Whatsapp数据情感分析的混合模型

Royal Kaushal, Raman Chadha
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引用次数: 0

摘要

情感分析,也称为意见挖掘(OM),是一种分析数据中表达的情感的方法。这种方法使用自然语言处理,根据不同类别的情绪对数据进行分类。分析各种社交媒体数据以确定情绪,并使用机器学习(ML)技术对数据进行分类。本研究利用ML模型分析WhatsApp数据中的情绪。情感分析过程包括数据预处理、特征提取和分类等步骤。初始阶段有助于清理原始数据并将其转换为适合分析的数据。特征提取是从预处理数据中检索相关特征的阶段,有助于确定情感。最后,机器学习算法对数据进行分类,以确定文本中表达的情感。本文提出了一种由支持向量机、KNN和决策树组成的混合结构的投票分类器。执行Python以模拟建议的算法,并根据准确性、精度和召回率指标评估其性能。这些参数有助于衡量算法对数据中存在的情感进行准确分类的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid Model for Sentiment Analysis of Whatsapp Data
Sentiment analysis, also called opinion mining (OM), is an approach to analyzing the sentiments expressed in data. This approach uses Natural Language Processing to classify the data based on emotions in different classes. Various Social media data are analyzed to determine sentiment, and Machine Learning (ML) techniques classify the data. This study utilizes ML models to analyze sentiment in WhatsApp data. The sentiment analysis process includes some steps, such as to pre-process the data, extract the features, and classify the data. The initial stage contributes to the clean-up of raw data and transforms it to make it suitable for analysis. Feature extraction is a stage to retrieve a relevant feature from the pre-processed data that contribute to determining sentiment. Finally, machine learning algorithms classify data to determine the sentiments expressed in the text. This work proposes a voting classifier which is hybrid architecture comprising SVM, KNN, and a Decision tree. Python is executed to simulate the suggested algorithm, and its performance is evaluated based on accuracy, precision, and recall metrics. These parameters are useful in measuring the efficiency of the algorithm in accurately classifying the sentiments existing in the data.
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