基于位置的Twitter实时情感分析的文献综述

Q3 Engineering
Dilmini Rathnayaka, Pubudu K.P.N Jayasena, Iraj Ratnayake
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引用次数: 0

摘要

情感分析主要支持整理极性,利用社交媒体平台的原始数据提供有价值的信息。健康、商业和安全等许多领域都需要实时数据分析,以便即时做出决策。由于Twitter被认为是一个很受欢迎的社交媒体平台,易于收集数据,因此本文考虑的是Twitter数据的数据分析方法,基于地理位置的实时Twitter数据分析。Twitter数据的分类和分析可以通过使用不同的算法来完成,而决定最合适的数据分析算法,可以通过实现和测试这些不同的算法来完成。本文主要讨论了与Twitter数据相关的情感分析描述、数据收集方法、数据预处理、特征提取和情感分析方法。实时数据分析是分析在线可用数据的主要方法,本文描述了实时Twitter数据分析过程。本文讨论了几种分类极化推特数据的方法,并提出了一种推特数据分析算法。基于位置的Twitter数据分析是情感分析的另一个重要方面,它可以根据地理位置对数据进行排序,本文描述了基于地理位置的Twitter数据分析方法。此外,对以往研究人员使用的几种情感分析算法进行了比较,并给出了结论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Literature review on Real-time Location-Based Sentiment Analysis on Twitter
Sentiment analysis mainly supports sorting out the polarity and provides valuable information with the use of raw data in social media platforms. Many fields like health, business, and security require real-time data analysis for instant decision-making situations.Since Twitter is considered a popular social media platform to collect data easily, this paper is considering data analysis methods of Twitter data, real-time Twitter data analysis based on geo-location. Twitter data classification and analysis can be done with the use of diverse algorithms and deciding the most appropriate algorithm for data analysis, can be accomplished by implementing and testing these diverse algorithms.This paper is discussing the major description of sentiment analysis, data collection methods, data pre-processing, feature extraction, and sentiment analysis methods related to Twitter data. Real-time data analysis arises as a major method of analyzing the data available online and the real-time Twitter data analysis process is described throughout this paper. Several methods of classifying the polarized Twitter data are discussed within the paper while depicting a proposed method of Twitter data analyzing algorithm. Location-based Twitter data analysis is another crucial aspect of sentiment analyses, that enables data sorting according to geo-location, and this paper describes the way of analyzing Twitter data based on geo-location. Further, a comparison about several sentiment analysis algorithms used by previous researchers has been reported and finally, a conclusion has been provided.
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来源期刊
Advances in Technology Innovation
Advances in Technology Innovation Energy-Energy Engineering and Power Technology
CiteScore
1.90
自引率
0.00%
发文量
18
审稿时长
12 weeks
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