1,210 research outputs found
Posterior Average Effects
Economists are often interested in estimating averages with respect to distributions of unobservables, such as moments of individual fixed-effects, or average partial effects in discrete choice models. For such quantities, we propose and study posterior average effects (PAE), where the average is computed conditional on the sample, in the spirit of empirical Bayes and shrinkage methods. While the usefulness of shrinkage for prediction is well-understood, a justification of posterior conditioning to estimate population averages is currently lacking. We show that PAE have minimum worst-case specification error under various forms of misspecification of the parametric distribution of unobservables. In addition, we introduce a measure of informativeness of the posterior conditioning, which quantifies the worst-case specification error of PAE relative to parametric model-based estimators. As illustrations, we report PAE estimates of distributions of neighborhood effects in the U.S., and of permanent and transitory components in a model of income dynamics
Earnings and Consumption Dynamics: A Nonlinear Panel Data Framework
We develop a new quantile‐based panel data framework to study the nature of income persistence and the transmission of income shocks to consumption. Log‐earnings are the sum of a general Markovian persistent component and a transitory innovation. The persistence of past shocks to earnings is allowed to vary according to the size and sign of the current shock. Consumption is modeled as an age‐dependent nonlinear function of assets, unobservable tastes, and the two earnings components. We establish the nonparametric identification of the nonlinear earnings process and of the consumption policy rule. Exploiting the enhanced consumption and asset data in recent waves of the Panel Study of Income Dynamics, we find that the earnings process features nonlinear persistence and conditional skewness. We confirm these results using population register data from Norway. We then show that the impact of earnings shocks varies substantially across earnings histories, and that this nonlinearity drives heterogeneous consumption responses. The framework provides new empirical measures of partial insurance in which the transmission of income shocks to consumption varies systematically with assets, the level of the shock, and the history of past shocks
Estimating multivariate latent-structure models
© Institute of Mathematical Statistics, 2016. A constructive proof of identification of multilinear decompositions of multiway arrays is presented. It can be applied to show identification in a variety of multivariate latent structures. Examples are finite-mixture models and hidden Markov models. The key step to show identification is the joint diagonalization of a set of matrices in the same nonorthogonal basis. An estimator of the latent-structure model may then be based on a sample version of this joint-diagonalization problem. Algorithms are available for computation and we derive distribution theory. We further develop asymptotic theory for orthogonal-series estimators of component densities in mixture models and emission densities in hidden Markov models.Supported by European Research Council Grant ERC-2010-StG-0263107-ENMUH.
Supported by Sciences Po’s SAB grant “Nonparametric estimation of finite mixtures.”
Supported by European Research Council Grant ERC-2010-AdG-269693-WASP and by Economic and Social Research Council Grant RES-589-28-0001 through the Centre for Microdata Methods and Practice
Nonparametric estimation of non-exchangeable latent-variable models
We propose a two-step method to nonparametrically estimate multivariate models in which the observed outcomes are independent conditional on a discrete latent variable. Applications include microeconometric models with unobserved types of agents, regime-switching models, and models with misclassification error. In the first step, we estimate weights that transform moments of the marginal distribution of the data into moments of the conditional distribution of the data for given values of the latent variable. In the second step, these conditional moments are estimated as weighted sample averages. We illustrate the method by estimating a model of wages with unobserved heterogeneity on PSID data
Non-parametric estimation of finite mixtures from repeated measurements
SummaryThis paper provides methods to estimate finite mixtures from data with repeated measurements non-parametrically. We present a constructive identification argument and use it to develop simple two-step estimators of the component distributions and all their functionals. We discuss a computationally efficient method for estimation and derive asymptotic theory. Simulation experiments suggest that our theory provides confidence intervals with good coverage in small samples.</jats:p
Identification in a Binary Choice Panel Data Model with a Predetermined Covariate
We study identification in a binary choice panel data model with a single
\emph{predetermined} binary covariate (i.e., a covariate sequentially exogenous
conditional on lagged outcomes and covariates). The choice model is indexed by
a scalar parameter , whereas the distribution of unit-specific
heterogeneity, as well as the feedback process that maps lagged outcomes into
future covariate realizations, are left unrestricted. We provide a simple
condition under which is never point-identified, no matter the number
of time periods available. This condition is satisfied in most models,
including the logit one. We also characterize the identified set of
and show how to compute it using linear programming techniques. While
is not generally point-identified, its identified set is informative in the
examples we analyze numerically, suggesting that meaningful learning about
may be possible even in short panels with feedback. As a complement,
we report calculations of identified sets for an average partial effect, and
find informative sets in this case as well.Comment: 41 pages, 4 figures. Initial draft prepared for a conference in honor
of Manuel Arellano at the Bank of Spain (July 2022
Elaboration, by tape casting, of an SOFC half cell for low temperature applications
International audienceThese last past years, a major interest has been devoted to decrease the working temperature of solid oxide fuel cells (SOFCs) down to about 700°C. In this respect, materials with a high ionic conductivity at low temperature have to be found and the rpocess to elaborate fuel cells, using these new materials, has to be developed .....
Vitamin A deficiency impairs contextual fear memory in rats: abnormalities in glucocorticoid pathway
- …