ISSN:
1572-9974
Schlagwort(e):
Stock market analysis
;
fuzzy logic
;
neural network
;
artificial intelligence
;
risk analysis
;
financial analysis
Quelle:
Springer Online Journal Archives 1860-2000
Thema:
Informatik
,
Wirtschaftswissenschaften
Notizen:
Abstract This paper describes, from a general system-design perspective, an artificial neural network (ANN) approach to a stock selection strategy. The paper suggests a concept of neural gates which are similar to the processing elements in ANN, but generalized into handling various types of information such as fuzzy logic, probabilistic and Boolean information together. Forecasting of stock market returns, assessing of country risk and rating of stocks based on fuzzy rules, probabilistic and Boolean data can be done using the proposed neural gates. Fuzzy logic is known to be useful for decision-making where there is a great deal of uncertainty as well as vague phenomena, but lacks the learning capability; on the other hand, neural networks are useful in constructing an adaptive system which can learn from historical data, but are not able to process ambiguous rules and probabilistic data sets. This paper describes how these problems can be solved using the proposed neural gates.
Materialart:
Digitale Medien
URL:
http://dx.doi.org/10.1007/BF00436283
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