Craiu, Radu V. Gong, Ruobin Meng, Xiao-Li
Published in
Annual Review of Statistics and Its Application
This article proposes a set of categories, each one representing a particular distillation of important statistical ideas. Each category is labeled a “sense” because we think of these as essential in helping every statistical mind connect in constructive and insightful ways with statistical theory, methodologies, and computation, toward the ultimat...
Sankaran, Kris Holmes, Susan P.
Published in
Annual Review of Statistics and Its Application
By linking conceptual theories with observed data, generative models can support reasoning in complex situations. They have come to play a central role both within and beyond statistics, providing the basis for power analysis in molecular biology, theory building in particle physics, and resource allocation in epidemiology, for example. We introduc...
Belzile, Léo R. Davison, Anthony C. Gampe, Jutta Rootzén, Holger Zholud, Dmitrii
Published in
Annual Review of Statistics and Its Application
There is sustained and widespread interest in understanding the limit, if there is any, to the human life span. Apart from its intrinsic and biological interest, changes in survival in old age have implications for the sustainability of social security systems. A central question is whether the endpoint of the underlying lifetime distribution is fi...
Davidian, Marie
Published in
Annual Review of Statistics and Its Application
A statistical model is a class of probability distributions assumed to contain the true distribution generating the data. In parametric models, the distributions are indexed by a finite-dimensional parameter characterizing the scientific question of interest. Semiparametric models describe the distributions in terms of a finite-dimensional paramete...
Haltmeier, Markus Li, Housen Munk, Axel
Published in
Annual Review of Statistics and Its Application
We present a unifying view on various statistical estimation techniques including penalization, variational, and thresholding methods. These estimators are analyzed in the context of statistical linear inverse problems including nonparametric and change point regression, and high-dimensional linear models as examples. Our approach reveals many seem...
Sjölander, Arvid Frisell, Thomas Öberg, Sara
Published in
Annual Review of Statistics and Its Application
Unmeasured confounding is one of the main sources of bias in observational studies. A popular way to reduce confounding bias is to use sibling comparisons, which implicitly adjust for several factors in the early environment or upbringing without requiring them to be measured or known. In this article we provide a broad exposition of the statistica...
Cressie, Noel Sainsbury-Dale, Matthew Zammit-Mangion, Andrew
Published in
Annual Review of Statistics and Its Application
Spatial statistics is concerned with the analysis of data that have spatial locations associated with them, and those locations are used to model statistical dependence between the data. The spatial data are treated as a single realization from a probability model that encodes the dependence through both fixed effects and random effects, where rand...
Harvey, Andrew C.
Published in
Annual Review of Statistics and Its Application
The construction of score-driven filters for nonlinear time series models is described, and they are shown to apply over a wide range of disciplines. Their theoretical and practical advantages over other methods are highlighted. Topics covered include robust time series modeling, conditional heteroscedasticity, count data, dynamic correlation and a...
Embrechts, Paul Wüthrich, Mario V.
Published in
Annual Review of Statistics and Its Application
For centuries, mathematicians and, later, statisticians, have found natural research and employment opportunities in the realm of insurance. By definition, insurance offers financial cover against unforeseen events that involve an important component of randomness, and consequently, probability theory and mathematical statistics enter insurance mod...
He, Xue Dong Kou, Steven Peng, Xianhua
Published in
Annual Review of Statistics and Its Application
Risk measures are used not only for financial institutions’ internal risk management but also for external regulation (e.g., in the Basel Accord for calculating the regulatory capital requirements for financial institutions). Though fundamental in risk management, how to select a good risk measure is a controversial issue. We review the literature ...