Visualization of textual data may reveal interesting properties regarding the information conveyed in a group of documents. In this paper, we study whether the structure revealed by a visualization method can be used as inputs for improved classifiers. In particular, we study whether the locations of news items on a concept map could be used as inputs for improving the prediction of stock price movements from the news. We propose a method based on information visualization and text classification for achieving this. We apply the proposed approach to the prediction of the stock price movements of companies within the oil and natural gas sector. In a case study, we show that our proposed approach performs better than a naive approach and a ba...
Current models for predicting volatility do not incorporate information flow and are solely based on...
Abstract — Mining textual documents and time series concurrently, such as predicting the movements o...
We explore several ways of using news articles and financial data to train neural network machine le...
Visualization of textual data may reveal interesting properties regarding the information conveyed i...
In this thesis, we develop a system that analyzes unstructured financial news using text classificat...
In this paper, we describe NewsCATS (news categorization and trading system), a system implemented t...
This thesis investigates the prediction of possible stock price changes immediately after news artic...
This paper aims at discovering the topics hidden in the newspaper articles that have an impact on mo...
Various data sources are available in the era of Big Data to gain an improved market understanding. ...
Stock market prediction with data mining techniques is one of the most important issues to be inves...
Current models for predicting volatility do not incorporate information flow and are solely based on...
It has been shown that news events influ-ence the trends of stock price movements. However, previous...
An increasing number of the renowned company’s investors are turning attention to stock prediction i...
This paper presents a new method to predicting the change of stock prices by utilizing text mining n...
Developing forecasting models for estimating the behavior of capital markets is one of the most chal...
Current models for predicting volatility do not incorporate information flow and are solely based on...
Abstract — Mining textual documents and time series concurrently, such as predicting the movements o...
We explore several ways of using news articles and financial data to train neural network machine le...
Visualization of textual data may reveal interesting properties regarding the information conveyed i...
In this thesis, we develop a system that analyzes unstructured financial news using text classificat...
In this paper, we describe NewsCATS (news categorization and trading system), a system implemented t...
This thesis investigates the prediction of possible stock price changes immediately after news artic...
This paper aims at discovering the topics hidden in the newspaper articles that have an impact on mo...
Various data sources are available in the era of Big Data to gain an improved market understanding. ...
Stock market prediction with data mining techniques is one of the most important issues to be inves...
Current models for predicting volatility do not incorporate information flow and are solely based on...
It has been shown that news events influ-ence the trends of stock price movements. However, previous...
An increasing number of the renowned company’s investors are turning attention to stock prediction i...
This paper presents a new method to predicting the change of stock prices by utilizing text mining n...
Developing forecasting models for estimating the behavior of capital markets is one of the most chal...
Current models for predicting volatility do not incorporate information flow and are solely based on...
Abstract — Mining textual documents and time series concurrently, such as predicting the movements o...
We explore several ways of using news articles and financial data to train neural network machine le...