Dyadic data is often encountered when quantities of interest are associated with the edges of a network. As such it plays an important role in statistics, econometrics and many other data science disciplines. We consider the problem of uniformly estimating a dyadic Lebesgue density function, focusing on nonparametric kernel-based estimators taking the form of dyadic empirical processes. Our main contributions include the minimax-optimal uniform convergence rate of the dyadic kernel density estimator, along with strong approximation results for the associated standardized and Studentized $t$-processes. A consistent variance estimator enables the construction of valid and feasible uniform confidence bands for the unknown density function. We ...
We consider point estimation and inference based on modifications of the profile likelihood in model...
This paper presents a new data-driven bandwidth selector compatible with the small bandwidth asympto...
In this lecture, we discuss kernel estimation of probability density functions (PDF). Nonparametric ...
This paper studies the asymptotic properties of and alternative inference methods for kernel density...
Many important social and economic variables are naturally defined for pairs of agents (or dyads). E...
Many important social and economic variables are naturally defined for pairs of agents (or dyads). E...
This paper presents novel methods and theories for estimation and inference about parameters in econ...
<p>This article is concerned with inference in the linear model with dyadic data. Dyadic data are in...
This paper studies the identification and estimation of a nonparametric nonseparable dyadic model wh...
International audienceIn this article, we propose a new adaptive estimator for compact supported den...
We study low dimensional complier parameters that are identified using a binary instrumental variabl...
When using dyadic data (i.e., data indexed by pairs of units, such as trade flow data between two co...
In nonseparable triangular models with a binary endogenous treatment and a binary instrumental varia...
We consider point estimation and inference based on modifications of the profile likelihood in model...
In this article a new nonparametric density estimator based on the sequence of asymmetric kernels is...
We consider point estimation and inference based on modifications of the profile likelihood in model...
This paper presents a new data-driven bandwidth selector compatible with the small bandwidth asympto...
In this lecture, we discuss kernel estimation of probability density functions (PDF). Nonparametric ...
This paper studies the asymptotic properties of and alternative inference methods for kernel density...
Many important social and economic variables are naturally defined for pairs of agents (or dyads). E...
Many important social and economic variables are naturally defined for pairs of agents (or dyads). E...
This paper presents novel methods and theories for estimation and inference about parameters in econ...
<p>This article is concerned with inference in the linear model with dyadic data. Dyadic data are in...
This paper studies the identification and estimation of a nonparametric nonseparable dyadic model wh...
International audienceIn this article, we propose a new adaptive estimator for compact supported den...
We study low dimensional complier parameters that are identified using a binary instrumental variabl...
When using dyadic data (i.e., data indexed by pairs of units, such as trade flow data between two co...
In nonseparable triangular models with a binary endogenous treatment and a binary instrumental varia...
We consider point estimation and inference based on modifications of the profile likelihood in model...
In this article a new nonparametric density estimator based on the sequence of asymmetric kernels is...
We consider point estimation and inference based on modifications of the profile likelihood in model...
This paper presents a new data-driven bandwidth selector compatible with the small bandwidth asympto...
In this lecture, we discuss kernel estimation of probability density functions (PDF). Nonparametric ...