Correlation Chapter 15. A research design reminder >Experimental designs You directly manipulated the independent variable. >Quasi-experimental designs.

Slides:



Advertisements
Similar presentations
Co-variation or co-relation between two variables These variables change together Usually scale (interval or ratio) variables.
Advertisements

CORRELATION. Overview of Correlation u What is a Correlation? u Correlation Coefficients u Coefficient of Determination u Test for Significance u Correlation.
Forecasting Using the Simple Linear Regression Model and Correlation
Correlation and Linear Regression.
Review ? ? ? I am examining differences in the mean between groups
Describing Relationships Using Correlation and Regression
Chapter 6: Correlational Research Examine whether variables are related to one another (whether they vary together). Correlation coefficient: statistic.
Correlation CJ 526 Statistical Analysis in Criminal Justice.
Correlation Chapter 9.
Chapter 15 (Ch. 13 in 2nd Can.) Association Between Variables Measured at the Interval-Ratio Level: Bivariate Correlation and Regression.
CORRELATION. Overview of Correlation u What is a Correlation? u Correlation Coefficients u Coefficient of Determination u Test for Significance u Correlation.
CJ 526 Statistical Analysis in Criminal Justice
Statistics II: An Overview of Statistics. Outline for Statistics II Lecture: SPSS Syntax – Some examples. Normal Distribution Curve. Sampling Distribution.
The Simple Regression Model
Correlations and T-tests
© 2000 Prentice-Hall, Inc. Chap Forecasting Using the Simple Linear Regression Model and Correlation.
Summary of Quantitative Analysis Neuman and Robson Ch. 11
Review for Exam 2 Some important themes from Chapters 6-9 Chap. 6. Significance Tests Chap. 7: Comparing Two Groups Chap. 8: Contingency Tables (Categorical.
SPSS Session 4: Association and Prediction Using Correlation and Regression.
Chapter 9 For Explaining Psychological Statistics, 4th ed. by B. Cohen 1 What is a Perfect Positive Linear Correlation? –It occurs when everyone has the.
Leedy and Ormrod Ch. 11 Gray Ch. 14
Chapter 8: Bivariate Regression and Correlation
Lecture 16 Correlation and Coefficient of Correlation
Statistics for the Social Sciences Psychology 340 Fall 2013 Tuesday, November 19 Chi-Squared Test of Independence.
Statistics for the Social Sciences Psychology 340 Fall 2013 Thursday, November 21 Review for Exam #4.
Covariance and correlation
Lecturer’s desk INTEGRATED LEARNING CENTER ILC 120 Screen Row A Row B Row C Row D Row E Row F Row G Row.
Week 10 Chapter 10 - Hypothesis Testing III : The Analysis of Variance
LECTURE 5 Correlation.
Experimental Research Methods in Language Learning Chapter 11 Correlational Analysis.
Statistical Analysis Topic – Math skills requirements.
Hypothesis of Association: Correlation
Association between 2 variables
Correlation Chapter 15. Correlation Sir Francis Galton (Uncle to Darwin –Development of behavioral statistics –Father of Eugenics –Science of fingerprints.
When trying to explain some of the patterns you have observed in your species and community data, it sometimes helps to have a look at relationships between.
© 2011 Cengage Learning. All Rights Reserved. May not be copied, scanned, or duplicated, in whole or in part, except for use as permitted in a license.
Correlation & Regression
Psych 230 Psychological Measurement and Statistics Pedro Wolf September 23, 2009.
Correlation Analysis. Correlation Analysis: Introduction Management questions frequently revolve around the study of relationships between two or more.
By: Amani Albraikan.  Pearson r  Spearman rho  Linearity  Range restrictions  Outliers  Beware of spurious correlations….take care in interpretation.
Regression Chapter 16. Regression >Builds on Correlation >The difference is a question of prediction versus relation Regression predicts, correlation.
Correlation & Regression Chapter 15. Correlation It is a statistical technique that is used to measure and describe a relationship between two variables.
© Copyright McGraw-Hill Correlation and Regression CHAPTER 10.
Chapter 16 Data Analysis: Testing for Associations.
Statistics for Psychology CHAPTER SIXTH EDITION Statistics for Psychology, Sixth Edition Arthur Aron | Elliot J. Coups | Elaine N. Aron Copyright © 2013.
Linear Correlation. PSYC 6130, PROF. J. ELDER 2 Perfect Correlation 2 variables x and y are perfectly correlated if they are related by an affine transform.
The basic task of most research = Bivariate Analysis
CORRELATIONS. Overview  Correlations  Scatterplots  Factors influencing observed relationships  Reminders  Make sure to have a simple ($3-5) calculator.
Chapter 15 The Chi-Square Statistic: Tests for Goodness of Fit and Independence PowerPoint Lecture Slides Essentials of Statistics for the Behavioral.
Introduction to Statistics Introduction to Statistics Correlation Chapter 15 April 23-28, 2009 Classes #27-28.
Organizing and Analyzing Data. Types of statistical analysis DESCRIPTIVE STATISTICS: Organizes data measures of central tendency mean, median, mode measures.
PART 2 SPSS (the Statistical Package for the Social Sciences)
©2005, Pearson Education/Prentice Hall CHAPTER 6 Nonexperimental Strategies.
Lecturer’s desk Physics- atmospheric Sciences (PAS) - Room 201 s c r e e n Row A Row B Row C Row D Row E Row F Row G Row H Row A
Chapter Eleven Performing the One-Sample t-Test and Testing Correlation.
Learning Objectives After this section, you should be able to: The Practice of Statistics, 5 th Edition1 DESCRIBE the shape, center, and spread of the.
Chapter 13 Understanding research results: statistical inference.
Lecture 7: Bivariate Statistics. 2 Properties of Standard Deviation Variance is just the square of the S.D. If a constant is added to all scores, it has.
Correlations #1.
Correlations #1.
Chapter 14: Correlation and Regression
Statistics for the Social Sciences
Chapter 15: Correlation.
Understanding Research Results: Description and Correlation
Correlations #1.
Correlation Analysis and interpretation of correlation, including correlation coefficients.
Statistics II: An Overview of Statistics
Inferential Statistics
Review I am examining differences in the mean between groups How many independent variables? OneMore than one How many groups? Two More than two ?? ?
Warsaw Summer School 2017, OSU Study Abroad Program
Presentation transcript:

Correlation Chapter 15

A research design reminder >Experimental designs You directly manipulated the independent variable. >Quasi-experimental designs You examined naturally occurring groups. >Correlational designs You just observed the independent variable.

Defining Correlation >Co-variation or co-relation between two variables >These variables change together >Usually scale (interval or ratio) variables >Correlation does NOT mean causation!

Correlation versus Correlation >Correlational designs = research that doesn’t manipulate things because you can’t ethically or don’t want to. You can use all kinds of statistics on these depending on what you types of variables you have. >Correlation the statistic can be used in any design type with two continuous variables.

Correlation Coefficient >A statistic that quantifies a relation between two variables >Tells you two pieces of information: Direction Magnitude

Correlation Coefficient >Direction Can be either positive or negative Positive: as one variable goes up, the other variable goes up Negative: as one variable goes up, the other variable goes down.

Positive Correlation Association between variables such that high scores on one variable tend to have high scores on the other variable A direct relation between the variables

Negative Correlation Association between variables such that high scores on one variable tend to have low scores on the other variable An inverse relation between the variables

A Perfect Positive Correlation

A Perfect Negative Correlation

Correlation Coefficient >Magnitude Falls between and 1.00 The value of the number (not the sign) indicates the strength of the relation

A visual guide

Check Your Learning >Which is stronger? A correlation of 0.25 or -0.74?

Misleading Correlations >Something to think about There is a 0.91 correlation between ice cream consumption and drowning deaths. >Does eating ice cream cause drowning? >Does grief cause us to eat more ice cream?

Another silly example

Correlation Overall >Tells us that two variables are related How they are related (positive, negative) Strength of relationship (closer to | 1 | is stronger). >Lots of things can be correlated – must think about what that means.

The Limitations of Correlation >Correlation is not causation. Invisible third variables Three Possible Causal Explanations for a Correlation

Causation Direction

The Limitations of Correlation, cont. >Restricted Range. A sample of boys and girls who performed in the top 2% to 3% on standardized tests - a much smaller range than the full population from which the researchers could have drawn their sample.

>Restricted Range, cont. If we only look at the older students between the ages of 22 and 25, the strength of this correlation is now far smaller, just 0.05.

The Limitations of Correlation, cont. >The effect of an outlier. One individual who both studies and uses her cell phone more than any other individual in the sample changed the correlation from 0.14, a negative correlation, to 0.39, a much stronger and positive correlation!

The Pearson Correlation Coefficient >A statistic that quantifies a linear relation between two scale variables. >Symbolized by the italic letter r when it is a statistic based on sample data. >Symbolized by the italic letter p “rho” when it is a population parameter.

>Pearson correlation coefficient r Linear relationship

Correlation Hypothesis Testing >Step 1. Identify the population, distribution, and assumptions >Step 2. State the null and research hypotheses. >Step 3. Determine the characteristics of the comparison distribution. >Step 4. Determine the critical values. >Step 5. Calculate the test statistic >Step 6. Make a decision.

SPSS Since I have two scores from each person, be sure to line them up side by side.

SPSS Under variable view, be sure both are listed as scale – otherwise you won’t be able to create the right type of graph.

SPSS Graph > Chart Builder

SPSS Click on scatter/dot, and drag/drop the first box into the graph building area.

SPSS Drag one variable into X, one variable into Y. Remember, this view is NOT the real scatterplot.

SPSS Hit ok!

SPSS Starting with a scatterplot helps you to see what the direction (negative) and magnitude (strong) should be for the correlation. Remember that N has a large influence on power for rejecting the null, so even strong correlations can be nonsignificant.

SPSS To get the correlation coeffiecient, r: Analyze > correlate > bivariate

SPSS Move both variables over to the right, hit ok.

SPSS

SPSS Output

Assumptions >Random selection >X and Y are at least scale variables >X and Y are both normal >Homoscedasticity (for real this time!) Each variable must vary approximately the same at each point of the other variable. See scatterplot for UFOs, megaphones, snakes eating dinner.

Hypothesis Steps Step 1: Population: no correlation between (var 1) and (var 2) Sample: correlation between (var 1) and (var 2)

Hypothesis Steps Step 2 (with our example): Null: r for exam grades and absences = 0 Research: r for exam grades and absences /= 0 (can also use the rho symbol).

Hypothesis Steps Step 3: List r = List df = N – 2 *** = 8 *** whoa! It’s N – 1(for X) – 1(for Y).

Hypothesis Steps Step 4: (note: different from your book) Find the t-cut off score from a t-table given your df. p <.05 = + /

Hypothesis Steps Step 5: Calculate the t-found given your r value.

Or you can use MOTE!

Effect Size? >r is often considered an effect size. Most people square it though to r 2, which is the same as ANOVA effect size. You can also switch r to Cohen’s d, but people are moving away from doing this because d normally is reserved for nominal variables.

Confidence Intervals >Involves Fisher’s r to z transform and is generally pretty yucky. Which means people do not do them unless they are required to.

Correlation and Psychometrics >Psychometrics is used in the development of tests and measures. >Psychometricians use correlation to examine two important aspects of the development of measures—reliability and validity.

>A reliable measure is one that is consistent. >Example types of reliability: Test–retest reliability. Split-half reliability >Cronbach’s alpa (aka coefficient alpha) Want to be bigger than.80. Reliability

Validity >A valid measure is one that measures what it was designed or intended to measure. >Correlation is used to calculate validity, often by correlating a new measure with existing measures known to assess the variable of interest.

>Correlation can also be used to establish the validity of a personality test. >Establishing validity is usually much more difficult than establishing reliability. >Buzzfeed!

Partial Correlation >A technique that quantifies the degree of association between two variables after statistically removing the association of a third variable with both of those two variables. >Allows us to quantify the relation between two variables, controlling for the correlation of each of these variables with a third related variable.

>We can assess the correlation between number of absences and exam grade, over and above the correlation of percentage of completed homework assignments with these variables.