Inferential Causal Models: Integrating Quality & Quantity |
| |
Authors: | Smith Robert B. |
| |
Affiliation: | (1) Social Structural Research Inc., 3 Newport Rd., Suite 6, Cambridge, MA, U.S.A |
| |
Abstract: | In-depth data analysis plus statistical modeling can produce inferentialcausal models. Their creation thus combines aspects of analysis by close inspection,that is, reason analysis and cross-tabular analysis, with statistical analysis procedures,especially those that are special cases of the generalized linear model (McCullaghand Nelder, 1989; Agresti, 1996; Lindsey, 1997). This paper explores some of the roots of this combined method and suggests some new directions. An exercise clarifies some limitations of classic reason analysis by showing how the cross tabulation of variables with controls for test factors may produce better inferences. Then, given the cross tabulation of several variables, by explicating Coleman effect parameters, logistic regressions, and Poisson log-linear models, it shows how generalized linear models provide appropriate measures of effects and tests of statistical significance. Finally, to address a weakness of reason analysis, a case-control design is proposed and an example is developed. |
| |
Keywords: | reason analysis generalized linear models case-control studies |
本文献已被 SpringerLink 等数据库收录! |
|