多种印度语言的情感分析

B. Ramya, Asa Latha, Tagore Yuvaraj Singh, Sanam Venkata, Manoj Kumar, Turimella Deepthi, Sai Sri, Tella Welson Raju
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引用次数: 0

摘要

情感分析在计算机科学界已经变得很流行,因为它对互联网上的信息进行调节和分析至关重要。情感分析有各种各样的应用,比如意见挖掘、社交媒体监控和市场研究。随着社交媒体、新闻文章和其他印度语言在线平台上内容的增长,印度语言的情感分析变得越来越重要。由于印度是一个多元化的国家,它有许多语言被数百万人使用,但许多印度语言没有足够的资源在互联网上适度分析文本中的情绪,使用它们来消除仇恨言论或通过了解客户需求来提高公司的生产力。本文解释了一种有助于分析情绪的方法,有助于内容节制和避免互联网上的消极情绪。该方法使用BERT算法进行英语情感分析。所有其他语言的文本将被翻译成英语,然后分析他们的情绪。在这种方法中,我们使用BERT算法对翻译的英语文本进行情感分析。这种方法效果很好,因为使用BERT的情感分析提供了更高的准确性,并且由于自然语言处理的出现,从印度语言翻译文本变得容易。通过结合上述两个过程,我们可以分析多种印度语言的情感。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sentiment Analysis on Multiple Indian Languages
Sentiment analysis has become popular in the computer science community as it is essential for moderating and analyzing information across the internet. There are various applications for sentiment analysis, such as opinion mining, social media monitoring, and market research. Sentiment analysis in Indian languages is gaining importance due to the growth of content on social media, news articles, and other online platforms in Indian languages. Since India is a diversified country it has many languages that are used by millions of people but many Indian languages do not have enough resources for moderation on the internet to analyze the sentiment in the text to use them for either eradicating hate speech or to improve the productivity of companies by the understanding of customer needs from reviews. This paper explains an approach that helps in analyzing the sentiment which helps in content moderation and avoiding negativity on the internet. This approach uses the BERT algorithm for sentiment analysis in English. All the text in other languages will be translated into English and their sentiment is then analyzed. In this approach, we use the BERT algorithm for sentiment analysis on translated English text. This approach works well because sentiment analysis using BERT gives higher accuracy and the translation of text from Indian languages is made easy by the advent of natural language processing. By combining both the above-discussed processes we can analyze the sentiment in multiple Indian languages.
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