Latin Square Designs KNNL – Sections 28.3-28.7. Description Experiment with r treatments, and 2 blocking factors: rows (r levels) and columns (r levels)

Slides:



Advertisements
Similar presentations
Randomized Complete Block and Repeated Measures (Each Subject Receives Each Treatment) Designs KNNL – Chapters 21,
Advertisements

Multiple Comparisons in Factorial Experiments
Chapter 4Design & Analysis of Experiments 7E 2009 Montgomery 1 Experiments with Blocking Factors Text Reference, Chapter 4 Blocking and nuisance factors.
1 Chapter 4 Experiments with Blocking Factors The Randomized Complete Block Design Nuisance factor: a design factor that probably has an effect.
DOX 6E Montgomery1 Design of Engineering Experiments Part 3 – The Blocking Principle Text Reference, Chapter 4 Blocking and nuisance factors The randomized.
Chapter 4 Randomized Blocks, Latin Squares, and Related Designs
Design Supplemental.
DOCTORAL SEMINAR, SPRING SEMESTER 2007 Experimental Design & Analysis Analysis of Covariance; Within- Subject Designs March 13, 2007.
Design and Analysis of Experiments
Chapter 14Design and Analysis of Experiments 8E 2012 Montgomery 1.
Design of Experiments and Analysis of Variance
N-way ANOVA. Two-factor ANOVA with equal replications Experimental design: 2  2 (or 2 2 ) factorial with n = 5 replicate Total number of observations:
2 n Factorial Experiment 4 Factor used to Remove Chemical Oxygen demand from Distillery Spent Wash R.K. Prasad and S.N. Srivastava (2009). “Electrochemical.
Chapter 5 Introduction to Factorial Designs
January 7, afternoon session 1 Multi-factor ANOVA and Multiple Regression January 5-9, 2008 Beth Ayers.
1 Multifactor ANOVA. 2 What We Will Learn Two-factor ANOVA K ij =1 Two-factor ANOVA K ij =1 –Interaction –Tukey’s with multiple comparisons –Concept of.
Stat Today: Transformation of the response; Latin-squares.
Statistics for Business and Economics
Stat Today: Greco-Latin Squares, some examples Assignment 2: –2.8, –2.15 (2-way ANOVA only) –2.16 –2.20 (use only transformations discussed in class)
1 Chapter 5 Introduction to Factorial Designs Basic Definitions and Principles Study the effects of two or more factors. Factorial designs Crossed:
Outline Single-factor ANOVA Two-factor ANOVA Three-factor ANOVA
Repeated Measures ANOVA Used when the research design contains one factor on which participants are measured more than twice (dependent, or within- groups.
Biostatistics-Lecture 9 Experimental designs Ruibin Xi Peking University School of Mathematical Sciences.
Prepared by Hanadi. An p ×p Latin Square has p rows and p columns and entries from the first p letters such that each letter appears in every row and.
The Randomized Block Design. Suppose a researcher is interested in how several treatments affect a continuous response variable (Y). The treatments may.
Text reference, Chapter 14, Pg. 525
Copyright © 2013, 2010 and 2007 Pearson Education, Inc. Chapter Comparing Three or More Means 13.
Factorial Experiments Analysis of Variance (ANOVA) Experimental Design.
DESIGN AND ANALYSIS OF EXPERIMENTS: Basics Hairul Hafiz Mahsol Institute for Tropical Biology & Conservation School of Science & Technology POSTGRADUATE.
The Randomized Complete Block Design
Psychology 301 Chapters & Differences Between Two Means Introduction to Analysis of Variance Multiple Comparisons.
Chapter 4 analysis of variance (ANOVA). Section 1 the basic idea and condition of application.
1 Experimental Design. 2  Single Factor - One treatment with several levels.  Multiple Factors - More than one treatment with several levels each. 
1 A nuisance factor is a factor that probably has some effect on the response, but it’s of no interest to the experimenter…however, the variability it.
Psych 5500/6500 Other ANOVA’s Fall, Factorial Designs Factorial Designs have one dependent variable and more than one independent variable (i.e.
1 Always be contented, be grateful, be understanding and be compassionate.
Chapter 13 Complete Block Designs. Randomized Block Design (RBD) g > 2 Treatments (groups) to be compared r Blocks of homogeneous units are sampled. Blocks.
Single-Factor Studies KNNL – Chapter 16. Single-Factor Models Independent Variable can be qualitative or quantitative If Quantitative, we typically assume.
ETM U 1 Analysis of Variance (ANOVA) Suppose we want to compare more than two means? For example, suppose a manufacturer of paper used for grocery.
Two-Factor Studies with Equal Replication KNNL – Chapter 19.
Three or More Factors: Latin Squares
ITEC6310 Research Methods in Information Technology Instructor: Prof. Z. Yang Course Website: /itec6310.htm Office:
Chapter 9 More Complicated Experimental Designs. Randomized Block Design (RBD) t > 2 Treatments (groups) to be compared b Blocks of homogeneous units.
1 Mixed and Random Effects Models 1-way ANOVA - Random Effects Model 1-way ANOVA - Random Effects Model 2-way ANOVA - Mixed Effects Model 2-way ANOVA -
Analysis of Covariance KNNL – Chapter 22. Analysis of Covariance Goal: To Compare treatments (1-Factor or Multiple Factors) after Controlling for Numeric.
Factorial BG ANOVA Psy 420 Ainsworth. Topics in Factorial Designs Factorial? Crossing and Nesting Assumptions Analysis Traditional and Regression Approaches.
Experimental Designs The objective of Experimental design is to reduce the magnitude of random error resulting in more powerful tests to detect experimental.
Design Lecture: week3 HSTS212.
Factorial Experiments
Experimental Design-Chapter 8
Comparing Three or More Means
Topics Randomized complete block design (RCBD) Latin square designs
Chapter 5 Introduction to Factorial Designs
Ch. 14: Comparisons on More Than Two Conditions
More Complicated Experimental Designs
Repeated Measures ANOVA
Two-Factor Studies with Equal Replication
More Complicated Experimental Designs
Nested Designs and Repeated Measures with Treatment and Time Effects
Two-Factor Studies with Equal Replication
Two Factor ANOVA with 1 Unit per Treatment
Nested Designs and Repeated Measures with Treatment and Time Effects
Two Factor ANOVA with 1 Unit per Treatment
More Complicated Experimental Designs
Latin Square Designs KNNL – Sections
Randomized Complete Block and Repeated Measures (Each Subject Receives Each Treatment) Designs KNNL – Chapters 21,
Analysis of Covariance
Number of treatments ____________________________________________
Three important principles of experimental design are:
STATISTICS INFORMED DECISIONS USING DATA
Presentation transcript:

Latin Square Designs KNNL – Sections

Description Experiment with r treatments, and 2 blocking factors: rows (r levels) and columns (r levels) Advantages:  Reduces more experimental error than with 1 blocking factor  Small-scale studies can isolate important treatment effects  Repeated Measures designs can remove order effects Disadvantages  Each blocking factor must have r levels  Assumes no interactions among factors  With small r, very few Error degrees of freedom; many with big r  Randomization more complex than Completely Randomized Design and Randomized Block Design (but not too complex)

Randomization in Latin Square Determine r, the number of treatments, row blocks, and column blocks Select a Standard Latin Square (Table B.14, p. 1344) Use Capital Letters to represent treatments (A,B,C,…) and randomly assign treatments to labels Randomly assign Row Block levels to Square Rows Randomly assign Column Block levels to Square Columns 4x4 Latin Squares (all treatments appear in each row/col):

Latin Square Model

Analysis of Variance

Post-Hoc Comparison of Treatment Means & Relative Efficiency

Comments and Extensions Treatments can be Factorial Treatment Structures with Main Effects and Interactions Row, Column, and Treatment Effects can be Fixed or Random, without changing F-test for treatments Can have more than one replicate per cell to increase error degrees of freedom Can use multiple squares with respect to row or column blocking factors, each square must be r x r. This builds up error degrees of freedom (power) Can model carryover effects when rows or columns represent order of treatments