Opinion Mining of Twitter Events using Supervised Learning

Nida Hakak, Mahira Kirmani
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引用次数: 1

Abstract

Micro-blogs are a powerful tool to express an opinion. Twitter is one of the fastest growing micro-blogs and has more than 900 million users. Twitter is a rich source of opinion as users share their daily experience of life and respond to specific events using tweets on twitter. In this article, an automatic opinion classifier capable of automatically classifying tweets into different opinions expressed by them is developed. Also, a manually annotated corpus for opinion mining to be used by supervised learning algorithms is designed. An opinion classifier uses semantic, lexical, domain dependent, and context features for classification. Results obtained confirm competitive performance and the robustness of the system. Classifier accuracy is more than 75.05%, which is higher than the baseline accuracy.
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基于监督学习的Twitter事件意见挖掘
微博是表达观点的有力工具。推特是发展最快的微博之一,拥有超过9亿用户。Twitter是一个丰富的意见来源,用户可以在Twitter上分享他们的日常生活经历,并对特定事件做出回应。本文开发了一种自动观点分类器,能够将tweets自动分类为tweets所表达的不同观点。此外,还设计了一个用于监督学习算法的意见挖掘的人工标注语料库。意见分类器使用语义、词汇、领域相关和上下文特征进行分类。结果表明,该系统具有良好的竞争性能和鲁棒性。分类器准确率大于75.05%,高于基线准确率。
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