eatATA
: a Minimal ExampleeatATA
efficiently translates test design requirements for Automated Test Assembly (ATA
) into constraints for a Mixed Integer Linear Programming Model (MILP). A number of efficient and user-friendly functions are available that translate conceptual test assembly constraints to constraint objects for MILP solvers, like the GLPK
solver. In the remainder of this vignette we will illustrate the use of eatATA
using a minimal example. A general overview over eatATA
can be found in the vignette Overview of eatATA
Functionality.
The eatATA
package can be installed from CRAN
.
install.packages("eatATA")
First, eatATA
is loaded into your R
session. In this vignette we use a small simulated item pool, items_sim
. The goal will be to assemble a single test form consisting of ten items, an average test time of eight minutes and maximum TIF
at medium ability. We therefore calculate the IIF
at medium ability and append it to the item pool using the calculateIFF()
function.
# loading eatATA
library(eatATA)
# item pool structure
str(items_sim)
#> 'data.frame': 30 obs. of 4 variables:
#> $ id : int 1 2 3 4 5 6 7 8 9 10 ...
#> $ format : chr "mc" "mc" "mc" "mc" ...
#> $ mean_time : num 29.5 25 31 37.6 27.3 ...
#> $ difficulty: num 0.0302 -0.5803 1.7906 -0.4644 -0.5265 ...
# calculate and append IIF
"IIF"] <- calculateIIF(B = items_sim$difficulty, theta = 0) items_sim[,
Next, the objective function is defined: The TIF
should be maximized at medium ability. For this, we use the maxConstraint()
function.
<- maxConstraint(nForms = 1, itemValues = items_sim$IIF,
testInfo itemIDs = items_sim$id)
Our further, fixed constraints are defined as additional constraint objects.
<- itemsPerFormConstraint(nForms = 1, operator = "=",
itemNumber targetValue = 10,
itemIDs = items_sim$id)
<- itemUsageConstraint(nForms = 1, operator = "<=",
itemUsage targetValue = 1,
itemIDs = items_sim$id)
<- itemValuesDeviation(nForms = 1,
testTime itemValues = items_sim$mean_time,
targetValue = 8 * 60,
allowedDeviation = 5,
relative = FALSE,
itemIDs = items_sim$id)
Alternatively, we could determine the appropriate test time based on the item pool using the autoItemValuesMinMax()
function.
<- autoItemValuesMinMax(nForms = 1,
testTime2 itemValues = items_sim$mean_time,
testLength = 10,
allowedDeviation = 5,
relative = FALSE,
itemIDs = items_sim$id)
#> The minimum and maximum values per test form are: min = 415.26 - max = 425.26
To automatically assemble the test form based on our constraints, we call the useSolver()
function. In this function we define which solver should be used as back end. As a default solver, we recommend GLPK
, which is automatically installed alongside this package.
<- useSolver(list(itemNumber, itemUsage, testTime, testInfo),
solver_out solver = "GLPK")
#> GLPK Simplex Optimizer, v4.47
#> 34 rows, 31 columns, 151 non-zeros
#> 0: obj = 0.000000000e+000 infeas = 4.850e+002 (1)
#> * 14: obj = 0.000000000e+000 infeas = 4.441e-016 (0)
#> * 34: obj = 6.719704076e+000 infeas = 0.000e+000 (0)
#> OPTIMAL SOLUTION FOUND
#> GLPK Integer Optimizer, v4.47
#> 34 rows, 31 columns, 151 non-zeros
#> 30 integer variables, all of which are binary
#> Integer optimization begins...
#> + 34: mip = not found yet <= +inf (1; 0)
#> + 51: >>>>> 6.345959248e+000 <= 6.716532093e+000 5.8% (10; 0)
#> + 56: >>>>> 6.712004599e+000 <= 6.712004599e+000 0.0% (10; 7)
#> + 56: mip = 6.712004599e+000 <= tree is empty 0.0% (0; 27)
#> INTEGER OPTIMAL SOLUTION FOUND
The solution can be inspected directly via inspectSolution()
or appended to the item pool via appendSolution()
. Using the inspectSolution()
function an additional row is created that calculates the column sums for all numeric variables.
inspectSolution(solver_out, items = items_sim, idCol = "id")
#> $form_1
#> id format mean_time difficulty theta=0
#> 1 1 mc 29.54138 0.03019108 0.7220244
#> 13 13 open 38.81086 -0.33968639 0.6654634
#> 15 15 open 25.30197 -0.19227341 0.7035404
#> 16 16 open 69.92575 -0.65288754 0.5388101
#> 18 18 open 44.58367 0.04727869 0.7213344
#> 19 19 open 62.42280 0.33837743 0.6658788
#> 20 20 open 86.91120 -0.44677154 0.6275614
#> 22 22 order 40.40665 0.37084738 0.6552107
#> 24 24 order 30.83387 -0.17304691 0.7070911
#> 27 27 order 48.69160 0.18411508 0.7050898
#> Sum 175 <NA> 477.42976 -0.83385614 6.7120046
appendSolution(solver_out, items = items_sim, idCol = "id")
#> id format mean_time difficulty theta=0 form_1
#> 1 1 mc 29.541377 0.03019108 0.7220244 1
#> 2 2 mc 25.040617 -0.58029174 0.5717449 0
#> 3 3 mc 30.952331 1.79059604 0.1254506 0
#> 4 4 mc 37.554676 -0.46439976 0.6206603 0
#> 5 5 mc 27.345274 -0.52650959 0.5951304 0
#> 6 6 mc 24.960790 -0.28648377 0.6812958 0
#> 7 7 mc 22.449372 0.29689958 0.6783710 0
#> 8 8 mc 21.648790 -0.87213286 0.4357964 0
#> 9 9 mc 24.044253 1.07571901 0.3445996 0
#> 10 10 mc 21.594588 -0.25230142 0.6902641 0
#> 11 11 open 82.922469 1.13700527 0.3191851 0
#> 12 12 open 85.285402 -0.76846443 0.4846056 0
#> 13 13 open 38.810862 -0.33968639 0.6654634 1
#> 14 14 open 65.312240 -1.25831226 0.2723894 0
#> 15 15 open 25.301969 -0.19227341 0.7035404 1
#> 16 16 open 69.925753 -0.65288754 0.5388101 1
#> 17 17 open 74.558120 1.03858357 0.3605237 0
#> 18 18 open 44.583666 0.04727869 0.7213344 1
#> 19 19 open 62.422802 0.33837743 0.6658788 1
#> 20 20 open 86.911204 -0.44677154 0.6275614 1
#> 21 21 order 33.284070 0.81977272 0.4603699 0
#> 22 22 order 40.406652 0.37084738 0.6552107 1
#> 23 23 order 38.419331 -1.17782688 0.3028989 0
#> 24 24 order 30.833874 -0.17304691 0.7070911 1
#> 25 25 order 36.477034 -0.92835911 0.4097768 0
#> 26 26 order 7.130145 0.96061901 0.3950889 0
#> 27 27 order 48.691605 0.18411508 0.7050898 1
#> 28 28 order 49.235210 -1.82611791 0.1187312 0
#> 29 29 order 31.675337 0.67348514 0.5292601 0
#> 30 30 order 43.453273 1.01279383 0.3717969 0