Joshua Dreller
Sr. Director, Content Marketing @ Skai
Joshua Dreller
Sr. Director, Content Marketing @ Skai
Marketing teams face mounting pressure to demonstrate the precise impact of their advertising investments. With fragmented media channels and complex customer journeys, traditional measurement methods often fall short in identifying which marketing activities truly drive business results.
Many marketers rely on attribution models that assign credit to touchpoints along the customer journey, but these systems frequently misrepresent the actual contribution of marketing efforts. A significant portion of conversions credited to advertising often would have occurred naturally without intervention, leading to misallocated budgets and missed opportunities.
Incrementality measurement addresses this challenge by scientifically determining which marketing activities create genuine business impact beyond what would have happened organically. The following sections unpack incrementality measurement’s methodology, benefits, and practical applications to help marketing teams optimize spend, maximize return on investment, and confidently answer the fundamental question: “What actual value does our marketing deliver?”
Incrementality measurement in marketing quantifies the additional impact or lift generated by activities beyond what would have occurred without them. Rather than tracking correlations between marketing touchpoints and conversions, incrementality measurement isolates the causal relationship between specific marketing actions and business outcomes.
At its core, incrementality measurement asks: “What would have happened if this marketing activity hadn’t taken place?” This question cuts through the noise of traditional attribution to reveal the true value of marketing investments.
For example, a retargeting campaign might claim credit for 1,000 conversions according to standard attribution models. However, incrementality measurement might reveal that 800 of those customers would have purchased regardless of seeing the ads. In this case, the campaign’s incremental value is just 200 conversions—a critical distinction for accurate budget allocation.
Incrementality measurement serves as the foundation for calculating metrics like incremental return on ad spend (iROAS) and incremental cost per acquisition (iCPA), which provide a clearer picture of marketing performance than their non-incremental counterparts.
The approach has gained recognition as the “north star” of marketing measurement because it:
Attribution systems allocate conversion credit across marketing touchpoints using predetermined models, from simplistic last-click attribution to sophisticated multi-touch attribution (MTA) systems. While attribution helps marketers understand the customer journey, it fundamentally answers “Which marketing touchpoint gets the credit?” rather than “Which marketing activity caused the conversion?”
The distinction between attribution vs. incrementality becomes clear when examining how each approach handles organic conversions:
Consider branded search campaigns: attribution typically assigns these campaigns high conversion credit because they appear immediately before purchase. However, incrementality testing often reveals that many users searching for a brand would have converted through organic results without paid ads.
Attribution also struggles with collinearity—when multiple marketing channels operate simultaneously with similar patterns. Attribution models cannot reliably distinguish each channel’s independent contribution, while incrementality experiments isolate individual channel impact through controlled testing.
As privacy regulations restrict individual-level tracking, incrementality measurement offers a future-proof alternative by measuring aggregate lift rather than individual user paths.
Marketers encounter several persistent challenges when attempting to measure marketing effectiveness:
Incrementality measurement tackles these issues by examining overall business results instead of tracking specific people, allowing marketers to maintain measurement accuracy even as privacy regulations continue to change.
Marketers looking to understand how to measure incrementality should rely on experimental design principles to isolate the causal impact of marketing campaigns. While implementation details vary, most approaches follow these fundamental methodologies:
The foundation of incrementality measurement is creating comparable audience segments where one group receives a marketing treatment while another similar group (the control group) does not. By comparing conversion rates between these groups, marketers can isolate the incremental lift attributable to specific advertising activities.
In this approach, a portion of the audience is deliberately excluded from exposure to specific marketing activities. The performance difference between the holdout group and the general audience reveals the incremental impact of the withheld marketing channel.
When individual-level audience targeting isn’t feasible, geographic testing becomes valuable. This method identifies statistically similar markets and applies different media treatments across regions to measure performance variations.
This technique serves “blank” or public service advertisements to the control group in the exact placements where marketing ads would normally appear. This controls for placement bias while isolating the creative impact.
Modern incrementality measurement tools employ causal discovery algorithms and machine learning to predict baseline performance. These sophisticated platforms reduce the need for extended control periods that might sacrifice marketing impact while maintaining statistical validity through careful consideration of sample size, test duration, and audience segmentation.
Many marketers familiar with A/B testing might wonder about the differences. While A/B testing typically focuses on optimizing specific elements within a campaign (like headline variations or button colors), incrementality testing measures the holistic impact of entire marketing initiatives on business outcomes. Both use control groups, but incrementality testing specifically isolates whether marketing activities caused conversions that wouldn’t have happened otherwise.
Learn more about incrementality testing vs. A/B testing to maximize your experimental marketing effectiveness.
Incrementality measurement generates several essential metrics that transform marketing analysis:
These metrics demonstrate why incrementality measurement matters, delivering substantial benefits:
Marketers who implement incrementality measurement gain actionable insights that transform abstract data into clear directions for improvement. This transition from correlation-based to causation-based decision-making represents a significant advancement in marketing intelligence.
Incrementality measurement transforms theory into practice across numerous marketing scenarios:
Determine which advertising channels deliver genuine incremental value versus those that merely claim credit for conversions that would have happened anyway. This analysis often reveals surprising insights about high-performing channels in attribution that show minimal incremental impact, particularly with brand search campaigns that frequently capture organic intent.
Identify the optimal spending level for each channel before diminishing returns set in. Incrementality tests at various budget levels reveal the point at which additional spending no longer generates proportional returns, maximizing incremental ROI.
Move beyond engagement metrics to measure which creative approaches actually influence purchase behavior. Two campaigns might show similar click-through rates but dramatically different incremental conversion lifts.
Test whether targeted advertising to existing customers drives incremental purchases or simply captures sales that would have occurred organically. This insight helps determine whether remarketing budgets should be reallocated to prospecting efforts.
Evaluate the impact of television, radio, or print campaigns by conducting geographic incrementality tests that compare regions with different media exposures.
Distinguish between promotions that drive incremental revenue versus those that discount purchases that would have happened at full price. This prevents margin erosion from unnecessary discounts.
Organizations implementing incrementality measurement typically begin with high-investment channels to validate their effectiveness before expanding testing across the full marketing mix. The insights gained often lead to significant budget reallocation and performance improvements.
Skai’s measurement solution empowers marketers to quantify the true impact of their advertising investments through rigorous incrementality testing. Our platform delivers insights in weeks rather than months, using privacy-safe aggregate data analysis rather than relying on cookies or individual identifiers.
Since 2006, Skai has pioneered marketing measurement innovation, helping brands eliminate friction caused by walled garden media. Our machine-learning algorithms enable companies to predict and adapt to the ever-changing consumer journey.
Our Impact Navigator provides in-platform incrementality testing that uncovers real impact and drives growth. As part of our comprehensive omnichannel marketing platform, incrementality measurement capabilities integrate seamlessly with activation solutions across retail media, paid search, paid social, and app marketing. This integration enables marketers to quickly implement optimization recommendations based on incrementality insights.
With Skai, marketers can answer critical questions like “What happens if I stop spending with Vendor X?” or “Which channels should I add budget to for maximum impact?” Our platform transforms measurement from correlation to causation, focusing your budget on what truly drives business results.
Book a demo today to see how Skai’s incrementality measurement can transform your marketing ROI.
Incrementality measurement is straightforward to implement with modern solutions that automate the complex statistical work, requiring only proper maintenance of test and control groups during the measurement period.
Incrementality tests should be run quarterly for major channels and campaigns, with additional testing whenever introducing new tactics or making significant budget changes.
Incrementality measurement works for businesses of all sizes, though smaller companies may want to focus testing on their highest-spend channels to ensure adequate conversion volume for statistical significance.
Privacy regulations have minimal impact on incrementality measurement because they focus on aggregate lift rather than individual user tracking, making it an ideal approach for today’s privacy-conscious marketing environment.
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