Date of Award
5-17-2020
Document Type
Masters Project
Abstract
This paper presents an approach to determine stock prices using Twitter sentiment. Due to the highly stochastic nature of the stock market, it is difficult to determine a model that accurately predicts prices. In Twitter Mood Predicts the Stock Market by Bollen, capturing tweets and classifying each tweet’s mood was useful in predicting the Dow Industrial Jones Average (DJIA). Accurately predicting a movement quantitatively is profitable. We present a method that captures sentiment from Twitter with mentions of specific companies to predict their price for the following day.
Recommended Citation
McKenna, Jacob, "Applied machine learning using Twitter sentiment and time series data for stock market forecasting" (2020). Computer Science. 26.
https://ualaska.researchcommons.org/uaf_grad_compsci/26
Handle
http://hdl.handle.net/11122/11872