Age-Period-Cohort Analysis
Age-period-cohort (APC) analysis decomposes variation in disease or mortality rates into three temporal components: the effect of age (biological and accumulated risk), the effect of period (influences hitting everyone alive at a given calendar time, such as a new treatment or a recession), and the effect of cohort (lasting imprints of the conditions into which a birth generation was born). Theodore Holford's 1983 Biometrics paper gave the canonical generalized-linear-model formulation and exposed the method's defining obstacle: because cohort equals period minus age, the three predictors are exactly linearly dependent, so their individual linear slopes cannot be separately identified. A large methodological literature has since proposed constraints, reparameterizations, and estimators to extract whatever the data can legitimately support. Yang, Schulhofer-Wohl, Fu, and Land's 2008 work popularized the intrinsic estimator, a principled choice among the infinitely many fitting solutions. APC analysis is a workhorse of descriptive epidemiology and demography, used to read the temporal fingerprints left on rates of cancer, suicide, obesity, and mortality. Done carefully it separates signal from artifact; done carelessly it manufactures trends that the identification problem makes unknowable.
Registre font
Les citacions es copien textualment del registre font del mètode. No s'infereix cap verificació a nivell de reclam d'elles.
- Holford, T. R. (1983). The Estimation of Age, Period and Cohort Effects for Vital Rates. Biometrics, 39(2), 311-324. · DOI 10.2307/2531004
- Yang, Y., Schulhofer-Wohl, S., Fu, W. J., & Land, K. C. (2008). The Intrinsic Estimator for Age-Period-Cohort Analysis: What It Is and How to Use It. American Journal of Sociology, 113(6), 1697-1736. · DOI 10.1086/587154
Reclamacions curades
Les reclamacions s'han persistit al registre de proves, cadascuna amb la seva pròpia avaluació.
Aquesta vista no inventa una avaluació de reclam quan el registre no en té cap.
Mètodes relacionats
Generat a partir del gràfic de mètodes i mostrat com a relacions suggerides per la màquina; no s'infereix cap reclamació d'evidència.