The analysis about the financial market is always drawing the attention of both the investors and researchers. Theories and methodologies are invented to pattern the stock market finely and easily. The trend of stock market is very complex and is influenced by various factors. Therefore to find out the most significant factors to the stock market is very necessary. Feature Selection is such an algorithm that can remove the redundant and irrelevant factors, and then figure out the most significant subset of factors to build the analysis model. This project analyzes about a series of technical indicators, which are the results of technical analysis about the stock market. Among them, some may be very significant to the stock price, and oth...
The prediction of stock prices has become an exciting area for researchers as well as academicians d...
Data mining is the process of analyzing data from different perspectives and summarizing it into use...
This document presents a investigation into 3 different areas of feature selection, using informatio...
This paper explores the application of feature selection methods for financial engineering, and in p...
In stock market forecasting, the identification of critical features that affect the performance of ...
To improve the profitability and predictability of financial markets we highlight the issue of relev...
To improve the profitability and predictability of financial markets we highlight the issue of relev...
The financial sector has hired many analysts, strategists and fund managers to do one thing: beat t...
Abstract In stock market forecasting, the identification of critical features that affect the perfor...
AbstractMany studies in finance literature aims to find which macro-economic factors influence stock...
[[abstract]]By considering financial conditions of listed companies, industrial environment, macroec...
The rapid advance of computer based high-throughput technique have provided unparalleled op-portunit...
Stock market is a highly complex and non-linear dynamic system. Successful predictions in the stock ...
Data mining is indispensable for business organizations for extracting useful information from the h...
The final year project involves an empirical investigation of the predictability of stock returns a...
The prediction of stock prices has become an exciting area for researchers as well as academicians d...
Data mining is the process of analyzing data from different perspectives and summarizing it into use...
This document presents a investigation into 3 different areas of feature selection, using informatio...
This paper explores the application of feature selection methods for financial engineering, and in p...
In stock market forecasting, the identification of critical features that affect the performance of ...
To improve the profitability and predictability of financial markets we highlight the issue of relev...
To improve the profitability and predictability of financial markets we highlight the issue of relev...
The financial sector has hired many analysts, strategists and fund managers to do one thing: beat t...
Abstract In stock market forecasting, the identification of critical features that affect the perfor...
AbstractMany studies in finance literature aims to find which macro-economic factors influence stock...
[[abstract]]By considering financial conditions of listed companies, industrial environment, macroec...
The rapid advance of computer based high-throughput technique have provided unparalleled op-portunit...
Stock market is a highly complex and non-linear dynamic system. Successful predictions in the stock ...
Data mining is indispensable for business organizations for extracting useful information from the h...
The final year project involves an empirical investigation of the predictability of stock returns a...
The prediction of stock prices has become an exciting area for researchers as well as academicians d...
Data mining is the process of analyzing data from different perspectives and summarizing it into use...
This document presents a investigation into 3 different areas of feature selection, using informatio...