Chapter 7: Scatterplots, Association, and Correlation

Slides:



Advertisements
Similar presentations
Correlation and Linear Regression
Advertisements

 Objective: To look for relationships between two quantitative variables.
Scatterplots, Association, and Correlation 60 min.
Chapter 7 Scatterplots, Association, and Correlation Stats: modeling the world Second edition Raymond Dahlman IV.
Scatterplots, Association, and Correlation Copyright © 2010, 2007, 2004 Pearson Education, Inc.
Copyright © 2010, 2007, 2004 Pearson Education, Inc. Chapter 7 Scatterplots, Association, and Correlation.
1-1 Copyright © 2015, 2010, 2007 Pearson Education, Inc. Chapter 6, Slide 1 Chapter 6 Scatterplots, Association and Correlation.
Copyright © 2010, 2007, 2004 Pearson Education, Inc. Chapter 7 Scatterplots, Association, and Correlation.
Copyright © 2010 Pearson Education, Inc. Unit 2: Chapter 7 Scatterplots, Association, and Correlation.
Scatterplots, Association,
Scatterplots, Associations, and Correlation
 Chapter 7 Scatterplots, Association, and Correlation.
Slide 7-1 Copyright © 2004 Pearson Education, Inc.
1 Chapter 7 Scatterplots, Association, and Correlation.
Copyright © 2008 Pearson Education, Inc. Publishing as Pearson Addison-Wesley Chapter 7 Scatterplots, Association, and Correlation.
Copyright © 2010 Pearson Education, Inc. Chapter 7 Scatterplots, Association, and Correlation.
Chapter 7 Scatterplots, Association, and Correlation.
Module 11 Scatterplots, Association, and Correlation.
Copyright © 2010, 2007, 2004 Pearson Education, Inc. Chapter 7 Scatterplots, Association, and Correlation.
Copyright © 2007 Pearson Education, Inc. Publishing as Pearson Addison-Wesley Chapter 7 Scatterplots, Association, and Correlation.
Statistics 7 Scatterplots, Association, and Correlation.
Copyright © 2007 Pearson Education, Inc. Publishing as Pearson Addison-Wesley Slide 7- 1.
Part II Exploring Relationships Between Variables.
Scatterplots, Association, and Correlation
CHAPTER 3 Describing Relationships
Chapter 3: Describing Relationships
CHAPTER 7 LINEAR RELATIONSHIPS
3.1 Scatterplots and Correlation
Chapter 3: Describing Relationships
CHAPTER 3 Describing Relationships
Ch. 10 – Scatterplots, Association and Correlation (Day 1)
Chapter 3: Describing Relationships
Chapter 7 Scatterplots, Association, and Correlation
Scatterplots, Association and Correlation
Chapter 7 Scatterplots, Association, and Correlation
Scatter plots & Association
Chapter 7 Scatterplots, Association, and Correlation
Scatterplots, Association, and Correlation
Chapter 7 Part 1 Scatterplots, Association, and Correlation
Chapter 3: Describing Relationships
Chapter 7 Part 2 Scatterplots, Association, and Correlation
Scatterplots, Association, and Correlation
Scatterplots, Association, and Correlation
Scatterplots, Association, and Correlation
Chapter 7: Scatterplots, Association, and Correlation
Examining Relationships
Review of Chapter 3 Examining Relationships
CHAPTER 3 Describing Relationships
CHAPTER 3 Describing Relationships
Chapter 3 Scatterplots and Correlation.
CHAPTER 3 Describing Relationships
CHAPTER 3 Describing Relationships
Chapter 3: Describing Relationships
Scatterplots, Association and Correlation
CHAPTER 3 Describing Relationships
CHAPTER 3 Describing Relationships
Summarizing Bivariate Data
CHAPTER 3 Describing Relationships
Scatterplots Scatterplots may be the most common and most effective display for data. In a scatterplot, you can see patterns, trends, relationships, and.
CHAPTER 3 Describing Relationships
Scatterplots, Association and Correlation
Algebra Review The equation of a straight line y = mx + b
CHAPTER 3 Describing Relationships
Correlation r Explained
CHAPTER 3 Describing Relationships
Honors Statistics Review Chapters 7 & 8
Review of Chapter 3 Examining Relationships
CHAPTER 3 Describing Relationships
Scatterplots, Association, and Correlation
3.2 Correlation Pg
Presentation transcript:

Chapter 7: Scatterplots, Association, and Correlation “You can observe a lot by watching.” Yogi Berra

Scatterplots Most common and effective display of data Observe patterns, trends, relationships, and outlying values Observe the relationship between two quantitative variables Ask whether there is an association between the two variables.

Scatterplots Look at the direction of the points Look at the form Positive Negative Look at the form Linear Non-linear Look at how much scatter the plot has Look for any outliers Points that stand away from the overall pattern

Scatterplots – TI Tips

Roles for Variables Explanatory Variable Response Variable Predictor variable x-axis Response Variable y-axis Roles that we choose are based upon how we think about the variables The variables may or may not explain anything or respond to anything

Correlation Conditions Measures the strength of the linear association between two quantitative variables. Quantitative Variable Condition Know the variables’ units and what they measure Strength Enough Condition Know that the correlation is linear Outlier Condition Report the correlation with and without the outlier(s).

Finding the Correlation Always check the conditions first.

Correlation Properties Sign gives the direction of the association Between -1 and +1 Treats x and y symmetrically No units Not affected by change in units, scale, or center Measures strength of linear association Sensitive to outliers

Strengthening Scatterplots When a scatterplot shows a non-linear form that consistently increases or decreases, we can straighten the form by re-expressing one or both variables.

What Can Go Wrong?? Don’t say “Correlation” when you mean “Association.” Association Vague term Describes relationship between two variables Correlation Precise term Describes the linear relationship between quantitative variables

What Can Go Wrong?? Check the Conditions! Don’t correlate categorical variables. Be sure the association is linear. Don’t confuse Correlation with Causation!!! Don’t try to explain correlation by saying that the predictor variable has caused the response variable to change. Watch out for Lurking variables!! Hidden variable simultaneously affecting both variables

Let’s Try Lunch! (Pg 133 #13) Variables: Conditions Calories: average number of calories a child consumed during lunch Time: average number of minutes a child spent at the table when lunch was served. Conditions Quantitative: both calories and time are quantitative Straight enough: scatterplot looks linear Outlier: There are a few stray points, but the none are very far from the rest of the points

Lunchtime!!

Lunchtime!! The correlation coefficient is Interpretation: The scatterplot shows a negative direction, with lower calories going with higher times. The plot is generally straight with a moderate amount of scatter. The correlation coefficient of -0.65 indicates a linear association. A few cases stand out with lower times related to higher calorie intake, as well as a few with higher times related to lower calorie intake.