Interactive Deep Neural Network for Aspect-Level Sentiment Analysis

R. Nareshkumar, K. Nimala
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引用次数: 3

Abstract

Opinion mining, also known as sentiment analysis, is the act of analysing text written in natural language on a topic and categorizing it as positive, negative, or neutral based on the sentiments, emotions, and views stated in it. On the internet nowadays, the number of people who express their ideas through reviews is growing day by day. Manually analysing and extracting thoughts from such a large number of evaluations are nearly very complex and much tough to handle. The work analyses the deep learning techniques for extracting aspects in opinion mining in this research. Aspect extraction is a subtask of emotion investigation that needs discovering opinion targets in opinionated text, and identifying the precise characteristics of a product or service. A model for fine-grained aspect-based opinion mining is proposed that addresses important aspects of effective aspect-based opinion mining. Therefore, this work analyses and states the various methodologies that focuses on aspect based sentimental analysis. The implementation of this approach, is outside the scope of this paper.
面向层面情感分析的交互式深度神经网络
意见挖掘,也被称为情感分析,是分析一个主题的自然语言文本,并根据其中表达的情绪、情绪和观点将其分类为积极、消极或中立的行为。如今,在互联网上,通过评论来表达自己想法的人越来越多。手动分析并从如此大量的评估中提取想法几乎是非常复杂和难以处理的。本研究分析了深度学习技术在意见挖掘中的方面提取。面向抽取是情感调查的一个子任务,它需要在有观点的文本中发现观点目标,识别产品或服务的准确特征。提出了一种细粒度的基于方面的意见挖掘模型,解决了有效的基于方面的意见挖掘的重要方面。因此,本文分析和阐述了以面向为基础的情感分析的各种方法。这种方法的实现,不在本文的讨论范围之内。
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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