使用增强方法检测垃圾评论

Sifat Ahmed, Faisal Muhammad
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引用次数: 4

摘要

当谈到从网上商店购买产品时,影响买家的关键因素之一是与产品相关的评论。在购买时,人们试图通过阅读之前的用户反馈来了解产品的质量和真实性。卖家已经开始利用这一点。发布虚假和垃圾评论来欺骗买家是新手常用的策略。但在决定是否购买产品时,这些评论很重要。我们提出了一种从亚马逊评论数据集中检测这些虚假评论的方法。我们没有使用传统的机器学习分类器,而是使用增强算法来提高传统方法的准确性。在这种方法中,通过提高弱学习者的学习能力,可以显著提高准确率。当试图检测虚假评论时,准确率高达93%,而传统机器学习算法的准确率高达89%。
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Using Boosting Approaches to Detect Spam Reviews
When it comes down to buying products from online shops, one of the key factor that influences a buyer are the reviews associated with a product. While buying people try to understand the quality and authenticity of the product by reading the previous user feedback. And sellers have started taking advantage of it. Putting fake and spam reviews to deceive the buyers is a common strategy mostly used by newcomers. But these reviews are important when it comes to deciding whether to buy a product or not. We propose a method to detect these fake reviews from Amazon Review Dataset. Rather than using traditional machine learning classifiers we have used boosting algorithms to improve the accuracy of the traditional approach. In this approach, a significant increase in accuracy has been achieved by boosting weak learners. Up to 93% accuracy has been achieved when tried to detect fake reviews where traditional machine learning algorithms achieve an accuracy of up to 89%.
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