Online political advertising has become the cornerstone of political campaigns. The budget spent solely on political advertising in the U.S. has increased by more than 100% from \$700 million during the 2017-2018 U.S. election cycle to \$1.6 billion during the 2020 U.S. presidential elections. Naturally, the capacity offered by online platforms to micro-target ads with political content has been worrying lawmakers, journalists, and online platforms, especially after the 2016 U.S. presidential election, where Cambridge Analytica has targeted voters with political ads congruent with their personality To curb such risks, both online platforms and regulators (through the DSA act proposed by the European Commission) have agreed that researchers, journalists, and civil society need to be able to scrutinize the political ads running on large online platforms. Consequently, online platforms such as Meta and Google have implemented Ad Libraries that contain information about all political ads running on their platforms. This is the first step on a long path. Due to the volume of available data, it is impossible to go through these ads manually, and we now need automated methods and tools to assist in the scrutiny of political ads. In this paper, we focus on political ads that are related to policy. Understanding which policies politicians or organizations promote and to whom is essential in determining dishonest representations. This paper proposes automated methods based on pre-trained models to classify ads in 14 main policy groups identified by the Comparative Agenda Project (CAP). We discuss several inherent challenges that arise. Finally, we analyze policy-related ads featured on Meta platforms during the 2022 French presidential elections period.
翻译:在线政治广告已成为政治运动的基石。 在美国2017—2018年选举周期期间,美国政治广告预算支出从7.00亿美元增加到了16亿美元。 当然,在线平台为带有政治内容的微目标广告提供的能力是令人担忧的立法者、记者和在线平台,特别是在2016年美国总统选举之后。 剑桥分析公司将选民作为与自身性格相匹配的政治广告对象,以遏制此类风险,在线平台和监管者(通过欧盟委员会提议的DSA法案)都同意研究人员、记者和民间社会需要能够仔细审查大型在线平台上的政治广告。因此,Meta和Google等在线平台实施了包含所有政治广告在平台上运行的信息的Ad Pribuilding,这是漫长道路上的第一步。由于现有数据数量众多,我们目前无法通过这些自动方法和工具来遏制这些风险。 我们需要自动化的方法和工具来协助对政治政策平台进行详细审查,从而最终确定与选举相关的预算。