基于情感分析的广告文章分类:(基于韩语自然语言处理和深度学习技术的研究)

Yongjun Kim, Y. Byun
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引用次数: 0

摘要

我们生活在计算机、通信、社交媒体和大众媒体带来的大数据和信息洪流中。换句话说,我们可以快速方便地获得我们想要的信息,但是我们对这些信息的准确性和可靠性有很多疑问。也就是说,在试图获得这种不计后果的细节的准确知识时,存在许多问题,特别是当个人试图寻找精确的信息和报告时,网络报纸提供的广告文章需要更清晰,更易于管理。由于对网络报纸的不信任和广告的逃避,这种体验甚至威胁到生存的基础。为了解决这一问题,本研究采用自然语言处理中的情感分析方法对普通文章和广告文章进行分类。现有的类似研究主要是对此类广告文章进行分类,如垃圾邮件分类,这些研究大多使用一般的自然语言处理。然而,本文是一项分析文本数据以进一步理解单词、句子和短语的含义的研究,并增加了探索情感的步骤,以提供个人想要的更准确的信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of advertisement articles using sentiment analysis: (Research-based on Korean natural language processing and deep learning technology)
We live in a flood of big data and information through computers, communications, social media, and mass media. In other words, we can get the information we want quickly and easily, but we have many questions about the accuracy and reliability of this information. That is, there are many problems in trying to obtain accurate knowledge of such reckless details, and in particular, advertisement articles provided by online newspapers need to be clearer and more manageable when individuals try to find precise information and reports. Such experiences are threatened even to the foundation of existence due to distrust of Internet newspapers and advertisement evasion. To solve this problem, this study used emotion analysis of natural language processing to classify general and advertisement articles. Getting going Existing similar studies have mainly been undertaken to classify such advertisement articles, such as spam mail classification, and most of these studies used general natural language processing. However, this paper is a study that analyzes text data to understand further the meaning of the words, sentences, and phrases and adds steps to explore emotions to provide more accurate information that individuals want.
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