[[abstract]]A fuzzy time series data representation method based on the Japanese candlestick theory is proposed and used in assisting financial prediction. The Japanese candlestick theory is an empirical model of investment decision. The theory assumes that the candlestick patterns reflect the psychology of the market, and the investors can make their investment decision based on the identified candlestick patterns. We model the imprecise and vague candlestick patterns with fuzzy linguistic variables and transfer the financial time series data to fuzzy candlestick patterns for pattern recognition. A fuzzy candlestick pattern can bridge the gap between the investors and the system designer because it is visual, computable, and modifiable. Th...
Over the past decade many attempts have been made to predict stock market data using statistical and...
Abstract. Stock forecasting is a non-linear financial time series forecasting problem. Stock index c...
Fuzzy rule extraction is performed on an artificial time series with memory generated with a given c...
This paper discusses fuzzy-logic based Japanese candlestick pattern recognition and financial foreca...
Stock market prediction is an important area of financial forecasting, which is of great interest to...
[[abstract]]A fuzzy candlestick pattern based ontology is proposed for assisting candlestick pattern...
AbstractThis paper provides a new technical analysis method for finding reversal points of stock pri...
The major concern of this study is to develop a system that can predict future prices in the stock m...
International audienceIn general, times series forecasting is considered as a highly complex problem...
This paper discusses an experimental study of the Japanese candlestick method as used in hybrid stoc...
Financial Markets have been increasingly attractive as the ways of investing in stocks, commodities ...
One commonly used technical analysis is the candlestick charts. By studying historical stock data i...
This research presents a study of intelligent stock price forecasting systems using interval type-2 ...
Copyright © 2000 IEEE. Personal use of this material is permitted. Permission from IEEE must be obta...
AbstractFuzzy theory is one of the newly adduced self-adaptive strategies,which is applied to dynami...
Over the past decade many attempts have been made to predict stock market data using statistical and...
Abstract. Stock forecasting is a non-linear financial time series forecasting problem. Stock index c...
Fuzzy rule extraction is performed on an artificial time series with memory generated with a given c...
This paper discusses fuzzy-logic based Japanese candlestick pattern recognition and financial foreca...
Stock market prediction is an important area of financial forecasting, which is of great interest to...
[[abstract]]A fuzzy candlestick pattern based ontology is proposed for assisting candlestick pattern...
AbstractThis paper provides a new technical analysis method for finding reversal points of stock pri...
The major concern of this study is to develop a system that can predict future prices in the stock m...
International audienceIn general, times series forecasting is considered as a highly complex problem...
This paper discusses an experimental study of the Japanese candlestick method as used in hybrid stoc...
Financial Markets have been increasingly attractive as the ways of investing in stocks, commodities ...
One commonly used technical analysis is the candlestick charts. By studying historical stock data i...
This research presents a study of intelligent stock price forecasting systems using interval type-2 ...
Copyright © 2000 IEEE. Personal use of this material is permitted. Permission from IEEE must be obta...
AbstractFuzzy theory is one of the newly adduced self-adaptive strategies,which is applied to dynami...
Over the past decade many attempts have been made to predict stock market data using statistical and...
Abstract. Stock forecasting is a non-linear financial time series forecasting problem. Stock index c...
Fuzzy rule extraction is performed on an artificial time series with memory generated with a given c...