Regression & Correlation

Slides:



Advertisements
Similar presentations
11-1 Empirical Models Many problems in engineering and science involve exploring the relationships between two or more variables. Regression analysis.
Advertisements

Correlation and regression
Forecasting Using the Simple Linear Regression Model and Correlation
Regression & Correlation Analysis of Biological Data Ryan McEwan and Julia Chapman Department of Biology University of Dayton
6-1 Introduction To Empirical Models 6-1 Introduction To Empirical Models.
11 Simple Linear Regression and Correlation CHAPTER OUTLINE
Regression Analysis Once a linear relationship is defined, the independent variable can be used to forecast the dependent variable. Y ^ = bo + bX bo is.
Chapter 10 Regression. Defining Regression Simple linear regression features one independent variable and one dependent variable, as in correlation the.
Objectives (BPS chapter 24)
© 2010 Pearson Prentice Hall. All rights reserved Least Squares Regression Models.
Multivariate Data Analysis Chapter 4 – Multiple Regression.
The Simple Regression Model
Chapter Topics Types of Regression Models
Topics: Regression Simple Linear Regression: one dependent variable and one independent variable Multiple Regression: one dependent variable and two or.
Probability & Statistics for Engineers & Scientists, by Walpole, Myers, Myers & Ye ~ Chapter 11 Notes Class notes for ISE 201 San Jose State University.
© 2000 Prentice-Hall, Inc. Chap Forecasting Using the Simple Linear Regression Model and Correlation.
11-1 Empirical Models Many problems in engineering and science involve exploring the relationships between two or more variables. Regression analysis.
Correlation and Regression Analysis
Correlation Coefficients Pearson’s Product Moment Correlation Coefficient  interval or ratio data only What about ordinal data?
Simple Linear Regression Analysis
Statistical hypothesis testing – Inferential statistics II. Testing for associations.
Correlation & Regression
Quantitative Business Analysis for Decision Making Multiple Linear RegressionAnalysis.
1 Doing Statistics for Business Doing Statistics for Business Data, Inference, and Decision Making Marilyn K. Pelosi Theresa M. Sandifer Chapter 11 Regression.
Introduction to Linear Regression and Correlation Analysis
Regression Analysis Regression analysis is a statistical technique that is very useful for exploring the relationships between two or more variables (one.
Correlation and Regression
Chapter 11 Simple Regression
Simple Linear Regression
Chapter 14 – Correlation and Simple Regression Math 22 Introductory Statistics.
Statistics for clinicians Biostatistics course by Kevin E. Kip, Ph.D., FAHA Professor and Executive Director, Research Center University of South Florida,
Correlation and Regression Used when we are interested in the relationship between two variables. NOT the differences between means or medians of different.
Examining Relationships in Quantitative Research
Topic 10 - Linear Regression Least squares principle - pages 301 – – 309 Hypothesis tests/confidence intervals/prediction intervals for regression.
Inference for Regression Simple Linear Regression IPS Chapter 10.1 © 2009 W.H. Freeman and Company.
Chapter 4 Linear Regression 1. Introduction Managerial decisions are often based on the relationship between two or more variables. For example, after.
1 11 Simple Linear Regression and Correlation 11-1 Empirical Models 11-2 Simple Linear Regression 11-3 Properties of the Least Squares Estimators 11-4.
© Copyright McGraw-Hill Correlation and Regression CHAPTER 10.
Yesterday Correlation Regression -Definition
Copyright © 2010 Pearson Education, Inc Chapter Seventeen Correlation and Regression.
Lesson 14 - R Chapter 14 Review. Objectives Summarize the chapter Define the vocabulary used Complete all objectives Successfully answer any of the review.
Copyright © 2011 by The McGraw-Hill Companies, Inc. All rights reserved. McGraw-Hill/Irwin Simple Linear Regression Analysis Chapter 13.
McGraw-Hill/IrwinCopyright © 2009 by The McGraw-Hill Companies, Inc. All Rights Reserved. Simple Linear Regression Analysis Chapter 13.
Chapters 8 Linear Regression. Correlation and Regression Correlation = linear relationship between two variables. Summarize relationship with line. Called.
Bivariate Regression. Bivariate Regression analyzes the relationship between two variables. Bivariate Regression analyzes the relationship between two.
Research Methods: 2 M.Sc. Physiotherapy/Podiatry/Pain Correlation and Regression.
Stats Methods at IC Lecture 3: Regression.
The simple linear regression model and parameter estimation
Chapter 20 Linear and Multiple Regression
Regression and Correlation
Simple Linear Regression
Regression Analysis AGEC 784.
11-1 Empirical Models Many problems in engineering and science involve exploring the relationships between two or more variables. Regression analysis.
Inference for Regression (Chapter 14) A.P. Stats Review Topic #3
REGRESSION (R2).
ENM 310 Design of Experiments and Regression Analysis
B&A ; and REGRESSION - ANCOVA B&A ; and
Simple Linear Regression - Introduction
CHAPTER 29: Multiple Regression*
Chapter 12 Inference on the Least-squares Regression Line; ANOVA
Variance terms Analysis of Biological Data/Biometrics Dr. Ryan McEwan
Simple Linear Regression
^ y = a + bx Stats Chapter 5 - Least Squares Regression
Multivariate Data Analysis of Biological Data/Biometrics Ryan McEwan
Product moment correlation
Simple Linear Regression
Ch 4.1 & 4.2 Two dimensions concept
Inference for Regression
Nazmus Saquib, PhD Head of Research Sulaiman AlRajhi Colleges
Presentation transcript:

Regression & Correlation Analysis of Biological Data/Biometrics Dr. Ryan McEwan Department of Biology University of Dayton ryan.mcewan@udayton.edu

Correlation is a form of analysis that tests for a relationship between two factors. In correlation you are NOT assuming that one causes the other, just that they are related. Thus, there is no predictor and response

You would use a correlation analysis if you are not making assumptions about one factor driving another. Pearson correlation for normally distributed data Spearman (rank) correlation for non normally distributed data.

Simple linear regression is a standard technique in the Analysis of Biological Data: The main idea is assessing the relationship between two variables, assuming that the relationship is direction and linear…and assuming that one variable is a driver of the relationship. The Response variable (plotted on Y) is assumed to respond in a linear relationship to changes in the Predictor variable (plotted on YX. The reverse is not assumed in this analysis (that Y drives X). Think heart rate and exercise. Other examples?

But if you have a cloud of points…where do you put the line?

Best fit lines & “Least Squares” regression The idea is to drive the line through the cloud in the area that minimizes the distance between the points and the line.

Regression residuals You can generate a table of residuals.. a new data set! How much does each point deviate from the regression line?

Detrending… a scientific siren song

Regression lines can have varying slopes from a single Y intercept.

Regression lines can have identical slopes, but different Y intercepts.

We will be running a test of this sort in R We will be running a test of this sort in R. The thing I want to you to understand is that the statistical test…. The P-value generated… relates to the null hypothesis of NO SLOPE. That the line is indeed flat. That would mean the response variable is NOT changing in relation to the predictor.

…ruut row…

IMPORTANT! The P-value from a regression, tells you whether the line is statistically flat….it does not tell you how much variation is captured!

It may be more useful to calculate a confidence interval

You might wish to have replicate values

Your relationship might not be linear! Polynomial Regression

Regression Diagnostics! A stepwise process of adding factors to the regression. Testing P value, r2, etc. If you are going to take this on, you need to grind! Read, analyze, read some more

Caution 1: Correlation is not causation!

Caution 2: Extrapolation is dangerous!!

Logistic regression: To be used if your data are categorical……

Regression & Correlation Analysis of Biological Data/Biometrics Dr. Ryan McEwan Department of Biology University of Dayton ryan.mcewan@udayton.edu