Difference between revisions of "De Veaux Map"

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(Chapter 4: Understanding and Comparing Distributions)
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== Chapter 1: Exploring and Understanding Data ==
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== Part I: Exploring and Understanding Data
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=== Chapter 1: Exploring and Understanding Data ====
  
 
* 1.1: What is Statistics?
 
* 1.1: What is Statistics?
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:::Types of Variables: Categorical, Quantitative, Identifier, Ordinal
 
:::Types of Variables: Categorical, Quantitative, Identifier, Ordinal
  
== Chapter 2: Displaying and Describing Categorical Data ==
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=== Chapter 2: Displaying and Describing Categorical Data ===
  
 
* 2.1: Summarizing and Displaying a Single Categorical Variable  
 
* 2.1: Summarizing and Displaying a Single Categorical Variable  
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:::Plotting conditional distributions (with pie charts, bar charts and segmented bar charts)
 
:::Plotting conditional distributions (with pie charts, bar charts and segmented bar charts)
  
== Chapter 3: Displaying and Displaying Quantitative Data ==
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=== Chapter 3: Displaying and Displaying Quantitative Data ===
  
 
* 3.1: Displaying Quantitative Variables
 
* 3.1: Displaying Quantitative Variables
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* 3.8: Summary---What to ''Tell'' About a Quantitative Variable
 
* 3.8: Summary---What to ''Tell'' About a Quantitative Variable
  
== Chapter 4: Understanding and Comparing Distributions ==
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=== Chapter 4: Understanding and Comparing Distributions ===
  
 
* 4.1: Comparing Groups with Histograms
 
* 4.1: Comparing Groups with Histograms
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:::...To equalize spread across groups
 
:::...To equalize spread across groups
  
== Chapter 5: The Standard Deviation as a Ruler and the Normal Model ==
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=== Chapter 5: The Standard Deviation as a Ruler and the Normal Model ===
  
 
* 5.1: Standardizing with z-Scores
 
* 5.1: Standardizing with z-Scores
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:::From percentiles to scores: z in reverse
 
:::From percentiles to scores: z in reverse
 
* 5.5: Normal Probability Plots
 
* 5.5: Normal Probability Plots
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== Part II: Exploring Relationships Between Variables ==

Revision as of 17:47, 17 November 2018

== Part I: Exploring and Understanding Data

Chapter 1: Exploring and Understanding Data =

  • 1.1: What is Statistics?
  • 1.2: Data
  • 1.3: Variables
Types of Variables: Categorical, Quantitative, Identifier, Ordinal

Chapter 2: Displaying and Describing Categorical Data

  • 2.1: Summarizing and Displaying a Single Categorical Variable
The area principle
Frequency tables
Bar charts
Pie charts
  • 2.2: Exploring the Relationship Between Two Categorical Variables
Contingency tables
Conditional distributions
Independence
Plotting conditional distributions (with pie charts, bar charts and segmented bar charts)

Chapter 3: Displaying and Displaying Quantitative Data

  • 3.1: Displaying Quantitative Variables
Histograms
Stem and leaf displays
Dotplots
  • 3.2: Shape
Unimodal, bimodal or multimodal
Symmetric or skewed
Outliers
  • 3.3: Center
Median
  • 3.4: Spread
Range, min, max
Interquartile range, Q1, Q3
  • 3.5: Boxplots and 5-Number Summaries
  • 3.6: The Center of a Symmetric Distribution: The Mean
Mean or Median?
  • 3.7: The Spread of a Symmetric Distribution: The Standard Deviation
  • 3.8: Summary---What to Tell About a Quantitative Variable

Chapter 4: Understanding and Comparing Distributions

  • 4.1: Comparing Groups with Histograms
  • 4.2: Comparing Groups with Boxplots
  • 4.3: Outliers
  • 4.4: Timeplots
  • 4.5: Re-Expressing Data: A First Look
...To improve symmetry
...To equalize spread across groups

Chapter 5: The Standard Deviation as a Ruler and the Normal Model

  • 5.1: Standardizing with z-Scores
  • 5.2: Shifting and Scaling
Shifting to adjust the center
Rescaling to adjust the scale
Shifting, scaling and z-Scores
  • 5.3: Normal Models
The "nearly normal condition"
The 68-95-99.7 Rule
  • 5.4: Finding Normal Percentiles
Normal percentiles
From percentiles to scores: z in reverse
  • 5.5: Normal Probability Plots

Part II: Exploring Relationships Between Variables