In this vignette, we assume that the experimental aim is to find the best wheat variety from a wheat field trial.
A new design constructed using edibble must start by initialising the design object. An optional title of the design may be provided as input. This information persists as metadata in the object and is displayed in various places (e.g., print output and exported files).
When you have no data, you start by simply initialising the design object.
At this point, there is nothing particularly interesting. The design object requires the user to define the experimental factor(s) as described next.
At minimum, the design requires units to be defined via
set_units
. In the code below, we initialise a new design
object and then set a unit called “site” with 4 levels. The left hand
side (LHS) and the right hand side (RHS) of the function input
correspond to the factor name and the corresponding value, respectively.
Here, the value is a single integer that denotes the number of levels of
the factor. Note that the LHS can be any arbitrary (preferably
syntactically valid) name. Selecting a name that succinctly
describes the factor is recommended. Acronyms should be avoided where
reasonable. We assign this design object to the variable called
demo
.
At this point, the design is in a graph form. The print of this object shows a prettified tree that displays the title of the experiment, the factors, and their corresponding number of levels. Notice the root in this tree output corresponds to the title given in the object initialisation.
To obtain the design table, you must call on
serve_table
to signal that you wish the object to be
transformed into the tabular form. The transformation for
demo
is shown below, where the output is a type of
tibble
with one column (the “site” factor), four rows
(corresponding to the four levels in the site), and the entries
corresponding to the actual levels of the factor (name derived as
“site1”, “site2”, “site3”, and “site4” here). The first line of the
print output is decorated with the title of the design object, which
acts as a persistent reminder of the initial input. The row just under
the header shows the role of the factor denoted by the upper case letter
(here, U = unit) with the number of levels in that factor displayed. If
the number of levels exceed a thousand, then the number is shown with an
SI prefix rounded to the closest digit corresponding to the SI prefix
form (e.g., 1000 is shown as 1k and 1800 is shown as ~2k). The row that
follows shows the class of the factor (e.g., character or numeric).
serve_table(demo)
#> # Demo for defining units
#> # An edibble: 4 x 1
#> site
#> <U(4)>
#> <chr>
#> 1 site1
#> 2 site2
#> 3 site3
#> 4 site4
If particular names are desired for the levels, then the RHS value can be replaced with a vector like below where the levels are named “Narrabri”, “Horsham”, “Parkes” and “Roseworthy”.
design("Character vector input demo") %>%
set_units(site = c("Narrabri", "Horsham", "Parkes", "Roseworthy")) %>%
serve_table()
#> # Character vector input demo
#> # An edibble: 4 x 1
#> site
#> <U(4)>
#> <chr>
#> 1 Narrabri
#> 2 Horsham
#> 3 Parkes
#> 4 Roseworthy
The RHS value in theory be any vector. Below the input is a numeric
vector, and the corresponding output will be a data.frame
with a numeric column.
design("Numeric vector input demo") %>%
set_units(site = c(1, 2, 3, 4)) %>%
serve_table()
#> # Numeric vector input demo
#> # An edibble: 4 x 1
#> site
#> <U(4)>
#> <dbl>
#> 1 1
#> 2 2
#> 3 3
#> 4 4
In the instance that you do want to enter a single level with a
numeric value, this can be specified using lvls
on the
RHS.
design("Single numeric level demo") %>%
set_units(site = lvls(4)) %>%
serve_table()
#> # Single numeric level demo
#> # An edibble: 1 x 1
#> site
#> <U(1)>
#> <dbl>
#> 1 4
We can add more unit factors to this study. Suppose that we have 72
plots. We append another call to set_units
to encode this
information.
However, we did not defined the relationship between
site
and plot
; so it fails to convert to the
tabular form.
serve_table(demo2)
#> Error in `serve_table()`:
#> ! The graph cannot be converted to a table format.
The relationship between unit factors can be defined concurrently when defining the unit factors using helper functions. One of these helper functions is demonstrated next.
Given that we have a wheat trial, we imagine that the site
corresponds to the locations, and each location would have its own
plots. The experimenter tells you that each site contains 18 plots. This
nesting structure can be defined by using the helper function
nested_in
. With this relationship specified, the graph can
be reconciled into a tabular format, as shown below.
demo %>%
set_units(plot = nested_in(site, 18)) %>%
serve_table()
#> # Demo for defining units
#> # An edibble: 72 x 2
#> site plot
#> <U(4)> <U(72)>
#> <chr> <chr>
#> 1 site1 plot01
#> 2 site1 plot02
#> 3 site1 plot03
#> 4 site1 plot04
#> 5 site1 plot05
#> 6 site1 plot06
#> 7 site1 plot07
#> 8 site1 plot08
#> 9 site1 plot09
#> 10 site1 plot10
#> # ℹ 62 more rows
In the above situation, the relationship between unit factors have to
be apriori known, but there are situations in which the relationship may
become cognizant only after defining the unit factors. In these
situations, users can define the relationships using the functions
allot_units
and assign_units
to add the edges
between the relevant unit nodes in the factor and level graphs,
respectively.
demo2 %>%
allot_units(site ~ plot) %>%
assign_units(order = "systematic-fastest") %>%
serve_table()
#> # Demo for defining units
#> # An edibble: 72 x 2
#> site plot
#> <U(4)> <U(72)>
#> <chr> <chr>
#> 1 site1 plot01
#> 2 site2 plot02
#> 3 site3 plot03
#> 4 site4 plot04
#> 5 site1 plot05
#> 6 site2 plot06
#> 7 site3 plot07
#> 8 site4 plot08
#> 9 site1 plot09
#> 10 site2 plot10
#> # ℹ 62 more rows
The code above specifies the nested relationship of plot
to site
, with the assignment of levels performed
systematically. The systematic allocation of site
levels to
plot
is done so that the site
levels vary the
fastest, which is not the same systematic ordering as before. If the
same result as before is desirable, users can define
order = "systematic-slowest"
, which offers a systematic
assignment where the same levels are close together.
Crop field trials are often laid out in rectangular arrays. The
experimenter confirms this by alerting to us that each site has plots
laid out in a rectangular array with 6 rows and 3 columns. We can define
crossing structures using crossed_by
.
design("Crossed experiment") %>%
set_units(row = 6,
col = 3,
plot = crossed_by(row, col)) %>%
serve_table()
#> # Crossed experiment
#> # An edibble: 18 x 3
#> row col plot
#> <U(6)> <U(3)> <U(18)>
#> <chr> <chr> <chr>
#> 1 row1 col1 plot01
#> 2 row2 col1 plot02
#> 3 row3 col1 plot03
#> 4 row4 col1 plot04
#> 5 row5 col1 plot05
#> 6 row6 col1 plot06
#> 7 row1 col2 plot07
#> 8 row2 col2 plot08
#> 9 row3 col2 plot09
#> 10 row4 col2 plot10
#> 11 row5 col2 plot11
#> 12 row6 col2 plot12
#> 13 row1 col3 plot13
#> 14 row2 col3 plot14
#> 15 row3 col3 plot15
#> 16 row4 col3 plot16
#> 17 row5 col3 plot17
#> 18 row6 col3 plot18
The above table does not contain information on the site. For this, we need to combine the nesting and crossing structures, as shown next.
Now, suppose that there are four sites (Narrabri, Horsham, Parkes, and Roseworthy), and the 18 plots at each site are laid out in a rectangular array of 3 rows and 6 columns. We begin by specifying the site (the highest hierarchy in this structure). The dimensions of the rows and columns are specified for each site (3 rows and 6 columns). The plot is a result of crossing the row and column within each site.
complex <- design("Complex structure") %>%
set_units(site = c("Narrabri", "Horsham", "Parkes", "Roseworthy"),
col = nested_in(site, 6),
row = nested_in(site, 3),
plot = nested_in(site, crossed_by(row, col)))
serve_table(complex)
#> # Complex structure
#> # An edibble: 72 x 4
#> site col row plot
#> <U(4)> <U(24)> <U(12)> <U(72)>
#> <chr> <chr> <chr> <chr>
#> 1 Narrabri col01 row01 plot01
#> 2 Narrabri col01 row02 plot02
#> 3 Narrabri col01 row03 plot03
#> 4 Narrabri col02 row01 plot04
#> 5 Narrabri col02 row02 plot05
#> 6 Narrabri col02 row03 plot06
#> 7 Narrabri col03 row01 plot07
#> 8 Narrabri col03 row02 plot08
#> 9 Narrabri col03 row03 plot09
#> 10 Narrabri col04 row01 plot10
#> 11 Narrabri col04 row02 plot11
#> 12 Narrabri col04 row03 plot12
#> 13 Narrabri col05 row01 plot13
#> 14 Narrabri col05 row02 plot14
#> 15 Narrabri col05 row03 plot15
#> 16 Narrabri col06 row01 plot16
#> 17 Narrabri col06 row02 plot17
#> 18 Narrabri col06 row03 plot18
#> 19 Horsham col07 row04 plot19
#> 20 Horsham col07 row05 plot20
#> # ℹ 52 more rows
You may realise that the labels for the rows do not start with “row1”
for Horsham. The default output displays distinct labels for the unit
levels that are actually distinct. This safeguards for instances where
the relationship between factors is lost, and the analyst will have to
guess what units may be nested or crossed. However, nested labels may
still be desirable. You can select the factors to show the nested labels
by naming these factors as arguments for the label_nested
in serve_table
(below shows the nesting labels for
row
and col
– notice plot
still
shows the distinct labels).
serve_table(complex, label_nested = c(row, col))
#> # Complex structure
#> # An edibble: 72 x 4
#> site col row plot
#> <U(4)> <U(24)> <U(12)> <U(72)>
#> <chr> <chr> <chr> <chr>
#> 1 Narrabri col1 row1 plot01
#> 2 Narrabri col1 row2 plot02
#> 3 Narrabri col1 row3 plot03
#> 4 Narrabri col2 row1 plot04
#> 5 Narrabri col2 row2 plot05
#> 6 Narrabri col2 row3 plot06
#> 7 Narrabri col3 row1 plot07
#> 8 Narrabri col3 row2 plot08
#> 9 Narrabri col3 row3 plot09
#> 10 Narrabri col4 row1 plot10
#> 11 Narrabri col4 row2 plot11
#> 12 Narrabri col4 row3 plot12
#> 13 Narrabri col5 row1 plot13
#> 14 Narrabri col5 row2 plot14
#> 15 Narrabri col5 row3 plot15
#> 16 Narrabri col6 row1 plot16
#> 17 Narrabri col6 row2 plot17
#> 18 Narrabri col6 row3 plot18
#> 19 Horsham col1 row1 plot19
#> 20 Horsham col1 row2 plot20
#> # ℹ 52 more rows
You later find that the dimensions of Narrabri and Roseworthy are
larger. The experimenter tells you that there are in fact 9 columns
available, and therefore 27 plots at Narrabri and Roseworthy. The number
of columns can be modified according to each site, as below, where
col
is defined to have 9 levels at Narrabri and Roseworthy
but 6 levels elsewhere.
complexd <- design("Complex structure with different dimensions") %>%
set_units(site = c("Narrabri", "Horsham", "Parkes", "Roseworthy"),
col = nested_in(site,
c("Narrabri", "Roseworthy") ~ 9,
. ~ 6),
row = nested_in(site, 3),
plot = nested_in(site, crossed_by(row, col)))
complextab <- serve_table(complexd, label_nested = everything())
table(complextab$site)
#>
#> Horsham Narrabri Parkes Roseworthy
#> 18 27 18 27
You can see above that there are indeed nine additional plots at
Narrabri and Roseworthy. The argument for label_nested
supports tidyselect
approach for selecting factors.
Defining treatment factors is only necessary when designing a
comparative experiment. The treatment factors can be set similar to the
unit factors using set_trts
. Below, we define an experiment
with three treatment factors: variety (a or b), fertilizer (A or B), and
amount of fertilizer (0.5, 1, or 2 t/ha).
factrt <- design("Factorial treatment") %>%
set_trts(variety = c("a", "b"),
fertilizer = c("A", "B"),
amount = c(0.5, 1, 2))
The links between treatment factors need not be explicitly defined.
It is automatically assumed that treatment factors are crossed (i.e.,
the resulting treatment is the combination of all treatment factors)
with the full set of treatments shown via trts_table
. For
the above experiment, there are a total of 12 treatments with the levels
given below.
trts_table(factrt)
#> # A tibble: 12 × 3
#> variety fertilizer amount
#> <chr> <chr> <dbl>
#> 1 a A 0.5
#> 2 b A 0.5
#> 3 a B 0.5
#> 4 b B 0.5
#> 5 a A 1
#> 6 b A 1
#> 7 a B 1
#> 8 b B 1
#> 9 a A 2
#> 10 b A 2
#> 11 a B 2
#> 12 b B 2
The factrt
cannot be served as an
edbl_table
object, since there are no units defined in this
experiment and how these treatments are administered to the units.
In some experiments, certain treatment factors are dependent on
another treatment factor. A common example is when the dose or amount of
a treatment factor is also a treatment factor. In the field trial
example, we can have a case in which we administer no fertilizer to a
plot. In this case, there is no point crossing with different
amount
s; in fact, the amount of no fertilizer should always
be 0. We can specify this conditional treatment structure by describing
this relationship using the helper function,
conditioned_on
, as below. The “.” in the LHS is a shorthand
to mean all levels, except for those specified previously.
factrtc <- design("Factorial treatment with control") %>%
set_trts(variety = c("a", "b"),
fertilizer = c("none", "A", "B"),
amount = conditioned_on(fertilizer,
"none" ~ 0,
. ~ c(0.5, 1, 2)))
We can see below that the variety is crossed with other factors, as expected, but the amount is conditional on the fertilizer.
In edibble
, each experimental factor is encoded as a
node in the factor graph along with its levels as nodes in the level
graph. The edges (or links) can only be specified after the nodes are
created. The links define the relationship between the experimental
factors and the direction determining the hierarchy with the nodes.
Often, these links are implicitly understood and not explicitly encoded,
thus making it difficult to utilise the information downstream. By
encoding the links, we can derive information and validate processes
downstream.
Users specify these links using functions that are semantically aligned with thinking in the construction of an experimental design. There are three high-level approaches to defining these links as summarised in the table below:
Approach | Functions | Modifies | Purpose |
---|---|---|---|
Within role group | nested_in , crossed_by ,
conditioned_on |
Both factor and level graphs | Links between the nodes of the same role only. |
Allotment | allot_trts , allot_units ,
set_rcrds , set_rcrds_of |
Factor graph only | Capture high-level links that are typically apriori known by the user. |
Assignment | assign_trts , assign_units |
Level graph only | Determine links between nodes, often algorithmically. |
The helper functions, nested_in
and
crossed_by
construct nested and crossed units, respectively
(shown above). The helper function, conditioned_on
(demonstrated above) constructs a conditional treatment structure. These
helper functions concurrently draw links between the relevant nodes in
both factor and level graphs. These links would be apriori known to the
user and these helper functions are just semantically designed to make
it easier for the user to specify the links between nodes. These helper
functions only construct links between nodes belonging to the same role
(i.e., unit or treatment).
Links specified using an allotment approach designate high-level links between factors. In other words, this approach only draws edges between nodes in the factor graph, and almost always, these edges are intentionally formed by the user. The purpose of this approach is to capture a user’s high-level intention or knowledge.
For demonstration, we leverage the previously defined unit
(complexd
) and treatment structures (factrtc
).
These structures can be combined to obtain the combined design object as
below.
complexd + factrtc
#> Complex structure with different dimensions
#> ├─site (4 levels)
#> │ ├─col (30 levels)
#> │ │ └─plot (90 levels)
#> │ ├─row (12 levels)
#> │ │ └─plot (90 levels)
#> │ └─plot (90 levels)
#> ├─variety (2 levels)
#> ├─fertilizer (3 levels)
#> └─amount (4 levels)
The above design object does not describe the links between the
treatments and units. The function allot_trts
ascribes the
links between treatments to units in the factor graph.
The assign_trts
(often algorithmically) draw links
between the treatment and unit nodes in the level graph (conditioned on
the existing links in the factor graph).
There are five in-built assignment algorithms: “systematic-fastest” (synonym for “systematic”), “systematic-random-fastest” (synonym for “systematic-random”), “systematic-slowest”, “systematic-random-slowest”, and “random”. The variation in systematic assignment results in repeated ordering with respect to the unit order, without regard to any unit structure. When the number of units is not divisible by the total number of treatments, the earlier treatment levels would have an extra replicate. The “systematic-random-fastest” and “systematic-random-slowest” are systematic variants that ensure equal chances for all treatment levels to obtain an extra replicate by randomising the order of treatment levels before the systematic allocation of treatment to units proceeds. The “fastest” and “slowest” variants determine if treatment levels are fast or slow in varying across order of the unit (slow varying meaning that the same treatment levels will be closer together in unit order, whereas fast varying means the same treatment levels are spread out in unit order).
Building on the previously defined structure and allotment, we define
an algorithm to assign links between unit and treatment levels using the
function assign_trts
. Below, we use a systematic ordering
for the first allotment (fertilizer to row) then a random ordering for
the second allotment (interaction of amount and variety to plot). An
optional seed number is provided to ensure the generated design could be
reproduced.
design1 <- alloted1 %>%
assign_trts(order = c("systematic", "random"),
seed = 2023) %>%
serve_table(label_nested = c(row, col))
While allotment (high-level allocation) and assignment (actual
allocation) are distinguished in the system to provide flexibility to
the user for defining these processes separately, it is likely that many
users would concurrently define these processes. The
allot_table
function offers a shorthand that combines the
call to allot_trts
, assign_trts
, and
serve_table
into one call.
To illustrate the difference when treatment interaction is alloted to
a unit (like the second allotment in allotment1
), below, we
have a different allotment where the amount of fertilizer and variety
are allotted to plot in a separate allotment. A separate allotment can
be assigned using different algorithms and is considered independent of
other allotments (unless the treatment factor is conditional on another
treatment factor).
design2 <- (complexd + factrtc) %>%
allot_table(fertilizer ~ row,
amount ~ plot,
variety ~ plot,
order = c("systematic", "random", "random"),
label_nested = c(row, col),
seed = 2023)
The assignment algorithms in the system use the default constraint,
which takes the nesting structure defined in the unit structure
(i.e. row is nested in site and plot is crossed by row and column and
nested in site). This constraint is used to define the nature of
“random” assignment. For example, in the code below, we relax this
constraint such that the plot
factor is constrained within
a row
(default was row
, col
and
site
), which in turn is contained within the
site
. This difference in constraints results in a different
path in the algorithm (as shown in the overview in @fig-assign-alg).
design3 <- alloted1 %>%
assign_trts(order = c("systematic", "random"),
seed = 2023,
constrain = list(row = "site", plot = "row")) %>%
serve_table(label_nested = c(row, col))
The above three different designs (design1
,
design2
and design3
) share the same unit and
treatment structure, but the allotment and/or assignment algorithm
differed. One result of this is that the treatment replications, differ
across the generated designs with the most ideal distribution seen in
design3
(if all fertilizer and amount combinations are of
equal interest and fertilizer allocation is restricted to the row;
arguably, it is better to remove the latter constraint, if practically
feasible, so the units with the control treatment can be assigned for
other treatment levels to obtain a more even distribution). The
difference in design1
and design2
is that the
amount and variety were allocated as an interaction in the former but
independently in the latter. The latter process does not ensure
near-equal replication of the treatment levels, so it is not surprising
that design2
has the least uniform treatment
distribution.
Finding or creating the most appropriate assignment algorithm is one of the challenging tasks in the whole workflow. The default algorithm is unlikely to be optimal for the given structure, and the user is encouraged to modify this step to suit their own design.