<?xml version="1.0" encoding="utf-8"?><!DOCTYPE article  PUBLIC '-//OASIS//DTD DocBook XML V4.4//EN'  'http://www.docbook.org/xml/4.4/docbookx.dtd'><article><articleinfo><title>FAQ/Sattherthwaite</title><revhistory><revision><revnumber>5</revnumber><date>2013-03-08 10:17:10</date><authorinitials>localhost</authorinitials><revremark>converted to 1.6 markup</revremark></revision><revision><revnumber>4</revnumber><date>2006-07-27 11:59:53</date><authorinitials>pc13.ccc.enta.net</authorinitials></revision><revision><revnumber>3</revnumber><date>2006-07-27 11:57:52</date><authorinitials>pc13.ccc.enta.net</authorinitials></revision><revision><revnumber>2</revnumber><date>2006-07-01 21:41:16</date><authorinitials>cmbg-cache-2.server.ntli.net</authorinitials></revision><revision><revnumber>1</revnumber><date>2006-06-30 21:37:50</date><authorinitials>Scripting Subsystem</authorinitials></revision></revhistory></articleinfo><section><title>Fractional Degrees of Freedom</title><para>Sometimes - either in the output of a statistical package, or in the results section of a published paper - you will find the quoted <emphasis role="strong">degrees of freedom</emphasis> of a <emphasis>t</emphasis>- or <emphasis>F</emphasis>-statistic are not whole numbers, <emphasis>i.e.</emphasis> they are <emphasis role="strong">fractional</emphasis>.  </para><para>The reason for the occurrence of these fractional degrees of freedom is usually because two or more sums-of-squares have been combined in some way to create appropriate approximate numerator and denominator terms for testing the effect that is being investigated.  </para><para>Such statistics are sometimes called <emphasis role="strong">quasi <emphasis>t-</emphasis> or quasi <emphasis>F-</emphasis>statistics</emphasis>. Their null-hypothesis distribution does not have exactly a t or F, but <emphasis role="strong">F E SATTERTHWAITE</emphasis> in 1946 showed how to calculate and approximation to the null-hypothesis sampling distribution of these quasi <emphasis>t/F</emphasis> statistics. The approximation is a member of the extended family of <emphasis>t/F</emphasis> distributions which interpolates with fractional parameters the more familiar family with whole number degrees of freedom.  </para><para>An important place where these fractional degrees of freedom occur is in <emphasis role="strong">repeated measures ANOVA</emphasis> where, in order to overcome problems with <emphasis role="strong">heterogeneity of covariances</emphasis>, a correction factor (between 0 and 1) called <emphasis role="strong">epsilon</emphasis> is calculated and used to deflate both the numerator and denominator degrees of freedom in F statistics involving the repeated measures factor. Different versions of <emphasis>epsilon</emphasis> are associated with the names of BOX, of GREENHOUSE &amp; GEISSER, and of HUYHN &amp; FELDT.  </para><para>The other frequently-encountered situation where Satterthwaite's approximation is used is in <emphasis role="strong">two-sample t-tests with unequal variances</emphasis>.  </para><para><!--"~-smaller-~" is not applicable to DocBook-->To be included later: Graphics illustrating the relation of distributions with fractional degrees of freedom to ones with interger degrees of freedom.  </para><!--rule (<hr>) is not applicable to DocBook--><para><!--"~-smaller-~" is not applicable to DocBook--><emphasis role="strong">Satterthwaite</emphasis> (vb.) To spray the person you are talking to with half-chewed breadcrumbs. </para></section></article>