Open Domain Context-Based Targeted Sentiment Analysis System

Shadi Abudalfa, Moataz A. Ahmed
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引用次数: 4

Abstract

Massive amount of opinions is available nowadays on the internet thought social networks. Availability of such wealth of opinions in the social media motivated researchers to develop automated systems for opinion mining, also known as sentiment analysis. A very recent direction currently addresses the problem of detecting the targets, i.e., topics, in the micro-blogs (e.g., tweets) and identifying the sentiment polarity toward them. This research direction is referred to as open domain sentiment classification. In this work, we developed an approach for identifying the context of a given set of micro-blogs and analyzing their sentiments within that context. We propose a new context-based analysis system for open domain targeted sentiment analysis. Based on our knowledge, the proposed system differs from status quo followed in developing systems for open domain targeted sentiment analysis. Existing systems detect opinions in each micro-blog individually. While, our proposed approach helps in developing a context-based analysis system among a set of micro-blogs. The proposed system detects context patterns among a set of micro-blogs by detecting targets and identifying sentiment polarities towards categorized topics that describe the detected targets. Experimental results shown in this paper illustrate performance of applying the proposed system to Arabic and English datasets. Some comparisons between the proposed system and other existing system are included in this work as well.
开放领域基于上下文的定向情感分析系统
如今,在互联网思想社交网络上有大量的意见。社交媒体上如此丰富的意见促使研究人员开发自动化的意见挖掘系统,也称为情绪分析。最近的一个方向目前解决了在微博(例如,tweet)中检测目标(即主题)并识别对它们的情感极性的问题。这一研究方向被称为开放域情感分类。在这项工作中,我们开发了一种方法来识别一组给定的微博的背景,并在该背景下分析他们的情绪。提出了一种新的基于上下文的开放域定向情感分析系统。根据我们的知识,所提出的系统不同于开发开放领域目标情感分析系统的现状。现有的系统会对每个微博中的观点进行单独检测。同时,我们提出的方法有助于在一组微博中开发基于上下文的分析系统。该系统通过检测目标和识别描述检测目标的分类主题的情感极性来检测一组微博中的上下文模式。本文的实验结果说明了该系统在阿拉伯文和英文数据集上的应用效果。本文还对所提出的系统与其他现有系统进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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