Today's business ecosystem has become very competitive. Customer satisfaction has become a major focus for business growth. Business organizations are spending a lot of money and human resources on various strategies to understand and fulfill their customer's needs. But, because of defective manual analysis on multifarious needs of customers, many organizations are failing to achieve customer satisfaction. As a result, they are losing customer's loyalty and spending extra money on marketing. We can solve the problems by implementing Sentiment Analysis. It is a combined technique of Natural Language Processing (NLP) and Machine Learning (ML). Sentiment Analysis is broadly used to extract insights from wider public opinion behind certain topics, products, and services. We can do it from any online available data. In this paper, we have introduced two NLP techniques (Bag-of-Words and TF-IDF) and various ML classification algorithms (Support Vector Machine, Logistic Regression, Multinomial Naive Bayes, Random Forest) to find an effective approach for Sentiment Analysis on a large, imbalanced, and multi-classed dataset. Our best approaches provide 77% accuracy using Support Vector Machine and Logistic Regression with Bag-of-Words technique.
翻译:客户满意度已成为商业增长的一个主要焦点。 商业组织正在花费大量金钱和人力资源来利用各种战略来理解和满足客户的需求。 但是,由于对客户多种需要的手工分析有缺陷,许多组织未能达到客户满意度。 结果,它们失去了客户的忠诚,在营销上花费了额外的资金。 我们可以通过实施感知分析来解决问题。 这是自然语言处理(NLP)和机器学习(ML)的结合技术。 感知分析被广泛用于在某些主题、产品和服务背后从更广泛的公众舆论中提取洞察力。 我们可以从任何在线数据中进行。 在本文中,我们采用了两种NLP技术(Bag-ods and TF-IDF)和多种ML分类算法(支持病媒机器、后勤回归、多子蜂蜜、随机森林),以便找到对大型、不平衡和多级数据集成的感知分析的有效方法。 我们的最佳方法是使用Bag-Revices 提供77%的精确度。