Generates orthogonal hierarchical designs (R.W. Payne).
Options
PRINT = string token |
Controls whether or not to print a plan of the design (design ); if unset in an interactive run AGHIERARCHICAL will ask whether the design is to be printed, in a batch run the default is not to print the design |
---|---|
ANALYSE = string token |
Controls whether or not to analyse the design, and produce a skeleton analysis-of-variance table using ANOVA (no , yes ); default is to ask if this is unset in an interactive run, and not to analyse if it is unset in a batch run |
SEED = scalars |
Seed to be used to randomize each design; a negative value implies no randomization |
STATEMENT = text |
Saves a command to recreate the design (useful if the design information has been specified in response to questions from AGHIERARCHICAL ) |
EXCLUDELEVELS = scalars |
Levels of the first block factor to exclude during randomization |
Parameters
BLOCKFACTORS = factors |
Specifies the identifier for the block factor used to index the units of each stratum (or level of the hierarchy) |
---|---|
TREATMENTFACTORS = factors or pointers |
Specifies the identifier of the treatment factor or factors applied to the units of each stratum |
LEVELS = scalars or pointers |
Number of levels for the treatment factors in each stratum; if required, a pointer can contain an extra scalar to specify replication |
Description
AGHIERARCHICAL
forms orthogonal hierarchical designs: for example randomized blocks, split-plots, split-split-plots, and so on. The units of each stratum (or level of the hierarchy) are identified by a block factor: for example Replicates, Blocks, Plots, Subplots, Subjects &c.
AGHIERARCHICAL
can be used either interactively or in batch. Interactively, there is no need to set any options or parameters – the procedure will ask questions to ascertain the necessary details of the design. If, however, you wish to recreate the same design later, the STATEMENT
option allows you to save a Genstat text structure containing a command specifying the same information.
The first question is to find out what type of design you want to generate: either a completely randomized design, a randomized block design. a split-plot design, a split-split-plot design or a general hierarchical design. For a general hierarchical design, you will then be asked how many block factors (and thus strata) there are in the design, but this is predefined for the other designs. For example, a completely randomized design has a single blocking factor (e.g. Units
). For a randomized block design there would be two, for example Blocks
and Plots
, defining strata for blocks and for plots within blocks. In a split-plot design there are three (for example Blocks
, Wholeplots
and Subplots
) giving strata for blocks, whole plots within blocks and subplots within whole plots, while in a split-split-plots design there are four.
The questions then involve each stratum in turn, and asking first for the name of the block factor to be used to identify the units of the stratum. Next it asks how many treatment factors are applied to the units of that stratum. In a randomized block design, there are no treatment factors applied to the blocks and one, or more, applied to the plots, whereas in a split-plot design treatments are applied to both the whole plots and the subplots. It then asks for the names of the treatment factors, and how many levels they are to have. Alternatively, if there are no treatments applied to the stratum, AGHIERARCHICAL
asks how many levels the corresponding block factor should have – so, for example, it would how many blocks there should be in a randomized block or a split-plot design.
The example below shows the questions and answers (displayed in bold font) to generate a randomized complete block design. The design has three blocks and six units (plots) within each block. There are two treatment factors: Type
with two levels, and Amount
with three levels. (Note: in Genstat for Windows, the questions would be the same but they appear in pop-up menus.)
> What type of design do you want?
c completely randomized design
r randomized block design
s split-plot design
ss split-split-plot design
o other
Code (c,r,s,ss,o; Default: r) > r
What would you like to call the block factor?
Identifier (Default:Blocks) >
How many replicates are there of Blocks?
Number > 3
What would you like to call the unit-within-block factor?
Identifier (Default:Units) >
How many treatment factors are there?
Number > 2
What would you like to call treatment factor 1?
Identifier > Type
How many levels does treatment factor Type have?
Number > 2
What would you like to call treatment factor 2?
Identifier > Amount
How many levels does treatment factor Amount have?
Number > 3
Seed for randomization (-1 for none)?
Number (Default: -1) >
Do you want to print the design?
n no
y yes
Code (n,y; Default n) > n
Do you want to check the design by ANOVA?
n no
y yes
Code (n,y; Default n) > n
The parameters of AGHIERARCHICAL
provide an alternative way of providing the details of the design. BLOCKFACTORS
lists the block factors for the strata, TREATMENTFACTORS
defines factors for the treatments applied to the units of the strata and LEVELS
defines the levels of treatments and replication of block factors. For example
AGHIERARCHICAL [PRINT=design; ANALYSE=yes]\
Blocks,Plots; *,A; 3,5
defines a randomized block design with three blocks, and a single treatment factor A
(applied to the plots) with five levels. If there are several factors in a stratum, the identifiers should be placed into a pointer. For example,
AGHIERARCHICAL Blocks,Plots; *,!p(A,B); 3,2
for a randomized block design with two treatment factors, A
and B
, both with two levels. Similarly, if the factors in a stratum have different numbers of levels, the LEVELS
parameter may contain pointers.
AGHIERARCHICAL Blocks,Plots; *,!p(A,B); 3,!p(2,3)
defines A
to have two levels and B
to have three. The pointer can contain an extra element to indicate that there is to be replication (as well as treatments) in a stratum.
AGHIERARCHICAL Blocks,Plots; *,!p(A,B); 3,!p(2,3,4)
indicates that there are to be four replicates of the A
and B
combinations on the plots of each block.
In an interactive run, AGHIERARCHICAL
will ask about the treatment factors and the levels if these are not set. In a batch run all three parameters must be set.
The SEED
option allows you to specify a seed to randomize the design. In a batch run, this has a default of -1, to suppress randomization. If SEED
is unset in an interactive run, you will be asked to provide a seed (and again a negative value will leave the design unrandomized). You can use the EXCLUDELEVELS
parameter to specify levels of the first block factor that you do not wish to randomize. (This can be useful in “demonstration experiments”, when the treatments may need to be kept in a systematic order in some parts of the trial, but it is not a good idea in more normal situations.)
AGHIERARCHICAL
has two other options. The PRINT
option can be set to design
to print the plan of the design. By default, if you are running Genstat in batch, the plan is not printed. If you do not set PRINT
when running interactively, AGHIERARCHICAL
will ask whether or not you wish to print the design. Similarly the ANALYSE
option governs whether or not AGHIERARCHICAL
produces a skeleton analysis-of-variance table (containing just source of variation, degrees of freedom and efficiency factors). Again AGHIERARCHICAL
assumes that this is not required if ANALYSE
is unset in a batch run, and asks whether it is required if ANALYSE
is unset in an interactive run.
Options: PRINT
, ANALYSE
, SEED
, STATEMENT
, EXCLUDELEVELS
.
Parameters: BLOCKFACTORS
, TREATMENTFACTORS
, LEVELS
.
Method
The QUESTION
procedure is used to obtain the details of the required design. The design is then generated using GENERATE
and the other standard Genstat directives for calculation and manipulation.
See also
Procedures: AGDESIGN
, AGFACTORIAL
, AGFRACTION
.
Commands for: Design of experiments, Analysis of variance.
Example
CAPTION 'AGHIERARCHICAL example',\ !t('1) randomized block design with 3 blocks, and a',\ 'single treatment factor A with 5 levels;'); STYLE=meta,plain AGHIERARCHICAL [PRINT=design; ANALYSE=yes] Blocks,Plots; *,A; 3,5 CAPTION !t('2) randomized block design with 2 treatment factors',\ 'A with 2 levels and B with 3;') AGHIERARCHICAL [PRINT=design; ANALYSE=yes] Blocks,Plots; *,!p(A,B); 3,!p(2,3) CAPTION !t('3) split plot design with 4 blocks, treatment',\ 'factor V with 3 levels applied to the whole plots',\ 'and N with 4 levels applied to the subplots.') AGHIERARCHICAL [PRINT=design; ANALYSE=yes]\ Blocks,Wplots,Subplots; *,V,N; 4,3,4