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引用次数: 0

摘要

近年来,互联网为制造商和零售商提供了在网上宣传和销售产品的机会。网上购物正在成为消费者的一种习惯。虽然网上买卖有很多好处,比如在决定购买哪种产品之前,可以方便地从许多不同的卖家那里选择和比较产品,但在购买产品之前阅读评论也是消费者的一种习惯。这有助于他们从以前的买家那里学习经验。然而,根据产品评论购买是有风险的,尤其是虚假评论。这些评论会影响买家的购买决策。检测虚假评论是一个关键问题。本研究提出了一个基于机器学习的框架,通过从文本中提取特征来检测虚假评论,并部署了六个机器学习模型来完成分类任务。实验结果表明,SVC 是一种可靠的机器学习算法,可利用 TF-IDF 特征提取技术对真实评论和虚假评论进行分类。
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AN EMPIRICAL STUDY ON FAKE REVIEW DETECTION
In recent years, the Internet has opened up opportunities for manufacturers and retailers to advertise and sell their products online. Online shopping is becoming a habit of consumers. Although there are many benefits of buying and selling online, such as easy product selection and comparison from many different sellers before deciding which one to buy, reading comments before buying a product is a habit of customers. It helps them learn from the experiences of former buyers. However, buying based on product reviews is risky, especially fake reviews. These reviews affect the buyers’ purchase decisions. Detecting fake reviews is a critical problem. This study proposed a machine learning-based framework for detecting fake reviews by extracting features from text and deployed six machine-learning models for classification tasks. Experimental results showed that the SVC is a reliable machine-learning algorithm for classifying truthful reviews and fake reviews using the TF-IDF feature extraction technique.
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