Home On TV & Video How Aniview Fends Off The Bot Attacks In CTV

How Aniview Fends Off The Bot Attacks In CTV

SHARE:

On TV And Video” is a column exploring opportunities and challenges in advanced TV and video.

With CTV ad spending in the United States expected to increase from $8.1 billion in 2020 to $11.4 billion this year, scammers are following the money.

In the midst of an OTT boom that has created more opportunities for fraudsters, ad fraud detection companies such as DoubleVerify, Oracle Moat, and White Ops have recently uncovered massive bot schemes called “spoofing” in which scammers use server-side ad insertion to generate fake CTV inventory across a large number of apps, IPs and devices. SSAI technology combines content and ads into a single video stream to enable seamless playback on OTT devices, such as Roku, Apple TV and Fire TV.

Some scams, they claim, have cost advertisers and publishers millions in ad spend. Between January and April 2020, DoubleVerify detected a 161% YoY increase in fraudulent CTV ad impressions.

Though some have said that reports of fraudulent activity in CTV are often skewed to make the problem appear larger than it actually is, companies aren’t taking any chances and are bolstering their security capabilities in OTT/CTV.

This week, independent ad server Flashtalking acquired Israeli-based ad fraud detection specialist Protected Media. And earlier this month, Aniview, a provider of end-to-end ad-serving solutions for publishers, partnered with White Ops to protect against sophisticated bot attacks and fraud by fully integrating its platform with White Ops’ Advertising Integrity solution.

AdExchanger recently caught up with Aniview Chief Technology Officer Roy Cohen.

AdExchanger: Are we seeing an increase in the level of sophistication in CTV ad fraud attacks?

Roy Cohen: I don’t think that there is an increase of sophistication in CTV, rather that the CTV environment is still lacking the proper technology validators. We have a pretty big footprint across video – most of our inventory shipped with our video players – so we have built our own in-house fraud detection which combines server and client-side solution. But with the increase of CTV inventory, third-party video players and the lack of client-side validators, we have needed a partner who sees the full picture that can help us identify unordinary inventory patterns.

Is it possible for a fraudster to insinuate itself as an SSAI server, without actually having CTV content?

It is always possible, but not in our case. We mostly provide our ad serving solution including our own SSAI and client SDK, so we know that there is no third-party SSAI that we just deliver impressions to. For the small amount of inventory that we allow without our complete solution, we are verifying it by one-to-one cases. This is also one of the reasons we have partnered with White Ops, to have better coverage on the grey areas.

Is an SSP or ad network able to scrutinize who they’re writing checks to when they’re being spoofed?

With the SupplyChain initiative, it is more likely to understand the involved partners in a transaction. The SupplyChain initiative is a combination of IAB SupplyChain and Sellers.json. Together with the ads.txt initiative, they bring the visibility and transparency between the involved parties in each ad transaction. A publisher declares his authorized sellers and his relationship with each one of them and in every ad request, all nodes are being sent to the DSP and in that way the supply chain can be optimized. Aniview have adopted it from the beginning and we are very happy that there is more transparency in the ecosystem.

How do you show bot interactions and activity patterns to save time and money?

With the ability to pull stats periodically and trigger alarms, we can almost catch bad actors or suspicious fraudulent activity in near real time. Traffic is scanned both in pre and post bid, which helps us close the loop and validate that pre-bid acts in an appropriate way.

Besides SSAI spoofing, are there or other types of bot attacks? What other types of fraud should advertisers and publishers be concerned about?

I think that attribution or user segments can be challenging these days for advertisers. Whether it is fraud or not, TV-like devices are shared across households rather than specific users so I expect that advertiser targeting and KPI’s can be manipulated somehow.

Must Read

Why Major UK Publishers Are Finally Joining Forces To Curate Ad Inventory

Atria’s collective approach is a response to growing monetization challenges and the need to protect the value of human journalism in the AI era.

Toronto Canada pride parade includes a crowd waving pride flags

Ad Performance And Politics Steered Brand Dollars Away From LGBTQ+ Communities – But The Pendulum Will Swing Back

The current administration has discouraged many marketers and organizations from showing support for the LGBTQ+ community, including during Pride month.

How AI Can Enhance Content Without Generating It

As much as consumers complain about AI-generated content, advertising experts say AI still has an important place in video creation and production, including for ads. But using AI in content without turning off consumers is a tricky dance.

Privacy! Commerce! Connected TV! Read all about it. Subscribe to AdExchanger Newsletters

How Tovala Banks On Subscriptions And Incrementality – But Not Ads – To Profit From Its Oven

Smart TVs, refrigerators and other home appliances may pester you with marketing, but at least the hardware is cheap. Another startup taking a different approach to the same theory is Tovala, which was founded in 2015 and combines a standalone countertop oven with a weekly meal kit subscription.

Shopify Wades Deeper Into Advertising, But Not Ad Tech

Shopify is slowly but surely making its way into the ads business. But the ecommerce leader maintains its laissez-faire approach to ad monetization.

Advertisers Say They Need More Data From Netflix

Netflix touts sharper targeting, but buyers say its black-box approach – especially the lack of usable IP data – is blunting measurement and quietly pushing performance-driven spend elsewhere.