We use a machine learning algorithm called Adaboost to find direction-of-change patterns for the S&P 500 index using daily prices from 1962 to 2004. The patterns are able to identify periods to take long and short positions in the index. This result, however, can largely be explained by first-order serial correlation in stock index returns.
According to the forecast of stock price trends, investors trade stocks. In recent years, many resea...
Stock prediction has been a popular area of research. It is challenging due to the dynamic, chaoti...
Nowadays, people show more and more enthusiasm for applying machine learning methods to finance doma...
Machine Learnings mining is a significant subject in the investigation of information mining Data mi...
Since the stock market is one of the most important areas for investors, stock market price trend pr...
A CNN methodology can yield pretty accurate results on stock prices if we look at day-to-day fluctua...
The Stock Market is known for its volatile and unstable nature. A particular stock could be thriving...
In this work were investigated efficient market hypothesis problem, support vector machines an...
The stock market moves a large amount of wealth between individuals and institutions daily. Forty mi...
In this study, we examine existing stock market prediction algorithms before proposing new ones. We ...
This study attempts to predict stock index prices using multivariate time series analysis. The study...
Machine learning approaches to stock market forecasting have become increasingly popular th...
Stock picking based on regularities in time series is one of the most studied topics in the financia...
In order to forecast stock prices based on economic indicators, many studies have been conducted usi...
2nd International Afro-European Conference for Industrial Advancement (AECIA) -- SEP 09-11, 2015 -- ...
According to the forecast of stock price trends, investors trade stocks. In recent years, many resea...
Stock prediction has been a popular area of research. It is challenging due to the dynamic, chaoti...
Nowadays, people show more and more enthusiasm for applying machine learning methods to finance doma...
Machine Learnings mining is a significant subject in the investigation of information mining Data mi...
Since the stock market is one of the most important areas for investors, stock market price trend pr...
A CNN methodology can yield pretty accurate results on stock prices if we look at day-to-day fluctua...
The Stock Market is known for its volatile and unstable nature. A particular stock could be thriving...
In this work were investigated efficient market hypothesis problem, support vector machines an...
The stock market moves a large amount of wealth between individuals and institutions daily. Forty mi...
In this study, we examine existing stock market prediction algorithms before proposing new ones. We ...
This study attempts to predict stock index prices using multivariate time series analysis. The study...
Machine learning approaches to stock market forecasting have become increasingly popular th...
Stock picking based on regularities in time series is one of the most studied topics in the financia...
In order to forecast stock prices based on economic indicators, many studies have been conducted usi...
2nd International Afro-European Conference for Industrial Advancement (AECIA) -- SEP 09-11, 2015 -- ...
According to the forecast of stock price trends, investors trade stocks. In recent years, many resea...
Stock prediction has been a popular area of research. It is challenging due to the dynamic, chaoti...
Nowadays, people show more and more enthusiasm for applying machine learning methods to finance doma...