基于多层感知器分类器和随机森林方法的巴西麻醉师情感分析

J. Asian, Moneyta Dholah Rosita, T. Mantoro
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引用次数: 5

摘要

性骚扰被定义为对以女性为主的受害者进行口头或书面和身体上的性关注。2022年7月13日,一条以性骚扰视频为特色的推特在各国流行起来。这段视频激怒了推特用户,引发了各种各样的评论,这些评论可以用情绪分析来分析。本研究的目的是了解公众对巴西麻醉师性骚扰案的看法。除了情绪分析之外,本研究的另一个目的是了解基于极性的这些情绪有多客观。本研究采用了多层感知器分类器和随机森林两种情感分析方法的比较,并使用TextBlob自动标记。准确率为94.44%,精密度为94.44%,召回率为92%,f1_score为93%。MLP分类器的准确率为96.42%,精密度为94.44%,召回率为96.66%,f1_score为95.56%。TextBlob的情绪极性得分为-0.5,主观性得分为0.4,这表明大多数陈述是负面的,主观得分为0.4,这意味着这些情绪本质上是主观的。
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Sentiment Analysis for the Brazilian Anesthesiologist Using Multi-Layer Perceptron Classifier and Random Forest Methods
Sexual harassment is defined as giving sexual attention both verbally, either in speech or writing, and physically to victims who are predominantly women, On July 13, 2022, there was a tweet featuring a video of sexual harassment that made it trend in various countries. The video irritated Twitter users and made various comments resulting in various sentiments that can be analyzed using sentiment analysis. The purpose of this study is to see what the public thinks about the sexual harassment case of Brazilian anesthesiologist. Besides the sentiment analysis, another aim of this study is to see how objective are those sentiments based on their polarity. This study uses a comparison of two methods in sentiment analysis, namely Multi-Layer Perceptron Classifier and Random Forest, and labeling automatically using TextBlob.  This results in 94.44% accuracy, 94.44% precision, 92% recall and 93% f1_score. For MLP Classifier and accuracy 96.42%, precision 94.44%, recall 96.66% and f1_score 95.56% for Random Forest. Sentiment polarity score from the TextBlob is -0.5 and subjectivity is 0.4 which indicates that most statements are negative and subjective score is 0.4, which means those sentiments are subjective in nature.
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审稿时长
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