Nonparametric sieve estimation of generalized additive model-厦门大学金融系

Nonparametric sieve estimation of generalized additive model
主讲人 Nianqing Liu 简介 <p>This paper proposes a nonparametric approach to identify and estimate (with sieves) the generalized additive model with arbitrary grouping and discrete variable(s) when the link function is unknown. Our approach allowing arbitrary grouping provides the foundation to design a data-driven inference procedure which finds the best grouping specification among all possible groupings, and allowing discrete variables is mainly motivated by concerns from applied research. We effectively transform the generalized additive model with unknown link function into a problem which is much easier to estimate by sieve approach. Our estimator for link function is shown to converge at a rate of one covariate, and estimators for component functions within the link can attain nonparametric rates of their own covariates. By simulation, we show that such a method has good performance in finite samples.</p>
时间 2019-04-12(Friday)16:40-18:00 地点 N302, Econ Building
讲座语言 English 主办单位
承办单位 类型 系列讲座
联系人信息 主持人 Xingbai Xu
专题网站 专题
主讲人简介 <p>Associate Professor, Shanghai University of Finance and Economics.</p> <p><a href="/Upload/File/2019/4/20190408033622643.pdf">Upload/File/2019/4/20190408033622643.pdf</a></p> 期数 高级计量经济学与统计学系列讲座19年春季第二讲
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