GOOGLE PLAY STORE USERS COMMENT REVIEW CLASSIFICATION USING SVM CLASSIFIER AND RANDOM FOREST

Muhammad Rafi Hadiyasa, Sani Muhamad Isa
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Abstract

In today's digital age, social media stands as a dynamic arena where individuals freely express their thoughts and opinions, from succinct tweets on Twitter to expansive narratives on platforms like Facebook and Instagram. However, amidst this vast sea of user-generated content, a glaring void persists a definitive rating system capable of distilling the nuanced sentiments embedded within these diverse commentaries. This study thus emerges as a pioneering endeavor, poised to bridge this crucial gap in sentiment analysis. Leveraging the transformative potential of the Word2vec methodology in the preprocessing phase, researchers embark on a comprehensive journey to classify comments on a meticulous 1-5 rating scale, thereby unraveling the multifaceted spectrum of sentiments encapsulated within them. Complementing this groundbreaking approach, the Random Forest classification model is harnessed to bolster the analytical prowess of the study. The resultant accuracy score of 60.4% stands as a testament to the study's significant strides towards achieving a deeper understanding of comment sentiment in the realm of social media. However, this is merely the inception of a promising trajectory; the study's findings hold the promise of not only refining sentiment analysis techniques but also revolutionizing diverse sectors, from market research to product development. With this study, the narrative of sentiment analysis transcends the confines of academia, beckoning forth a new era of nuanced comprehension and meaningful engagement within the sphere of social media commentary. As the study concludes, it leaves behind a compelling call to action, inviting further exploration and innovation in this dynamic field.
Google play商店用户评论评论分类使用SVM分类器和随机森林
在当今的数字时代,社交媒体是一个充满活力的舞台,个人可以在这里自由表达自己的想法和观点,从Twitter上简洁的推文到Facebook和Instagram等平台上的长篇叙述。然而,在这浩瀚的用户生成内容的海洋中,一个明显的空白仍然存在,一个明确的评级系统能够提炼出这些不同评论中嵌入的微妙情绪。因此,这项研究是一项开创性的努力,准备弥合情感分析中的这一关键差距。利用Word2vec方法在预处理阶段的变革潜力,研究人员开始了一段全面的旅程,以细致的1-5级量表对评论进行分类,从而揭示了其中包含的多方面的情感。作为这一突破性方法的补充,随机森林分类模型被用来加强研究的分析能力。最终的准确率得分为60.4%,证明了该研究在更深入地理解社交媒体领域的评论情绪方面取得了重大进展。然而,这仅仅是一个充满希望的轨迹的开始;这项研究的结果不仅有望改善情绪分析技术,还有望彻底改变从市场研究到产品开发的各个领域。通过这项研究,情绪分析的叙述超越了学术界的局限,在社交媒体评论领域开启了一个细致入微的理解和有意义的参与的新时代。作为研究的结论,它留下了一个令人信服的行动呼吁,邀请在这个充满活力的领域进一步探索和创新。
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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