Many partial identification problems can be characterized by the optimal value of a function over a set where both the function and set need to be estimated by empirical data. Despite some progress for convex problems, statistical inference in this general setting remains to be developed. To address this, we derive an asymptotically valid confidence interval for the optimal value through an appropriate relaxation of the estimated set. We then apply this general result to the problem of selection bias in population-based cohort studies. We show that existing sensitivity analyses, which are often conservative and difficult to implement, can be formulated in our framework and made significantly more informative via auxiliary information on the...
The problem of non-random sample selectivity often occurs in practice in many different fields. In p...
We generalize the stochastic revealed preference methodology of McFadden and Richter (1990) for fini...
Access to a representative sample from the population is an assumption that underpins all of machine...
In many empirical problems, the evaluation of treatment effects is complicated by sample selection ...
Peer Reviewedhttps://deepblue.lib.umich.edu/bitstream/2027.42/151805/1/rssc12371_am.pdfhttps://deepb...
People often extrapolate from data samples, inferring properties of the population like the rate of ...
A non-probability sampling mechanism is likely to bias estimates of parameters with respect to a tar...
I propose a Generalized Roy Model with sample selection that can be used to analyze treatment effect...
The problem of non-random sample selectivity often occurs in practice in many fields. The classical ...
People often extrapolate from data samples, inferring properties of the population like the rate of ...
Objectives: Spurious associations between an exposure and outcome not describing the causal estimand...
Standard sample selection models with non-randomly censored outcomes assume (i) an exclusion restric...
We partially identify population treatment effects in observational data under sample selection, wit...
This paper develops methods of Bayesian inference in a sample selection model. The main feature of t...
Selection models are ubiquitous in statistics. In recent years, they have regained considerable popu...
The problem of non-random sample selectivity often occurs in practice in many different fields. In p...
We generalize the stochastic revealed preference methodology of McFadden and Richter (1990) for fini...
Access to a representative sample from the population is an assumption that underpins all of machine...
In many empirical problems, the evaluation of treatment effects is complicated by sample selection ...
Peer Reviewedhttps://deepblue.lib.umich.edu/bitstream/2027.42/151805/1/rssc12371_am.pdfhttps://deepb...
People often extrapolate from data samples, inferring properties of the population like the rate of ...
A non-probability sampling mechanism is likely to bias estimates of parameters with respect to a tar...
I propose a Generalized Roy Model with sample selection that can be used to analyze treatment effect...
The problem of non-random sample selectivity often occurs in practice in many fields. The classical ...
People often extrapolate from data samples, inferring properties of the population like the rate of ...
Objectives: Spurious associations between an exposure and outcome not describing the causal estimand...
Standard sample selection models with non-randomly censored outcomes assume (i) an exclusion restric...
We partially identify population treatment effects in observational data under sample selection, wit...
This paper develops methods of Bayesian inference in a sample selection model. The main feature of t...
Selection models are ubiquitous in statistics. In recent years, they have regained considerable popu...
The problem of non-random sample selectivity often occurs in practice in many different fields. In p...
We generalize the stochastic revealed preference methodology of McFadden and Richter (1990) for fini...
Access to a representative sample from the population is an assumption that underpins all of machine...