A Factual Sentiment Analysis on Instagram Data – A Comparative Study Using Machine Learning Algorithms

A. Ramachandran, Swetha Ashok, Remya Nair T
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Abstract

Social media is one of the most significant parts of our daily life. Our social media profiles are a reflection of our emotions. Instagram is the world's most popular photo-based social networking platform, with a reasonably high number of users ranging from regular people to artists, public figures, and top authorities. Users on Instagram may add captions to their images to make them more interesting. In this study, we are focusing on conducting sentiment analysis on Instagram captions by applying three different algorithms. We are concluding that the Logistic Regression algorithm is outperforming along with SMOTE and VADER compared to XG Boost and Random Forest algorithms. We started by acquiring data and dividing it down into little tokens, then we remove connection words and give clean data via the stop word removal mechanism. The cleaned data is then passed via the NLTK (Natural Language Toolkit) passer, which uses the VADER sentiment unit to produce sentiment based on the data. Then applying different algorithms XGBoost, Logistic Regression, and Random Forest on the produced sentiment. The accuracy of algorithms such as XGBoost, Logistic Regression, and Random Forest on sentiment data was also analyzed and tested and can be concluded that Logistic Regression performed well on these kinds of data with more accuracy. Through this work, the accuracy is lifted to a better level and thereby getting a truthful idea of the Instagram captions.
对Instagram数据的事实情感分析-使用机器学习算法的比较研究
社交媒体是我们日常生活中最重要的部分之一。我们的社交媒体简介反映了我们的情绪。Instagram是世界上最受欢迎的基于照片的社交网络平台,拥有相当多的用户,从普通人到艺术家、公众人物和高层官员。Instagram上的用户可能会给照片加上文字说明,让照片更有趣。在这项研究中,我们专注于通过应用三种不同的算法对Instagram标题进行情感分析。我们得出的结论是,与XG Boost和随机森林算法相比,逻辑回归算法与SMOTE和VADER一起表现更好。我们首先获取数据并将其划分为小标记,然后我们删除连接词并通过停止词删除机制提供干净的数据。然后,清理后的数据通过NLTK(自然语言工具包)传递器传递,该传递器使用VADER情感单元根据数据产生情感。然后应用不同的算法XGBoost,逻辑回归和随机森林对产生的情绪。对XGBoost、Logistic Regression、Random Forest等算法在情绪数据上的准确性也进行了分析和测试,可以得出结论,Logistic Regression在这类数据上表现良好,准确率更高。通过这项工作,准确性被提升到一个更好的水平,从而得到一个真实的Instagram标题的想法。
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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