ROBUST TRADING RULE SELECTION AND FORECASTING ACCURACY
ROBUST TRADING RULE SELECTION AND FORECASTING ACCURACY
摘要
Trading rules performing well on a given data set seldom lead to promising out-of-sample results, a problem which is a consequence of the in-sample data snooping bias. Efforts to justify the selection of trading rules by assessing the out-of-sample performance will not really remedy this predica- ment either, because they are prone to be trapped in what is known as the out-of-sample data-snooping bias. Our approach to curb the data-snooping bias consists of constructing a framework for trading rule selection using a-priori robustness strategies, where robustness is gauged on the basis of time- series bootstrap and multi-objective criteria. This approach focuses thus on building robustness into the process of trading rule selection at an early stage, rather than on an ex-post assessment of trading rule fitness. Intra-day FX market data constitute the empirical basis of the proposed investigations. Trading rules are selected from a wide universe created by evolutionary computation tools. The authors show evidence of the benefit of this approach in terms of indirect forecasting accuracy when investing in FX markets.
参考文献12
-
1Brock W, Lakonishok J, and LeBaron B, Simple technical trading rules and the stochastic prop- erties of stock returns, Journal of Finance, 1992, 47: 1731-1764.
-
2White H, A reality check h)r data snooping, Econometrica, 2000, 68: 1097-1126.
-
3Merton R, On the state of the efficient market hypothesis in financial economics, Macroeconomics and Finance: Essays in Honor of Franco Modigliani (ed. by Dornbusch R, Fischer S, and Bossons J), MIT Press, Cambridge, Mass., 1987.
-
4Sullivan R, Timmermann A, and White H, Data-snooping, technical trading rule performance, and the bootstrap, The Journal of Finance, 1999, 54: 1647-1691.
-
5Qi M and Wu Y, Technical trading-rule profitability, data snooping, and reality check: Evidence from the foreign exchange market, Journal of Money, Credit, and Banking, 2005, 38: 2135-2158.
-
6Vinod H D and L6pez-de-Lacalle J, Maximum entropy bootstrap for time series: The meboot R package, Journal of Statistical Software, 2009, 29(5): 1-19.
-
7Koza J R, Genetic Programming: On the Programming of Computers by Means of Natural Se- lection, MIT Press, Cambridge, Mass., 1992.
-
8Wigham P A, Grammatically-based genetic programming, Proceedings of the Workshop on Ge- netic Programming: From Theory to Real-World Applications (ed. by Rosca J P), Rochester, New York, 1995: 33-41.
-
9Brabazon A and O'Neill M, Evolving technical trading rules for spot foreign-exchange markets using grammatical evolution, Computational Management Science, 2004, 1: 311-332.
-
10O'Neill M and Ryan C, Grammatical evolution, Evolutionary Computation, 2001, 5: 349-358.
-
1郑成宏.网上外汇市场登台亮相[J].当代韩国,2002(3):99-99.
-
2吴启新.性能——企业级应用开发的最后一环(上)[J].程序员,2004(10):118-120.
-
3马青华,李艳涛,程康.聚类分析和判别分析在投资中的应用[J].信息安全与技术,2015,6(6):81-83. 被引量:3
-
4陈杰,史浩山.物理隔离网络环境下基于规则的数据交换方法[J].计算机测量与控制,2010,18(6):1387-1389.
-
5高霞,李瑞俊.EM算法在不完全数据参数估计中的应用[J].集宁师范学院学报,2015,37(3):102-104. 被引量:3
-
6邓士杰,郑海起,汪伟,周新伟.军械检测系统的可靠性研究[J].兵工自动化,2008,27(7):94-96.
-
7候佳斌.信息角买卖自由FREE TRADING[J].中国机械,2011,0(5):107-108.
-
8张家锐.多应用域交换平台交换规则的结构分析与定制[J].中国科技信息,2011(18):71-72.
-
9声音[J].现代制造,2006(33):62-62.
-
10张继清.建设工程造价管理环节及其控制环节研究[J].科技创新与应用,2015,5(10):241-241.