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English Stats for Raoni
Welcome and Course Overview
Welcome to the course (8:02)
Meet the Team
Course Resources and Downloads
Enabling and Demonstrating the Analysis ToolPak (1:34)
Module 1: Uncertainty in data
Welcome to Module 1 - Things aren't always what they seem (1:04)
Excel Tools - Descriptive Statistics (3:21)
Precision and Accuracy (4:34)
Spread and Deviation
Activity: Precision and Accuracy
Random Error (9:15)
The Normal Distribution (3:17)
Activity: The normal distribution
How rare is rare?
Example 1.1 - Uncertainty and probability (4:53)
Activity: Build simple equation
Exercise 1
Population and Sampling (7:05)
Activity: Sampling Tools
The standard error (7:46)
Sampling a Population - the standard error
Example 1.2 - Standard error (1:30)
Central Limit Theorem (Concept) (2:50)
Central Limit Theorem - Sample Size
Activity: Central Limit Theorem
Confidence intervals and confidence limits (7:57)
Confidence Limits (Error Bars)
Example 1.3 - Confidence limits for large samples (1:12)
Sample size for sample mean
Activity: Experiment summary
Exercise 2
Error propagation in simple formulae & Example 1.4 (5:47)
Tolerance limits & Example 1.5 (2:56)
Relative errors
Relative Error & Example 1.6 (6:54)
Propagation of Error & Example 1.7 (5:58)
Further Examples - Example 1.8 (3:43)
Further Examples - Example 1.9 (3:09)
Exercise 3
Exercise 4
Knowledge Check - Module 1
Module 2: Comparing quantities and hypothesis testing
Module 2 Introduction (0:36)
t-tests (5:11)
The t-distribution
Example 2.1 - Confidence interval using t (6:35)
Hypothesis (significance) Testing (2:20)
Example 2.2 - Two sample t-test: 1-sided (9:14)
Testing the Significance of Observed Differences
t-test: 2-sided for two means & Worked Example 2.2 (18:22)
Confidence limits on the difference & Worked Example 2.3 (9:24)
Exercise 5
Paired t-test
Paired t-test & Worked Example 2.4 (13:03)
Beware the mean (2:27)
Exercise 6
Compare sample mean with standard & Worked Example 2.5 (7:36)
t-tests summary and assumptions (4:44)
Exercise 7
Type I and Type II errors
Sample Size for t-tests (8:31)
Activity: Hypothesis Testing with error analysis
The formula for sample size (7:49)
Example 2.6 (4:39)
Example and Excel Worked Example 2.7 (7:44)
Interpreting Errors (Risks) (10:14)
Final Hypothesis Testing (2:16)
Exercise 8
Testing Outliers, Example & Worked Example 2.8 (10:55)
Grubbs Test
F-test
F-test to compare two variances & Example 2.9 (9:44)
Exercise 9
Principles of ANOVA
Analysis of Variance (ANOVA) & Example 2.10 (10:10)
Activity: ANOVA
Example and Worked Example 2.11 (7:11)
The one-way ANOVA
Activity: One-way ANOVA
Exercise 10
Exercise 11
Chi-square test
Chi-square test & Example 2.12 (5:16)
Example and Excel Worked Example 2.13 (5:57)
Level of Significance (6:34)
P-value summary (5:25)
Exercise 12
Exercise 13
Knowledge Check - Module 2
Module 3: Developing models with regression analysis
Introduction (3:28)
Activity: Linear Regression
Example & Worked Example 3.1 (10:57)
What is R-squared and R (8:06)
R-squared, R and Correlations
Regression Analysis - Correlations (2:27)
Exercise 14
Multiple Linear Regression - Example 3.2 (5:45)
Worked Example 3.2 (7:20)
Process Model (1:59)
Exercise 15
General Approach to Regression Modelling
How to Judge Regression Models
Judging Regression - Outliers Example 3.2 (revisited) (6:41)
Improving the Regression Model (8:44)
Scaling x-variables - Example 3.2 (revisited) (3:40)
Comparing Two Trendlines
Considerations for Comparing Two Trendlines (5:01)
Example and Worked Example 3.3 (13:59)
Exercise 16
Knowledge Check - Module 3
Module 4: Design of experiments
Module 4 Introduction (4:27)
Preliminary Steps (3:55)
Activity: Design of Experiments-Preliminary Steps
Design of Experiments - Nomenclature
General Mathematical Model (2:35)
Introduction to Randomised Block Design
Randomised Block Design (3:23)
Example and Worked Example 4.1 (7:34)
Example and Worked Example 4.2 (9:58)
Collecting Data (1:32)
Exercise 17
Exercise 18
Factorial Experiments (4:19)
Factorial Design
Advantages of Factorial Designs (6:14)
Analysis of Factorial Experiments
Example 4.3 (5:30)
Example 4.4 (2:23)
Activity: Experimental Error Estimates
Exercise 19
Yates Analysis (2:15)
Yates Analysis of 2^n factorial
Example 4.5 (5:29)
Yates Mathematical Model (5:30)
Example 4.6 (12:20)
Exercise 20
Fractional Factorials (1:33)
Response Surface Designs (5:00)
Response Surface Designs - CCRDs
Knowledge Check - Module 4
Module 5: Designing, running and analysing plant trials
Module 5 Introduction (1:52)
Overview (6:16)
Process Variability (10:19)
Conducting a Plant Trial
Paired Trial (5:05)
Paired Trial and Example 5.1 (2:41)
Randomised Block Design & Example 5.2 (3:15)
Design Criteria
Worked Example 5.2 (2:17)
Modelling - Comparing Trendlines
Regression Models & Example 5.3 (4:53)
Worked Example 5.3 (4:13)
Multiple Regression Process Model
Multi-linear Regression Example 5.4 and Worked Example 5.4 (9:57)
Modelling Time series - Intervention Analysis
Modelling a Time Series (3:49)
Example 5.5 and Worked Example 5.5 (5:42)
Time Series and Cumulative Sum (2:09)
Cusum Charts and Worked Example 5.6 (5:59)
Recovery Cusum (4:41)
Exercise 21
Exercise 22
Cautionary Tale (6:31)
Analysing Plant Trials (1:17)
Which Method? (1:18)
Practical Matters (2:51)
Pro-Forma (5:30)
Knowledge Check - Module 5
Module 6: Course summary and interactive flowchart
Course Wrap-up (5:03)
Activity: Interactive Flowchart
Feedback Survey - End of Course
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Sample Size for t-tests
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