Neural Network Forecasting Using Data Mining Classifiers Based on Structural Change: Application to Stock Price Index

  • Oh, Kyong-Joo (Techno-Management Institute, Korea Advanced Institute of Science and Technology) ;
  • Han, Ingoo (Graduate School of Management, Korea Advanced Institute of Science and Technology)
  • Published : 2001.08.01

Abstract

This study suggests integrated neural network modes for he stock price index forecasting using change-point detection. The basic concept of this proposed model is to obtain significant intervals occurred by change points, identify them as change-point groups, and reflect them in stock price index forecasting. The model is composed of three phases. The first phase is to detect successive structural changes in stock price index dataset. The second phase is to forecast change-point group with various data mining classifiers. The final phase is to forecast the stock price index with backpropagation neural networks. The proposed model is applied to the stock price index forecasting. This study then examines the predictability of integrated neural network models and compares the performance of data mining classifiers.

Keywords

References

  1. Proceedings of the International Conference on Neural Networks Testability of the arbitrage pricing theory by neural networks Ahmadi,H.
  2. International Journal of Forecasting v.8 Error measures for generalizing about forecasting methods:Empirical comparisons Armstrong,J.S.;Collopy,F.
  3. Journal of Business and Economic Statistics v.1 Recursive and sequential tests of the unit root and trend break hypothesis:Theory and international evidence Banergee,A.;Lumsdaine,R.;Stock,J.
  4. Journal of Forecasting v.1 Evaluation of extrapolative forecasting methods:Results of academicians and practitioners Carbone,R.;Armstrong,J.S.
  5. Technical Indicators Choi,J.
  6. Sampling Techniques(Third edition) Cochran,W.G.
  7. Adaptive intelligent systems Neural network futures trading - A feasibility study, Society for Worldwide Interbank Financial Telecomm. Duke,L.S.;Long,J.A.
  8. Annals of Eugenics v.7 The use of multiple measurements in taxonomic problems Fisher,R.A.
  9. Time-Series Analysis Gottman,J.M.
  10. Multivariate Data Analysis with Readings(Fouth edition) Hair,J.F.Jr.;Anderson,R.E.;Tatham,R.L.;Black,W.C.
  11. Chaos & Nonlinear Dynamics in the Financial Markets:Theory, Evidence and Applications Modeling structured nonlinear knowledge to predict stock market returns Hiemstra,Y.;R.R.Trippi(ed.)
  12. Modern Business Statistics Iman,R.;Conover,W.J.
  13. Chaos & Nonlinear Dynamics in the Financial Markets Nonlinear in the interest rate risk premium Hiemstra,Y.;R.R.Trippi(ed.)
  14. Proceedings of the I. Joint Conference on Neural Networks Stock price pattern recognition:A recurrent neural network approach Kamijo,K.;Tanigawa,T.
  15. Knowledge Discovery in Databases Mining for knowledge in databases:Goals and general description of the INLEN system Kaufman,K.A.;Michalski,R.S.;Kerschberg,L.;G.Piatetsky Shapiro(ed.);W.J.Frawley(ed.)
  16. Korean Journal of Expert System v.3 Second-order learning for complex forecasting tasks:case study of Video-On-Demand Kim,S.H.;Joo,J.
  17. Proceedings of the I. Joint Conference on Neural Networks Stock market prediction system with modular neural network Kimoto,T.;Asakawa,K.;Yoda,M.;Takeoka,M.
  18. International Journal of Systems in Accounting, Finance and Management v.6 Stock price prediction using prior knowledge and neural networks Kohara,K.;Ishikawa,T.;Fukuhara,Y.;Nakamura,Y.
  19. AI Magazine v.12 Improving human decision making through case-based decision aiding Kolodner,J.
  20. Case-Based Reasoning Kolodner,J.
  21. Financial Analysts Journal no.Sep.;Oct. Empirical tests of chaotic behavior in a nonlinear interest rate model Larrain,M.
  22. Intelligent Data Analysis v.3 A piecewise regression analysis with automatic change-point detection Li,H.L.;Yu,J.R.
  23. The Review of Economics and Staistics v.79 Multiple trends and the unit root gypothesis Lumsdaine,R.L.;Papell,D.H.
  24. International Journal of Forecasting v.9 Accuracy measures:Theoretical and practical concerns Makridakis,S.
  25. Discriminant Analysis and Statistical Pattern Recognition Mishkin,F.S.
  26. The economics of money, banking, and financial markets Mishkin,F.S.
  27. The economics of money, banking, and financial markets(Fourth edition) Mishkin,F.S.
  28. Expert Systems with Applications v.19 Using change-point detection to support artificial neural networks for interest rates forecasting Oh,K.J.;Han,I.
  29. Journal of Business and Economic Statistics v.10 Nonstationarity and level shifts with an application ot purchasing power parity Perron,P.;Vogelsang,T.
  30. Further evidence on breaking trend functions in macroeconomic variables, manuscript Perron,P.
  31. Journal of Business and Economic Statistics v.8 Testing for a unit root in time series with a changing mean Perron,P.
  32. Econometica v.57 The great crash, the oil price shock, and the unit root hypothesis Perron,P.
  33. Chaos and Order in the Capital Markets Peters,E.E.
  34. Applied Statistics v.28 no.2 A non-parametric approach to the change-point problem Pettitt,A.N.
  35. Biometrika v.67 A simple cumulative sum type statistic for the change-point problem with zero-one oservations Pettitt,A.N.
  36. Journal of Statistical Computation and Simulation v.11 Some results on estimating a change-point using nonparametric type statistics Pettitt,A.N.
  37. The Economic Journal v.99 Segmented trends and non-stationary time series Rapport,P.;Reichlin,L.
  38. Principles of Neurodynamics Rosenblatt,F.
  39. Parallel Distributed Processing v.1 Rumelhart,D.E.;Hinton,G.E.;Williams,R.J.
  40. Journal of Portfolio Management v.19 Trading equity index futures with a neural network Trippi,R.R.;DeSieno,D.
  41. Neural Networks in Finance and Investing(Second edition) Trippi,R.R.;Turban,E.
  42. Decision Support Systems v.23 Forecasting S&P 500 stock index futures with a hybrid AI system Tsaih,R.;Hsu,Y.;Lai,C.C.
  43. Additional tests for a unit root allowing for a break in the trend function at an unknown time, Manuscript Vogelsang,T.;Perron,P.
  44. Artificial Neural Networks:Approximations and Learning Theory Connectionist nonparametric regression:Multilayer feedforward networks can learn arbitrary mappings White,H.;H.White(ed.)
  45. Intelligent Data Analysis v.1 Possibilistic testing of distribution functions for change detection Wolkenhauer,O.;Edmunds,J.M.
  46. Proceedings of the 24th Annual Hawaii International Conference on System Sciences Predicting stock price performance:A neural network approach Yoon,Y.;Swales,G.
  47. Journal of Business and Economic Statistics v.1 Further evidence on the great crash, the oil-price shocks, and the unit-root hypothesis Zivot,E.;Andrews,D.W.K.