Fuzzy sentiment classification in social network Facebook' statuses mining

Radhia Toujani, J. Akaichi
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引用次数: 9

Abstract

Nowadays, posts expressing opinions in social networks are beneficial for businesses, sway public sentiments and emotions having higher social and political impact. In fact, opinions mining or sentiment classification is an important issue in social networks. Therefore, machine learning methods and natural language processing are very effective for opinion mining which are widely used in social media network. The main purpose of the paper is to demonstrate the feasibility of machine learning and sentiment analysis for studying Tunisian users' statuses. We aim to extract terms related to sentiment and behavior, especially during the “Tunisian Election”. While existing sentiment analysis methods focus only on the extraction of positive and negative opinions, in our work we aim to extract fuzzy opinions. That is why we propose to follow Fuzzy Support Vector Machine during our classification process. This later is compared with the basic Support Vector Machine referring to assessement measures such us accuracy, precision, recall, and F-measure.
社交网络Facebook状态挖掘中的模糊情感分类
如今,在社交网络上发表观点的帖子有利于企业,影响公众情绪,具有更高的社会和政治影响。事实上,观点挖掘或情感分类是社交网络中的一个重要问题。因此,在社交媒体网络中广泛应用的意见挖掘中,机器学习方法和自然语言处理是非常有效的。本文的主要目的是证明机器学习和情感分析用于研究突尼斯用户状态的可行性。我们的目标是提取与情绪和行为相关的术语,特别是在“突尼斯选举”期间。现有的情感分析方法只关注于积极和消极意见的提取,而在我们的工作中,我们的目标是提取模糊意见。这就是为什么我们建议在分类过程中遵循模糊支持向量机。稍后将其与基本的支持向量机进行比较,支持向量机指的是评估度量,如准确性、精度、召回率和f度量。
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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