Tyler Levasseur – Kochava https://s34035.pcdn.co Kochava Wed, 21 Aug 2024 19:39:59 +0000 en-US hourly 1 https://wordpress.org/?v=6.7.1 https://s34035.pcdn.co/wp-content/uploads/2016/03/favicon-icon.png Tyler Levasseur – Kochava https://s34035.pcdn.co 32 32 Revitalizing Vigilance in Ad Fraud Mitigation https://s34035.pcdn.co/blog/revitalizing-vigilance-in-ad-fraud-mitigation/ Tue, 04 Jun 2024 15:45:58 +0000 https://www.kochava.com/?p=53300 The post Revitalizing Vigilance in Ad Fraud Mitigation appeared first on Kochava.

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Redefining fraud prevention amid shifting industry focus

In the ever-evolving landscape of digital advertising, the battle against fraudulent bot activity remains a crucial priority for marketers. Despite the industry’s shift toward privacy-focused technologies like SKAdNetwork, fraudsters—especially on Android—continue to pose a significant threat. While discussions around fraud may have waned, the reality of its impact has not, making it imperative for marketers to refocus attention on fortifying ad fraud prevention strategies.

Fraud Bot
Fraud Protection

Fraudsters Are Adapting

Fraudsters are adept at adapting their tactics to circumvent traditional anti-fraud measures, leveraging advancements such as machine learning algorithms to evade detection. These sophisticated bots—whether originating from click farms or malware—have evolved to mimic human behavior, making them increasingly challenging to identify. However, their relentless pursuit to win last-touch attribution credit often results in noticeable spikes in activity, betraying their artificial nature.

One particularly wily tactic employed by fraudsters involves strategically stalling installs in order to evade detection. The perpetrator endeavors to deceive anti-fraud systems by prolonging the installation process just beyond conventional checkpoints. Despite these efforts, careful analysis of post-launch performance data can reveal telltale signs of bot activity, such as sudden spikes and uneven distributions.

The Fight for Clean Signal

To combat fraud effectively, marketers must prioritize maintaining “clean signal” with network partners. This involves separating impressions and clicks into distinct data streams to safeguard the integrity of campaign data. Additionally, implementing shorter lookback windows and robust traffic verification settings, as well as leveraging tools such as Google Play Install Referrer, can enhance ad fraud prevention efforts.

Despite the industry’s growing focus on privacy, the fight against ad fraud remains ongoing. By collaborating with trusted networks and customizing anti-fraud measures to align with app-specific behavior patterns, marketers can mitigate the risks posed by fraudulent activity. Engaging with industry experts and fostering a collaborative approach to combating fraud is essential for staying ahead in the dynamic digital advertising landscape.

“For many of the marketing teams we talk to, the topic of ad fraud has taken a back seat to SKAdNetwork and other privacy initiatives. These are unequivocally valuable topics to focus on, but during this privacy-centric moment, it’s worth remembering that the fraudsters haven’t gone anywhere.”

Tyler Levasseur

Manager of Foundry Data Analytics

Kochava

Curious as to how clean—or unclean—your ad signal is? Connect with the Kochava Foundry Team for a fraud prevention consultation.

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5 Best Practices for Media Optimization from Kochava Foundry https://www.kochava.com/blog/5-best-practices-for-media-optimization-from-kochava-foundry/ Tue, 27 Jun 2023 15:00:41 +0000 https://www.kochava.com/?p=49786 The post 5 Best Practices for Media Optimization from Kochava Foundry appeared first on Kochava.

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Leverage data-driven practices for continuous growth

In today’s rapidly evolving marketing landscape, attaining a harmonious blend of the ideal media mix, cost-effectiveness, and quality is essential for sustainable growth. To navigate this challenge, marketers must continuously strive to optimize their strategies and extract maximum efficiency from their media efforts. In this blog, experts from the Kochava Foundry team delve into five best practices for media optimization.

1. Define clear objectives

Before diving into media optimization, it is imperative to establish specific and measurable objectives. Whether it’s increasing brand awareness, generating leads, or acquiring customers, defining your objectives will provide a roadmap for tracking your progress.

2. Understand your target audience

To achieve effective media optimization, it is crucial to deeply understand your target audience. Conduct thorough research on their demographics, interests, behaviors, and media consumption habits. Armed with this knowledge, your team can strategically select the most suitable media channels and craft compelling content that resonates with your audience.

3. Evaluate current media activities and select the right media channels

Take a critical look at your existing media channels, content, and campaigns to identify what’s working and what’s not. Analyze data, identify patterns, trends, and insights that can inform your optimization strategy. This evaluation will help you make informed decisions when reshaping your media efforts.

Based on your target audience and goals, carefully choose the media channels that align with your objectives. Assess your current advertising landscape and explore all viable options, including digital platforms, social media, connected TV (CTV), out-of-home (OOH), and more. Each channel offers unique strengths and reach, so make your selections wisely.

4. Utilize data and analytics

Leverage data and analytics tools to monitor the performance of your media campaigns. Track key metrics such as reach, impressions, click-through rates (CTR), conversions, media lift, and return on investment (ROI). Deep analysis of this data will uncover valuable insights into the channels, content, and locations driving growth.

5. Perform continuous testing and optimization

Optimization is an iterative process. Continuously experiment with different strategies, channels, and content variations. Test various ad formats, targeting options, and messaging approaches. Rely on data-driven insights to make adjustments that enhance your outcomes and drive better results over time.

Unlock advanced media optimization with the power of Kochava Foundry

Maximizing growth through media optimization can be a complex endeavor. Kochava Foundry’s Media Optimization Analysis offers a powerful solution that uncovers potential risks and opportunities within your marketing mix. By harnessing ad signal data, attribution metadata, and proprietary algorithms, our comprehensive analysis delivers clear and concise reports, highlighting abnormalities at the app, network, and publisher site levels. This enables you to leverage your data effectively and make informed decisions that drive growth.

Media optimization is an ongoing process that requires adaptability and a data-driven mindset. By following these best practices and leveraging the capabilities of Kochava Foundry’s Media Optimization Analysis, you can evaluate your results, make data-driven adjustments, and stay agile in response to evolving market conditions. 

Explore all Kochava Foundry services to unlock the true potential of media optimization and drive your growth to new heights.

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CPI on the Rise? Your Own Strategy may be to Blame https://www.kochava.com/blog/cpi-on-the-rise-your-own-strategy-may-be-to-blame/ Mon, 06 Jan 2020 23:46:04 +0000 https://www.kochava.com/?p=25278 The post CPI on the Rise? Your Own Strategy may be to Blame appeared first on Kochava.

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Why clean and clear target audience segmentation is important across partners.

How well are your network partners working for you?  

In a perfect world, you run campaigns with multiple networks to cast a wide net and improve overall reach. The goal is healthy acquisition of unique, high quality users at an efficient cost per install (CPI). However, if you’re not being specific enough in your targeting segmentation, heavy overlap in your media mix may be inadvertently driving up your CPI.

A crowded media mix leads to high CPI

User acquisition is far more complex than direct return on ad spend. If it were that simple, marketers would pile their spend into their best campaigns. As it is, when networks overlap, targeting the same user in the customer journey, not only is the user experience more likely to suffer from oversaturation, it can also result in network partners receiving confusing postback signals for optimization. 

Suppose a particular user lands in the same target audience criteria (females, US, 18-25, casual gamers) for campaigns across three different partners. Each partner correctly targets the user and serves them an ad. Network A serves a 30-second playable that captures the user’s attention. The user goes back to playing the game they were already in, but a positive imprint has been made that they want to try this game later. An hour later, Network B serves them an ad on mobile web, while the user is reading an article. They don’t click on the ad, but go to the app store and search the game, at which time Network C serves a Google Search ad and the user clicks it.

The progression of a mobile ad

With fractional attribution, marketers would be able to distribute credit with various weighting based on influencer positions (ie, winner = 75%, first influencer = 15%, second influencer = 10%). While Kochava has long supported this model of attribution, industry adoption is stale and thus, we’re stuck with the “last touch takes all” model. The winner (C), gets paid for their targeting, but the networks that had influence touch points (A and B) get install postbacks informing them they lost. By losing attribution, they will optimize away from your target audience (even though in this case, the targeted user became a customer!) and their CPI will rise because they believe they have to serve more ads to obtain users.

You as the marketer only pay the CPI bounty to Network C. However, the efforts of networks A and B should not be mistaken as being “free.” When multiple networks generate impressions and clicks on the same user, all networks except the attribution winner believe their targeting was unsuccessful and will try not to serve impressions to users like that of your new user. The more this happens, the more impressions it takes to generate an install or action, thus lowering your eCPM and reach, while increasing your CPI. You’ll also apply this flawed logic to your ongoing marketing strategy.

Beware of overlapping with the walled gardens

This same conundrum becomes even more costly when it’s done with the walled gardens, also known as self-attributing Networks (SANs). SANs include Facebook, Google, Twitter, Snapchat, and several other major ad platforms. These partners play by their own rules when it comes to attribution. They charge per click (rather than CPI) and claim the installs that occurred on their platforms. So, instead of mobile measurement providers like Kochava notifying them whether they won attribution, it’s the other way around. They inform Kochava and others what they won.

When a SAN claims an install and conflicts with a mobile measurement provider’s (MMP) determined attribution winner, the marketer is stuck paying at least twice for the same install. They’ll pay the non-SAN network the CPI attributed by their MMP. However, they’re still billed for the clicks it took to drive the install on the SAN. 

In the example below, two SANs claimed the same install in addition to the network that Kochava identified as the attribution winner—in this case, that means paying three times for the same install. This can be avoided with the right tools and information.

When multiple ad networks serve the same ad

You want networks to deliver unique, quality installs of users who will perform downstream events. 

How an overlapping media mix can cost you 

Suppose a company wants to advertise their new app to 100,000 of their previous app’s customers. They upload this entire audience to four networks with which they’ve had prior success in user acquisition. Each network gets a $25,000 budget to activate as many of these customers as possible. Knowing that these are high value customers, the marketing team sets an internal goal of a $10 CPI or better.  

Targeting the same audience with the same networks
CPI when ad networks overlap

Despite testing their creative in a soft launch, marketing toward prior customers, and working with proven user acquisition networks, the target CPI of $10 is exceeded. Why were the CPIs higher than expected, and why were the click-to-install rates far lower than average?  The problem is found by looking to the table columns titled, “Lost SANs Claims” and “Lost Claims.”  

SANs will claim install conversions for users who have seen and/or clicked on one of your ads through their platform, within their lookback windows. However, this is an incomplete view, as one of the other networks may have been more meaningful to attribution in terms of proximity to install or click vs. impression intent.  Kochava reports installs that are claimed by a SAN, but end-up being attributed to another source, as a “lost SAN claim.” In Kochava’s standard attribution model, there can be only one winner, but in this scenario, the app developer will be charged by multiple ad networks for it. 

To the non-SAN network that won attribution in Kochava, a CPI will be paid out. To the SAN that claimed the install in their own eyes, the target CPI is still paid through the cost per click on the campaign. Integrated networks will only claim an install when Kochava attributes one to them. That being said, this attribution deferral should not be mistaken for being “free” as it decreases the precision of targeting.  In fact, you probably cost yourself an install for each of these overlaps. Why? Well, when an integrated network targets a user who saw or clicked on your ad, but did not receive the install credit, it is counted as a “lost claim.” When multiple networks generate impressions and clicks on the same user, all networks except the winning attribution now believe their targeting was unsuccessful and will try not to serve impressions to users like that of your new customer. This is not the type of feedback you want your network partners to optimize on.

In short, all four networks were focused on getting credit for bringing in the same users instead of acquiring as many unique users as possible.

Segmenting your audience
App install rate doubles with segmentation

Now, if instead each network was given a unique audience to target, the impression, click, cost, and click-through rates were far better.  Without targeting overlap, lost claims were eliminated, and integrated networks did not lose claims on any installs they touched on attribution.  This caused the install rate to nearly double, and CPIs to nearly half. Not every “lost SAN claim” or “lost claim” from the previous example is counted as a new attributed install, because some installs had three or four networks claiming against the same user.  Due to the lack of overlap, the total marketing spend efficiency increased by nearly 50%.  

Best practices to adopt

In an overcrowded media mix, the number of unique, quality installs decreases. If you’re not sure how much your media mix currently overlaps in targeting, we can help. You can visualize your media mix within Kochava through the influencer report. This report shows which networks had a touchpoint with a user before the last click was awarded. 

Once you know how much you’re overlapping, these best practices to help you optimize in the future: 

Avoid: Sending the same advertising identifiers for targeting to more than one SAN. 

Solution: If you have a list of prior customers or power users, segment them by the network they were originally acquired from as that network has proven the ability to reach the user. Whenever targeting specific users on a network, make sure to blocklist those users from all other networks to prevent overlap. Once a network has failed to reach a user, then remove them from all blocklists and try a new network or multiple networks. 

Avoid: Running multiple media partners who purchase inventory from the same providers.

Solution: Focus on a network’s targeting expertise to prevent overlap and improve the uniqueness of audiences. Let’s say two demand-side publishers (DSPs), Network A and Network B, have different specializations. Network A is known for having a large US audience, and Network B is known for reaching Android devices in Brazil. To avoid overlap, set your targeting preferences to each network’s region of expertise and consider negative targeting for the Portuguese language from Network A if they support it. Just because a network has incredible reach doesn’t mean you need to allow them to spend on untargeted run of inventory campaigns.

Avoid: Scaling by increasing partners and lowering CPI/CPA bids.

Solution: Ask account managers what eCPM is required to achieve the targeted impression reach, and then test and compare click-through and install rates with other similar partners. A high click-through rate may not be indicative of higher performance, as a low impression-to-click ratio can suggest click flooding. Low install rates suggest low-quality leads. If your app store page can convert browsers into users, ask why it would take hundreds if not thousands of user clicks to your page to get a single install. A “click” should measure intent, not be an attribution catch-all for less scrupulous networks.

The takeaway

Sometimes less is more. By adding additional networks to your media mix, you may cause overlap and decrease your overall performance. Kochava offers many tools, filters, and settings to prevent costly targeting overlap. Contact us to learn what overlap may exist in your media mix and how we can help optimize your future ad spend. The Kochava team can even do the heavy lifting for you, if you prefer.

Kevin King

Kevin King – Lead Client Analytics
Kochava

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Click Injection Unmasked: An Impact Assessment of Google’s Install Referrer API https://www.kochava.com/blog/click-injection-unmasked-an-impact-assessment-of-googles-install-referrer-api/ Tue, 18 Jun 2019 13:30:29 +0000 https://www.kochava.com/?p=22128 The post Click Injection Unmasked: An Impact Assessment of Google’s Install Referrer API appeared first on Kochava.

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Over a year and a half has passed since the release of the Google Play Install Referrer API that has given app developers and measurement providers a new level of insight into the exact timing and activity surrounding a user’s install. One data point provided by the API was the Install Begin Timestamp, the exact moment down to the second when the app install begins.

One of the biggest impacts from this new data was the ability to combat forms of click injection. A fraudulent tactic used to hijack install bounties, click injection occurs when malware on a device detects ad interactions and/or app store activity and injects fake clicks to steal attribution credit for an install.

Last year, a Buzzfeed article using Kochava research exposed several apps as participants in a massive click injection scheme. The article prompted an investigation by Google and the subsequent removal of several apps from its Play Store. With the data available from the Install Referrer API, most of the tactics deployed in this scheme were both detectable and preventable.

So, what have we learned over the past 18 months from the data revealed by the Install Referrer API?

To begin, let’s recap what changed with its release.

Before Install Referrer

Before Google Play Install Referrer

Before the Install Referrer API provided the Install Begin Timestamp, Kochava (and other measurement providers) only had visibility into a user’s first launch of an app, which triggered the initialization of our software development kit (SDK). This initialization was our first visibility to the app’s presence on the device and as such, it acted as the “install” event. The timestamp of the first open/launch was used for attributing the install back to a click.  

Because users don’t necessarily launch the app directly after completing the install, the first open time was inherently flawed as an indicator of when the install actually occurred. The unknown time gap between click and actual install provided an ideal click injection window for fraudsters to take advantage of.

To combat click injection, Kochava developed sophisticated time-to-install (TTI) algorithms to identify anomalous patterns between click and first open times and in order to flag suspicious outliers.

After Install Referrer

Before Google Play Install Referrer

After the Install Referrer API release, Kochava could gather the exact Install Begin Time (the moment the user entered the app store and clicked the “Install” button).

Google Install Begin Time

Kochava created new functionality that allowed marketers to override the use of the first open time and instead use the Install Begin Time. This removed reliance on the timestamp of the first open/launch event.

As a result, every click injected after the Install Begin Time could be disqualified from install attribution.

Because the Install Referrer API is called during initialization at the time of first launch, we still receive and process all of the injected clicks. When the Install Referrer API returns the Install Begin Time, it becomes clear which clicks are injected.

Painting a clearer picture of install attribution fraud

The simple availability of the true Install Begin Time has given a fuller view into the prevalence of fraud in the ecosystem.

When enabling the Kochava feature to override the first open time with the Install Begin Time, certain customers have experienced up to a 90% drop in attributed installs for their app. This indicates that a great majority of their media mix was perpetrating click injection and/or click fraud against them. These marketers haven’t lost total installs but rather saw their organics jump significantly. Click injection had been sniping organic installs, and switching to Install Begin Time saved the customers significantly on falsely attributed installs.  

Other apps have not noticed a large drop in attributed install volume but experienced a shift in which networks are winning the attributions, indicating that click injection tactics of some partners were stealing installs from others.

A Real-World Example

Let’s unpack a real-world example from a top Play Store app. In analyzing a specific install we saw:

  • Network A sent Kochava a click at 22:55:57
  • The user was redirected to the app store.
  • The user began downloading the app at exactly 22:57:00.
  • The download and install finalized at 22:57:17.
  • Kochava received a click from Network B at 22:57:26.
  • The first open of the app occurred at 22:59:00.

Without the Install Referrer API providing the Install Begin Time, Network B would’ve won attribution as the last click prior to the first open event. With the Install Referrer API, Network A is properly awarded credit, as the Install Begin Time precedes Network B’s injected click.

Kochava can also determine where this type of click injection occurs at scale across media partners and/or sub-publishers, helping marketers make more informed media spend decisions. The anonymized data below illustrates the analysis that’s now possible because of the Install Referrer API.

This first chart displays injected click volume compared to total click volume by network partner. Partners that heavily over index in injected clicks should raise warning flags.

Click Injection Analysis

Kochava can even help marketers determine which sub-publishers within such networks are the main culprits of the injection traffic. Marketers can then work with their partners to remove or block offending sources.

GRIT GRAPHICS graph

Taking advantage of the Install Referrer API

Kochava provides a myriad of benefits to marketers through the new Google Play Install Referrer API.

Marketers can enable the use of the Install Begin Time to override the first open time, providing a far more accurate timestamp of the actual install. This in turn significantly reduces vulnerability to fraudulent click injection tactics.

A click referrer time is also provided by the Install Referrer API, dictating whether an actual ad click preceded the user’s landing in the app store. Within Kochava Traffic Verifier, marketers can choose to require a click time be present in order to allow any click attribution.

IMPORTANT: If you currently use the minimum time to install (MTTI) function of Kochava Traffic Verifier, please check with your Client Success Manager before enabling use of Google’s Install Begin Time.  

What do you need to do?

Marketers can easily make use of these features in Kochava but first must ensure that an app’s Google Play Services Library dependencies are updated to support this new API. This is what allows the Kochava SDK to gather Install Referrer data and put it to work on your behalf.

For more information or to ensure you’re taking advantage of the Install Referrer API, please contact your Client Success Manager.

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