使用R语言和Hadoop: rha进行社交媒体情感分析

Sunny Kumar, Paramjeet Singh, S. Rani
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引用次数: 15

摘要

万维网技术的发展改变了人们表达对他人的看法、意见和情感的方式。他们大多使用博客、社交网站、在线讨论等。这导致了大量数据的产生。如今,从海量数据中收集信息对公司来说是一个巨大的挑战。本文利用R语言对Twitter数据进行情感分析,这有助于收集积极得分,消极得分或介于两者之间的情感信息。然后我们使用R语言和rhaconnector对tb级的推文数据进行分析。这里的问题与“性能”有关?当我们从pb级数据中提取信息时,我们关注的是对大数据的分析。本文给出了在R语言和rha工具两种不同平台上的性能评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sentimental analysis of social media using R language and Hadoop: Rhadoop
The growth of Technology of World Wide Web has changed the way of expressing people's views, opinions and Sentiments about others. Mostly they use blogs, Social sites, online discussions etc. This leads to the generation of massive amount of data. Gleaning information from massive storage of data is a big challenge for the companies in these days. This paper leverages the sentimental analysis of Twitter data using R language which is helpful for collecting the sentiments information in the form of either positive score, negative score or somewhere in between them. Then we perform the analysis of tweets data that are having a size of TBs means big data using R language and Rhadoop Connector. Here the problem is related with “performance”?? When we extract the information from petabytes of data we focus on the analysis of big data. This paper shows the performance estimation on two different platforms R language and Rhadoop tool.
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