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iSA: A fast, scalable and accurate algorithm for sentiment analysis of social media content

机译:iSA:一种用于社交媒体内容情感分析的快速,可扩展且准确的算法

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摘要

We present iSA (integrated sentiment analysis), a novel algorithm designed for social networks and Web 2.0 sphere (Twitter, blogs, etc.) opinion analysis, i.e. developed for the digital environments characterized by abundance of noise compared to the amount of information. Instead of performing an individual classification and then aggregate the predicted values, iSA directly estimates the aggregated distribution of opinions. Based on supervised hand-coding rather than NLP techniques or ontological dictionaries, iSA is a language-agnostic algorithm (based on human coders' abilities). iSA exploits a dimensionality reduction approach which makes it scalable, fast, memory efficient, stable and statistically accurate. The cross-tabulation of opinions is possible with iSA thanks to its stability. Through empirical analysis it will be shown when iSA outperforms machine learning techniques of individual classification (e.g. SVM, Random Forests, etc) as well as the only other alternative for aggregated sentiment analysis known as ReadMe. (C) 2016 Elsevier Inc. All rights reserved.
机译:我们提出了iSA(综合情感分析),这是一种针对社交网络和Web 2.0领域(Twitter,博客等)的观点分析而设计的新颖算法,即针对具有噪声比信息量大的数字环境开发的算法。 iSA无需执行单独的分类然后汇总预测值,而是直接估算汇总的意见分布。基于有监督的手动编码而非NLP技术或本体词典,iSA是一种语言不可知算法(基于人类编码人员的能力)。 iSA采用降维方法,使其可扩展,快速,高效存储,稳定且统计准确。由于iSA的稳定性,可以使用iSA交叉整理意见。通过经验分析,将显示iSA优于单个分类的机器学习技术(例如SVM,随机森林等)以及聚合情感分析的唯一其他替代方法(称为ReadMe)。 (C)2016 Elsevier Inc.保留所有权利。

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