数字搜索广告中的显性算法辨别和实时算法学习

Anja Lambrecht, Catherine Tucker
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引用次数: 0

摘要

数字算法试图展示能吸引消费者的内容。为此,算法需要克服 "冷启动问题",迅速了解内容是否能吸引用户。这需要用户的反馈。算法以细分用户为目标。但是,如果目标用户群体中的个体数量较少,仅仅因为该群体在人口中较为稀少,这可能会导致少数群体与多数群体的结果不均衡。这是因为少数群体中的个人更有可能成为实验内容的测试对象,而这些内容最终可能会被平台拒绝。我们以谷歌搜索后显示的广告为背景,来探讨这种情况是否属实。以前的研究表明,在美国的搜索引擎上搜索与黑人相关的名字时,比搜索白人时更有可能返回强调需要进行犯罪背景调查的广告。我们实施了针对黑人和白人姓名搜索的搜索广告活动。尽管点击的可能性相似,但我们的广告确实更有可能在搜索黑人姓名后显示出来。由于黑人姓名不太常见,因此算法对基础广告质量的了解更慢。因此,与白人姓名相比,黑人姓名旁边的搜索广告更有可能持续出现。更多的黑人姓名搜索可能会在旁边显示低质量的广告,即使广告最终会被拒绝。第二项研究证实了这一经验模式,即在与宗教歧视相关的搜索词后投放广告。我们的研究结果表明,在实践中,实时算法学习会导致少数群体更有可能看到最终会被算法拒绝的内容。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Apparent algorithmic discrimination and real-time algorithmic learning in digital search advertising

Apparent algorithmic discrimination and real-time algorithmic learning in digital search advertising

Digital algorithms try to display content that engages consumers. To do this, algorithms need to overcome a ‘cold-start problem’ by swiftly learning whether content engages users. This requires feedback from users. The algorithm targets segments of users. However, if there are fewer individuals in a targeted segment of users, simply because this group is rarer in the population, this could lead to uneven outcomes for minority relative to majority groups. This is because individuals in a minority segment are proportionately more likely to be test subjects for experimental content that may ultimately be rejected by the platform. We explore in the context of ads that are displayed following searches on Google whether this is indeed the case. Previous research has documented that searches for names associated in a US context with Black people on search engines were more likely to return ads that highlighted the need for a criminal background check than was the case for searches for white people. We implement search advertising campaigns that target ads to searches for Black and white names. Our ads are indeed more likely to be displayed following a search for a Black name, even though the likelihood of clicking was similar. Since Black names are less common, the algorithm learns about the quality of the underlying ad more slowly. As a result, an ad is more likely to persist for searches next to Black names than next to white names. Proportionally more Black name searches are likely to have a low-quality ad shown next to them, even though eventually the ad will be rejected. A second study where ads are placed following searches for terms related to religious discrimination confirms this empirical pattern. Our results suggest that as a practical matter, real-time algorithmic learning can lead minority segments to be more likely to see content that will ultimately be rejected by the algorithm.

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