Sample Size Choice: Charts for Experiments with Linear Models [2 ed.] 9781000104714, 9780824786007, 9780367402921, 0824786009, 1000104710

A guide to testing statistical hypotheses for readers familiar with the Neyman-Pearson theory of hypothesis testing incl

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Table of contents :
Cover......Page 1
Half Title......Page 2
Series Page......Page 3
Title Page......Page 8
Copyright Page......Page 9
Dedication......Page 10
Preface to the Second Edition......Page 12
Preface to the First Edition......Page 14
Table of Contents......Page 16
Part One......Page 20
1.1 Power of the F-test......Page 22
1.2 Range of the Charts......Page 23
2.1 General Remarks......Page 26
2.2 One-way Layout......Page 28
2.3 Two-way Layout......Page 33
2.4 Randomized Blocks......Page 37
2.5 Latin Squares......Page 40
2.6 Simple Linear and Quadratic Regression......Page 43
2.7 Multivariate t-tests......Page 46
2.8 Fixed α on a Sphere......Page 49
2.9 A Bayesian Approach......Page 51
3.1 Tests of Hypotheses......Page 54
3.2 The General Linear Hypothesis......Page 56
3.3 Least Squares Estimate and the F-test......Page 57
3.4 The Canonical Form......Page 58
3.5 Expressions for ϕ......Page 59
4.1 Tables of the Operating Characteristic......Page 62
4.2 Tables of ϕ......Page 63
4.5 Special Purpose Charts and Tables......Page 64
4.6 Stein's Two-sample Procedure......Page 66
4.7 Error Rate......Page 67
5.1 Auxiliary Functions......Page 68
5.2 Generation of Critical Values......Page 71
5.3 Power Computation......Page 72
5.4 Some More Recent Algorithms......Page 74
5.5 Construction of the Charts......Page 75
6. Interpolation in Table 1......Page 78
Examples......Page 80
Previous Tables, Charts, and Programs......Page 81
Computational Methods......Page 83
Part Two......Page 86
Table 1 – Critical Values of the F-distribution......Page 87
Table 2 – Critical Values of the x[sup(2)]-distribution......Page 103
Table 3 – Critical Values of the t-distribution......Page 105
Part Three......Page 106
Charts......Page 108
Index......Page 214
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SAMPLE SIZE CHOICE

STATISTICS: Textbooks and Monographs A Series Edited by D. B. Owen, Coordinating Editor Department of Statistics Southern Methodist University Dallas, Texas R. G. Cornell, Associate Editor for Biostatistics University of Michigan

W. J. Kennedy, Associate Editor for Statistical Computing Iowa State University

A. M. Kshirsagar, Associate Editor for Multivariate Analysis and Experimental Design University of Michigan

E. G. Schilling, Associate Editor for Statistical Quality Control Rochester Institute of Technology

Vol. Vol. Vol. Vol.

1: 2: 3: 4:

The Generalized Jackknife Statistic,//. L. Gray and W. R. Schucany Multivariate Analysis, Anant M, Kshirsagar Statistics and Society, Walter T. Federer Multivariate Analysis: A Selected and Abstracted Bibliography, 1957-1972, Kocherlakota Subrahmaniam and Kathleen Subrahmaniam (out of print) Vol. 5: Design of Experiments: A Realistic Approach, Virgil L. Anderson and Robert A, McLean Vol. 6: Statistical and Mathematical Aspects of Pollution Problems, John W. Pratt Vol. 7: Introduction to Probability and Statistics (in two parts), Part I: Probability; Part II: Statistics, Narayan C. Giri Vol. 8: Statistical Theory of the Analysis of Experimental Designs, /. Ogawa Vol. 9: Statistical Techniques in Simulation (in two parts),/flcfc P. C. Kleijnen Vol. 10: Data Quality Control and Editing, Joseph I. Naus (out of print) Vol. 11: Cost of Living Index Numbers: Practice, Precision, and Theory, Kali S. Banerjee Vol. 12: Weighing Designs: For Chemistry, Medicine, Economics, Operations Research, Statistics, Kali S. Banerjee Vol. 13: The Search for Oil: Some Statistical Methods and Techniques, edited by D. B. Owen Vol. 14: Sample Size Choice: Charts for Experiments with Linear Models, Robert E. Odeh and Martin Fox Vol. 15: Statistical Methods for Engineers and Scientists, Robert M. Bethea, Benjamin S. Duran, and Thomas L. Boullion Vol. 16: Statistical Quality Control Methods, Irving W. Burr Vol. 17: On the History of Statistics and Probability, edited by D. B. Owen Vol. 18: Econometrics, Peter Schmidt Vol. 19: Sufficient Statistics: Selected Contributions, Vasani S. Huzurbazar (edited by Anant M. Kshirsagarj Vol. 20: Handbook of Statistical Distributions, Jagdish K. Patel, C H. Kapadia, and D. B. Owen Vol. 21: Case Studies in Sample Design, A. C. Rosander Vol. 22: Pocket Book of Statistical Tables, compiled by R. k\ Odeh, D. B. Owen, Z. W. Birnbaum, and L Fisher

Vol. 23: The Information in Contingency Tables, D. V. Gokhale and Solomon Kullback Vol. 24: Statistical Analysis of Reliability and Life-Testing Models: Theory and Methods, LeeJ. Bain Voi. 25: Elementary Statistical Quality Control, Irving W. Burr Vol. 26: An Introduction to Probability and Statistics Using BASIC, Richard A. Groeneveld Vol. 27: Basic Applied Statistics, B. L. Raktoe and J. J. Hubert Vol. 28: A Primer in Probability, Kathleen Subrahmaniam Vol.29: Random Processes: A First Look, R. Syski Vol. 30: Regression Methods: A Tool for Data Analysis, Rudolf J. Freund and Paul D. Minton Vol. 3 1 : Randomization Tests, Eugene S. Edgington Vol. 32: Tables for Normal Tolerance Limits, Sampling Plans, and Screening, Robert E. Odehand D. B. Owen Vol. 33: Statistical Computing, William J. Kennedy, Jr. and James E. Gentle Vol. 34: Regression Analysis and Its Application: A Data-Oriented Approach, Richard F. Gunst and Robert L. Mason Vol. 35: Scientific Strategies to Save Your Life,/. D. J. Bross Vol. 36: Statistics in the Pharmaceutical Industry, edited by C. Ralph Buncher and Jia- Yeong Tsay Vol. 37: Sampling from a Finite Population, J. Hajek Vol. 38: Statistical Modeling Techniques, S. S. Shapiro Vol. 39: Statistical Theory and Inference in Research, T. A. Bancroft and C-P. Han Vol. 40: Handbook of the Normal Distribution, Jagdish K. Pateland Campbell B. Read Vol. 4 1 : Recent Advances in Regression Methods, Hrishikesh D. VinodandAman Ullah Vol. 42: Acceptance Sampling in Quality Control, Edward G. Schilling Vol. 4 3 : The Randomized Clinical Trial and Therapeutic Decisions, edited by Niels Tygstrup, John M. Lachin, and Erik Juhl Vol. 44: Regression Analysis of Survival Data in Cancer Chemotherapy, Walter H. Carter, Jr., Galen L. Wampler, and Donald M. Stablein Vol. 45: A Course in Linear Models, Anant M. Kshirsagar Vol. 46: Clinical Trials: Issues and Approaches, edited by Stanley H. Shapiro and Thomas H. Louis Vol. 47: Statistical Analysis of DNA Sequence Data, edited by B. S. Weir Vol. 48: Nonlinear Regression Modeling: A Unified Practical Approach, David A. Ratkowsky Vol. 49: Attribute Sampling Plans, Tables of Tests and Confidence Limits for Proportions, Robert E. Odeh and D. B. Owen Vol. 50: Experimental Design, Statistical Models, and Genetic Statistics, edited by Klaus Hinkelmann Vol. 5 1 : Statistical Methods for Cancer Studies, edited by Richard G. Cornell Vol.52: Practical Statistical Sampling for Auditors, Arthur J. Wilburn Vol. 53: Statistical Signal Processing, edited by Edward J. Wegman and James G. Smith Vol. 54: Self-Organizing Methods in Modeling: GMDH Type Algorithms, edited by Stanley J. Farlow Vol. 55: Applied Factorial and Fractional Designs, Robert A. McLean and Virgil L. A nderson Vol. 56: Design of Experiments: Ranking and Selection, edited by Thomas J. Santner and A/it C. Tamhane Vol. 57: Statistical Methods for Engineers and Scientists. Second Edition, Revised and Expanded, Robert M. Bethea, Benjamin S. Duran, and Thomas L. Bouillon Vol. 58: Ensemble Modeling: Inference from Small-Scale Properties to Large-Scale Systems, Alan E. Gelfand and Crayton C. Walker

VoL 59: Computer Modeling for Business and Industry, Bruce L. Bowerman and Richard T. O'Connell VoL 60; Bayesian Analysis of Linear Models, Lyle D. Broemeling Vol. 61: Methodological Issues for Health Care Surveys, Brenda Cox and Steven Cohen Vol. 62: Applied Regression Analysis and Experimental Design, Richard J. Brook and Gregory C. Arnold Vol. 63: Statpal: A Statistical Package for Microcomputers - PC-DOS Version for the IBM PC and Compatibles, Bruce J. Chalmer and David G. Whitmore Vol. 64: Statpal: A Statistical Package for Microcomputers - Apple Version for the II, II+, and He, David G. Whitmore and Bruce J. Chalmer Vol. 65: Nonparametric Statistical Inference, Second Edition, Revised and Expanded, Jean Dickinson Gibbons Vol. 66: Design and Analysis of Experiments, Roger G. Petersen Vol. 67: Statistical Methods for Pharmaceutical Research Planning, Sten W. Bergman and John C Gittins Vol. 68: Goodness-of-Fit Techniques, edited by Ralph B. D'Agostino and Michael A. Stephens Vol. 69: Statistical Methods in Discrimination Litigation, edited by D.H. Kaye and Mikel Aickin Vol. 70: Truncated and Censored Samples from Normal Populations, Helmut Schneider Vol. 7 1 : Robust Inference, M. L Tiku, W. Y. Tan, and N. Balakrishnan Vol. 72: Statistical Image Processing and Graphics, edited by Edward J, Wegman and Douglas J. DePriest Vol. 73: Assignment Methods in Combinatorial Data Analysis, Lawrence J. Hubert Vol. 74: Econometrics and Structural Change, Lyle D. Broemeling and Hiroki Tsurumi Vol. 75: Multivariate Interpretation of Clinical Laboratory Data, Adelin Albert and Eugene K. Harris Vol. 76: Statistical Tools for Simulation Practitioners, Jack P. C. Kleijnen Vol. 77: Randomization Tests, Second Edition, Eugene S. Edgington Vol. 78: A Folio of Distributions. A Collection of Theoretical Quantile-Quantile Plots, Edward B. Fowlkes Vol. 79: Applied Categorical Data Analysis, Daniel H, Freeman, Jr. Vol. 80: Seemingly Unrelated Regression Equations Models : Estimation and Inference, Virendra K. Srivastava and David E. A. Giles Vol.81: Response Surfaces: Designs and Analyses, Andre L Khuri and John A. Cornell Vol. 82: Nonlinear Parameter Estimation: An Integrated System in BASIC, John C. Nash and Mary Walker-Smith VoL 8 3 : Cancer Modeling, edited by James R. Thompson and Barry W. Brown Vol. 84: Mixture Models: Inference and Applications to Clustering, Geoffrey J. McLachlan and Kaye E Basford VoL 8 5 : Randomized Response: Theory and Techniques, Arijit Chaudhuri and Rahul Mukerjee VoL 86: Biopharmaceutical Statistics tor Drug Development, edited hv Karl E. Peace VoL 87: Parts per Million Values for Estimating Quality Levels, Robert L Odeh and D B Owen VoL 88: Lognormal Distributions: Theory and Applications, edited bv Edwin L. Crow and Kunio Shimizu V o l . 8 9 : Properties of Estimators for the G a m m a D i s t r i b u t i o n , K O Bowman

Shenton Vol. 90: Spline Smoothing and Nonparametric Regression, Randall L. Eubank Vol. 9 1 : Linear Least Squares Computations, R. W. Farehrother VoL 92: Exploring Statistics, Damaraju Raghavarao

and L. R.

Vol. 93: Applied Time Series Analysis for Business and Economic Forecasting, SufiM. Nazem Vol. 94: Bayesian Analysis of Time Series and Dynamic Models, edited by James C. Spall Vol. 95: The Inverse Gaussian Distribution: Theory, Methodology,and Applications, Raj S. Chhikara and J. Leroy Folks Vol. 96: Parameter Estimation in Reliability and Life Span Models, A. Clifford Cohen and Betty Jones Whitten Vol. 97: Pooled Cross-Sectional and Time Series Data Analysis, Terry E. Dielman Vol. 98: Random Processes: A First Look, Second Edition, Revised and Expanded, R. Syski Vol. 99: Generalized Poisson Distributions: Properties and Applications, P.C Consul Vol. 100: Nonlinear Lp-Norm Estimation,/? ene Gonin and Arthur H. Money Vol. 101: Model Discrimination for Nonlinear Regression Models, Dale S. Borowiak Vol. 102: Applied Regression Analysis in Econometrics, Howard E. Doran Vol. 103: Continued Fractions in Statistical Applications, K.O. Bowman and L.R. Shenton Vol. 104: Statistical Methodology in the Pharmaceutical Sciences, Donald A. Berry Vol. 105: Experimental Design in Biotechnology,Perry D. Haaland Vol. 106: Statistical Issues in Drug Research and Development, edited by Karl E. Peace Vol. 107: Handbook of Nonlinear Regression Models, David A. Ratkowsky Vol. 108: Robust Regression: Analysis and Applications, edited by Kenneth D. Lawrence and Jeffrey L. Arthur Vol. 109: Statistical Design and Analysis of Industrial Experiments, edited by Subir Ghosh

Vol. 110: ^/-Statistics: Theory and Practice, A. J. Lee Vol. I l l : A Primer in Probability, Second Edition, Revised and Expanded, Kathleen Subrahmaniam Vol. 112: Data Quality Control: Theory and Pragmatics, edited by Gunar E. Liepins and V. R. R. Uppuluri Vol. 113: Engineering Quality by Design: Interpreting the Taguchi Approach, Thomas B. Barker Vol. 114: Survivorship Analysis for Clinical Studies, Eugene K. Harris and Adelin Albert Vol. 115: Statistical Analysis of Reliability and Life-Testing Models, Second Edition, Lee J. Bain and Max Engelhardt Vol. 116: Stochastic Models of Carcinogenesis, Wai-Yuan Tan Vol. 117: Statistics and Society: Data Collection and Interpretation, Second Edition, Revised and Expanded, Walter T. Federer Vol. 118: Handbook of Sequential Analysis, B. K. Ghosh and P. K. Sen Vol. 119: Truncated and Censored Samples: Theory and Applications, A. Clifford Cohen Vol. 120: Survey Sampling Principles, E. K. Foreman Vol. 121: Applied Engineering Statistics, Robert M. Bethea and R. Russell Rinehart Vol. 122: Sample Size Choice: Charts for Experiments with Linear Models, Second Edition, Robert E. Odeh and Martin Fox ADDITIONAL VOLUMES IN PREPARATION

SAMPLE SIZE CHOICE Charts for Experiments with Linear Models Second Edition

ROBERT E. ODEH

MARTIN FOX

University of Victoria Victoria, British Columbia, Canada

Michigan State University East Lansing, Michigan

/ Q \ CRC Press yCf** ^ — S

J Taylor & Francis Group Boca Raton London New York

CRC Press is an imprint of the Taylor & Francis Group, an informa business

CRC Press Taylor & Francis Group 6000 Broken Sound Parkway NW, Suite 300 Boca Raton, FL 33487-2742 First issued in paperback 2019 © 1991 by Taylor Francis Group, LLC CRC Press is an imprint of Taylor & Francis Group, an Informa business No claim to original U.S. Government works ISBN-13: 978-0-8247-8600-7 (hbk) ISBN-13: 978-0-367-40292-1 (pbk) This book contains information obtained from authentic and highly regarded sources. Reasonable efforts have been made to publish reliable data and information, but the author and publisher cannot assume responsibility for the validity of all materials or the consequences of their use. The authors and publishers have attempted to trace the copyright holders of all material reproduced in this publication and apologize to copyright holders if permission to publish in this form has not been obtained. If any copyright material has not been acknowledged please write and let us know so we may rectify in any future reprint. Except as permitted under U.S. Copyright Law, no part of this book may be reprinted, reproduced, transmitted, or utilized in any form by any electronic, mechanical, or other means, now known or hereafter invented, including photocopying, microfilming, and recording, or in any information storage or retrieval system, without written permission from the publishers. For permission to photocopy or use material electronically from this work, please access www.copyright. com (http://www.copyright.com/) or contact the Copyright Clearance Center, Inc. (CCC), 222 Rosewood Drive, Danvers, MA 01923, 978-750-8400. CCC is a not-for-profit organization that provides licenses and registration for a variety of users. For organizations that have been granted a photocopy license by the CCC, a separate system of payment has been arranged. Trademark Notice: Product or corporate names may be trademarks or registered trademarks, and are used only for identification and explanation without intent to infringe. Library of Congress Cataloging-in-Publication Data Odeh, Robert E. Sample size choice: charts for experiments with linear models / Robert E. Odeh, Martin Fox, -- 2nd ed. p. cm. - (Statistics, textbooks and monographs; v. 122) Includes bibliographical references and index. ISBN 0-8247-8600-9 1. Experimental design-Charts, diagrams, etc. 2. Statistical hypothesis testing-Charts, diagrams, etc. 3. Sampling (Statistics)~Charts; diagrams, etc. 4. Linear models (Statistics)--Charts, diagrams, etc. I. Fox, Martin. II. Title. III. Series. QA279.033 1991 519.5-dc20 91-22887 CIP Visit the Taylor & Francis Web site at http://www.taylorandfrancis.com and the CRC Press Web site at http://www.crcpress.com

To the memory of Jerzy Neyman and Egon S. Pearson, who together developed our modern theory of testing of statistical hypotheses and led us to consideration of power of tests in the design of experiments and analysis of data.

PREFACE TO THE SECOND EDITION In the second edition the material has been rearranged so as to bring the reader more expeditiously to the examples (now Chapter 2). The introduction has been limited to the power of the F~test and a description of the charts. The remainder of the theoretical discussion is deferred to Chapter 3 and is followed by Chapter 4 (formerly Chapter 2) which is a survey of the literature. The last two chapters are as in the first edition. We have extensively rewritten the textual material with, we believe, greater clarity. Errors have be corrected, including gross errors in the section on regression. Examples have been added to demonstrate the choice of sample size for: 1. The one-way layout when the null hypothesis states that k < I out of the I means are equal (Example 2.2.4). Also considered are unequal sample sizes for this case (Example 2.2.5). 2. Latin squares (Example 2.5.1). 3. Profile analysis (Example 2.7.3). References have been updated and improved computational algorithms, not available to us for the first edition, are mentioned. The authors wish to thank Charles E. Cress, John Gill, John Hall, and Carl Ramm who read the first edition and suggested some of the changes and additions mentioned above.

ROBERT E. ODEH MARTIN FOX

PREFACE TO THE FIRST EDITION When designing experiments intended for testing statistical hypotheses, one should consider both the desired level of significance (usually denoted by a) and the desired power of the test. Generally, one can control both of these quantities by selection of the number n of replicates, the power with fixed a increasing as n increases. These charts are intended to enable one to find n achieving a given a and power in experiments for which linear models are appropriate. A wide range of both quantities is provided. Prior to the advent of the high-speed computer, tables of statistical functions were very limited in their coverage of entry values. Traditionally, and for no other good reason, this limitation restricted tables used for hypothesis testing to levels of significance .01 and .05. By now, some degree of magic has been associated with these two levels. With the general availability of high-speed computation, the range of levels can by extended and research workers can use the level most appropriate to their own work. The authors wish to thank the editors of the Annals of Mathematical Statistics for permission to use the format of charts introduced in their pages by Fox (1956). This collection is an expansion of those contained in that journal. We also wish to thank Joseph L. Hodges, Jr. who suggested the format of the Fox (1956) charts of which these are an extension. Parts of the manuscript, in several stages of readiness, were read by Kenneth J. Arnold, Charles Cress, John L. Gill, William C. Guenther, W. Keith Hastings, Donald B. Owen, James Stapleton, and M.L. Tiku. Extensive rewriting resulted from their comments. Any remaining difficulties are our own fault. Without Noralee Burkhart's meticulous work, the manuscript could have never appeared in print. We thank her for typing the preliminary drafts as well as the final version. The values for the charts and tables were computed on the IBM/145 at the University of Victoria. We are particularly grateful to Eric Gelling, who assisted

with much of the computer programming. We also wish to express our appreciation to the University of Victoria Computing Centre for their generous assistance. The original charts were produced on a Calcomp Plotter at the University of Victoria. The charts were redrawn, for publication, by the Graphics Division, Technical Media Center, Michigan State University. We are particularly indebted to Mr. D.J. Wilkening and his staff. Amanda Linnell proofread the final copy of the manuscript and uncovered many errors and inconsistencies.

ROBERT E. ODEH MARTIN FOX

vm

CONTENTS Preface to the Second Edition Preface to the First Edition

v vii

PART ONE 1. INTRODUCTION 1.1 Power of the i^-test 1.2 Range of the Charts

1 1 2

2. EXAMPLES 2.1 General Remarks 2.2 One-way Layout 2.3 Two-way Layout 2.4 Randomized Blocks 2.5 Latin Squares 2.6 Simple Linear and Quadratic Regression 2.7 Multivariate *-tests 2.8 Fixed a on a Sphere 2.9 A Bayesian Approach

5 5 7 12 16 19 22 25 28 30

3. BACKGROUND 3.1 Tests of Hypotheses 3.2 The General Linear Hypothesis 3.3 Least Squares Estimate and the i^-test 3.4 The Canonical Form 3.5 Expressions for "•-

Consider two cases: 1. # 0 : 62 — 0. Then, /1 = 1 and / 2 = TV - 3. Under # 0 the estimators So of 60 and S\ respectively, are those for the full model in simple linear regression Because of the coding, Si — S\ and So = Y. The numerator sum of squares is SSH

— /_^{SQ i

+ S\X± + $2 — SQ —
Fa} = a

and is given by

(5-16)

Fa = I • 1 ^ 2

where x a satisfies / Zfj (/ 2 /2, /i/2) = a and / z (a,6) is defined by (5.9). If / 2 = 00, then F is distributed x 2 (/i)//i- Thus, Fa] - P[x 2 (/i)//i > Fa] = so that

(5.17)

Fa = ^ I / l l 50

where Xa(/i) *s defined from Sec. 5.2.1. If /i = oo, then the variance ratio F is distributed as /2/x 2 (/2)- It follows that

a=

P[F>Fa}=P\f2/X2(h)>Fa

and, thus (5.18)

Fa =

h x\-a{h)

5.2.3 The t-distribution The critical value ta(v) of the (-distribution with u degrees of freedom satisfies (5.19)

P[t(i/) > ta(u)\ = a

If fx — l^ f2 — i/^ the variance ratio F is distributed as t2. Thus (5.20)

ta(i/)

If v = oc, then ^a(oo) = j / a , where ya is given by (5.6). Accurate approximations to ta{u) are given by the computer algorithm of Hill(l970). 5.3 Power Computation 5.8.1 Finite fr and f2 Let F1 denote a random variable having a noncentral ^' — distribution with f\ and / 2 degrees of freedom, and noncentrality parameter A. For a given value of / i , /2, a, and ^5, the power of the F—test is given by Power = P [ F ' > Fa\\\ where A = (1 + fi) Fa\X] has the limiting form (See Abramowitz and Stegun (1968), Eq. 26.6.24, pp. 948): (5.23)

lim P[F> > Fa\X] =

where lim — — c and

52

Since A — (1 — /i) F|A] has the limiting form (see Abramowitz and Stegun, 1968, Eq. 26.6.23, pp. 942): lim P[F' > Fa\X] = P[x' 2 (/i) > X2 (/i)|A]

(5.25) where x' 2 (/i)

J2—*OO

1S a

random variable having a noncentral x 2 ~distribution with fi

degrees of freedom and noncentrality parameter A = /i(l -f- ip2). Then P[x /2 (/i) > X2 (/i)|^j (5.26)

was

evaluated using the series:

i — e ' y

where

and where J(z, s) is defined by (5.1) (see Abramowitz and Stegun, 1968, Eq. 26.4.25, pp. 942). The series given in (5.26) was continued until the error of the last term computed relative to the partial sum was less than 10~4.

5.4 Some More Recent Algorithms Many relevant algorithms have appeared in the literature since we first did the computation for these charts in 1974. In this section we list some of them. The list given here is not meant to be exhaustive but rather to point to some readily available algorithms. An algorithm for computing the incomplete ^-function ratio is given by Lau (1980). Beasley and Springer (1985) give an algorithm for finding percentage points of the normal distribution.

53

An algorithm for computing the incomplete /3-function ratio is given by Majumder and Bhattacharjee (1985a). These authors also give an algorithm for finding percentage points (1985b). Best and Roberts (1985) give an algorithm for finding percentage points of the 2 X distribution. Narula and Desu (1981) give algorithms for computing the cumulative of the noncentral x2 distribution and also for finding the noncentrality parameter. Narula and Weistroffer (1986) give algorithms for computing the cumulative of the noncentral F-distribution and also for finding the noncentrality parameter. Other algorithms for computing the cumulative of the noncentral i^-distribution are given by Norton (1983) and by Lenth (1983). 5.5 Construction of the Charts 5.4-1 General details The charts were drawn on a plotter from a tape generated by a computer program. For f\ > 3, / 2 > 3.8, the scales on the charts are reciprocal. The original charts were drawn so that the horizontal distance between /i = 2 and / 2 — 3 is 2.5 inches. The horizontal distance between fx = 2 and fx — oo is 10 inches. The vertical scale for J% is the same as the horizontal scale for f\. The horizontal scale of the left-hand box was chosen so that the horizontal distance between f\ — 1 and /i = 2 was 1.25 inches. The minimum value of p which appears on a particular chart and the value by which tp was incremented were determined by trial and error. The curve in the upper right-hand corner of the chart was computed first and then p was incremented. The computer program generated curves until a value of p was reached for which no part of the line would appear on the chart; that is, /j was always less than 3.8 for all values of fx. The curves of constant p which appear in the left-hand box are those lines which intersect the line f2 = oo or / 2 = 3.8 for a value of fx < 1. For a given value of a and power, each curve of constant p is constructed in the following way: for fixed fx we determine the value of / 2 which gives the required power. As fx is varied, a sequence of points on the curve is generated. The endpoints are determined separately, i.e., the values of fx for which / 2 = oo or f2 = 3.8. Any two consecutive points are joined by straight lines to give the entire line of constant p. If for fx = oo, / 2 > 80, then only the two endpoints are joined. Points are

54

determined for values of /i = 1(1)10(2)20(20)100, 200, oo. 5.5.2 Numerical methods For a fixed value of a and power, and a given value of fx and (p, the value of / 2 is found using one of the following two methods: Method A. (See McCracken and Dorn, 1964 pp. 130). Let Xn denote the n-th approximation to the desired value of / 2 , and let P(Xn) denote the corresponding power. Denote by DP the desired power. Then the (n-j-l)-th approximation to f2 is given by (5.27)

Xn+1 = * „ + „ - *": " *"-*

r\Xn) — r ( A }

[DP - P(Xn)

This iteration was continued until |X n+ i — Xn\ < 10~4. This method was used when f1 = oo and P(Xn) was computed from (5.24). It was also used for finite f\ and / 2 < 20 and P(Xn) was computed from Tiku's three-moment approximation given in (5.22). Initial values of XQ and Xi were chosen in the following way: XQ was chosen as the largest integer from the set S = {3, 6, 9, 19, 39} such that P(XQ) < DP. (Note that if P(3) > DP, the line of constant

20, (5.21) was used to compute the power for the two even integers which surround the correct value of / 2 . Linear interpolation was then used to find / 2 . If P(f2) = DP, denote by / 2 the largest even integer which is less than or equal to / 2 . Then (5.28)

P(K)

20, method B will find / 2 to at least one decimal place. The three-moment approximation is not sufficiently accurate, particularly for power > .8 or a > .25, 55

to yield this accuracy. For f2 > 20, the three-moment approximation is sufficiently accurate to yield two decimal places for / 2 , and method A was used. Since this method is iterative, it is easy to use. Method B will not yield two decimal place accuracy. However, interpolation through four successive even values of f2 gave agreement with method A to two decimal places.

56

Chapter 6 INTERPOLATION IN TABLE 1 (Critical Values of the ^-distribution) The critical values of the i^-distribution are approximately linear in 1/ fi and I//2 provided that fi > 12 or / 2 > 40. This makes interpolation in Table 1 very simple. Suppose that Table 1 provides an entry for the desired value of } \ but not for }%Suppose that / 2 i and / 22 are adjacent entry values of f2 satisfying / 21 < / 2 < / 22 . Let the a critical value for fi and /21 degrees of freedom be a and for } \ and JIT, be b. Then the interpolated critical value for /1 and ft degrees of freedom is

Note that l/oo = 0. This will be illustrated by finding the critical value for Example 2.3.3, case 3, In that example /1 = 2, an available entry, but / 2 = 54 which is unavailable. Then / 2 i = 50 and / 22 = 60 so that from Table 1.8 in Part Two, a = 7.956 and b = 7.768 for a = .001. Thus, (6.1) yields Fooi(2,54) = 7.768+ I 1 / 5 4 ~ V66 0Q ^ U ;

°°

'

(1/50- V )

Q56

_

7 76g x = 7 g 7 2

In the rare case that /1 is not a tabled entry, but / 2 is, (6.1) with the obvious interchange is still valid.

57

Large value of /i are rare, but we will illustrate by example how repeated applications of (6.1) can be used to interpolate in both /i and / 2 . Suppose that a = .05, fi = 65 and / 2 = 85. First fix /i = 60. Then f21 = 80 and f22 = 90. Use Table 1.4 and (6.1) to obtain for /i = 60 and f2 = 85 the result

F.0B(60,85) = 1.465 + j | ^

j ^ j (1.482 - 1.465) = 1.473

Repeat this for f\ = 90 and / 2 = 85 to obtain F.08(90,85) = 1.417 + | | ^ ~ | ^ ° j (1.436 - 1.417) = 1.426 Now use the obvious interchange in (6.1) for f\ — 65 and fi — 85 to obtain the desired result F05(65,85) = 1.426+ ; ( (—^(1.473- 1.426) = 1.462 0 K ; ' } (1/60 - 1/90)l All of the interpolated values above agree with the exact answer. In general the error in interpolation will be at most one unit in the last decimal place. For values of /i < 12 and f2 < 40 linear interpolation in / 2 will also yield this accuracy.

58

REFERENCES Examples Beale, H.P. (1934). The serum reactions as an aid in the study of filterable viruses of plants. Boyce Thompson Inst. for Plant Res., Contrib. 6 407-435.

Bliss, C.I. (1952). The Statistics of Bioassay. (New York: Academic Press, Inc.). Burt, C. and Lewis, R.B. (1946). Teaching backward readers. Br. J. Educ. Psych. 16 116-132. Crampton, E.W. (1947). The growth of the odontoblasts of the incisor tooth as a criterion of the vitamin C intake of the guinea pig. J. Nutrition 33 491-504. Erdman, L.W. (1946). Studies to determine if antibiosis occurs among Rhizobia: 1. Between Rhizobium meliloti and Rhizobium trifolii. J. Amer. Soc. Agron. 38 251-258. Fisher, R.A. (1936). The use of multiple measurements in taxonomic problems. Ann. Eugenics 7 179-188.

Glick, S.D. and Greenstein, S. (1973). Comparative learning and memory deficits following hippocampal and candidate lesions in mice. J. Comp. and Physio. Psych. 82 188-194. Hardison, W.A. and Reid, J.T. (1953). Use of indicators in the measurement of the dry matter intake of grazing animals. J. Nutrition 51 35-52. Kasschau, R.A. (1972). Polarization in serial and paired-associate learning. Amer. J. Psych. 85 43-56. Mason, K.E. (1942). Criteria of response in the bioassay of vitamin E. J. Nutrition 23 59-70. Neter, J., Wasserman, W. and Kutner, M.H. (1985). Applied Linear Statistical Models, 2nd edition. (Homewood, 111. : Richard D. Irwin, Inc.) Ostle, B. (1963). Statistics in Research (Ames: Iowa University Press).

59

Preuss, P.W., et. al. (1968). Studies of fluoro-organic compounds in plants. I. Metabolism of 214 —C-fluoroacetate. Boyce Thompson Inst. for Plant Res., Contrib. 24 25-31. Schroeder, E.M. (1945). On Measurement of Motor Skills. (New York: King's Crown Press). Steel, R.G.D. and Torrie, J.H. (1960). Principles and Procedures of Statistics with Special Reference to Biological Sciences. (New York: McGraw-Hill). Valenzi, E.R. and Andrews, LR. (1971). Effect of hourly overpay and underpay inequity when tested with a new induction procedure. J. Appl. Psych. 55 22-27. Walker, H.M. and Lev J. (1953). Statistical Inference. (New York: Holt, Rinehart and Winston, Inc.). Youden, W.J. and Beale, H.P. (1934). Statistical study of the local lesion method for estimating tobacco mosaic virus. Boyce Thompson Inst. for Plant Res.} Contrib. 6 437-454. Theoretical References Dantzig, G.B. (1940). On the non-existence of test of "Student's" hypothesis having power functions independent of a. Ann. Math. Statist. 11 186-192 Hotelling, H. (1931). The generalization of "Student's" ratio. Ann. Math. Statist. 2 360-378. Neyman, J. and Pearson, E.S. (1928). The use and interpretation of certain test criteria for purposes of statistical inference, Part I. Biometrika 20a 175-240. Stein, C. (1945). A two-sample test for a linear hypothesis whose power is independent of the variance. Ann. Math. Statist. 16 243-258. Previous Tables, Charts and Programs Asaki, Z, Kondo, Y., and Narita, T. (1970). On the power of F-test in analysis of variance-I; Power of F-test on the main effects. Reports of Statist. Appl. Res., Union of Japanese Scientists and Engineers 17 57-66. Asaki, Z. and Kondo Y. (1971). On the power of the F-test in analysis of varianceII; Power of F-test on the effect of two factor interactions. Reports of Statist. Appl. Res., Union of Japanese Scientists and Engineers 18 1-8. Bargmann, R.E. and Ghosh, S.P. (1963). Statistical distribution programs for a computer language. I.B.M. Watson Res. Center Res. Rep. RC-1094. Bargmann, R.E. and Ghosh, S.P. (1964). Noncentral statistical distribution programs for a computer language. I.B.M. Watson Res. Center Res. Rep. RC1231. 60

Bargmann, R.E. and Thomas, C.G. (1971). Comparison of noncentral distribution programs. Themis Tech. Report No. 10, U. Georgia. Bouver, H. and Bargmann, R.E. (1975). Computational algorithms for the evaluation of statistical distribution functions. Themis Tech. Report No. 36, U. Georgia. Bowman, K.O. and Kastenbaum, M.A. (1975). Sample size requirement: single and double classification experiments. Selected Tables in Mathematical Statistics, Vol. 5, Harter, H.L. and Owen, D.B., eds. (Providence: American Mathematical Society). 111-232. Bratcher, T.L., Moran, M.A., and Zimmer, W.I. (1970). Tables of sample sizes in the analysis of variance. J. Qual. Tech. 2 156-164. Dasgupta, P. (1968). Tables of the noncentrality parameter of F-test as a function of power. Sankhya, Series B 30 73-82. Duncan, A.J. (1957). Charts of the 10% and 50% points of the operating characteristic curves for fixed effects analysis of variance F-tests, a = 0.01 and .05. J. Amer. Statist. Assoc. 52 345-349. Feldt, L.S. and Mahmoud, M.W. (1958). Power function charts for specifying numbers of observations in analysis of variance for fixed effects. Ann. Math. Statist. 29 871-877. Fox, M. (1956). Charts of the power of the F-test. Ann. Math. Statist. 29 484-497. Ifram, A.F. (1971). Tables of the noncentral F and beta variables. Jordon Res. Council 1 181-207. Kastenbaum, M.A., Hoel, D.G., and Bowman, K.O. (1970a). Sample size requirement: one-way analysis of variance. Biometrika 57 421-430. Kastenbaum, M.A., Hoel, D.G., and Bowman, K.O. (1970b). Sample size requirement: randomized block designs. Biometrika 57 573-577. Keuls, M. (1960a). Tabellen in nomogrammen voor het orderscheidingsvermogen van de 5% en 10%-F-toets voor het gebruik bij de gewarde blokke proef. Statistica Neerlandica 14 127-150 (Dutch with English summary). Keuls M. (1960b). La puissance du critere F dans l'analyse de la variance de plans en blocs an hasard. Nomogrammes pur le choix du nombre de repetitions. Biometrie Praximetrie 1 65-80 (Dutch and English summaries). Keuls M. (1960c). La puissance du critere F dans l'analyse de la variance de plans en blocs an hasard. Nomogrammes pur le choix du nombre de repetitions. Bull, de VInst. Agron. et des Stations de Recherches de Gembloux 1 256-271 (English and German summaries). Lachenbruch, P.A. (1967). The non-central F-distribution: Some extensions of Tang's tables. Dept. of Biostatistics, U. of North Carolina Mimeo Series No. 531. 61

Lehmer, E. (1944). Inverse table of probabilities of errors of the second kind. Ann. of Math. Statist. 15 388-398. Owen, D.B. (1962). Handbook of Statistical Tables. (Reading, Mass: AddisonWesley Publishing Co., Inc.). Pearson, E.S. and Hartley, H.O. (1951). Charts of the power function for analysis of variance tests, derived from the non-central F-distribution. Biometrika 38 112-130. Pearson, E.S. and Hartley, H.O. (1972). Biometrika Tables for Statisticians, Vol. 2. (London: Cambridge University Press). Rodger, R.S. (1974). Multiple contrasts, factors, error rates and power. Br. J. math, statist. Psychol. 27 179-198. Rodger, R.S. (1975a). The number of non-zero, post hoc contrasts from ANOVA and error-rate I. Br. J. math, statist. Psychol. 28 71-78. Rodger, R.S. (1975b). Setting rejection rate for contrasts selected post hoc when some nulls are false. Br. J. math, statist. Psychol. 28 214-232. Rodger, R.S. (1976). Tables of Stein's non-central parameter Df3; i/j, v^ required to set power for numerical alternatives to HQ tested by two-stage sampling anova. J. statist. Comput. Simul. 5 1-22. Rodger, R.S. (1978). Two-stage sampling to set sample size for post hoc tests in ANOVA with decision-based error rates. Br. J. math, statist. Psychol. 31 153-178. Scheffe, H. (1959). The Analysis of Variance. (New York: John Wiley & Sons, Inc.). Tang, P.C. (1938). The power function of the analysis of variance test with tables and illustrations of their use. Stat. Res. Mem. 2 126-249 and tables. Tiku, M.L. (1967). Tables of the power of the F-test. J. Amer. Statist. Assoc. 62 525-539. Tiku, M.L. (1972). More tables of the power of the F-test. J. Amer. Statist. Assoc. 67 709-710. Computational Methods Abramowitz, M. and Stegun, I.A. (editors) (1968). Handbook of Mathematical Functions (seventh printing). AMS 55, U.S. Department of Commerce, National Bureau of Standards, Washington, D.C. Beasley, J.D. and Springer, S.G. (1985). The percentage points of the normal distribution, Algorithm AS 111. Applied Statistics Algorithms, Griffiths P. and Hill, I.D., eds. (Chichester: Ellis Horwood Limited). 188-191.

62

Best, D.J. and Roberts, D.E. (1985). The percentage points of the x2 distribution, Algorithm AS 91. Applied Statistics Algorithms, Griffiths P. and Hill, I.D., eds. (Chichester: Ellis Horwood Limited). 157-161. Bhattacharjee, C.P. (1970). The incomplete gamma integral. Algorithm AS 32. AppL Statist. 19 285-287. Goldstein, R.B. (1973). Chi-square quantiles, Algorithm 451. Comm. ACM 16 482-484. Hill, G.W. (1970). Student's £-quantiles, Algorithm 396. Comm. ACM 13 619-620. Lau, C-L (1980). A simple series for the incomplete gamma integral, Algorithm AS 147. AppL Statist. 29 113-114. Majumder, K.L. and Bhattacharjee, G.P. (1985a). The incomplete beta integral. Algorithm AS 63. Applied Statistics Algorithms, Griffiths P. and Hill, I.D., eds. (Chichester: Ellis Horwood Limited). 117-120. Majumder, K.L. and Bhattacharjee, G.P. (1985b). Inverse of the incomplete beta function ratio, Algorithm AS 64/AS 109. Applied Statistics Algorithms, Griffiths P. and Hill, I.D., eds. (Chichester: Ellis Horwood Limited). 121-125. McCracken, D.D. and Dorn, W.S. (1964). Numerical Methods and Fortran Programming (New York: John Wiley & Sons, Inc.). Narula, S.C. and Desu, M.M. (1981). Computation of probability and non-centrality parameter of a non-central chi-square distribution, Algorithm AS 170. AppL Statist. 30 349-352. Narula, S.C. and Weistroffer, H.R.(1986). Computation of probability and noncentrality parameter of a non-central /^-distribution. Commun. Statist.Simula. 15 871-878. Norton, V. (1983). A simple algorithm for computing the non-central F-distribution. AppL Statist., 32 84-85. Odeh, R.E. and Evans, O.J. (1972). Some rational approximations to the upper percentage points of the normal distribution. Proc. Second Manitoba Conference on Numerical Mathematics, University of Winnipeg, Manitoba 311-318. Odeh R.E. and Evans, O.J. (1974), The percentage points of the normal distribution. Algorithm AS 70. AppL Statist. 23 96-97. Tiku, M.L. (1965). Laguerre series forms of non-central x2 Biometrika 52 415-427.

an

d F distributions.

Tiku, M.L. (1966). A note on approximating to the non-central F distribution. Biometrika 53 606-610.

63

PART TWO

.5149

8 9 10 12 14 16 18 20 22 24 26 28 30 35 40 50 60 70 80 90 120 240 oo

.4990 .4938 .4897 .4837 .4794 .4763 .4738 .4719 .4703 .4690 .4679 .4670 .4662 .4645 .4633 .4616 .4605 .4597 .4591 .4586 .4577 .4563 .4549

7 .5057

6

hi

1 .7798 .7665 .7568 .7494 .7435 .7348 .7286 .7241 .7205 .7177 .7155 .7136 .7120 .7106 .7094 .7071 .7053 .7028 .7012 .7001 .6992 .6985 .6972 .6952 .6931

2 .8858 .8709 .8600 .8517 .8451 .8353 .8284 .8233 .8194 .8162 .8137 .8115 .8097 .8082 .8069 .8042 .8023 .7995 .7977 .7964 .7954 .7947 .7932 .7909 .7887

3 .9419 .9262 .9146 .9058 .8988 .8885 .8812 .8758 .8716 .8683 .8656 .8633 .8615 .8598 .8584 .8556 .8536 .8507 .8487 .8474 .8463 .8455 .8439 .8415 .8392

4 .9765 .9603 .9483 .9392 .9319 .9212 .9137 .9081 .9038 .9004 .8976 .8953 .8933 .8916 .8902 .8873 .8852 .8822 .8802 .8787 .8777 .8769 .8752 .8727 .8703

5 1.000 .9833 .9711 .9617 .9544 .9434 .9357 .9300 .9256 .9221 .9192 .9169 .9149 .9132 .9117 .9087 .9065 .9035 .9014 .9000 .8989 .8981 .8964 .8939 .8914

6

/i

1.017 1.000 .9876 .9781 .9705 .9594 .9516 .9458 .9413 .9378 .9349 .9325 .9304 .9287 .9272 .9242 .9220 .9189 .9168 .9153 .9142 .9134 .9116 .9091 .9065

7 1.030 1.013 1.000 .9904 .9828 .9715 .9636 .9577 .9532 .9496 .9467 .9442 .9422 .9404 .9389 .9359 .9336 .9305 .9284 .9269 .9258 .9249 .9232 .9206 .9180

8 1.040 1.022 1.010 1.000 .9923 .9810 .9730 .9670 .9625 .9588 .9559 .9534 .9513 .9496 .9480 .9450 .9427 .9395 .9374 .9359 .9348 .9339 .9322 .9296 .9270

9 1.048 1.030 1.018 1.008 1.000 .9886 .9805 .9745 .9699 .9663 .9633 .9608 .9587 .9569 .9554 .9523 .9500 .9468 .9447 .9432 .9421 .9412 .9394 .9368 .9342

10

TABLE 1.1 a = 0.50 CRITICAL VALUES OF THE ^-DISTRIBUTION

1.054 1.037 1.024 1.014 1.006 .9948 .9867 .9807 .9760 .9724 .9694 .9669 .9648 .9630 .9614 .9583 .9560 .9528 .9507 .9492 .9480 .9471 .9454 .9427 .9401

11

1.060 1.042 1.029 1.019 1.012 1.000 .9919 .9858 .9812 .9775 .9744 .9719 .9698 .9680 .9665 .9634 .9610 .9578 .9557 .9541 .9530 .9521 .9503 .9477 .9450

12

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2

1.762 1.701 1.657 1.624 1.598 1.560 1.533 1.514 1.499 1.487 1.477 1.470 1.463 1.457 1.452 1.443 1.435 1.425 1.419 1.414 1.411 1.408 1.402 1.394 1.386

1

1.621 1.573 1.538 1.512 1.491 1.461 1.440 1.425 1.413 1.404 1.396 1.390 1.384 1.380 1.376 1.368 1.363 1.355 1.349 1.346 1.343 1.341 1.336 1.330 1.323

4

1.787 1.716 1.664 1.625 1.595 1.550 1.519 1.497 1.479 1.465 1.454 1.445 1.437 1.430 1.424 1.413 1.404 1.393 1.385 1.379 1.375 1.372 1.365 1.356 1.346

3

1.784 1.717 1.668 1.632 1.603 1.561 1.532 1.510 1.494 1.481 1.470 1.462 1.454 1.448 1.443 1.432 1.424 1.413 1.405 1.400 1.396 1.393 1.387 1.378 1.369 1.785 1.711 1.658 1.617 1.585 1.539 1.507 1.483 1.464 1.450 1.438 1.428 1.420 1.413 1.407 1.395 1.386 1.374 1.366 1.360 1.355 1.352 1.345 1.335 1.325

5

1.782 1.706 1.651 1.609 1.576 1.529 1.495 1.471 1.452 1.437 1.424 1.414 1.406 1.399 1.392 1.380 1.371 1.358 1.349 1.343 1.338 1.335 1.328 1.317 1.307

6

h 1.779 1.701 1.645 1.602 1.569 1.520 1.485 1.460 1.441 1.425 1.413 1.402 1.393 1.386 1.380 1.367 1.357 1.344 1.335 1.329 1.324 1.320 1.313 1.302 1.291

7

9

1.773 1.693 1.635 1.591 1.556 1.505 1.470 1.443 1.423 1.407 1.394 1.383 1.374 1.366 1.359 1.345 1.335 1.321 1.312 1.305 1.300 1.296 1.289 1.277 1.265

8

1.776 1.697 1.640 1.596 1.562 1.512 1.477 1.451 1.431 1.415 1.402 1.392 1.383 1.375 1.369 1.355 1.345 1.332 1.323 1.316 1.311 1.307 1.300 1.289 1.277 1.771 1.690 1.631 1.586 1.551 1.500 1.463 1.437 1.416 1.399 1.386 1.375 1.366 1.358 1.351 1.337 1.327 1.312 1.303 1.296 1.291 1.287 1.279 1.267 1.255

10

TABLE 1.2 a = 0.25 CRITICAL VALUES OF THE F-DISTRIBUTION

1.769 1.687 1.627 1.582 1.547 1.495 1.458 1.431 1.410 1.393 1.379 1.368 1.359 1.350 1.343 1.329 1.319 1.304 1.294 1.287 1.282 1.278 1.270 1.258 1.246

11

1.767 1.684 1.624 1.579 1.543 1.490 1.453 1.426 1.404 1.387 1.374 1.362 1.352 1.344 1.337 1.323 1.312 1.297 1.287 1.280 1.275 1.270 1.262 1.250 1.237

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7.260 6.542 6.059 5.715 5.456 5.096 4.857 4.687 4.560 4.461 4.383 4.319 4.265 4.221 4.182 4.106 4.051 3.975 3.925 3.890 3.864 3.844 3.805 3.746 3.689

1

8.813 8.073 7.571 7.209 6.937 6.554 6.298 6.115 5.978 5.871 5.786 5.717 5.659 5.610 5.568 5.485 5.424 5.340 5.286 5.247 5.218 5.196 5.152 5.088 5.024 6.599 5.890 5.416 5.078 4.826 4.474 4.242 4.077 3.954 3.859 3.783 3.721 3.670 3.626 3.589 3.517 3.463 3.390 3.343 3.309 3.284 3.265 3.227 3.171 3.116

3

6.227 5.523 5.053 4.718 4.468 4.121 3.892 3.729 3.608 3.515 3.440 3.379 3.329 3.286 3.250 3.179 3.126 3.054 3.008 2.975 2.950 2.932 2.894 2.839 2.786

4

5.988 5.285 4.817 4.484 4.236 3.891 3.663 3.502 3.382 3.289 3.215 3.155 3.105 3.063 3.026 2.956 2.904 2.833 2.786 2.754 2.730 2.711 2.674 2.620 2.567

5

5.820 5.119 4.652 4.320 4.072 3.728 3.501 3.341 3.221 3.128 3.055 2.995 2.945 2.903 2.867 2.796 2.744 2.674 2.627 2.595 2.571 2.552 2.515 2.461 2.408

6

ti 8

5.600 4.899 4.433 4.102 3.855 3.512 3.285 3.125 3.005 2.913 2.839 2.779 2.729 2.687 2.651 2.581 2.529 2.458 2.412 2.379 2.355 2.336 2.299 2.245 2.192

7

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10

TABLE 1.5 a = 0.025 CRITICAL VALUES OF THE F-DISTRIBUTION

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10

TABLE 1.7 a = 0.005 CRITICAL VALUES OF THE F-DISTRIBUTION 11

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