使用 BERT 对 IMDB 电影评论进行情感分析

Rani Puspita, Cindy Rahayu
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引用次数: 0

摘要

在技术出现之前,人们只能从熟人、朋友或某些领域的专家那里获得意见。然而,随着技术的发展,人们发现可以通过社交媒体表达意见,从而影响每一个看到这些意见的人。电影评论就是其中之一。人对事物的看法往往是无效的。因此,本研究旨在调查与 IMDB 电影评论相关的情感分析。使用的方法是 BERT。BERT 是一种深度学习方法。本研究使用的数据是 IMDB 电影评论中的 50,000 条数据。现有数据分为三部分,即训练数据、验证数据和测试数据。BERT 模型得到的结果是:训练准确率为 91.69%,训练损失为 0.187;验证准确率为 91.85%,验证损失为 0.212;测试准确率为 91.78%,测试损失为 0.207。由此可见,BERT 是对 IMDB 电影评论进行情感分析的一种非常有效的方法,从而可以妥善处理有关个人观点无效性的研究问题。
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 IMDB Movie Reviews using BERT
Before technology existed, opinions could only be obtained from acquaintances, friends, or experts who were experts in certain fields. However, as technology develops, it turns out that opinions can be expressed through social media so that they can influence everyone who sees them. One of them is movie reviews. Human opinion about something is often not valid. So, this study aims to investigate the sentiment analysis related to IMDB Movie Reviews. The approach used is BERT. BERT is a deep learning approach. The data used in this study is the IMDB Movie Review of 50,000 data. The existing data is divided into three parts, namely training data, validation data, and testing data. The results obtained from the BERT model are 91.69% for training accuracy 0.187 for training loss, 91.85% for validation accuracy, 0.212 for validation loss, 91.78% for testing accuracy, and 0.207 for testing loss. It can be seen, that BERT is a very effective approach for sentiment analysis of IMDB Movie Review so that the research problem regarding the invalidity of one's opinion can be handled properly.
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