Title
Combining artificial neural networks and statistics for stock-market forecasting
Abstract
We have developed a stock-market forecasting system based on artificial neural networks. The system has been trained with the Standard & Poor 500 composite indexes of past twenty years. Meanwhile, the system produces the forecasts and adjusts itself by comparing its forecasts with the actual indexes. Since most of stock-market forecasting systems are based on some kind of statistical models, we have also implemented a statistical system based on Box-Jenkins ARIMA(p,d,q) model of time series. We compare the performance of the these systems. It shows that the artificial neural network's forecasting is generally superior to time series but it occasionally produces some very wild forecasting values. We then developed a transfer function model to forecast based on the indexes and the forecasts by the artificial neural networks.
Year
DOI
Venue
1993
10.1145/170791.170838
ACM Conference on Computer Science
Keywords
Field
DocType
time series,wild forecasting value,box-jenkins arima,statistical system,composite index,stock-market forecasting system,statistical model,actual index,transfer function model,artificial neural network,transfer function,indexation
Transfer function model,Consensus forecast,Computer science,Autoregressive integrated moving average,Artificial intelligence,Statistical model,Artificial neural network,Stock market,Machine learning
Conference
ISBN
Citations 
PageRank 
0-89791-558-5
9
1.05
References 
Authors
5
2
Name
Order
Citations
PageRank
Shaun-Inn Wu1182.95
Ruey-Pyng Lu2101.53