A Compendium of Classification Techniques, Tools and Evaluation Datasets for Twitter Sentiment Analysis

Fatima Khalique, M. Hamdani, Sabeen Masood, Bushra Bashir Chaudhry, Abdul Rauf
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Abstract

Social networking sites and micro blogs provide tremendous amount of real time data every day. Sentiment analysis or opinion mining aims to automate the process of sentiment extraction from the user content available online. Twitter in recent years due to its high subscriber rate and diverse audience, has become increasingly powerful in representing and changing user opinions over an object or event. This paper focuses on research conducted within the field of twitter sentiment analysis. The objective is to comprehensively investigate the task of sentiment analysis and its sub processes and identify the different tools, techniques or other resources used or applied on twitter data during the process. A Systematic Literature Review (SLR) has been conducted to identify 40 researches, relevant to sentiment identification and analysis. The work presented covers major tools and techniques used during sentiment mining process and maybe utilized by researchers or practitioners for identifying potential research directions as well as suggest possible software development areas that need to be explored.
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推特情感分析的分类技术、工具和评估数据集汇编
社交网站和微博每天提供大量的实时数据。情感分析或观点挖掘旨在自动化从在线可用的用户内容中提取情感的过程。近年来,由于其高订阅率和多样化的受众,Twitter在代表和改变用户对一个对象或事件的看法方面变得越来越强大。本文主要研究推特情感分析领域内的研究。目标是全面调查情感分析的任务及其子过程,并确定在此过程中使用或应用于twitter数据的不同工具、技术或其他资源。本文通过系统文献综述(SLR)对40项与情绪识别和分析相关的研究进行了梳理。所提出的工作涵盖了情感挖掘过程中使用的主要工具和技术,可能被研究人员或从业者用于确定潜在的研究方向,以及建议可能需要探索的软件开发领域。
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