在大数据分布式环境下对Twitter数据进行情绪分析,用于股票预测

Michal Skuza, A. Romanowski
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引用次数: 62

摘要

本文涵盖了一个系统的设计,实施和评估,该系统可用于预测未来的股票价格,基于分析来自社交媒体服务的数据。作者利用了Twitter微博平台上的大型数据集和广泛可用的股市记录。数据在三个月内收集并处理以供进一步分析。利用机器学习对来自社交网络的数据进行情绪分类,以估计未来的股票价格。根据Map Reduce编程模型在分布式环境下进行计算。对不同时间间隔和输入数据集的预测结果进行了评价和讨论,证明了所选方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sentiment analysis of Twitter data within big data distributed environment for stock prediction
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.
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