A Knowledge-Based Deep Learning Architecture for Aspect-Based Sentiment Analysis.

International Journal of Neural Systems Pub Date : 2021-10-01 Epub Date: 2021-08-25 DOI:10.1142/S0129065721500465
Georgios Alexandridis, John Aliprantis, Konstantinos Michalakis, Konstantinos Korovesis, Panagiotis Tsantilas, George Caridakis
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引用次数: 5

Abstract

The task of sentiment analysis tries to predict the affective state of a document by examining its content and metadata through the application of machine learning techniques. Recent advances in the field consider sentiment to be a multi-dimensional quantity that pertains to different interpretations (or aspects), rather than a single one. Based on earlier research, the current work examines the said task in the framework of a larger architecture that crawls documents from various online sources. Subsequently, the collected data are pre-processed, in order to extract useful features that assist the machine learning algorithms in the sentiment analysis task. More specifically, the words that comprise each text are mapped to a neural embedding space and are provided to a hybrid, bi-directional long short-term memory network, coupled with convolutional layers and an attention mechanism that outputs the final textual features. Additionally, a number of document metadata are extracted, including the number of a document's repetitions in the collected corpus (i.e. number of reposts/retweets), the frequency and type of emoji ideograms and the presence of keywords, either extracted automatically or assigned manually, in the form of hashtags. The novelty of the proposed approach lies in the semantic annotation of the retrieved keywords, since an ontology-based knowledge management system is queried, with the purpose of retrieving the classes the aforementioned keywords belong to. Finally, all features are provided to a fully connected, multi-layered, feed-forward artificial neural network that performs the analysis task. The overall architecture is compared, on a manually collected corpus of documents, with two other state-of-the-art approaches, achieving optimal results in identifying negative sentiment, which is of particular interest to certain parties (like for example, companies) that are interested in measuring their online reputation.

面向面向方面的情感分析的基于知识的深度学习架构。
情感分析的任务是通过应用机器学习技术来检查文档的内容和元数据,从而预测文档的情感状态。该领域的最新进展认为情绪是一个多维的数量,涉及不同的解释(或方面),而不是单一的。基于早期的研究,当前的工作在一个更大的架构框架中检查上述任务,该架构从各种在线资源中抓取文档。随后,收集到的数据进行预处理,以提取有用的特征,帮助机器学习算法进行情感分析任务。更具体地说,组成每个文本的单词被映射到一个神经嵌入空间,并提供给一个混合的双向长短期记忆网络,再加上卷积层和一个输出最终文本特征的注意机制。此外,还提取了一些文档元数据,包括文档在收集的语料库中的重复次数(即转发/转发的次数),表情符号表意符号的频率和类型以及关键词的存在,以标签的形式自动提取或手动分配。该方法的新颖之处在于对检索到的关键字进行语义标注,因为查询的是一个基于本体的知识管理系统,目的是检索上述关键字所属的类。最后,所有的特征都提供给一个完全连接的、多层的、前馈的人工神经网络来执行分析任务。在人工收集的文档语料库上,将整体架构与其他两种最先进的方法进行比较,在识别负面情绪方面获得最佳结果,这对某些对衡量其在线声誉感兴趣的各方(例如,公司)特别感兴趣。
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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