 
  
 PSY 646: Bayesian Statistics for Psychological Science
Fall 2018
Days/times: Tuesday, Thursday / 9:00 am - 10:15 am
Location: PRCE 255 (will have computers with appropriate software installed)
 Instructor:  
  
Please contact me (email is best) if you cannot visit during office hours to schedule an alternative time to meet. 
Materials (lectures, readings, datasets, code):
-  PPT slides for Lecture 1.
-  PPT slides for Lecture 2.
-  PPT slides for Lecture 3.
-  PPT slides for Lecture 4.
-  PPT slides for Lecture 5, Shrinkage.R, ShrinkagePrediction.R.
-  PPT slides for Lecture 6, VisualSearch.csv, VisualSearch1.R.
-  PPT slides for Lecture 7,  VisualSearch2.R.
-  PPT slides for Lecture 8,  SmilesLeniency.csv, SmilesLeniency1.R, SmilesLeniency2.R.
-  PPT slides for Lecture 9,  PhysiciansWeight.csv, PhysiciansWeight1.R.
-  Homework 1,  ProspectiveMemoryEyeTrackingHW1.csv.
-  PPT slides for Lecture 10,  WeaponPrime.csv, WeaponPrime1.R, ADHDTreatment.csv, ADHDTreatment1.R, ADHDTreatment2.R.
-  PPT slides for Lecture 11,  VisualSearch3.R.
-  PPT slides for Lecture 12,  SmilesLeniency4.R,  VisualSearch4.R.
-  Homework 2,  SleepySubjects.csv.
-  PPT slides for Lecture 13,  SmilesLeniency4.R,  ADHDTreatment4.R.
-  If you have struggled get brms/STAN installed on your computer, you might try a just released web version. Details are in a post at Andrew Gelman's blog. Update: seems to be most for demonstrative purposes. Cannot handle large data sets. 
-  PPT slides for Lecture 14,  ZennerCards1.R,  ZennerCards.csv, Driving1.R,  Driving.csv.
-  PPT slides for Lecture 15.
-  Homework 3,  LookDontType.csv.
-  Presentation Instructions.
-  PPT slides for Lecture 16.
-  PPT slides for Lecture 17,  FacialFeedback1.R, FacialFeedback2.R,  FacialFeedback.csv.
-  PPT slides for Lecture 18.
 Text: 
 
|   | McElreath, R Statistical Rethinking: A Bayesian Course with Examples in R and Stan. Ordering information and code examples are at the book web site. | 
In case you do not yet have the textbook, Chapter 1 of the textbook is on-line.
 General plan:   The course will explain why you might want to use Bayesian methods instead of frequentist methods (such as t-tests, ANOVA, or regression). The general plan is to:
-  Explain some problems/difficulties with frequentist methods: Publication bias, optional stopping, questionable research practices.
-  Discuss differences between hypothesis testing and prediction: mean squared error, shrinkage.
-  Discuss methods for prediction: likelihood, AIC, BIC, cross-validation, lasso.
-  Explain the basic ideas of Bayesian methods: non-informative priors, informative priors.
-  Provide hands-on examples of applying Bayesian methods: Bayes Factors, hierarchical models.
-  Discuss ways to make decisions: utility. 
 Throughout, we will be using computer programs to demonstrate the ideas. There will not be any proofs. 
 Class home page: The home page for this course is http://www.psych.purdue.edu/~gfrancis/Classes/PSY646/indexF18.html  From this page you can download lecture notes, view the class schedule, view current grades, and connect to the various homework laboratory assignments. 
 Homework: Assignments will be due approximately every two weeks. The intention is to use the homework assignments as a way of practicing the concepts we discuss in class. They will be graded, but only to insure that students actively participate. 
 Project: In the last two weeks, students will presentation a Bayesian (or related) analysis of some of their own data. If you do not happen to have a data set, we will get one for you. 
 Assumed background: 
-  It would be nice, but not necessary, if you had some previous exposure to calculus. 
-  Doing any kind of Bayesian analysis requires some programming. We will be using the free R studio program. You do not need to be an expert programmer, but if you have little programming experience, you will have some catching up to do. 
-  Students should have experience with typical statistical methods (t-test, ANOVA, regression). 
 Teaching Assistant:  
  
Please contact the TA if you cannot visit during office hours to schedule an alternative time to meet.