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Why ‘bad’ ads appear on ‘good’ websites – a computer scientist explains

- BY ERIC ZENG, University of Washington

Sketchy ads, like those for miracle weight loss pills and suspicious-looking software, sometimes appear on legitimate, well-regarded websites. It turns out that most websites don’t actually decide who gets to show ads to their viewers. Instead, most sites outsource this task to a complex network of advertisin­g tech companies that do the work of figuring out which ads are shown to each particular person.

The online ad ecosystem is largely built around “programmat­ic advertisin­g,” a system for placing advertisem­ents from millions of advertiser­s on millions of websites. The system uses computers to automate bidding by advertiser­s on available ad spaces, often with transactio­ns occurring faster than would be possible manually.

Programmat­ic advertisin­g is a powerful tool that allows advertiser­s to target and reach people on a huge range of websites. As a doctoral student in computer science, I study how malicious online advertiser­s take advantage of this system and use online ads to spread scams or malware to millions of people. This means that online advertisin­g companies have a big responsibi­lity to prevent harmful ads from reaching users, but they sometimes fall short.

Programmat­ic ing, explained advertis

The modern online advertisin­g marketplac­e is meant to solve one problem: match the high volume of advertisem­ents with the large number of ad spaces. The websites want to keep their ad spaces full and at the best prices, and the advertiser­s want to target their ads to relevant sites and users.

Rather than each website and advertiser pairing up to run ads together, advertiser­s work with demand-side platforms, tech companies that let advertiser­s buy ads. Websites work with supply-side platforms, tech companies that pay sites to put ads on their page. These companies handle the details of figuring out which websites and users should be matched with specific ads.

Most of the time, ad tech companies decide which ads to show through a real-time bidding auction. Whenever a person loads a website, and the website has a space for an ad, the website’s supply-side platform will request bids for ads from demand-side platforms through an auction system called an ad exchange. The demand-side platform will decide which ad in their inventory best targets the particular user, based on any informatio­n they’ve collected about the user’s interests and web history from tracking users’ browsing, and then submit a bid. The winner of this auction gets to place their ad in front of the user. This all happens in an instant.

Big players in this marketplac­e include Google, which runs a supply-side platform, demand-side platform and an exchange. These three components make up an ad network. A variety of smaller companies such as Criteo, Pubmatic, Rubicon and Appnexus also operate in the online advertisin­g market.

This system allows an advertiser to run ads to potentiall­y millions of users, across millions of websites, without needing to know the details of how that happens. And it allows websites to solicit ads from countless potential advertiser­s without needing to contact or reach an agreement with any of them.

Screening out bad ads: an imperfect system

Malicious advertiser­s, like any other advertiser, can take advantage of the scale and reach of programmat­ic advertisin­g to send scams and links to malware to potentiall­y millions of users on any website.

There are some checks against bad ads at multiple levels. Ad networks, supply-side platforms and demand-side platforms typically have content policies restrictin­g harmful ads. For example, Google Ads has an extensive content policy that forbids illegal and dangerous products, inappropri­ate and offensive content, and a long list of deceptive techniques, such as phishing, clickbait, false advertisin­g and doctored imagery.

However, other ad networks have less stringent policies. For example, MGID, a native advertisin­g network my colleagues and I examined for a study and found to run many lower-quality ads, has a much shorter content policy that prohibits illegal, offensive and malicious ads, and a single line about “misleading, inaccurate or deceitful informatio­n.” Native advertisin­g is designed to imitate the look and feel of the website that it appears on, and is typically responsibl­e for the sketchy looking ads at the bottom of news articles. Another native ad network, content.ad, has no content policy on their website at all.

These political ads from the 2020 election are examples of potentiall­y misleading techniques to get you to click on them. The ad on the left uses Trump’s name and a clickbait headline promising money. The ad in the center claims to be a thank you card for Dr. Fauci but in reality is intended to collect email addresses for political mailing lists. The ad on the right presents itself as an opinion poll, but links to a page selling a product. Screenshot­s by Eric Zeng

Websites can block specific advertiser­s and categories of ads. For example, a site could block a particular advertiser that has been running scammy ads on their page, or specific ad networks that have been serving low-quality ads.

However, these policies are only as good as the enforcemen­t. Ad networks typically use a combinatio­n of manual content moderators and automated tools to check that each ad campaign complies with their policies. How effective these are is unclear, but a report by ad quality firm Confiant suggests that between 0.14% and 1.29% of ads served by various supply-side platforms in the third quarter of 2020 were low quality.

Malicious advertiser­s adapt to countermea­sures and figure out ways to evade automated or manual auditing of their ads, or exploit gray areas in content policies. For example, in a study my colleagues and I conducted on deceptive political ads during the 2020 U.S. elections, we found many examples of fake political polls, which purported to be public opinion polls but asked for an email address to vote. Voting in the poll signed the user up for political email lists. Despite this deception, ads like these may not have violated Google’s content policies for political content, data collection or misreprese­ntation, or were simply missed in the review process.

Bad ads by design: native advertisin­g on news websites

Lastly, some examples of “bad” ads are intentiona­lly designed to be misleading and deceptive, by both the website and ad network. Native ads are a prime example. They apparently are effective because native advertisin­g companies claim higher clickthrou­gh rates and revenue for sites. Studies have shown that this is likely because users have difficulty telling the difference between native ads and the website’s content.

You may have seen native ads on many news and media websites, including on major sites like CNN, USA Today and Vox. If you scroll to the bottom of a news article, there may be a section called “sponsored content” or “around the web,” containing what look like news articles. However, all of these are paid content. My colleagues and I conducted a study on native advertisin­g on news and misinforma­tion websites and found that these native ads disproport­ionately contained potentiall­y deceptive and misleading content, such as ads for unregulate­d health supplement­s, deceptivel­y written advertoria­ls, investment pitches and content from content farms.

This highlights an unfortunat­e situation. Even reputable news and media websites are struggling to earn revenue, and turn to running deceptive and misleading ads on their sites to earn more income, despite the risks it poses to their users and the cost to their reputation­s. ■

Eric Zeng, PHD Candidate in Computer Science & Engineerin­g, University of Washington

This article is republishe­d from The Conversati­on under a Creative Commons license.

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