首页> 外文期刊>Information Processing & Management >Analytical mapping of opinion mining and sentiment analysis research during 2000-2015
【24h】

Analytical mapping of opinion mining and sentiment analysis research during 2000-2015

机译:2000-2015年间观点挖掘的分析图和情感分析研究

获取原文
获取原文并翻译 | 示例
       

摘要

The new transformed read-write Web has resulted in a rapid growth of user generated content on the Web resulting into a huge volume of unstructured data. A substantial part of this data is unstructured text such as reviews and blogs. Opinion mining and sentiment analysis (OMSA) as a research discipline has emerged during last 15 years and provides a methodology to computationally process the unstructured data mainly to extract opinions and identify their sentiments. The relatively new but fast growing research discipline has changed a lot during these years. This paper presents a scientometric analysis of research work done on OMSA during 2000-2016. For the scientometric mapping, research publications indexed in Web of Science (WoS) database are used as input data. The publication data is analyzed computationally to identify year-wise publication pattern, rate of growth of publications, types of authorship of papers on OMSA, collaboration patterns in publications on OMSA, most productive countries, institutions, journals and authors, citation patterns and an year-wise citation reference network, and theme density plots and keyword bursts in OMSA publications during the period. A somewhat detailed manual analysis of the data is also performed to identify popular approaches (machine learning and lexicon-based) used in these publications, levels (document, sentence or aspect-level) of sentiment analysis work done and major application areas of OMSA. The paper presents a detailed analytical mapping of OMSA research work and charts the progress of discipline on various useful parameters.
机译:新的转换后的可读写Web导致Web上用户生成内容的快速增长,从而导致大量非结构化数据。这些数据的很大一部分是非结构化文本,例如评论和博客。意见挖掘和情感分析(OMSA)作为一种研究学科已经出现在过去的15年中,它提供了一种方法来对非结构化数据进行计算处理,主要是提取意见并确定其情感。这些年来,相对较新但发展迅速的研究学科发生了很大变化。本文对2000-2016年间对OMSA所做的研究工作进行了科学计量分析。对于科学计量学映射,将在Web of Science(WoS)数据库中建立索引的研究出版物用作输入数据。对出版物数据进行计算分析,以确定年度出版模式,出版物增长率,OMSA论文的作者类型,OMSA出版物,大多数生产国家,机构,期刊和作者的协作模式,引用模式和年份明智的参考网络,以及该期间OMSA出版物中的主题密度图和关键字爆发。还对数据进行了一些详细的手动分析,以识别在这些出版物中使用的流行方法(基于机器学习和词典的方法),情感分析工作的级别(文档,句子或方面级别)以及OMSA的主要应用领域。本文介绍了OMSA研究工作的详细分析图,并绘制了各种有用参数上的学科进展。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号