Short term prediction of extreme returns based on the recurrence interval analysis
暂无分享,去创建一个
Boris Podobnik | Chi Xie | H. Eugene Stanley | Wei-Xing Zhou | Gang-Jin Wang | Askery Canabarro | H. Stanley | B. Podobnik | Wei‐Xing Zhou | A. Canabarro | Chi Xie | Gangjin Wang | Zhi Jiang | Zhi-Qiang Jiang | H. Stanley
[1] H. Stanley,et al. Multifactor analysis of multiscaling in volatility return intervals. , 2008, Physical review. E, Statistical, nonlinear, and soft matter physics.
[2] L. Sorriso-Valvo,et al. Waiting time distributions of the volatility in the Italian MIB30 index: Clustering or Poisson functions? , 2008 .
[3] Tae Yoon Kim,et al. An early warning system for financial crisis using a stock market instability index , 2009, Expert Syst. J. Knowl. Eng..
[4] H. Stanley,et al. Early warning of large volatilities based on recurrence interval analysis in Chinese stock markets , 2015, 1508.07505.
[5] Armin Bunde,et al. Universal behaviour of interoccurrence times between losses in financial markets: An analytical description , 2011 .
[6] Chia-Chien Chang,et al. Early warning signals using AVaRs of infinitely divisible GARCH models — evidence from stock index markets , 2015 .
[7] B. M. Hill,et al. A Simple General Approach to Inference About the Tail of a Distribution , 1975 .
[8] Didier Sornette,et al. Real-Time Prediction and Post-Mortem Analysis of the Shanghai 2015 Stock Market Bubble and Crash , 2015 .
[9] Tuomas A. Peltonen,et al. Assessing systemic risks and predicting systemic events , 2013 .
[10] J. Franks. Predicting financial stress in farm businesses , 1998 .
[11] Didier Sornette,et al. The 2006–2008 oil bubble: Evidence of speculation, and prediction , 2009 .
[12] Roy Kouwenberg,et al. Early Warning Systems for Currency Crises: A Multivariate Extreme Value Approach , 2010 .
[13] Makram El-Shagi,et al. IWH Discussion Papers , 2005 .
[14] Jun Wang,et al. Statistical analysis and forecasting of return interval for SSE and model by lattice percolation system and neural network , 2012, Comput. Ind. Eng..
[15] Peter Sarlin,et al. Predicting Distress in European Banks , 2013, SSRN Electronic Journal.
[16] Virginie Coudert,et al. Does risk aversion drive financial crises? Testing the predictive power of empirical indicators , 2008 .
[17] Rémy Chicheportiche,et al. A model-free characterization of recurrences in stationary time series , 2013 .
[18] Wei-Xing Zhou,et al. Recurrence interval analysis of high-frequency financial returns and its application to risk estimation , 2009, 0909.0123.
[19] Tae Yoon Kim,et al. Usefulness of support vector machine to develop an early warning system for financial crisis , 2011, Expert Syst. Appl..
[20] Vadlamani Ravi,et al. Bankruptcy prediction in banks and firms via statistical and intelligent techniques - A review , 2007, Eur. J. Oper. Res..
[21] Dong-Hua Wang,et al. Risk estimation of CSI 300 index spot and futures in China from a new perspective , 2015 .
[22] Tom Fawcett,et al. An introduction to ROC analysis , 2006, Pattern Recognit. Lett..
[23] Jae Woo Lee,et al. Waiting-Time Distribution for Korean Stock-Market Index KOSPI , 2006 .
[24] A. Bunde,et al. Universal behavior of the interoccurrence times between losses in financial markets: independence of the time resolution. , 2014, Physical review. E, Statistical, nonlinear, and soft matter physics.
[25] Tae Yoon Kim,et al. An early warning system for detection of financial crisis using financial market volatility , 2006, Expert Syst. J. Knowl. Eng..
[26] N. Wilson,et al. Financial distress and bankruptcy prediction among listed companies using accounting, market and macroeconomic variables , 2013 .
[27] Shiu‐Sheng Chen. Predicting the Bear Stock Market: Macroeconomic Variables as Leading Indicators , 2009 .
[28] P. Sarlin,et al. Leading indicators of systemic banking crises: Finland in a panel of EU countries , 2015 .
[29] Zhi-Qiang Jiang,et al. Profitability of Contrarian Strategies in the Chinese Stock Market , 2015, PloS one.
[30] Peter Sarlin,et al. Leading Indicators of Systemic Banking Crises: Finland in a Panel of EU Countries , 2014, SSRN Electronic Journal.
[31] Statistical distributions and the identification of currency crises , 2003 .
[32] Zhi-Qiang Jiang,et al. Extreme value statistics and recurrence intervals of NYMEX energy futures volatility , 2012, 1211.5502.
[33] Maria Sigacheva. Early Warning Indicators for Financial Crises , 2009 .
[34] R N Mantegna,et al. Power-law relaxation in a complex system: Omori law after a financial market crash. , 2003, Physical review. E, Statistical, nonlinear, and soft matter physics.
[35] H. Herwartz,et al. In-Sample and Out-of-Sample Prediction of Stock Market Bubbles: Cross-Sectional Evidence , 2011 .
[36] Fuchun Li,et al. A Semiparametric Early Warning Model of Financial Stress Events , 2013 .
[37] D. Sornette,et al. The paradox of the expected time until the next earthquake , 1997, Bulletin of The Seismological Society of America (BSSA).
[38] Mark E. J. Newman,et al. Power-Law Distributions in Empirical Data , 2007, SIAM Rev..
[39] Kazuko Yamasaki,et al. Scaling and memory in volatility return intervals in financial markets. , 2005, Proceedings of the National Academy of Sciences of the United States of America.
[40] Roy Kouwenberg,et al. Early warning systems for currency crises: Amultivariate extreme value approach , 2013 .
[41] Graciela L. Kaminsky. Leading Indicators of Currency Crises , 1997 .
[42] Lucia Alessi,et al. 'Real Time' Early Warning Indicators for Costly Asset Price Boom/Bust Cycles: A Role for Global Liquidity , 2009 .
[43] Rémy Chicheportiche,et al. Copulas and time series with long-ranged dependencies. , 2013, Physical review. E, Statistical, nonlinear, and soft matter physics.
[44] Joseph J. French,et al. Toward an early warning system of financial crises: What can index futures and options tell us? , 2015 .
[45] Armin Bunde,et al. Memory effects in the statistics of interoccurrence times between large returns in financial records. , 2008, Physical review. E, Statistical, nonlinear, and soft matter physics.
[46] Ian Christensen,et al. Predicting financial stress events: A signal extraction approach , 2014 .
[47] V. S. Subrahmanian,et al. Does Financial Connectedness Predict Crises?1 , 2013 .
[48] Armin Bunde,et al. Improved risk estimation in multifractal records: Application to the value at risk in finance. , 2009, Physical review. E, Statistical, nonlinear, and soft matter physics.
[49] Peter Sarlin,et al. On policymakers’ loss functions and the evaluation of early warning systems , 2013 .
[50] Guanrong Chen,et al. Cross-border Portfolio Investment Networks and Indicators for Financial Crises , 2013, Scientific Reports.
[51] Armin Bunde,et al. Effect of nonlinear correlations on the statistics of return intervals in multifractal data sets. , 2007, Physical review letters.
[52] Daniel Martin,et al. Early warning of bank failure: A logit regression approach , 1977 .
[53] D. Sornette. WHY STOCK MARKETS CRASH , 2003 .
[54] Claustre Bajona,et al. China's vulnerability to currency crisis: A KLR signals approach , 2008 .
[55] B. Bollen,et al. Estimating Daily Volatility in Financial Markets Utilizing Intraday Data , 2002 .
[56] Armin Bunde,et al. On the occurrence and predictability of overloads in telecommunication networks , 2009 .
[57] Ray Barrell,et al. Bank regulation, property prices and early warning systems for banking crises in OECD countries , 2010 .
[58] J. Reboredo,et al. Power-law behaviour in time durations between extreme returns , 2014 .
[59] Shlomo Havlin,et al. Market Dynamics Immediately Before and After Financial Shocks: Quantifying the Omori, Productivity and Bath Laws , 2010, Physical review. E, Statistical, nonlinear, and soft matter physics.
[60] Holger Kantz,et al. Return interval distribution of extreme events and long-term memory. , 2008, Physical review. E, Statistical, nonlinear, and soft matter physics.
[61] H. Stanley,et al. Cross-correlations between volume change and price change , 2009, Proceedings of the National Academy of Sciences.
[62] Armin Bunde,et al. Precipitation and River Flow: Long‐Term Memory and Predictability of Extreme Events , 2013 .
[63] K. S. Park,et al. A study on the market instability index and risk warning levels in early warning system for economic crisis , 2014, Digit. Signal Process..
[64] Serpil Canbas,et al. Prediction of commercial bank failure via multivariate statistical analysis of financial structures: The Turkish case , 2005, Eur. J. Oper. Res..
[65] Shao Wang,et al. A financial early warning logit model and its efficiency verification approach , 2014, Knowl. Based Syst..
[66] D. Sornette,et al. Financial Bubbles: Mechanisms and Diagnostics , 2014, 1404.2140.
[67] R Byles. Early warning system , 1992 .
[68] Katerina Smidkova,et al. Comparing Different Early Warning Systems: Results from a Horse Race Competition Among Members of the Macro-Prudential Research Network , 2015 .
[69] M. Bussière,et al. Towards a New Early Warning System of Financial Crises , 2002, SSRN Electronic Journal.
[70] D. Sornette,et al. Bubble Diagnosis and Prediction of the 2005-2007 and 2008-2009 Chinese Stock Market Bubbles , 2009, 0909.1007.
[71] Harry Eugene Stanley,et al. Calling patterns in human communication dynamics , 2013, Proceedings of the National Academy of Sciences.
[72] Armin Bunde,et al. On the predictability of extreme events in records with linear and nonlinear long-range memory: Efficiency and noise robustness , 2011 .
[73] Erkam Güresen,et al. Developing an early warning system to predict currency crises , 2014, Eur. J. Oper. Res..
[74] A. Deluca,et al. Data-driven prediction of thresholded time series of rainfall and self-organized criticality models. , 2014, Physical review. E, Statistical, nonlinear, and soft matter physics.
[75] Jeong-Ryeol Kurz-Kim. Early warning indicator for financial crashes using the log periodic power law , 2012 .
[76] Shlomo Havlin,et al. Financial factor influence on scaling and memory of trading volume in stock market. , 2011, Physical review. E, Statistical, nonlinear, and soft matter physics.
[77] Recurrence interval analysis of trading volumes. , 2010, Physical review. E, Statistical, nonlinear, and soft matter physics.
[78] M. Lang,et al. The early warnings of banking crises: Interaction of broad liquidity and demand deposits , 2016 .
[79] Josef Lakonishok,et al. Momentum Strategies , 1995 .
[80] Lucia Alessi,et al. On policymakers’ loss functions and the evaluation of early warning systems: Comment , 2014 .
[81] Tomas Havranek,et al. Banking, debt, and currency crises in developed countries: Stylized facts and early warning indicators , 2014 .
[82] D. Sornette,et al. Bubble Diagnosis and Prediction of the 2005-2007 and 2008-2009 Chinese Stock Market Bubbles , 2009 .
[83] Financial Crises and Bank Failures: A Review of Prediction Methods , 2009 .
[84] P. Franses,et al. Interpreting Financial Market Crashes as Earthquakes: A New Early Warning System for Medium Term Crashes , 2014 .
[85] Laurent E. Calvet,et al. Multifractality in Asset Returns: Theory and Evidence , 2002, Review of Economics and Statistics.
[86] H. Herwartz,et al. In-Sample and Out-of-Sample Prediction of stock Market Bubbles: Cross-Sectional Evidence: Prediction of Stock Market Bubbles , 2014 .
[87] I. Hasan,et al. Financial Crises and Bank Failures: A Review of Prediction Methods , 2009 .
[88] Tae Yoon Kim,et al. An early warning system for global institutional investors at emerging stock markets based on machine learning forecasting , 2009, Expert Syst. Appl..
[89] Hali J. Edison,et al. Do Indicators of Financial Crises Work? An Evaluation of an Early Warning System , 2000 .