Performance evolution for sentiment classification using machine learning algorithm

Faisal Hassan, Naseem Afzal Qureshi, Muhammad Zohaib Khan, Muhammad Ali Khan, Abdul Salam Soomro, Aisha Imroz, H. B. Marri
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Abstract

Machine Learning (ML) is an Artificial Intelligence (AI) approach that allows systems to adapt to their environment based on past experiences. Machine Learning (ML) and Natural Language Processing (NLP) techniques are commonly used in sentiment analysis and Information Retrieval Techniques (IRT). This study supports the use of ML approaches, such as K-Means, to produce accurate outcomes in clustering and classification approaches. The main objective of this research is to explore the methods for sentiment classification and Information Retrieval Techniques (IRT). So, a combination of different machine learning algorithms is used with a dataset from amazon unlocked mobile reviews and telecom tweets to achieve better accuracy as it is crucial to consider the previous predictions related to sentiment classification and IRT. The datasets consist of user reviews ratings and algorithms utilized consist of K-Means Clustering algorithm, Logistic Regression (LR), Random Forest (RF), and Decision Tree (DT) algorithms. The amalgamation of each algorithm with the K-Means resulted in high levels of accuracy. Specifically, the K-Means combined with Logistic Regression (LR) yielded an accuracy rate of 99.98%. Similarly, the K-Means integrated with Random Forest (RF) resulted in an accuracy of 99.906%. Lastly, when the K-Means was merged with the Decision Tree (DT) Algorithm, the accuracy obtained was 99.83%.We exhibited that we could foresee efficient, effective, and accurate outcomes.
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基于机器学习算法的情感分类性能进化
机器学习(ML)是一种人工智能(AI)方法,允许系统根据过去的经验适应其环境。机器学习(ML)和自然语言处理(NLP)技术通常用于情感分析和信息检索技术(IRT)。本研究支持使用ML方法,如K-Means,在聚类和分类方法中产生准确的结果。本研究的主要目的是探索情感分类和信息检索技术(IRT)的方法。因此,我们将不同的机器学习算法与来自亚马逊解锁的移动评论和电信推文的数据集结合使用,以达到更好的准确性,因为考虑到之前与情感分类和IRT相关的预测是至关重要的。数据集由用户评论评分组成,使用的算法包括k均值聚类算法、逻辑回归(LR)、随机森林(RF)和决策树(DT)算法。每个算法与K-Means的合并产生了高水平的准确性。具体而言,K-Means与Logistic回归(LR)相结合的准确率为99.98%。同样,k均值与随机森林(RF)相结合的准确率为99.906%。最后,将K-Means与决策树(DT)算法合并,得到的准确率为99.83%。我们展示了我们可以预见到高效、有效和准确的结果。
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