# Difference between revisions of "AP Statistics Curriculum 2007"

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==This is an Outline of a General Advance-Placement (AP) Statistics Curriculum== | ==This is an Outline of a General Advance-Placement (AP) Statistics Curriculum== | ||

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+ | ===Outline=== | ||

+ | Each topic discussed in teh SOCR AP Curricumum should contain the following subsections: | ||

+ | * Motivation/Problem: A real data set and fundamental challenge. | ||

+ | * Approach: Strategies for solving the problem, data understanding & inference. | ||

+ | * Model Validation: Checking/affirming underlying assumptions. | ||

+ | * Computational Resources: Internet-based SOCR Tools (offline resources, e.g., tables). | ||

+ | * Examples: computer simulations and real observed data. | ||

+ | * Hands-on activities: Step-by-step practice problems. | ||

===Introduction to Statistics=== | ===Introduction to Statistics=== |

## Revision as of 11:55, 12 June 2007

## Contents

- 1 This is an Outline of a General Advance-Placement (AP) Statistics Curriculum
- 1.1 Outline
- 1.2 Introduction to Statistics
- 1.3 Describing, Exploring, and Comparing Data
- 1.4 Probability
- 1.5 Probability Distributions
- 1.6 Normal Probability Distributions
- 1.7 Relations Between Distributions
- 1.8 =Law of Large Numbers
- 1.9 Estimates and Sample Sizes
- 1.10 Hypothesis Testing
- 1.11 Inferences from Two Samples
- 1.12 Correlation and Regression
- 1.13 Multinomial Experiments and Contingency Tables
- 1.14 Statistical Process Control

## This is an Outline of a General Advance-Placement (AP) Statistics Curriculum

### Outline

Each topic discussed in teh SOCR AP Curricumum should contain the following subsections:

- Motivation/Problem: A real data set and fundamental challenge.
- Approach: Strategies for solving the problem, data understanding & inference.
- Model Validation: Checking/affirming underlying assumptions.
- Computational Resources: Internet-based SOCR Tools (offline resources, e.g., tables).
- Examples: computer simulations and real observed data.
- Hands-on activities: Step-by-step practice problems.