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{{more footnotes|date=April 2012}}
In [[statistics]], '''restricted randomization''' occurs in the [[design of experiments]] and in particular in the context of [[randomized experiment]]s and [[randomized controlled trial]]s. Restricted randomization allows intuitively poor allocations of treatments to experimental units to be avoided, while retaining the theoretical benefits of randomization.<ref>{{cite book|last1=Dodge|
The concept was introduced by [[Frank Yates]] (1948){{full citation needed|date=November 2012}} and [[William J. Youden]] (1972){{full citation needed|date=November 2012}} "as a way of avoiding bad spatial patterns of treatments in designed experiments."<ref name="ref1">
==Example of nested data==
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There are 16 subplot experimental units for this experiment. Solution temperature and current are the subplot factors in this experiment. There are four whole-plot experimental units in this experiment. Solution concentration is the whole-plot factor in this experiment. Since there are two sizes of experimental units, there are two error terms in the model, one that corresponds to the whole-plot error or whole-plot experimental unit and one that corresponds to the subplot error or subplot experimental unit.
The [[ANOVA]] table for this experiment would look, in part, as follows:
{| class="wikitable"
|+ Partial ANOVA table
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|1
|-
|Error (
|1
|-
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|1
|-
|Rep
|1
|-
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|1
|-
|Rep
|1
|-
|Temp
|1
|-
|Rep
|1
|-
|Temp
|1
|-
|Rep
|1
|-
|Current
|1
|-
|Rep
|1
|-
|Temp
|1
|-
|Error (Subplot) = Rep
|1
|}
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|1
|-
|Error (
|1
|-
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|1
|-
|Conc
|1
|-
|Temp
|1
|-
|Conc
|1
|-
|Error (
|8
|}
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|1
|-
|Error (
|4
|-
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|1
|-
|Conc
|1
|-
|Temp
|1
|-
|Conc
|1
|-
|Error (
|4
|}
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==See also==
{{
* [[Hierarchical linear modeling]]
* [[Mixed-design analysis of variance]]
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==References==
{{reflist}}
* {{cite web | url=http://www.itl.nist.gov/div898/handbook/pri/section5/pri55.htm | title=How can I account for nested variation (restricted randomization)? | publisher=(U.S.) National Institute of Standards and Technology: Information Technology Laboratory |
==Further reading==
For a more detailed discussion of these designs and the appropriate analysis procedures, see:
* {{cite book
|
|
|year = 1984
|title = Analysis of Messy Data
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|volume = 39
|issue = 2
|doi = 10.2307/1270903
|jstor = 1270903
|pages = 153–161}}
==External links==
* [https://www.southampton.ac.uk/~cpd/anovas/datasets/index.htm Examples of all ANOVA and ANCOVA models with up to three treatment factors, including randomized block, split plot, repeated measures, and Latin squares, and their analysis in R]
{{Statistics}}
{{Experimental design}}
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[[Category:Analysis of variance]]
[[Category:Design of experiments]]
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