Multivariate Analysis: Analysis of Variance

Slides:



Advertisements
Similar presentations
Sociology 690 Multivariate Analysis Log Linear Models.
Advertisements

Sociology 680 Multivariate Analysis Logistic Regression.
Experimental Design Internal Validation Experimental Design I. Definition of Experimental Design II. Simple Experimental Design III. Complex Experimental.
FACTORIAL ANOVA Overview of Factorial ANOVA Factorial Designs Types of Effects Assumptions Analyzing the Variance Regression Equation Fixed and Random.
ANCOVA Workings of ANOVA & ANCOVA ANCOVA, Semi-Partial correlations, statistical control Using model plotting to think about ANCOVA & Statistical control.
© 2008 McGraw-Hill Higher Education The Statistical Imagination Chapter 12: Analysis of Variance: Differences among Means of Three or More Groups.
Statistics for Linguistics Students Michaelmas 2004 Week 6 Bettina Braun
PSY 307 – Statistics for the Behavioral Sciences
ONE-WAY BETWEEN SUBJECTS ANOVA Also called One-Way Randomized ANOVA Purpose: Determine whether there is a difference among two or more groups – used mostly.
One-Way Between Subjects ANOVA. Overview Purpose How is the Variance Analyzed? Assumptions Effect Size.
Inferences About Means of Two Independent Samples Chapter 11 Homework: 1, 2, 3, 4, 6, 7.
ANCOVA Workings of ANOVA & ANCOVA ANCOVA, Semi-Partial correlations, statistical control Using model plotting to think about ANCOVA & Statistical control.
ANCOVA Psy 420 Andrew Ainsworth. What is ANCOVA?
Experimental Design Terminology  An Experimental Unit is the entity on which measurement or an observation is made. For example, subjects are experimental.
One-Way Analysis of Covariance One-Way ANCOVA. ANCOVA Allows you to compare mean differences in 1 or more groups with 2+ levels (just like a regular ANOVA),
ANOVA  Used to test difference of means between 3 or more groups. Assumptions: Independent samples Normal distribution Equal Variance.
Wrap-up and Review Wrap-up and Review PSY440 July 8, 2008.
Analysis of Variance & Multivariate Analysis of Variance
Today Concepts underlying inferential statistics
Summary of Quantitative Analysis Neuman and Robson Ch. 11
Linear Regression and Correlation. Fitted Regression Line.
Discriminant Analysis Testing latent variables as predictors of groups.
Two-Way Analysis of Variance STAT E-150 Statistical Methods.
Chapter 12 Inferential Statistics Gay, Mills, and Airasian
Leedy and Ormrod Ch. 11 Gray Ch. 14
Chapter 8: Bivariate Regression and Correlation
Example of Simple and Multiple Regression
Statistics for the Social Sciences Psychology 340 Fall 2013 Thursday, November 21 Review for Exam #4.
Psy B07 Chapter 1Slide 1 ANALYSIS OF VARIANCE. Psy B07 Chapter 1Slide 2 t-test refresher  In chapter 7 we talked about analyses that could be conducted.
ANOVA Chapter 12.
ANCOVA Lecture 9 Andrew Ainsworth. What is ANCOVA?
LEARNING PROGRAMME Hypothesis testing Intermediate Training in Quantitative Analysis Bangkok November 2007.
Analysis of Covariance David Markham
Lecture 8 Analysis of Variance and Covariance Effect of Coupons, In-Store Promotion and Affluence of the Clientele on Sales.
One-Way Analysis of Variance Comparing means of more than 2 independent samples 1.
t(ea) for Two: Test between the Means of Different Groups When you want to know if there is a ‘difference’ between the two groups in the mean Use “t-test”.
Sociology 5811: Lecture 14: ANOVA 2
Educational Research: Competencies for Analysis and Application, 9 th edition. Gay, Mills, & Airasian © 2009 Pearson Education, Inc. All rights reserved.
Multivariate Analysis. One-way ANOVA Tests the difference in the means of 2 or more nominal groups Tests the difference in the means of 2 or more nominal.
Testing Hypotheses about Differences among Several Means.
Sociology 680 Multivariate Analysis: Analysis of Variance.
ANOVA and Linear Regression ScWk 242 – Week 13 Slides.
Chapter 14 – 1 Chapter 14: Analysis of Variance Understanding Analysis of Variance The Structure of Hypothesis Testing with ANOVA Decomposition of SST.
MANOVA Mechanics. MANOVA is a multivariate generalization of ANOVA, so there are analogous parts to the simpler ANOVA equations First lets revisit Anova.
Inferential Statistics
Complex Analytic Designs. Outcomes (DVs) Predictors (IVs)1 ContinuousMany Continuous1 CategoricalMany Categorical None(histogram)Factor Analysis: PCA,
Analysis of Covariance adjusting for potential confounds.
Analysis of Variance and Covariance Effect of Coupons, In-Store Promotion and Affluence of the Clientele on Sales.
ANCOVA. What is Analysis of Covariance? When you think of Ancova, you should think of sequential regression, because really that’s all it is Covariate(s)
General Linear Model.
Chapter 13 Repeated-Measures and Two-Factor Analysis of Variance
Irwin/McGraw-Hill © Andrew F. Siegel, 1997 and Methods and Applications CHAPTER 15 ANOVA : Testing for Differences among Many Samples, and Much.
IE241: Introduction to Design of Experiments. Last term we talked about testing the difference between two independent means. For means from a normal.
1 PSY6010: Statistics, Psychometrics and Research Design Professor Leora Lawton Spring 2007 Wednesdays 7-10 PM Room 204.
Handout Twelve: Design & Analysis of Covariance
Kin 304 Inferential Statistics Probability Level for Acceptance Type I and II Errors One and Two-Tailed tests Critical value of the test statistic “Statistics.
ANCOVA Workings of ANOVA & ANCOVA ANCOVA, partial correlations & multiple regression Using model plotting to think about ANCOVA & Statistical control Homogeneity.
ANCOVA.
MANOVA Lecture 12 Nuance stuff Psy 524 Andrew Ainsworth.
Differences Among Groups
Educational Research Inferential Statistics Chapter th Chapter 12- 8th Gay and Airasian.
Choosing and using your statistic. Steps of hypothesis testing 1. Establish the null hypothesis, H 0. 2.Establish the alternate hypothesis: H 1. 3.Decide.
The 2 nd to last topic this year!!.  ANOVA Testing is similar to a “two sample t- test except” that it compares more than two samples to one another.
Methods of Presenting and Interpreting Information Class 9.
Analysis of Variance -ANOVA
Ch. 14: Comparisons on More Than Two Conditions
Kin 304 Inferential Statistics
Multivariate Statistics
Multivariate Analysis: Analysis of Variance
Multivariate Analysis: Analysis of Variance
Presentation transcript:

Multivariate Analysis: Analysis of Variance Sociology 680 Multivariate Analysis: Analysis of Variance

1) Analysis of Variance Models 2) Structural Equation Models A Typology of Models IV DV Category Quantity 1) Analysis of Variance Models (ANOVA) 2) Structural Equation Models (SEM) Linear Models 3) Log Linear Models (LLM) 4) Logistic Regression Models (LRM) Category Models

Examples of the Four Types 1. The effects of sex and race on Income 2. The effects of age and education on income 3. The effects of sex and race on union membership 4. The effects of age and income on union membership

The General Linear Model Recall that the bi-variate Linear Regression model focuses on the prediction of a dependent variable value (Y), given an imputed value on a continuous independent variable (X). The variation around the mean of Y less the variation around the regression line (Y’) is our measure of r2 Y (Weight) .. .… . . …. . … . … . . .. .. . .. . …. …. . .. … . ... . X (Height) Y’

The General Linear Model (cont.) Fixing a value of (X) and predicting a value of (Y) allows us to use the layout of points, under an assumption of linearity, to determine the effect of the IV on the DV. We do this by calculating the Y’ value in conjunction with the standard error of that value (Sy’) Where: and Y (Weight) Y’ .. .… . . …. . … . … . . .. .. . .. . …. …. . .. … . ... . { Y’ X (Height)

An Example of Simple Regression Given the following information, what would you expect a student’s score to be on the final examination, if his score on the midterm were 62? Within what interval could you be 95% confident the actual score on the Final would fall (i.e. what is the standard error)? Midterm (X)   Final (Y) = 70 = 75 Sx = 4 Sy = 8   r = 0.60 Y’ = 75 + (0.6)(8/4)(62-70) = 65.4 = 8 (.8) = 6.4

The Test of Differences But now assume that the goal is not prediction, but a test of the difference in two predictions (e.g. “are people who are 5’8” significantly heavier than those who are 5’4”). That difference hypothesis could just as easily be recast as “Are taller people significantly heavier than shorter people, where taller and shorter connote categories. Y (Weight) .. .… . . …. . … . … . . .. .. . .. . …. …. . .. … . ... . X (Height) Y’ Y’1 Y’2

The t-test If there are simply two categories, we would be doing an ordinary t-test for the difference of means where: Y (Weight) Y’ . .. ... …. ... . .. .. . …. … .. . Shorter Taller | | Y’1 Y’2 X (Height)

Analysis of Variance If we were to have three categories, the test of significance becomes a simple one-way analysis of variance (ANOVA) where we are assessing the variance between means (Y’s) of the categories in relation to the variation within those categories, or: Variance Between Categories Variance Within Categories Y (Weight) . .. ... …. ... . .. .. . …. . .. .. . .... .. . Short Med Tall | | | Y’ Y’1 Y’2 Y’2 X (Height)

Three Types of Analysis of Variance One Way Analysis of Variance - ANOVA (Factorial ANOVA if two or more - IVs) Analysis of Covariance - ANCOVA (Factorial ANCOVA if two or more - IVs) Multiple Analysis of Variance (MANOVA) (Factorial MANOVA if two or more 2IVs)

Simple One Way ANOVA Concept: When two or more categories of a non-quantitative IV are tested to see if a significant difference exists between those category means on some quantitative DV, we use the simple ANOVA where we are essentially looking at the ratio of the variance between means / variance within categories. As an F-ratio: F-ratio = Bet SS/df divided by Within SS/df. As a formula it is:

Example of a simple ANOVA Suppose an instructor divides his class into three sub-groups, each receiving a different teaching strategies (experimental condition). If the following results of test scores were generated, could you assume that teaching strategy affects test results? In Class At Home Both C+H 115 125 135 145 155 140 150 160 165 175 185 140 150 160 Grand Mean = 150

Example of a simple ANOVA (cont.) Step 1: State hypotheses: Ho: 1 = 2 = 3; Step 2: Specify the distribution: (F-distribution) Step 3: Set alpha (say .05; therefore F = 3.68) Step 4: Calculate the outcome: Step 5: Draw the conclusion: Retain or Reject Ho: Type of instruction does or does not influence test scores.

Example of a simple ANOVA (cont.) In Class At Home Both C+H 115 125 135 145 155 140 150 160 165 175 185 Bet SS = ((5(140-150)2 + 5(150-150)2 +5 (160-150)2)) = 1000 Bet df = 3-1 = 2 W/in SS = (115-140)2 + (135-140)2 + (140-140)2 + (145-140)2+ (165-140)2 + (125-150)2 + (145-150)2 + (150-150)2 + (155-150)2 + (175-150)2 + (135-160)2 + (155-160)2 + (160-160)2 + 165-160)2 + (185-160)2 = 3900 W/in df = 15 – 3 = 12 Source SS df MS F Bet 1000 2 500 1.54 Within 3900 12 325

SPSS Input for One-way ANOVA

SPSS Output from a simple ANOVA

Two Way or Factorial ANOVA Concept: When we have two or more non-quantitative or categorical independent variables, and their effect on a quantitative dependent variable, we need to look at both the main effects of the row and column variable, but more importantly, the interaction effects.

Example of a Factorial ANOVA In Class At Home Both C+H 115 125 135 145 155 140 150 160 165 175 185 Working 135 Not Working 160 Means 140 150 160 150

SPSS Input for 2x3 Factorial ANOVA

SPSS Output from a 2x3 ANOVA

Analysis of Covariance (ANCOVA) Concept: Not unlike a 2-way ANOVA, ANCOVA introduces a second independent variable. However, it is not always subject to experimental control (as would be the case in a 2-way ANOVA) and is typically quantitative in nature. Therefore we treat the second IV as a “covariate” of the DV. Example: to study the effect of race and education (IVs) on income (DV), we would adjust the racial differences by the correlation between education (the covariate) and income. This reduces the residual / error variance (which is the denominator in the F-ratio for the main effect of racial differences).

ANCOVA (cont.) In this example, we are essentially subtracting the covariance of X&Y from both the Bet SS and Within SS of the racial categories:

SPSS Input from an ANCOVA

SPSS Output from an ANCOVA

Multiple Analysis of Variance (MANOVA) Concept: MANOVA tests whether significant differences among means of multiple (k) categories exist on a combination of dependent variables. Example: to study the effects job satisfaction (IV) on hours worked and income earned (DVs). In essence we do a linear combination of the DV and then perform the equivalent of a simple ANOVA for the IV job satisfaction.

Input for MANOVA

Output for MANOVA