Identifying suboptimalities with factorial model comparison

2018 ◽  
Vol 41 ◽  
Author(s):  
Wei Ji Ma

AbstractGiven the many types of suboptimality in perception, I ask how one should test for multiple forms of suboptimality at the same time – or, more generally, how one should compare process models that can differ in any or all of the multiple components. In analogy to factorial experimental design, I advocate for factorial model comparison.

2021 ◽  
Vol 16 (5) ◽  
pp. 886-892
Author(s):  
Angela M. Haeny ◽  
Samantha C. Holmes ◽  
Monnica T. Williams

With the increased desire to engage in antiracist clinical research, there is a need for shared nomenclature on racism and related constructs to help move the science forward. This article breaks down the factors that contributed to the development and maintenance of racism (including racial microaggressions), provides examples of the many forms of racism, and describes the impact of racism for all. Specifically, in the United States, racism is based on race, a social construct that has been used to categorize people on the basis of shared physical and social features with the assumption of a racial hierarchy presumed to delineate inherent differences between groups. Racism is a system of beliefs, practices, and policies that operate to advantage those at the top of the racial hierarchy. Individual factors that contribute to racism include racial prejudices and racial discrimination. Racism can be manifested in multiple forms (e.g., cultural, scientific, social) and is both explicit and implicit. Because of the negative impact of racism on health, understanding racism informs effective approaches for eliminating racial health disparities, including a focus on the social determinants of health. Providing shared nomenclature on racism and related terminology will strengthen clinical research and practice and contribute to building a cumulative science.


2000 ◽  
Vol 4 (3) ◽  
pp. 483-498 ◽  
Author(s):  
M. Franchini ◽  
A. M. Hashemi ◽  
P. E. O’Connell

Abstract. The sensitivity analysis described in Hashemi et al. (2000) is based on one-at-a-time perturbations to the model parameters. This type of analysis cannot highlight the presence of parameter interactions which might indeed affect the characteristics of the flood frequency curve (ffc) even more than the individual parameters. For this reason, the effects of the parameters of the rainfall, rainfall runoff models and of the potential evapotranspiration demand on the ffc are investigated here through an analysis of the results obtained from a factorial experimental design, where all the parameters are allowed to vary simultaneously. This latter, more complex, analysis confirms the results obtained in Hashemi et al. (2000) thus making the conclusions drawn there of wider validity and not related strictly to the reference set selected. However, it is shown that two-factor interactions are present not only between different pairs of parameters of an individual model, but also between pairs of parameters of different models, such as rainfall and rainfall-runoff models, thus demonstrating the complex interaction between climate and basin characteristics affecting the ffc and in particular its curvature. Furthermore, the wider range of climatic regime behaviour produced within the factorial experimental design shows that the probability distribution of soil moisture content at the storm arrival time is no longer sufficient to explain the link between the perturbations to the parameters and their effects on the ffc, as was suggested in Hashemi et al. (2000). Other factors have to be considered, such as the probability distribution of the soil moisture capacity, and the rainfall regime, expressed through the annual maximum rainfalls over different durations. Keywords: Monte Carlo simulation; factorial experimental design; analysis of variance (ANOVA)


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