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Parsing argued opinion structure in Twitter content

机译:在Twitter内容中解析有关意见结构

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摘要

In this paper, we address the opinion argumentation mining issue from Twitter data with the objective of further analyzing Twitter users' preferences and motivations. After introducing the argued opinion definition and its different elements, we propose an argued opinion mining system calledTOMASwhere we present an end-to-end approach to parse the structure of the argued opinion in order to identify its elements. Our suggested system consists of four consecutive sub-tasks, namely: (1) opinion-topic detection, (2) argumentative opinions identification, (3) argument components detection, and (4) argumentative relation recognition. The proposed system optimizes the argued opinion structure using different classification models. The experimental study is conducted on the MC2 Lab CLEF2017 tweets corpus while considering various comparative baselines. We highlight that our system significantly outperforms the majority baselines and significantly outperforms challenging existing approaches.
机译:在本文中,我们通过进一步分析了Twitter用户的偏好和动机来解决Twitter数据中的意见论挖掘问题。在介绍所谓的意见定义及其不同的元素后,我们提出了一个叫做的人叫做挑战的矿业系统,我们提出了一种结束地步方法来解析所谓的意见的结构,以确定其要素。我们建议的系统由四个连续的子任务组成,即:(1)意见主题检测,(2)争论意见识别,(3)论证组件检测,(4)争论关系识别。所提出的系统使用不同的分类模型优化了所谓的意见结构。在考虑各种比较基线​​的同时,在MC2 Lab Clef2017上进行实验研究。我们强调,我们的系统显着优于大多数基线,并且显着优于现有方法挑战。

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