基于人工智能的广告点击欺诈检测与预防技术综述与研究方向

Reem A Alzahrani, M. Aljabri
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引用次数: 3

摘要

在线广告是一种营销手段,它利用大量的在线渠道为企业、品牌和组织瞄准潜在客户。当今营销行业最严重的威胁之一是被称为点击欺诈的广泛攻击。在线广告的流量统计数据在点击欺诈中被人为夸大。典型的按点击付费广告对每次点击收取费用,假设潜在客户被广告吸引。点击欺诈攻击者制造了一种假象,即大量潜在客户通过自动脚本、计算机程序或人工点击了广告商的链接。然而,广告商不太可能从这些点击中获利。欺诈点击可能会增加广告托管网站的收入或破坏广告客户的预算。为发现和防止这种形式的欺诈行为,已经进行了若干值得注意的尝试。本研究调查了过去10年开发和发表的主要使用人工智能(AI)的所有方法,包括机器学习(ML)和深度学习(DL),用于检测和预防点击欺诈。作为训练模型输入的特征,用于将广告点击分类为良性或欺诈性,以及那些被认为明显且具有点击欺诈关键证据的特征,被识别并调查。对使用人工智能方法进行点击欺诈检测提出了相应的见解和建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AI-Based Techniques for Ad Click Fraud Detection and Prevention: Review and Research Directions
Online advertising is a marketing approach that uses numerous online channels to target potential customers for businesses, brands, and organizations. One of the most serious threats in today’s marketing industry is the widespread attack known as click fraud. Traffic statistics for online advertisements are artificially inflated in click fraud. Typical pay-per-click advertisements charge a fee for each click, assuming that a potential customer was drawn to the ad. Click fraud attackers create the illusion that a significant number of possible customers have clicked on an advertiser’s link by an automated script, a computer program, or a human. Nevertheless, advertisers are unlikely to profit from these clicks. Fraudulent clicks may be involved to boost the revenues of an ad hosting site or to spoil an advertiser’s budget. Several notable attempts to detect and prevent this form of fraud have been undertaken. This study examined all methods developed and published in the previous 10 years that primarily used artificial intelligence (AI), including machine learning (ML) and deep learning (DL), for the detection and prevention of click fraud. Features that served as input to train models for classifying ad clicks as benign or fraudulent, as well as those that were deemed obvious and with critical evidence of click fraud, were identified, and investigated. Corresponding insights and recommendations regarding click fraud detection using AI approaches were provided.
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