Exploring Machine Learning and Deep Learning Techniques for Fake Review Detection: A Comprehensive Literature Review

Shagufta Khalif, Kishor Mane, D.Y.Patil
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Abstract

Over the last few years, the impact of reviews on ecommerce industries and the folk who rely on the online reviews have increased. Most of the online shoppers depends on the reviews to make their purchasing decisions. Moreover, genuine reviews can assist the businesses acquire higher sales. Implementing effective systems can ensure the reliability of reviews and create trustworthiness on online platforms. Deceptive reviews can deteriorate the integrity of online feedback system. Numerous studies have explored this domain employing Machine Learning, Deep Learning, NLP methodologies etc., in the last decade. In this paper, through the survey we address the challenges which the current systems encounter where they lack adequate capabilities in detection and removal of false reviews. Diverse methods are applied on datasets like Amazon, Yelp etc., to obtain organized information and to improve the performance of the employed systems in classifying reviews as fake or genuine. Furthermore, this paper provides details of each method, their accuracies and also the future directions in this area. There is a pressing need of systems that can effectively address the issue of fake reviews as the existence of these can mislead customers leading to the decline in their preference for ecommerce.
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探索用于虚假评论检测的机器学习和深度学习技术:文献综述
在过去几年里,评论对电子商务行业的影响和依赖在线评论的人群都在增加。大多数网购者都依赖评论来做出购买决定。此外,真实的评论可以帮助企业获得更高的销售额。实施有效的系统可以确保评论的可靠性,并在网络平台上建立可信度。欺骗性评论会破坏在线反馈系统的完整性。在过去十年中,已有大量研究利用机器学习、深度学习和 NLP 方法等对这一领域进行了探索。在本文中,我们通过调查解决了当前系统在检测和删除虚假评论方面能力不足所遇到的挑战。我们在亚马逊、Yelp 等数据集上应用了多种方法,以获得有组织的信息,并提高所使用系统在将评论分类为虚假或真实评论方面的性能。此外,本文还介绍了每种方法的细节、准确度以及该领域的未来发展方向。目前迫切需要能有效解决虚假评论问题的系统,因为虚假评论的存在会误导客户,导致他们对电子商务的偏好下降。
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