Abstract:
Neural networks have shown considerable successes in modeling financial data series. However, a major weakness of neural modeling is the lack of established procedures fo...Show MoreMetadata
Abstract:
Neural networks have shown considerable successes in modeling financial data series. However, a major weakness of neural modeling is the lack of established procedures for performing tests for misspecified models, and tests of statistical significance for the various parameters that have been estimated. This is a serious disadvantage in applications where there is a strong culture for testing not only the predictive power of a model or the sensitivity of the dependent variable to changes in the inputs but also the statistical significance of the finding at a specified level of confidence. Rarely is this more important than in the case of financial engineering, where the data generating processes are dominantly stochastic and only partially deterministic. Partly a tutorial, partly a review, this paper describes a collection of typical applications in options pricing, cointegration, the term structure of interest rates and models of investor behavior which highlight these weaknesses and propose and evaluate a number of solutions. We describe a number of alternative ways to deal with the problem of variable selection, show how to use model misspecification tests, we deploy a novel way based on cointegration to deal with the problem of nonstationarity, and generally describe approaches to predictive neural modeling which are more in tune with the requirements for modeling financial data series.
Published in: IEEE Transactions on Neural Networks ( Volume: 8, Issue: 6, November 1997)
DOI: 10.1109/72.641449
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Financial Engineering ,
- Prediction Model ,
- Time Series ,
- Confidence Level ,
- Variable Selection ,
- Interest Rate ,
- Neural Model ,
- Random Walk ,
- Modeling Strategy ,
- Model Identification ,
- Stepwise Procedure ,
- Asset Pricing ,
- Linear Techniques ,
- Investment Strategies ,
- Investment Behavior ,
- Asset Returns ,
- Random Walk Model ,
- Option Pricing ,
- Non-stationary Data ,
- Changes In Volatility ,
- Exogenous Variables ,
- Linear Model ,
- Nonlinear Model ,
- Trading Strategies ,
- Model Procedure ,
- Weekend Effect ,
- Root Mean Square Error Of Cross-validation ,
- Basis Points ,
- Incremental Value ,
- Technical Indicators ,
- Neural Network ,
- Risk Management ,
- Alpha Coefficient ,
- Transaction Costs ,
- Fiscal Year ,
- Non-parametric Statistics ,
- Model Misspecification ,
- Computational Intelligence ,
- Ranked Data ,
- Asset Allocation ,
- Allocation Rule ,
- Earnings Growth
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Financial Engineering ,
- Prediction Model ,
- Time Series ,
- Confidence Level ,
- Variable Selection ,
- Interest Rate ,
- Neural Model ,
- Random Walk ,
- Modeling Strategy ,
- Model Identification ,
- Stepwise Procedure ,
- Asset Pricing ,
- Linear Techniques ,
- Investment Strategies ,
- Investment Behavior ,
- Asset Returns ,
- Random Walk Model ,
- Option Pricing ,
- Non-stationary Data ,
- Changes In Volatility ,
- Exogenous Variables ,
- Linear Model ,
- Nonlinear Model ,
- Trading Strategies ,
- Model Procedure ,
- Weekend Effect ,
- Root Mean Square Error Of Cross-validation ,
- Basis Points ,
- Incremental Value ,
- Technical Indicators ,
- Neural Network ,
- Risk Management ,
- Alpha Coefficient ,
- Transaction Costs ,
- Fiscal Year ,
- Non-parametric Statistics ,
- Model Misspecification ,
- Computational Intelligence ,
- Ranked Data ,
- Asset Allocation ,
- Allocation Rule ,
- Earnings Growth