Title :
Sentiment analysis of Twitter data within big data distributed environment for stock prediction
Author :
Michał Skuza;Andrzej Romanowski
Author_Institution :
Lodz University of Technology, Institute of Applied Computer Science, Poland
Abstract :
This paper covers design, implementation and evaluation of a system that may be used to predict future stock prices basing on analysis of data from social media services. The authors took advantage of large datasets available from Twitter micro blogging platform and widely available stock market records. Data was collected during three months and processed for further analysis. Machine learning was employed to conduct sentiment classification of data coming from social networks in order to estimate future stock prices. Calculations were performed in distributed environment according to Map Reduce programming model. Evaluation and discussion of results of predictions for different time intervals and input datasets proved efficiency of chosen approach is discussed here.
Keywords :
"Twitter","Training","Big data","Companies","Sentiment analysis","Predictive models","Media"
Conference_Titel :
Computer Science and Information Systems (FedCSIS), 2015 Federated Conference on