卷积神经网络在情感分析中的应用概述

Hao Wang
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摘要

自然语言处理或 NLP 领域利用对人类语言的理解来找到解决问题的实际方法。它主要包括两个部分:核心任务和应用。核心任务代表了各种自然语言应用方向需要解决的共同问题。它包括语言模型、形态学、语法分析、语义分析等。同时,应用部分侧重于具体的自然语言处理任务,如机器翻译、信息检索、问答系统、对话系统等。自然语言处理为人类社会和经济的发展做出了重大贡献,为各方面的研究工作提供了强有力的支持。观点挖掘或情感分析是自然语言处理的一个子领域,主要开发从文本中识别和提取观点的系统。情感分析是一个热门话题,因为它有许多实际应用。随着互联网上公开信息量的增加,评论网站、论坛、博客和社交媒体上出现了许多表达观点的文本。这些非结构化信息可以自动转化为有关产品、服务、品牌、政治或其他主题的结构化数据,人们可以利用情感分析系统表达自己的观点。这些信息可用于营销分析、公共关系、产品评论、网络赞助商评级、产品反馈和客户服务。随着标注样本数据集的快速增长和图形处理器(GPU)性能的显著提高,卷积神经网络的研究进展迅速,并在各种计算机视觉任务中取得了令人瞩目的成果。通过回顾卷积神经网络的应用,我们发现卷积运算天然适用于某些文本处理,因此也天然适用于情感分析的背景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Overview of the Application of Convolutional Neural Networks inSentiment Analysis
The field of natural language processing, or NLP, uses its understanding of human language to find practical solutions to issues. It mainly includes two parts: the core task and the application. The core task represents the common problem that needs to be solved in various natural language application directions. It includes language models, morphology, grammar analysis, semantic analysis, etc. At the same time, the application section focuses on specific natural language processing tasks such as machine translation, information retrieval, question-answering systems, dialogue systems, etc. Natural language processing has made a significant contribution to the development of human society and the economy and provides strong support for all aspects of research work. Opinion mining, or sentiment analysis, is a subfield of natural language processing that develops systems for identifying and extracting ideas from text. Sentiment analysis is a hot topic since it has many practical applications. Many opinion-expressing texts are available on review sites, forums, blogs, and social media as the amount of publicly available information on the Internet grows. This unstructured information can then be automatically transformed into structured data about products, services, brands, politics, or other topics on which people can express their opinions using sentiment analysis systems. This information can be used for marketing analytics, public relations, product reviews, network sponsor ratings, product feedback, and customer service. With the rapid growth of labeled sample data sets and the notable enhancement in graphics processor (GPU) performance, convolutional neural network research has advanced rapidly and achieved remarkable leads to various computer vision tasks. By reviewing the application of CNN, we see that convolutional operations are naturally suitable for some text processing and, thus, naturally suitable for the background of sentiment analysis.
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