This vignette walks through using a text file of previously fit model parameters to use in the bdotsRefit
function. This is convenient if you have already gone through the refitting process and would like to save/load the refitted parameters in a new session.
To demonstate this process, we start with fitting a set of curves to our data
fit <- bdotsFit(data = cohort_unrelated,
subject = "Subject",
time = "Time",
y = "Fixations",
group = c("Group", "LookType"),
curveType = doubleGauss(concave = TRUE),
cor = TRUE,
numRefits = 2,
cores = 2,
verbose = FALSE)
refit <- bdotsRefit(fit, quickRefit = TRUE, fitCode = 5)
From this, we can create an appropriate data.table
that can be used in a later session
parDT <- coefWriteout(refit)
head(parDT)
#> Subject Group LookType mu ht sig1 sig2 base1
#> 1: 1 50 Cohort 429.7595 0.1985978 159.8869 314.6389 0.009709831
#> 2: 1 65 Cohort 634.9292 0.2635044 303.8080 215.3845 -0.020636088
#> 3: 2 50 Cohort 647.0655 0.2543769 518.9633 255.9870 -0.213087542
#> 4: 2 65 Cohort 723.0547 0.2582110 392.9495 252.9384 -0.054826156
#> 5: 3 50 Cohort 501.4822 0.2247729 500.8480 158.4180 -0.331679043
#> 6: 3 65 Cohort 460.7152 0.3067659 382.7321 166.0833 -0.243308563
#> base2
#> 1: 0.03376106
#> 2: 0.02892360
#> 3: 0.01368196
#> 4: 0.03197291
#> 5: 0.02522681
#> 6: 0.03992168
It’s important that columns are included that match the unique identifying columns in our bdotsObj
, and that the parameters match the coefficients used from bdotsFit
## Subject, Group, and LookType
head(refit)
#> Subject Group LookType fit R2 AR1 fitCode
#> 1: 1 50 Cohort <gnls[18]> 0.9697202 TRUE 0
#> 2: 1 65 Cohort <gnls[18]> 0.9804901 TRUE 0
#> 3: 2 50 Cohort <gnls[18]> 0.9811708 TRUE 0
#> 4: 2 65 Cohort <gnls[18]> 0.9697466 TRUE 0
#> 5: 3 50 Cohort <gnls[18]> 0.9761906 TRUE 0
#> 6: 3 65 Cohort <gnls[18]> 0.9534922 FALSE 3
## doubleGauss pars
colnames(coef(refit))
#> [1] "mu" "ht" "sig1" "sig2" "base1" "base2"
We can save our parameter data.table
for later use, or read in any other appropriately formatted data.frame
## Save this for later using data.table::fwrite
fwrite(parDT, file = "mypars.csv")
parDT <- fread("mypars.csv")
Once we have this, we can pass it as an argument to the bdotsRefit
function. Doing so will ignore the remaining arguments
We end up with a bdotsObj
that matches what we had previously. As seeds have not yet been implemented, the resulting parameters may not be exact. It will, however, assist with not having to go through the entire refitting process again manually (although, there is always the option to save the entire object with save(refit, file = "refit.RData))
head(new_refit)
#> Subject Group LookType fit R2 AR1 fitCode
#> 1: 1 50 Cohort <gnls[18]> 0.9697202 TRUE 0
#> 2: 1 50 Unrelated_Cohort <gnls[18]> 0.9789994 TRUE 0
#> 3: 1 65 Cohort <gnls[18]> 0.9804901 TRUE 0
#> 4: 1 65 Unrelated_Cohort <gnls[18]> 0.8716404 TRUE 1
#> 5: 10 50 Cohort <gnls[18]> 0.8723338 TRUE 1
#> 6: 10 50 Unrelated_Cohort <gnls[18]> 0.9345526 TRUE 1