| Literature DB >> 30402815 |
Lieke Voncken1, Casper J Albers2, Marieke E Timmerman2.
Abstract
Test publishers usually provide confidence intervals (CIs) for normed test scores that reflect the uncertainty due to the unreliability of the tests. The uncertainty due to sampling variability in the norming phase is ignored. To express uncertainty due to norming, we propose a flexible method that is applicable in continuous norming and allows for a variety of score distributions, using Generalized Additive Models for Location, Scale, and Shape (GAMLSS; Rigby & Stasinopoulos, 2005). We assessed the performance of this method in a simulation study, by examining the quality of the resulting CIs. We varied the population model, procedure of estimating the CI, confidence level, sample size, value of the predictor, extremity of the test score, and type of variance-covariance matrix. The results showed that good quality of the CIs could be achieved in most conditions. The method is illustrated using normative data of the SON-R 6-40 test. We recommend test developers to use this approach to arrive at CIs, and thus properly express the uncertainty due to norm sampling fluctuations, in the context of continuous norming. Adopting this approach will help (e.g., clinical) practitioners to obtain a fair picture of the person assessed.Entities:
Keywords: Box-Cox power exponential distribution; Continuous norming; GAMLSS; Posterior simulation; Psychological tests
Mesh:
Year: 2019 PMID: 30402815 PMCID: PMC6478628 DOI: 10.3758/s13428-018-1122-8
Source DB: PubMed Journal: Behav Res Methods ISSN: 1554-351X
Notation within the posterior simulation procedure
| Parameter | Definition |
|---|---|
| 𝜃par | Set of model parameters of the continuous norming model in the population. This involves all parameters for each of the distributional parameters (e.g., |
|
| Estimates of 𝜃par based on the normative sample. |
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| Variance-covariance matrix of |
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| Simulated set of model parameters within the posterior simulation procedure, drawn from a multivariate normal distribution defined by |
| 𝜃norm | Normed scores (person parameters) under the population model with parameters 𝜃par. |
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| Estimates of 𝜃norm under the estimated model with parameters |
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| Estimated normed scores under the model with a simulated set of model parameters, |
Fig. 1Schematic overview of the simulation study. A solid arrow indicates a next step in the procedure. A dotted arrow indicates the use of a result for comparison
Deviation from ideal coverage, averaged over the 4 age values and 3 percentiles
| SON-R 6-40 | FEEST | ||||||
|---|---|---|---|---|---|---|---|
| Wald | Percentile | Bias-corrected | Wald | Percentile | Bias-corrected | ||
| vcov | CI90 | + 0.020 (0.023) |
| –0.025 (0.024) | + 0.004 (0.010) | –0.010 (0.010) |
|
| CI95 |
| –0.015 (0.006) | –0.019 (0.014) |
| –0.011 (0.010) | –0.012 (0.007) | |
| rvcov | CI90 | + 0.022 (0.017) |
| –0.019 (0.026) | + 0.016 (0.003) | + 0.007 (0.009) |
|
| CI95 |
| –0.014 (0.010) | –0.017 (0.017) | + 0.009 (0.004) |
| + 0.002 (0.005) | |
| Wald | Percentile | Bias-corrected | Wald | Percentile | Bias-corrected | ||
| vcov | CI90 | + 0.013 (0.017) |
| –0.015 (0.016) | + 0.009 (0.007) |
|
|
| CI95 | + 0.008 (0.011) |
| –0.011 (0.009) | + 0.004 (0.005) |
|
| |
| rvcov | CI90 | + 0.016 (0.014) |
| –0.011 (0.018) | + 0.016 (0.003) | + 0.007 (0.008) |
|
| CI95 | + 0.008 (0.009) |
| –0.010 (0.011) | + 0.008 (0.003) |
| + 0.002 (0.005) | |
| Wald | Percentile | Bias-corrected | Wald | Percentile | Bias-corrected | ||
| vcov | CI90 | + 0.008 (0.014) |
| –0.008 (0.009) | + 0.005 (0.004) |
|
|
| CI95 | + 0.004 (0.009) |
| –0.006 (0.005) | + 0.003 (0.003) |
|
| |
| rvcov | CI90 | + 0.010 (0.014) |
| –0.007 (0.008) | + 0.013 (0.004) |
|
|
| CI95 | + 0.005 (0.008) |
| –0.005 (0.004) | + 0.008 (0.004) |
|
| |
Note SDs between parentheses. For each population model, the CI method with the smallest deviation from ideal coverage per row is bolded
⋆ Deviation between –0.001 and 0.001
Partial ω2s of absolute deviation from ideal coverage and ratio ‘miss left’ to ‘miss right’ for the percentile CI method and the SON-R 6-40 population model
| Source | Deviation | MLMR |
|---|---|---|
|
|
|
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| ⋆ | −.007 | |
| confidence level | −.005 | .169 |
| percentile |
|
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| age | .069 |
|
| −.008 | −.012 | |
| .017 | .057 | |
|
|
| |
| .060 | .252 | |
| −.001 | −.007 | |
| .045 | −.013 | |
| .061 | −.018 | |
| confidence level × percentile | −.006 |
|
| confidence level × age | .016 | .051 |
| percentile × age |
|
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Note Deviation = absolute deviation from ideal coverage. MLMR = ratio ‘miss left’ to ‘miss right’. N = sample size. The effects of the SON-R 6-40 population model with partial ω2 ≥ .2 (Deviation) and partial ω2 ≥ .4 (MLMR), which we inspected more closely, are displayed in bold font. ⋆ Partial ω2 between –0.001 and 0.001
Fig. 2Violin plots with boxplots depicting the absolute deviation from ideal coverage with the percentile CI, for the interaction between N and percentile, and percentile and age
Fig. 3Violin plots with boxplots depicting the ‘miss left’ to ‘miss right’ ratio on a logarithmic scale with the percentile CI, for the interactions between N and percentile, confidence level and percentile, and percentile and age
Fig. 4Kernel density plots illustrating the simulated distribution of the intercept parameter of µ, , (panel a) and the distribution of percentiles, , corresponding to an age value of 8 and a test score of 9 (panel b). The vertical solid lines represent the point estimate (panel a) and the percentile corresponding to the point estimates of the distributional parameters (panel b), and the vertical dashed lines in panel b represent the bounds of the CI95norm
Fig. 5PDFs, panel a, and CDFs, panel b, for the SON-R 6-40 model estimated with the BCPE distribution (solid line) and normal distribution (NO; dashed line), conditional on three different age values (i.e., 8, 12, and 38-year-olds)