Title of article :
Forecasting Stock Price Movements Based on Opinion Mining and Sentiment Analysis: An Application of Support Vector Machine and Twitter Data
Author/Authors :
Sohrabi, Babak Faculty of Management - University of Tehran - Tehran, Iran , Khalili Jafarabad, Ahmad Faculty of Management - University of Tehran - Tehran, Iran , Hadizadeh, Ardalan Faculty of Management - University of Tehran - Tehran, Iran
Abstract :
Today, social media networks are fast and dynamic communication intermediaries that
are vital business tools, as well. This study aims to examine the views of those who are
involved in Facebook stocks to understand the pattern and opinion about the intended
future stock price. Yet another goal of this paper is to create a more accurate forecasting
pattern compared to the previous ones. Two datasets are used in this paper; the first
contains 1.6 million tweets that have already been emotionally tagged, and the second
has all the tweets about Facebook stock in eighty days. We conclude that positive news
about a company excites people to have definite opinions about it, which results in
encouraging them to buy or keep that specific stock. Also, some news can hurt users'
views as most of the time, things get more complicated, and uncertainties make it harder
to forecast the direction of stock movement. By using text mining and python
programming language, we could create a system to be operable in those situations.
Keywords :
Neural Network , Collective Emotion , Opinion Mining , Sentiment Analysis , Group Emotion , Stock Prediction , Social Networking
Journal title :
Journal of Money and Economy (Money and Economy)