Finance
.
MA Feng

Hits: Date:2022-11-12 11:36

Name

Ma Feng

Gender

Male


Nationality

Chinese

Academic Post

Associate Professor



þPh.D. Supervisor RMaster’s Supervisor

Academic Qualification

PhD



Graduation School

Southwest   Jiaotong University


Academic Engagement

(Representative)

Publications

[1] Abderrazak Dhaoui, Julien   Chevallier, Feng Ma. Identifying Asymmetric Responses of Sectoral Equities to   Oil Price Shocks in A NARDL Model. Studies in Nonlinear   Dynamics&Econometrics, 2021, 25(2).

[2] Botao Lu, Feng Ma, Jiqian   Wang, et al. Harnessing the Decomposed Realized Measures for Volatility   Forecasting: Evidence from the US Stock Market. International Review of   Economics&Finance, 2021, 72(3): 672-689.

[3] Chao Liang, Feng Ma, Lu   Wang, et al. The Information Content of Uncertainty Indices for Natural Gas   Futures Volatility Forecasting. Journal of Forecasting, 2021, 40(7):   1310-1324.

[4] Chao Liang, Yan Li, Feng   Ma, et al. Global Equity Market Volatilities Forecasting: A Comparison of   Leverage Effects, Jumps, and Overnight Information. International Review of   Financial Analysis, 2021, 75(8): 101750.

[5] Chao Liang, Yu Wei, Likun   Lei, Feng Ma. Global Equity Market Volatility Forecasting: New Evidence.   International Journal of Finance&Economics, 2021, 27(1): 594-609.

[6] Feng He, Feng Ma, Ziwei   Wang, et al. Asymmetric Volatility Spillover Between Oil-Importing and   Oil-Exporting Countries' Economic Policy Uncertainty and China's Energy   Sector. International Review of Financial Analysis, 2021, 75: 101739.

[7] Feng Ma, Chao Liang, Qing   Zeng, Haibo Li. Jumps and Oil Futures Volatility Forecasting: A New Insight.   Quantitative Finance, 2021, 21(5): 853-863.

[8] Jiqian Wang, Feng Ma,   M.I.M. Wahab, Dengshi Huang. Forecasting China's Crude Oil Futures   Volatility: The Role of the Jump, Jumps Intensity, and Leverage Effect.   Journal of Forecasting, 2021, 40(5): 921-941.

[9] Jiqian Wang, Feng Ma, Chao   Liang, et al. Volatility Forecasting Revisited Using Markovswitching with Timevarying Probability   Transition. International Journal of Finance&Economics, 2021, 27(1):   1387-1400.

[10] Lu Wang, Feng Ma, Jianyang   Hao, et al. Forecasting Crude Oil Volatility with Geopolitical Risk: Do   Time-varying Switching Probabilities Play a Role? International Review of   Financial Analysis, 2021, 76: 101756.

[11] Lu Wang, Feng Ma, Tiaojiao   Niu, et al. The Importance of Extreme Shock: Examining the Effect of Investor   Sentiment on the Crude Oil Futures Market. Energy Economics, 2021, 99:   105319.

[12] Xinjie Lu, Feng Ma, Jiqian   Wang, Bo Zhu. Oil Shocks and Stock Market Volatility: New Evidence. Energy   Economics, 2021, 103: 105567.

[13] Yaojie Zhang, Yudong Wang,   Feng Ma. Forecasting US Stock Market Volatility: How to Use International   Volatility Information. Journal of Forecasting, 2021, 40(5): 733-768.

[14] Yaojie Zhang, Feng Ma, Chao   Liang, et al. Good Variance, Bad Variance, and Stock Return Predictability. International   Journal of Finance&Economics, 2021, 26(3): 4410-4423.

[15] Yu Lin, Yan Yan, Jiali Xu,   Ying Liao, Feng Ma. Forecasting Stock Index Price Using the CEEMDAN-LSTM   Model. The North American Journal of Economics and Finance, 2021, 57: 101421.

[16] Wang Ruoxin, Ma Feng.   Intraday Return Predictability: Based on Intraday Jumps and Momentum. Systems   Engineering Theory and Practice, 2021, 41(08): 2004-2014.

[17] Chao Liang, Feng Ma, Ziyang   Li, et al. Which Types of Commodity Price Information Are More Useful for   Predicting US Stock Market Volatility? Economic Modelling, 2020, 93: 642-650.

[18] Chao Liang, Yaojie Zhang,   Xiafei Li, Feng Ma. Which Predictor Is More Predictive for Bitcoin   Volatility? And Why? International Journal of Finance&Economics, 2020,   27(2): 1947-1961.

[19] Dexiang Mei, FengMa, Yin   Liao, et al. Geopolitical Risk Uncertainty and Oil Future Volatility:   Evidence from MIDAS Models. Energy Economics, 2020, 86: 104624.

[20] Feng Ma, Chao Liang,   Yuanhui Ma, et al. Cryptocurrency Volatility Forecasting: A Markov Regimeswitching MIDAS Approach.   Journal of Forecasting, 2020, 39(8): 1277-1290.

[21] Jiqian Wang, Xinjie Lu,   Feng He, Feng Ma. Which Popular Predictor Is More Useful to Forecast   International Stock Markets During the Coronavirus Pandemic: VIX Vs EPU?   International Review of Financial Analysis, 2020, 72: 101596.

[22] Jiqian Wang, Yisu Huang,   Feng Ma, et al. Does High-frequency Crude Oil Futures Data Contain Useful   Information for Predicting Volatility in The US Stock Market? New Evidence.   Energy Economics, 2020, 91: 104897.

[23] Li Liu, Feng Ma, Qing Zeng,   et al. Forecasting the Aggregate Stock Market Volatility in A Data-rich   World. Applied Economics, 2020, 52(32): 3448-3463.

[24] Lu Wang, Feng Ma, Guoshan   Liu. Forecasting Stock Volatility in the Presence of Extreme Shocks: Shortterm and Longterm Effects. Journal of   Forecasting, 2020, 39(5): 797-810.

[25] Lu Wang, Feng Ma, Jing Liu,   et al. Forecasting Stock Price Volatility: New Evidence from the GARCH-MIDAS   Model. International Journal of Forecasting, 2020, 36(2): 684-694.

[26] Lu Wang, Feng Ma, Tianjiao   Niu, et al. Crude Oil and BRICS Stock Markets Under Extreme Shocks: New   Evidence. Economic Modelling, 2020, 86: 54-68.

[27] Tao Li, Feng Ma, Xuehua   Zhang, et al. Economic Policy Uncertainty and the Chinese Stock Market   Volatility: Novel Evidence. Economic Modelling, 2020, 87: 24-33.

[28] Wang Chen, Feng Ma, Yu Wei,   et al. Forecasting Oil Price Volatility Using High-frequency Data: New   Evidence. International Review of Economics&Finance, 2020, 66: 1-12.

[29] Xiafei Li, Wei Yu, Xiaodan   Chen, Feng Ma. Which Uncertainty Is Powerful to Forecast Crude Oil Market   Volatility? New Evidence. International Journal of Finance&Economics,   2020.

[30] Yan Li, Chao Liang, Feng   Ma, et al. The Role of the IDEMV in Predicting European Stock Market   Volatility During the COVID-19 Pandemic. Finance research letters, 2020, 36:   101749.

[31] Yan Li, Lian Luo, Chao   Liang, Feng Ma. The Role of Model Bias in Predicting Volatility: Evidence   from The US Equity Markets. China Finance Review International, 2020.

[32] Yaojie Zhang, Feng Ma, Yin   Liao. Forecasting Global Equity Market Volatilities. International Journal of   Forecasting, 2020, 36(4): 1454-1475.

[33] Chen Wang, Ma Feng, Wei Yu,   et al. VaR Prediction of China's Stock Market Dynamics from a High-frequency   Perspective Model Research. Operations Research and Management, 2020, 29(02):   184-194.

[34] Chen Wang, Wei Yu, Ma Feng,   et al. A New Method of Stock Market Volatility Forecasting in High-frequency   Perspective: HARFIMA Model. Journal of Management Science, 2020, 23(11):   103-116.

[35] Wang Lu, Huang Dengshi, Ma   Feng, et al. The Impact of Major Emergency on International Foreign Exchange   Markets: The Case of Britain Vote to Leave the EU in the Referendum.   Mathematical Statistics and Management ,2020, 39(01): 174-190.

[36] Feng Ma, M.I.M.Wahab,   Yaojie Zhang. Forecasting the US Stock Volatility: An Aligned Jump Index from   G7 Stock Markets. Pacific-Basin Finance Journal, 2019, 54: 132-146.

[37] Feng Ma, Xinjie Lu, Ke   Yang, et al. Volatility Forecasting: Long Memory, Regime Switching and   Heteroscedasticity. Applied Economics, 2019, 51(38): 4151-4163.

[38] Feng Ma, Yaojie Zhang, M.   I. M. Wahab, Xiaodong Lai. The role of jumps in the agricultural futures   market on forecasting stock market volatility: New evidence[J]. Journal of   forecasting, 2019, 38(5): 400-414.

[39] Feng Ma, Yin Liao, Yaojie   Zhang, et al. Harnessing Jump Component for Crude Oil Volatility Forecasting   in the Presence of Extreme Shocks. Journal of Empirical Finance, 2019, 52:   40-55.

[40] Jing Hao, Xiong Xiong, Feng   He, Feng Ma. Price Discovery in the Chinese Stock Index Futures Market.   Emerging Markets Finance and Trade, 2019, 55(13): 2982-2996.

[41] Jing Liu, Feng Ma, Yaojie   Zhang. Forecasting the Chinese Stock Volatility Across Global Stock Markets.   Physica A: Statistical Mechanics and Its Applications, 2019, 525: 466-477.

[42] Jing Liu, Feng Ma, Yingkai   Tang, et al. Geopolitical Risk and Oil Volatility: A New Insight. Energy   Economics, 2019, 84: 104548.

[43] Weiju Xu, Feng Ma, Wang Chen,   et al. Asymmetric Volatility Spillovers Between Oil and Stock Markets:   Evidence from China and the United States. Energy Economics, 2019, 80:   310-320.

[44] Weiju Xu, Jiqian Wang, Feng   Ma, et al. Forecast the Realized Range-based Volatility: The Role of Investor   Sentiment and Regime Switching. Physica A: Statistical Mechanics and its   Applications, 2019, 527: 121422.

[45] Yanyan Xu, Dengshi Huang,   Feng Ma, et al. Liquidity and Realized Range-based Volatility Forecasting:   Evidence from China. Physica A: Statistical Mechanics and Its Applications,   2019, 525: 1102-1113.

[46] Yanyan Xu, Dengshi Huang,   Feng Ma, et al. The Heterogeneous Impact of Liquidity on Volatility in   Chinese Stock Index Futures Market. Physica A: Statistical Mechanics and Its   Applications, 2019, 517: 73-85.

[47] Yaojie Zhang, Feng Ma, Bo   Zhu. Intraday Momentum and Stock Return Predictability: Evidence from China.   Economic Modelling, 2019, 76(1): 319-329.

[48] Yaojie Zhang, Feng Ma,   Tianyi Wang, et al. Outofsample Volatility   Prediction: A New Mixedfrequency   Approach. Journal of Forecasting, 2019, 38(7): 669-680.

[49] Yaojie Zhang, Feng Ma, Yu   Wei. Out-of-sample Prediction of the Oil Futures Market Volatility: A   Comparison of New and Traditional Combination Approaches. Energy Economics,   2019, 81: 1109-1120.

[50] Yaojie Zhang, Feng Ma,   Yudong Wang. Forecasting Crude Oil Prices with A Large Set of Predictors: Can   Lasso Select Powerful Predictors? Journal of Empirical Finance, 2019, 54:   97-117.

[51] Yaojie Zhang, Qing Zeng,   Feng Ma, Benshan Shi. Forecasting Stock Returns: Do Less Powerful Predictors   Help? Economic Modelling, 2019, 78: 32-39.

[52] Yaojie Zhang, Yu Wei, Feng   Ma, et al. Economic Constraints and Stock Return Predictability: A New   Approach. International Review of Financial Analysis, 2019, 63: 1-9.

[53] Yixiang Chen, Feng Ma,   Yaojie Zhang. Good, Bad Cojumps and Volatility Forecasting: New Evidence from   Crude Oil and The US Stock Markets. Energy Economics, 2019, 81: 52-62.

[54] Yongsheng Yi, Feng Ma,   Dengshi Huang, et al. Interest Rate Level and Stock Return Predictability.   Review of Financial Economics, 2019, 37(4): 506-522.

[55] Yongsheng Yi, Feng Ma,   Yaojie Zhang, Dengshi Huang. Forecasting Stock Returns with Cycle-decomposed   Predictors. International Review of Financial Analysis, 2019, 64: 250-261.

[56] Yu Li, Feng Ma, Yaojie   Zhang, et al. Economic Policy Uncertainty and the Chinese Stock Market   Volatility: New Evidence. Applied Economics, 2019, 51(49): 5398-5410.

[57] Feng Ma, Jing Liu,   M.I.M.Wahab, et al. Forecasting the Aggregate Oil Price Volatility in A   Data-rich Environment. Economic Modelling, 2018, 72: 320-332.

[58] Feng Ma, M.I.M.Wahab, Jing   Liu, et al. Is Economic Policy Uncertainty Important to Forecast the Realized   Volatility of Crude Oil Futures? Applied Economics, 2018, 50(18): 2087-2101.

[59] Feng Ma, Yaojie Zhang,   Dengshi Huang, Xiaodong Lai. Forecasting Oil Futures Price Volatility: New   Evidence from Realized Range-based Volatility. Energy Economics, 2018, 75:   400-409.

[60] Feng Ma, Yu Li, Li Liu, et   al. Are Low-frequency Data Really Uninformative? A Forecasting Combination   Perspective. The North American Journal of Economics and Finance, 2018, 44:   92-108.

[61] Feng Ma, Yu Wei, Li Liu,   Dengshi Huang. Forecasting Realized Volatility of Oil Futures Market: A New   Insight. Journal of Forecasting, 2018, 37(4): 419-436.

[62] Feng Ma, Yu Wei, Wang Chen,   et al. Forecasting the Volatility of Crude Oil Futures Using High-frequency   Data: Further Evidence. Empirical Economics, 2018, 55(2): 653-678.

[63] Jing Liu, Feng Ma, Ke Yang,   et al. Forecasting the Oil Futures Price Volatility: Large Jumps and Small   Jumps. Energy Economics, 2018, 72: 321-330.

[64] Lu Wang, Rong Zhang, Lin   Yang, Yang Su, Feng Ma. Pricing Geometric Asian Rainbow Options Under   Fractional Brownian Motion. Physica A: Statistical Mechanics and Its   Applications, 2018, 494: 8-16.

[65] Yaojie Zhang, Feng Ma,   Benshan Shi, Dengshi Huang. Forecasting the Prices of Crude Oil: An Iterated   Combination Approach. Energy Economics, 2018, 70: 472-483.

[66] Yongsheng Yi, Feng Ma,   Yaojie Zhang, Dengshi Huang. Forecasting the Prices of Crude Oil Using the   Predictor, Economic and Combined Constraints. Economic Modelling, 2018, 75:   237-245.

[67] Yudong Wang, Li Liu, Feng   Ma, et al. Momentum of Return Predictability. Journal of Empirical Finance,   2018, 45: 141-156.

[68] Dexiang Mei, Jing Liu, Feng   Ma, et al. Forecasting Stock Market Volatility: Do Realized Skewness and   Kurtosis Help? Physica A: Statistical Mechanics and Its Applications, 2017,   481: 153-159.

[69] Feng Ma, Jing Liu, Dengshi   Huang, et al. Forecasting the Oil Futures Price Volatility: A New Approach.   Economic Modelling, 2017, 64: 560-566.

[70] Feng Ma, M.I.M.Wahab,   Dengshi Huang, et al. Forecasting the Realized Volatility of the Oil Futures   Market: A Regime Switching Approach. Energy Economics, 2017, 67: 136-145.

[71] Jing Liu, Yu Wei, Feng Ma,   et al. Forecasting the Realized Range-based Volatility Using Dynamic Model   Averaging Approach. Economic Modelling, 2017, 61: 12-26.

[72] Zhicao Liu, Yong Ye, Feng   Ma, et al. Can Economic Policy Uncertainty Help to Forecast the Volatility: A   Multifractal Perspective. Physica A: Statistical Mechanics and Its   Applications, 2017, 482: 181-188.

[73] Ma Feng, Wei Yu, Huang   Dengshi. Forecasting the Realized Volatility Based on the Signed Return and   Signed Jump Variation. Journal of Management Science, 2017, 20(10): 31-43.  


Projects

[1] Volatility Analysis of   China's Crude Oil Futures Market Research on Model, Prediction and Its   Application: Transformation and Dynamic Sparse Weight Combination Method   Based on Time-varying Mechanism. Natural Science Foundation of China General   Program (Project No. P111020G02002). January 2021-December 2024. Principle   Investigator.

[2] Research on the Monotonicity and Term Structure of   China's Market Pricing--based on the New Method of Improved Conditional   Density Integral CDI. Humanities and Social Sciences Project of the   Ministry of Education. January 2021-December 2023.

[3] Research on Systemic Risk   of Financial System Based on Network Perspective. National   Science Fund for Distinguished Young Scholars (Project No.: 2017G01145). January   2018-December 2020. Investigator.

[4] Financial Market Volatility   Modeling and Forecasting from the Perspective of High-Frequency Data:   Research Based on Mechanism Conversion and Dynamic Model Average Portfolio   Forecasting. National Natural Science Foundation of China Youth Science Fund   Project (Project No.: 2017G01067). January 2018-December 2020. Principle   Investigator.

[5] Research on the Pricing Method of Volatility Index   Derivatives: Based on a New Perspective of Discrete Time Volatility Model.   National Natural Science Foundation of China. January   2018- December 2020.

[6] International Origin Based   on Common Jump, Mechanism Transformation and Dynamic Model Combination   Prediction Method. Humanities and Social Sciences Project of the Ministry of   Education (Project No.: 2018S090052). July 2017-July 2020. Principle   Investigator.




Course Name

Undergraduate

Fixed Income Security

Research   Method of Finance


Master

Macro and Micro Economic Analysis