In recent years, proponents of configurational comparative methods (CCMs) have advanced various dimensions of robustness as instrumental to model selection. But these robustness considerations have not led to computable robustness measures, and they have typically been applied to the analysis of real-life data with unknown underlying causal structures, rendering it impossible to determine exactly how they influence the correctness of selected models. This article develops a computable criterion of fit-robustness, which quantifies the degree to which a CCM model agrees with other models inferred from the same data under systematically varied threshold settings of fit parameters. Based on two extended series of inverse search trials on data s...
Permission is granted to quote short excerpts and to reproduce figures and tables from this report, ...
This study assesses the extent to which the two main Configurational Comparative Methods (CCMs), i.e...
This study compares item and examinee properties, studies the robustness of IRT models, and examines...
In recent years, proponents of configurational comparative methods (CCMs) have advanced various dime...
Consistency and coverage are two core parameters of model fit used by configurational comparative me...
In this paper I take up a criticism of robustness analysis. Robustness analysis is a method of confi...
Michael Weisberg has argued that robustness analysis is useful in evaluating both scientific models ...
In the philosophy of science and epistemology literature, robustness analysis has become an umbrella...
As with any psychometric models, the validity of inferences from cognitive diagnosis models (CDMs) d...
Accurate estimation of conditional average treatment effects (CATE) is at the core of personalized d...
To select among competing generative models of timeseries data, it is necessary to balance the goodn...
This work was funded in part by National Institute on Drug Abuse Grant DA16883 awarded to the first ...
Configurational comparative methods (CCMs) and logic regression methods (LRMs) are two families of e...
Theories can be represented as statistical models for empirical testing. There is a vast literature ...
In the absence of random assignment, researchers must consider the impact of selection bias – pre-ex...
Permission is granted to quote short excerpts and to reproduce figures and tables from this report, ...
This study assesses the extent to which the two main Configurational Comparative Methods (CCMs), i.e...
This study compares item and examinee properties, studies the robustness of IRT models, and examines...
In recent years, proponents of configurational comparative methods (CCMs) have advanced various dime...
Consistency and coverage are two core parameters of model fit used by configurational comparative me...
In this paper I take up a criticism of robustness analysis. Robustness analysis is a method of confi...
Michael Weisberg has argued that robustness analysis is useful in evaluating both scientific models ...
In the philosophy of science and epistemology literature, robustness analysis has become an umbrella...
As with any psychometric models, the validity of inferences from cognitive diagnosis models (CDMs) d...
Accurate estimation of conditional average treatment effects (CATE) is at the core of personalized d...
To select among competing generative models of timeseries data, it is necessary to balance the goodn...
This work was funded in part by National Institute on Drug Abuse Grant DA16883 awarded to the first ...
Configurational comparative methods (CCMs) and logic regression methods (LRMs) are two families of e...
Theories can be represented as statistical models for empirical testing. There is a vast literature ...
In the absence of random assignment, researchers must consider the impact of selection bias – pre-ex...
Permission is granted to quote short excerpts and to reproduce figures and tables from this report, ...
This study assesses the extent to which the two main Configurational Comparative Methods (CCMs), i.e...
This study compares item and examinee properties, studies the robustness of IRT models, and examines...