t-test Lecture 33 One sample t-test example Section 7: Two Means: T-test Lecture 34 Two sample t-test Lecture 35 Two sample t-test example Lecture 36 Pooled and Unpooled Lecture 37 Paired t-tests Section 8: Confidence Intervals Lecture 38 Confidence Intervals Lecture 39 (Optional) Pivoting a test statistic to make a CI Lecture 40 Performing a hypothesis test based on a confidence interval Lecture 41 All Four CI Formulas Lecture 42 Confidence Interval One Proportion Example Lecture 43 Confidence Interval Two Proportion Example Lecture 44 Confidence Interval One Mean Example Lecture 45 Confidence Interval Two Mean Example Section 9: Chi-Square Tests Lecture 46 Chi-square Goodness of Fit Test: Die Lecture 47 Chi-square Goodness of Fit example Lecture 48 Two way tables and expected counts Lecture 49 Chi-square test for two way table Lecture 50 Independence vs Homogeneity Lecture 51 Chi Square Two way Example Self-learners who want a strong college-level foundational course in statistics,College and high school students who need to supplement their course with high-quality lectures and example problems,Data science professionals looking to refresh or expand their knowledge to prepare for job interviews Homepage Download from Rapidgator: |