Importance of Data Preprocessing and Parameters Tuning for Supervised Machine Learning Models on Tweets Sentiment Analysis

Saurab Adhikari
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Abstract

This paper shows the comparison of five different supervised machine learning models by showing the accuracy and classification report of these models when used for tweets sentiments analysis while showing the improvement in accuracy when data was preprocessed and parameters were tuned. The five different models that were used are: NaiveBayes, Support Vector Machine, Random Forest, Long Short-Term Memory (LSTM) and XG Boost. Total of 25000 tweets were processed, analyzed and predicted the output as positive, negative, or neutral using those models. This research would help to understand which models should be used and followed and which model would yield higher accuracy while using various approaches of data preprocessing and parameters tuning. The paper also tries to show that the standard models can still perform better and are still viable for sentiment analysis while SVM and Random Forest classifiers maybe viewed as standard learning strategies.
推文情感分析中监督机器学习模型的数据预处理和参数调整的重要性
本文比较了五种不同的有监督机器学习模型,展示了这些模型用于推文情感分析时的准确性和分类报告,同时展示了数据预处理和参数调整后准确性的提高。使用的五个不同模型是NaiveBayes、支持向量机、随机森林、长短期记忆(LSTM)和 XG Boost。共处理、分析了 25000 条推文,并使用这些模型预测输出为正面、负面或中性。这项研究有助于了解在使用各种数据预处理和参数调整方法时,应使用和遵循哪些模型,以及哪些模型会产生更高的准确性。本文还试图说明,标准模型仍然可以表现得更好,仍然适用于情感分析,而 SVM 和随机森林分类器可能被视为标准学习策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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