MPhil in Finance - Do Anomalies Still Exist? Linear and Nonlinear (Lasso) Methods to Select Characteristics
11:00am - 12:30pm
Room 5047, 5/F, Lee Shau Kee Business Building, HKUST
Do anomalies still exist? Which characteristics provide independent information? To address these questions, I use Fama-Macbeth regressions and machine learning techniques (lasso, elastic net, etc) to select characteristics.
I construct 40 characteristics in finance and accounting research from 1980 to 2016. First perform Fama-Macbeth regressions to identify those with t>3. Next, I run Lasso and Elastic Net regressions, and identify a few significant characteristics: B/M, Invest, FScore, Size, IPO, turnover and illiquid. When loosen the penalty, Profit, SUE, ROE, ROA, spread and etc. are also selected.
Then I take closer look at the Ivol anomaly since it turns to be insignificant using Lasso. I examine selective characteristics which are supposed to explain the idiosyncratic volatility puzzle. Finally, other supervised learning methods such as SVM and trees are discussed.
I construct 40 characteristics in finance and accounting research from 1980 to 2016. First perform Fama-Macbeth regressions to identify those with t>3. Next, I run Lasso and Elastic Net regressions, and identify a few significant characteristics: B/M, Invest, FScore, Size, IPO, turnover and illiquid. When loosen the penalty, Profit, SUE, ROE, ROA, spread and etc. are also selected.
Then I take closer look at the Ivol anomaly since it turns to be insignificant using Lasso. I examine selective characteristics which are supposed to explain the idiosyncratic volatility puzzle. Finally, other supervised learning methods such as SVM and trees are discussed.
活動形式
論文答辯
候選人
Miss Xiaoxi WANG
語言
英文
English