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The Pros and Cons of Attribution and Incrementality

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The Pros and Cons of Attribution and Incrementality

Attribution has been the main method of analyzing campaign performance for several years now. While the concept of attribution is widely used, there are several shortcomings with attribution models, which explains why the topic of incrementality measurement is growing in popularity.

Outline of attribution models

All attribution models have one thing in common: they correlate customer touchpoints with ads (impressions, clicks) and their purchase behavior (conversions).

There are different model concepts like Click Through, View Through, Last Touch, First Touch, Multi-Touch and others. All the models rely on timely correlation of events per user ("first this happened, then that happened for the same user") to derive the concept of attribution, which in fact is often being perceived as causality ("the user clicked on that ad, so we attribute this revenue to that ad" sounds very similar to "that ad caused that revenue").

However, as we know, there is usually a large variety of factors influencing the purchase decision including brand equity, word of mouth, offline media campaigns, and more, making it questionable to attribute all the revenue to that one ad the user clicked on. Unfortunately, no attribution models can account for those factors. This is where incrementality measurement can help.

Outline of incrementality measurement

The concept of incrementality measurement uses a different principle from attribution models.

Rather than relying on the correlation of events, it uses a Randomized Controlled Trial (RCT) to observe differences in behavior (conversion rate, revenue per user, etc) between a 'treatment group' that is targeted by ads and a 'control group' that is not targeted by ads.

If the groups are truly random and there is a difference between the behavior of the group targeted by ads of certain campaigns to those who were not, this proves true 'causation' between the campaign and the change in behavior.

Within incrementality measurement, there are a variety of methodologies which differ mainly in terms of what happens to the control group and how to look at results. The most widely used methodologies nowadays are Intent-to-Treat, PSA/Placebo, and Ghost Ads. In retargeting there is also a closely related methodology to Ghost Ads: Ghost Bids.

All methodologies have different pros and cons taking different trade-offs into account: While Intent-To-Treat is free of cost and is easy to implement on the client side, the data is very noisy and often doesn't show uplift because of that.

  • PSA/Placebo solves the problem of noise but creates cost for the impressions in the control group.
  • Ghost Ads are free of cost and have no noise, though only work for user acquisition campaigns and not for retargeting.
  • Ghost Bids are free of cost, work well for retargeting have lower noise than ITT, but higher than Ghost Ads.

Attribution

Pros

The main advantages of attribution models are that they are easy to implement and reason about. There are multiple vendors in the market which provide an easy-to-use independent solution (Attribution Providers). A further advantage is that attribution models can work with very little data and can measure the relative performance down to the level of campaigns or creatives.

Cons

One of the main disadvantages of attribution models is that they do not account for 'immeasurable' contributions like brand equity, offline marketing, and word of mouth. A further problematic area is the lack of accounting for organic behavior. For example, in user acquisition campaigns which already have strong brand equity (think: install campaigns for Uber in San Francisco). This is an even bigger problem in retargeting where there is potentially strong organic behavior from users who already installed an app, which is why applying attribution in retargeting is often missing the point of measuring the actual value of retargeting campaigns.

Incrementality

Pros

The main advantage of incrementality is the objective measurement of the absolute contribution of a campaign to an increase in revenue or conversions. The scientifically developed method of RCT proves actual causation between ad spend and incremental revenues. The incrementality methodology also accounts for organic behavior and any other marketing activities, since both the control and treatment groups are being equally affected by those.

Cons

The disadvantages of incrementality lie in the complexity of this methodology. On the surface, incrementality measurement might seem like an easy concept: randomly split the population, only show ads to one group, then observe the results. Though this is just the tip of an iceberg - to apply it successfully one requires much more detailed knowledge in the areas of different methodologies, statistics, parameters affecting noise, analysis framework, typical biases, and flaws. Another problem with incrementality is that it requires much more data (sample size in unique users) to determine statistically significant results. Therefore it is difficult to apply it on a granular level: per segment/per campaign results.

Analyzing results: attribution and incrementality are independent concepts

While both attribution and incrementality can be meaningful measurements for the same campaign, it is important to understand that those are completely independent (orthogonal) concepts and looking at results need to be independent as well. Both concepts should specifically not be mixed, i.e. looking at attributed conversions/revenues for the treatment group in the incremental results.

While the attributed view of results will include attributed revenue to 'clickers' (with Click-Through-Attribution), incremental measurements will observe all revenues/conversions of the respective group (treatment/control) regardless of click or view.

Another difference is that the attributed results will usually include some attribution windows, while the incrementality measurement does not need/use that concept - since there are no clicks/views for the control group part of the population. Instead, the incremental measurement observes all behavior of the two groups for a certain period of time (usually the campaign runtime and the delayed conversion grace period).

A less intuitive concept in incrementality results is one of 'exposed users'. Intuitively one wants to look at revenue/conversions of users exposed to ads' vs 'users not exposed to ads'. This is only possible in certain methodologies, where the treatment group contains 'only exposed' users and the control group only the 'would have been exposed' users. Such methodologies are PSA/Placebo and Ghost Ads, which have the information about 'which users would have been exposed in the control group'.

The methodologies Intent-to-Treat and Ghost Bids include 'exposed' and 'unexposed' users in the treatment group (to a different degree) and don't provide the information which users in the control group 'would have been exposed'. Therefore in these methodologies, one has to look at the behavior of the total groups ('exposed and unexposed' in the treatment group and 'would have been exposed and would not have been exposed' in control group). Looking at 'treatment exposed' vs 'all of the control group' in those methodologies is not possible, because it would suffer from selection bias: the selection process of 'who is exposed' in the treatment group is not a random one and is highly affected by mechanisms of targeting, optimization and auction dynamics.

A common counterargument to looking at unexposed users in the treatment group is: "The unexposed users haven't seen any ads, didn't create any cost and we shouldn't look at their conversions/revenues". This argument is valid with PSA/Placebo and Ghost Ads methodologies, though it doesn't work for Intent-To-Treat and Ghost Bids due to selection bias. Though it is important to understand that - contrary to attribution - the revenues of the unexposed users are not simply 'attributed' to the campaign - they are used as a sum with the revenues of exposed users to then later be compared to the revenues of the control group (potentially including scaling).

If all users in the treatment group were unexposed, there would be no uplift and no difference between the two groups, resulting in no incremental revenue. This illustrates that looking at unexposed users is not a problem but a methodological necessity to avoid biases.

Conclusion

Both attribution and incrementality have their place within an effective mobile marketing strategy. The key is to understand their separate functions and be aware of the limitations of each. With this in place, you can build an accurate picture of how each of your campaigns are performing and what actual value it's are driving.

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Retargeting lexicon
Programmatic Advertising

The automated process of buying and selling advertising space through digital platforms.

View-Through Attribution
view-through-attribution

Refer to: Attribution Methodology

Uplift Test
uplift-test

A randomized control trial test conducted by Remerge to measure the incremental impact of one or more campaigns.

See also: Randomized Controlled Trial

Uplift Report
uplift-report

A report by Remerge showing the results of an uplift test. It presents the incremental revenue generated, on top of organic and other marketing-driven conversions. Also contains observed values such as ad spend, group sizes, amount of conversions, converters, and revenues per group, plus other metrics.

SKAdNetwork
skadnetwork

Stands for Store Kit Advertising Network. Apple’s measurement framework for tracking mobile attribution. Introduced in 2018 and widely implemented in 2020 with the iOS 14.5 update.

Segment
segment

A group of users with common attributes such as location, demographics, activity level, value or amount of purchases, and how recently they last opened a specific app.

Retention Rate
retention-rate

The share of users active in the app within certain time frames after install, reengagement, or other events.

Retargeting
retargeting

A type of marketing channel used by an app owner to engage with their existing users through other channels within the same device. Usually, the aim is to encourage users to complete a particular task e.g. completing a purchase, buying in-game currency, placing a first order. The conventional way of retargeting relies on user IDs, such as AAID and IDFA.

Reshuffle
reshuffle

Reshuffle indicates the randomization and marking of users when they were once part of a test or control group.

In incrementality measurement, reshuffling the group assignment for a specific application fights aggregated bias over time where one group doesn't see any ads while the other group is constantly exposed to them.

Reshuffling is relevant in cases where a test has been running for a long time and/or in campaigns the experience more extensive changes to the campaign setups, segmentation, or creative strategy.

Real-Time Bidding (RTB)
real-time-bidding-rtb

The process by which individual ad placements are bought and sold via programmatic auctions that happen instantaneously. With real-time bidding, ad buyers bid on an ad space, which, if the auction is won, instantly displays the buyer's ad. This lets demand-side players such as advertisers or DSPs optimize the purchase of ad placements from multiple sources.

Randomised Controlled Trial (RCT)
randomised-controlled-trial-rct

A method that randomly separates a specific population into two groups that are as similar to each other as possible, namely the test group and control group.

further reading
Queries Per Second (QPS)
queries-per-second-qps

The number of ad placements a DSP is able to process in order to determine on how to bid on them.

Publisher
publisher

Within the sphere of app marketing, a publisher is an App Developer that gets paid for placing ads within their app. For example, an advertiser wants to reach their users via App Y, so they pay App Y to display their ads.

further reading
Public Service Announcement Ad (PSA Ads)
public-service-announcement-ad-psa-ads

An incrementality testing methodology where devices in the control group are shown PSA ads, like donation drives or road safety reminders. By serving real ads, information on the devices within the control group that would have been exposed can be obtained. Unexposed devices are excluded from the measurement to reduce noise.

Probabilistic Attribution
probabilistic-attribution

Refer to: Attribution Methodology

Organic Behavior
organic-behavior

A user’s behavior not directly attributable to specific marketing efforts.

Multi-Touch Attribution
multi-touch-attribution

Refer to: Attribution Methodology

Mobile Measurement Partner (MMP)
mobile-measurement-partner-mmp

Within the sphere of app marketing, MMPs are a service provider that specializes in measuring activities that are happening within and leading to the app. An app publisher may incorporate an MMP into their app to track activity and events e.g. time spent on a certain screen, sources of incoming traffic, app opening frequencies etc.

Lifetime Value (LTV)
lifetime-value-ltv

The amount of revenue generated by the user for the App Developer during the entire duration of the relationship with the user, beginning with the app install.

Last-Click Attribution
last-click-attribution

Refer to: Attribution Methodology

Key Performance Indicator (KPI)
key-performance-indicator-kpi

The key metrics used to assess the effectiveness of an effort in achieving its objective. In programmatic advertising, the common types of performance indicators depend on the goals and nature of each campaign. These can include ROAS, cost per action, and retention rate.

Intent-to-Treat (ITT)
intent-to-treat-itt

An incrementality testing methodology where no ads from the campaign are shown to devices within the control group. Also known as a ‘holdout test’. Cost-free and easy to implement, but with a relatively high level of noise.

This method compares the behavior of all users in both groups. In the test group, this includes both exposed and unexposed users

Incrementality
incrementality

A method of measuring the impact of a specific activity, on top of organic and other activity.

Incremental Revenue (iRevenue)
incremental-revenue-irevenue

The estimated revenue caused directly by the campaign.

Formula:Revenue from test group – revenue from control group = iRevenue

Incremental Return On Ad Spend (iROAS)
incremental-return-on-ad-spend-iroas

A KPI used in calculating how cost-efficient a campaign is. This is used to evaluate the relationship between incremental revenue and the amount of money spent on the campaign. The figure is typically represented in percentage.

Formula:
Percentage: [IRevenue ÷ ad spend] × 100 = IROAS%
Ratio: IRevenue ÷ ad spend = IROAS

Incremental Cost Per Action (iCPA)
incremental-cost-per-action-icpa

A KPI used to evaluate the cost of incremental conversions.

Formula:Ad spend ÷ [test group actions – control group actions] = iCPA

Incremental Conversions
incremental-conversions

The estimated amount of conversions caused directly by the campaign.

Formula:
Test group conversions – control group conversions (scaled) = Incremental conversions

In-app Event
in-app-event

Actions made by a user within the app, such as log-in, registration, completion of onboarding, or purchases. These events can be tracked with the help of an MMP.

Impression
impression

The deployment of the ad to the ad placement. An impression might not necessarily mean that the ad has been viewed.

Identifier for advertisers (IDFA)
identifier-for-advertisers-idfa

A unique random device identifier Apple generates and assigns to every iOS device. Advertisers can use this to track user activity across apps, show them personalized ads, and attribute ad interactions.

Ghost Ads
ghost-ads

A testing methodology that shows devices in the control group an ad ran by another advertiser on the platform, therefore removing any additional cost for clicks and impressions. The control group behavior is then marked with a ‘ghost impression’, which gives the information on which control group users would have been exposed.

further reading
General Data Protection Regulation (GDPR)
general-data-protection-regulation-gdpr

A regulation under the EU (European Union) law on data protection and privacy within the EU and the EEA (European Economic Area), that grants users control over how their data is stored and used by organizations. To comply with GDPR, programmatic sellers must clearly communicate to users how their data will be stored and used. When a user gives consent to an organization to process their data, it enables targeted advertising.

Exposure Rate
exposure-rate

The percentage of devices within a test group that received at least one ad impression, versus the total number of devices within the test group targeted within a campaign during an uplift test. For example, if 900 out of 1,000 users are shown an ad, the exposure rate is 90%.

See also: Uplift Test

Deterministic Attribution
deterministic-attribution

Refer to: Attribution Methodology

Deep link
deep-link

A link that sends users directly to a specific in-app location, instead of the app marketplace. Deep links bypass the steps needed to go through to reach a conversion point, bringing the user directly to where they can perform the intended action e.g. completing a purchase, buying coins, placing an order.

Test Group
test-group

Within the sphere of app marketing, this refers to the group of devices that may be shown ads from a specific campaign in the test. The actions on these devices are then compared to the actions on the devices in the control group.

Compare with: Control Group

further reading
Control Group
control-group

Within the sphere of app marketing, this refers to the group of devices within the target audience that are not shown ads from a specific campaign in the test. The actions on these devices are then compared to the actions on the devices in the test group.

Compare with: Test Group

further reading
Contextual targeting
contextual-targeting

A type of targeting that works with contextual signals only, such as location data (country, city, postal code), language setting, mobile operating system, device model, as well as publisher information.

California Consumer Privacy Act (CCPA)
california-consumer-privacy-act-ccpa

A bill that enhances privacy rights and consumer protection for residents of California, United States. The CCPA took effect on January 1, 2020.

The CCPA provides these rights to consumers:

- Know what personal data is being collected about them.
- Know whether their personal data is sold or disclosed, and to whom.
- Say no to the sale of personal data.
- Access their personal data.
- Request a business to delete any personal information that was collected from that consumer.
- Equal service and price, even if they exercise their privacy rights.

Attribution Window
attribution-window

A specific time frame that is taken into consideration when determining the source of a user’s action.

Attribution Provider (AP)
attribution-provider-ap

A role played by an MMP to credit the in-app activity of users to the correct media sources.

Attribution Methodology
attribution-methodology

Refers to the process of identifying which conversions belong to which preceding click or impression. Common attribution methodologies include:

  • Click-Through Attribution - Determines the source of a conversion based on the user’s click activity.

  • View-Through Attribution - Determines the source of a conversion based on the ad impression delivered to the user.

  • Deterministic Attribution - A model that establishes the origin of a user’s conversion from a specific click or impression, based on unique device IDs.

  • Probabilistic Attribution - A model that establishes the likelihood of a user’s conversion originating from a specific click or impression, based on the data logged on both occasions, such as device language, timezone, IP address, and OS version.

  • Last-Touch Attribution - A model that establishes a match between the action taken by a user (e.g. app open, purchase) and its corresponding ad click or impression. When a user converts from an ad, the DSP that delivered the respective ad is given full credit for that conversion event.

  • Multi-Touch Attribution - Also known as multi-channel attribution. A model determines the value of every touchpoint on the way to a conversion. Rather than giving full credit to one ad, multi-touch attribution divides the credit among all advertising channels that the user has interacted with, leading to the conversion.
Attribution
attribution

A method of identifying the touchpoints a user has encountered within a specified period before making a conversion.

App Tracking Transparency (ATT)
app-tracking-transparency-att

The privacy framework from Apple that, among other things, manages the process of obtaining user consent before accessing their Identifier for Advertiser (IDFA).

App Monetization
app-monetization

The strategy a publisher employs to earn money from their app. This can be done through in-app advertisements, paid membership, and charging for premium features or an ad-free experience, among others. For example, some gaming apps are free to download and play, but users may need to pay in order to progress to the next level quickly.

Android Advertising identifier (AAID)
android-advertising-identifier-aaid

Also known as Google Advertising Identifier. A unique device identifier that Android generates and assigns to every device. Advertisers can use this to track user activity across apps, show them personalized ads, and attribute ad interactions.

Advertisers
advertisers

The advertiser is a person or legal entity focusing on generating sales and leads through serving ads that convey the right message to the right audience at the right time.

In mobile advertising, the advertiser is on the client-side and is the one interested in promoting an app.

Causal Impact Analysis
causal-impact-analysis

A measurement framework developed by Google that works without device IDs. It measures the incremental uplift of one or more conversion events, removing the influence of other campaigns and organic conversions. Used to assess the effect of ID-less campaigns.

Similar to measuring the effect TV ads have, the principle is based on running campaigns on identifiable sub-markets (test group), while leaving other sub-markets unexposed (control group).

Ghost Bids
ghost-bids

An incrementality testing methodology based on Ghost Ads, adapted for retargeting campaigns. The difference is that it removes all devices that are not seen on ad exchanges, or that would not be bid on, from both test and control groups, to reduce noise. A bid is placed as usual for the test group, while the control group is tracked with ‘ghost bids’ (bids that could have been placed, but weren’t in the end).

Return on Advertising Spend (ROAS)
return-on-advertising-spend-roas

A KPI that measures the relationship between the revenue generated by specific advertising efforts and the money spent on them.

Formula

Percentage: [Revenue ÷ ad spend] × 100 = ROAS%

Ratio: Revenue ÷ ad spend = ROAS

See also: Incremental Return On Ad Spend

Supply-Side Platform (SSP)
supply-side-platform-ssp

A company that works with publishers to sell ad inventory across ad networks.

Demand-Side Platform (DSP)
demand-side-platform-dsp

A company that works with advertisers to purchase ad inventory across ad networks. Their platforms are built to identify a desired ad space and place bids on it.

Compare with: Supply-Side Platform

Open RTB
open-rtb

A digital marketplace where ad inventory from multiple publishers are available for advertisers to bid on in real time.

See also: Real-Time Bidding

Self-Attributing Network
self-attributing-network

An ad network like Meta, Snap, and Twitter, that attributes its traffic internally, without the involvement of third-party MMPs.

Variable Bidding
variable-bidding

The dynamic adjustment of bid prices based on a user's in-app behavioral patterns, contextual information, time of day, and ad placement performance.

Dynamic Product Ad (DPA)
dynamic-product-ad-dpa

Also known as a dynamic ad. It is dynamically assembled based on the user’s behavior and information sourced from a feed. This type of ad delivers a tailored experience for individual users.

Real-Time Audience Segmentation
real-time-audience-segmentation

The division of an audience into distinct segments based on real-time events, thus enabling targeted advertising and alignment with a user's behavioral patterns and preferences.

User Acquisition (UA)
user-acquisition-ua

A mobile marketing effort used to attract new users to an app. Paid UA may refer to ads shown in mobile ad networks or social media channels, while non-paid UA involves app store optimization and promotion on the advertiser’s own channels.

Programmatic Advertising
programmatic-advertising

The automated process of buying and selling advertising space through digital platforms.

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