主题: New Semiparametric Estimation and Forecasting of High-Dimensional Dynamic Time Series
类型: 学术报告
主办方:
报告人: 李德柜教授 (The University of York)
日期: 2018年7月2日上午 10:00-11:00
地点: 知新楼B-1238
内容:

报告题目: New Semiparametric Estimation and Forecasting of High-Dimensional Dynamic Time Series

报 告 人: 李德柜教授 (The University of York)

报告时间 :2018年7月2日上午 10:00-11:00

报告地点:知新楼B-1238

 

报告摘要:

In this talk, weintroduce a flexible and easy-to-implement semiparametric approach to estimateand forecast high-dimensional time series data. This is conducted by a noveltechnique of Model Averaging MArginal Regression (MAMAR) with the weights chosenthrough a two-stage semiparametric method. Both the large-sample theory andpractical application of the proposed estimation and forecasting method aregiven in the talk. We further study a challenging case where the number of timeseries variables may exceed the time series length, and combine the developedMAMAR method with the shrinkage and factor modelling approaches to achievedimension reduction and then construct feasible estimation and prediction.Finally, we discuss the application of the MAMAR approach in estimating thelarge dynamic covariance matrix. This talk is based on some joint researchprojects with J. Chen(Economics, York), O. Linton (Economics, Cambridge) and Z.Lu (Statistics, Southampton).

 

欢迎各位老师同学积极参加!