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一、报告题目:
Predicting the long-term stock market volatility: a GARCH-MIDAS model with variable selection
二、报告人:
方彤,中央财经大学 统计与数学学院
三、报告时间:
2018年12月13日 (周四) 上午9:30-10:30
四、报告地点:
知新楼B423聚贤报告厅
五、报告人简介:
方彤,中央财经大学统计与数学学院数量经济学博士研究生,美国加州大学河滨分校联合培养博士研究生,研究方向为计量经济建模及其在宏观经济和资产定价中的应用。在《中国社会科学》《数量经济技术经济研究》和Economics Letters等杂志发表学术论文十余篇,主持中央财经大学博士研究生重点课题,参与多项国家社科基金重大项目和国家自然科学基金面上项目等。
六、 报告摘要:
We consider a GARCH-MIDAS model with the short-term and long-term volatility components, where the long-term volatility component depends on many macroeconomic and financial variables. We select the variables that exhibit the strongest effects on the long-term stock market volatility, via maximizing the penalized log-likelihood function with an Adaptive-Lasso penalty. The GARCH-MIDAS model with variable selection enables us to incorporate many variables in a single model without estimating a large number of parameters. In the empirical analysis, four variables (namely, unemployment level, housing starts, PPI and default spread) are selected among a large set of macroeconomic and financial variables. The post-selection estimation results show negative impacts of unemployment level, housing starts and PPI, and a positive impact of default spread, on the long-term stock market volatility component. The recursive out-of-sample forecasting evaluation shows that the variable selection significantly improves the predictive ability of the GARCH-MIDAS model for the long-term stock market volatility.
七、主办单位:
龙门客栈资料库