Financial time series prediction is a very important economical problem but the data available is very noisy. In this thesis, we explain the use of statistical and machine learning methods for stock market prediction and we evaluate the performance of these methods on data from the S&P/TSX 60 stock index. We use both linear regression and support vector regression, a state-of-art machine learning method, which is usually robust to noise. The results are mixed, illustrating the difficulty of the problem. We discuss the utility of using different types of data pre-processing for this task as well.La prediction des series de donnees economiques est un probleme tres important, mais les donnees disponiblessont tres aleatoires. Dans cette thes...
The Stock Market is known for its volatile and unstable nature. A particular stock could be thriving...
Since the stock market is one of the most important areas for investors, stock market price trend pr...
Stock prediction has been a popular area of research. It is challenging due to the dynamic, chaoti...
The paper give detailed on the work that was done using regression techniques as stock market price ...
The stock market has been one of the primary revenue streams for many for years. The stock market is...
One of the most sought-after but equally complex and thus challenging areas in financial markets is ...
The paper focuses on predicting the Nifty 50 Index by using 8 Supervised Machine Learning Models. Th...
Stock market prediction is one of the key research areas in machine learning, providing researchers ...
With the advent of technological marvels like global digitization, the prediction of the stock marke...
Stock market forecasts are a very important aspect of the financial market. It is important to succe...
The purpose of this paper is to compare the performance of various state-of-the-art machine learning...
Abstract—Obtaining accurate prediction of stock index sig-nificantly helps decision maker to take co...
The process of predicting stock market movements may initially appear to be non-statistical due to t...
Machine learning approaches to stock market forecasting have become increasingly popular th...
In this study, we examine existing stock market prediction algorithms before proposing new ones. We ...
The Stock Market is known for its volatile and unstable nature. A particular stock could be thriving...
Since the stock market is one of the most important areas for investors, stock market price trend pr...
Stock prediction has been a popular area of research. It is challenging due to the dynamic, chaoti...
The paper give detailed on the work that was done using regression techniques as stock market price ...
The stock market has been one of the primary revenue streams for many for years. The stock market is...
One of the most sought-after but equally complex and thus challenging areas in financial markets is ...
The paper focuses on predicting the Nifty 50 Index by using 8 Supervised Machine Learning Models. Th...
Stock market prediction is one of the key research areas in machine learning, providing researchers ...
With the advent of technological marvels like global digitization, the prediction of the stock marke...
Stock market forecasts are a very important aspect of the financial market. It is important to succe...
The purpose of this paper is to compare the performance of various state-of-the-art machine learning...
Abstract—Obtaining accurate prediction of stock index sig-nificantly helps decision maker to take co...
The process of predicting stock market movements may initially appear to be non-statistical due to t...
Machine learning approaches to stock market forecasting have become increasingly popular th...
In this study, we examine existing stock market prediction algorithms before proposing new ones. We ...
The Stock Market is known for its volatile and unstable nature. A particular stock could be thriving...
Since the stock market is one of the most important areas for investors, stock market price trend pr...
Stock prediction has been a popular area of research. It is challenging due to the dynamic, chaoti...