73% of CMOs say they still can’t tie brand campaigns to revenue with confidence. That gap — between what brands measure and what they can actually decide from it — is the whole story behind the shift to decision intelligence. Kantar’s latest brand measurement data doesn’t just tweak the old scorecard. It rewrites the premise of what measurement is for.
For years, marketing teams have reported reach, impressions, engagement rate, and sentiment scores as if they were ends in themselves. They’re not. They’re inputs. And Kantar’s newest research suggests the industry is finally admitting it.
Why “More Data” Stopped Being the Answer
Brands have never had less trouble collecting data. They’ve had constant trouble using it. The average enterprise marketing team now pulls metrics from a dozen-plus sources — platform dashboards, social listening tools, brand trackers, MMM outputs, creator analytics — and most of it never makes it into an actual decision. It sits in a slide, gets a nod in a QBR, and disappears.
Kantar’s framing calls this the “measurement paradox”: as data volume rises, decision confidence falls. That’s not a data problem. It’s an architecture problem. Vanity metrics were built for a broadcast-era mindset, where the goal was proving a campaign ran, not proving it changed anything. Decision intelligence flips the question from “what happened” to “what should we do next.”
The real cost of vanity metrics isn’t bad reporting — it’s the slow erosion of trust between marketing and finance, every quarter a campaign gets a green checkmark that revenue never confirms.
This matters more now because budget scrutiny hasn’t let up. Finance teams want marketing spend justified in the same terms as any other capital allocation. Reach and impressions don’t survive that conversation. Contribution to sales, share of market, and payback period do.
What Kantar’s Data Actually Shows
Strip away the framing language and a few concrete patterns emerge from the research:
- Brand equity metrics are being re-linked to short-term sales data, not treated as a separate long-term track. Marketers are under pressure to show how brand health moves the needle within the same fiscal cycle, not just over three-to-five-year horizons.
- Predictive modeling is replacing descriptive reporting as the primary output brands want from measurement partners. Clients aren’t asking “how did we do,” they’re asking “what happens if we shift 15% of budget from paid social to creator partnerships next quarter.”
- Cross-channel attribution is being rebuilt around outcomes, not touchpoints. The old multi-touch attribution models that credited every impression along a path are giving way to models that weight for actual influence on purchase intent and conversion.
- AI-assisted measurement is now table stakes, not a differentiator. Brands expect their measurement stack to flag anomalies, forecast scenarios, and surface recommendations automatically, not just visualize historical data.
None of this is subtle. It’s a full re-orientation of what a measurement function is supposed to deliver to the C-suite.
Decision Intelligence, Defined for Marketers Who’ve Heard the Term Too Many Times
“Decision intelligence” risks becoming another buzzword nobody defines precisely enough to act on. Strip it down: it’s the discipline of connecting data, models, and business judgment so that a specific recommendation comes out the other end — not just a dashboard.
A vanity-metrics report says engagement rate was up 12% this quarter. A decision-intelligence report says: reallocate 20% of paid media budget toward mid-tier creators in the Southeast region, because incremental reach there is outperforming national buys by a measurable margin, and here’s the confidence interval.
That’s the difference. One is descriptive. The other is prescriptive, with the evidence attached.
This is also why measurement and media planning are merging into the same function at more organizations. You can’t do decision intelligence with a measurement team that reports quarterly and a planning team that budgets annually on separate timelines. The whole point is a feedback loop tight enough to act on mid-flight.
The Practical Shift: What Brand Teams Need to Change
None of this works if it stays theoretical. Here’s where it actually touches day-to-day marketing operations:
- Stop reporting metrics without a paired action. Every KPI on a dashboard should answer “so what do we do differently.” If it doesn’t, cut it from the report.
- Consolidate your measurement stack. Running six disconnected tools that each own one slice of the funnel guarantees fragmented decisions. This is the same logic driving broader martech consolidation across brand organizations right now.
- Build scenario modeling into quarterly planning, not just annual budget cycles. If your quarterly planning framework doesn’t include a “what if we shift budget” exercise, it’s already behind where finance expects marketing to be.
- Treat creator and UGC data as a measurement input, not a separate silo. If you’re already trying to measure and report on UGC authenticity premium, that data needs to feed the same decision models as paid and owned channels, not live in a separate report nobody cross-references.
- Get comfortable with confidence intervals, not point estimates. Decision intelligence outputs come with ranges and probabilities. Executives raised on single-number KPIs will need re-training here, and that’s a change management job as much as a technical one.
If your brand measurement report doesn’t end in a recommended action with a confidence level attached, it’s still a vanity-metrics report wearing a decision-intelligence label.
Where AI Fits — and Where It Doesn’t
AI is doing real work in this shift, but not the work most vendor decks claim. It’s not “AI tells you what to do.” It’s AI compressing the time between data collection and pattern detection, so human strategists spend their time on judgment calls instead of data wrangling.
That distinction matters because brands are already skeptical of AI overreach in adjacent areas. Consumer trust in AI-generated ads has been eroding, and creative teams are already rewriting briefs in response to AI ad skepticism. Measurement doesn’t get a pass from that scrutiny. If a brand’s decision-intelligence model recommends a media shift and nobody on the team can explain the underlying logic, that’s not intelligence, that’s a black box with a confident tone.
The brands getting this right are pairing AI-driven forecasting with human review checkpoints, especially before big budget swings. Kantar’s data backs this up implicitly: the measurement approaches gaining trust are the ones that show their work, not just their conclusions.
The Org Chart Problem Nobody Wants to Talk About
Here’s the part measurement vendors gloss over: none of this works if the org chart doesn’t change too. Decision intelligence assumes marketing, data science, and finance are looking at the same model with the same assumptions. In most companies, they’re still working from three different spreadsheets.
This is part of why AI-native marketing job titles are starting to signal where budgets are headed — measurement and analytics roles are being folded into strategy functions rather than sitting downstream of them. If your measurement lead reports three levels below the CMO and gets read into decisions after they’re made, you don’t have decision intelligence. You have a very sophisticated after-action report.
Some brands are solving this by pulling measurement in-house entirely, following the same logic behind recent in-house AI marketing shifts. Others are restructuring agency relationships so the measurement partner sits in planning meetings, not just post-campaign reviews. Either path works. Staying in the old structure, where measurement is a report card delivered after the money’s already spent, doesn’t.
Industry data on this trend keeps pointing the same direction. eMarketer’s coverage of marketing measurement has repeatedly flagged the gap between data collection and data usage as the industry’s biggest unsolved problem, and Statista’s surveys of marketing leaders consistently show attribution confidence lagging well behind attribution spend. HubSpot’s own state-of-marketing research has flagged similar disconnects between reporting effort and reporting impact for several consecutive cycles.
FAQs
What is decision intelligence in marketing measurement?
Decision intelligence is an approach to measurement that pairs data, predictive modeling, and human judgment to produce a specific recommended action, rather than just a descriptive report on past performance. It’s the difference between a dashboard showing what happened and a system that recommends what to do next, with a stated confidence level.
Why are vanity metrics like reach and impressions falling out of favor?
Because they describe activity, not outcomes. Finance and executive leadership increasingly want marketing measurement tied to revenue, market share, or contribution margin, and vanity metrics can’t answer that question. Kantar’s data shows brands shifting reporting frameworks toward outcome-linked, action-oriented metrics for this reason.
How does AI change brand measurement without replacing human judgment?
AI speeds up pattern detection, anomaly flagging, and scenario forecasting, compressing the time between raw data and insight. Human strategists still need to validate assumptions, check for bias, and make the final call, especially on major budget reallocations, because AI models can’t fully explain business context or brand risk tolerance.
What should marketing teams do first to move toward decision intelligence?
Start by auditing every recurring metric in your reporting stack and asking whether it currently drives a decision. Cut or consolidate anything that doesn’t. Then build scenario modeling into quarterly, not just annual, planning cycles so measurement informs budget shifts in real time.
Does this shift apply to influencer and creator measurement too?
Yes, and arguably it applies there first. Creator and UGC performance data is often siloed from paid and owned measurement, which defeats the purpose of decision intelligence. Brands need creator metrics feeding the same models as the rest of the media mix, not living in a separate report.
Next step: Audit your next quarterly brand report and count how many metrics end in a recommended action versus a mere observation. If the ratio is lopsided toward observation, that’s your starting point for building a real decision-intelligence practice, not another dashboard refresh.
FAQs
What is decision intelligence in marketing measurement?
Decision intelligence is an approach to measurement that pairs data, predictive modeling, and human judgment to produce a specific recommended action, rather than just a descriptive report on past performance. It’s the difference between a dashboard showing what happened and a system that recommends what to do next, with a stated confidence level.
Why are vanity metrics like reach and impressions falling out of favor?
Because they describe activity, not outcomes. Finance and executive leadership increasingly want marketing measurement tied to revenue, market share, or contribution margin, and vanity metrics can’t answer that question. Kantar’s data shows brands shifting reporting frameworks toward outcome-linked, action-oriented metrics for this reason.
How does AI change brand measurement without replacing human judgment?
AI speeds up pattern detection, anomaly flagging, and scenario forecasting, compressing the time between raw data and insight. Human strategists still need to validate assumptions, check for bias, and make the final call, especially on major budget reallocations, because AI models can’t fully explain business context or brand risk tolerance.
What should marketing teams do first to move toward decision intelligence?
Start by auditing every recurring metric in your reporting stack and asking whether it currently drives a decision. Cut or consolidate anything that doesn’t. Then build scenario modeling into quarterly, not just annual, planning cycles so measurement informs budget shifts in real time.
Does this shift apply to influencer and creator measurement too?
Yes, and arguably it applies there first. Creator and UGC performance data is often siloed from paid and owned measurement, which defeats the purpose of decision intelligence. Brands need creator metrics feeding the same models as the rest of the media mix, not living in a separate report.
Top Influencer Marketing Agencies
The leading agencies shaping influencer marketing in 2026
Agencies ranked by campaign performance, client diversity, platform expertise, proven ROI, industry recognition, and client satisfaction. Assessed through verified case studies, reviews, and industry consultations.
Moburst
-
2

The Shelf
Boutique Beauty & Lifestyle Influencer AgencyA data-driven boutique agency specializing exclusively in beauty, wellness, and lifestyle influencer campaigns on Instagram and TikTok. Best for brands already focused on the beauty/personal care space that need curated, aesthetic-driven content.Clients: Pepsi, The Honest Company, Hims, Elf Cosmetics, Pure LeafVisit The Shelf → -
3

Audiencly
Niche Gaming & Esports Influencer AgencyA specialized agency focused exclusively on gaming and esports creators on YouTube, Twitch, and TikTok. Ideal if your campaign is 100% gaming-focused — from game launches to hardware and esports events.Clients: Epic Games, NordVPN, Ubisoft, Wargaming, Tencent GamesVisit Audiencly → -
4

Viral Nation
Global Influencer Marketing & Talent AgencyA dual talent management and marketing agency with proprietary brand safety tools and a global creator network spanning nano-influencers to celebrities across all major platforms.Clients: Meta, Activision Blizzard, Energizer, Aston Martin, WalmartVisit Viral Nation → -
5

The Influencer Marketing Factory
TikTok, Instagram & YouTube CampaignsA full-service agency with strong TikTok expertise, offering end-to-end campaign management from influencer discovery through performance reporting with a focus on platform-native content.Clients: Google, Snapchat, Universal Music, Bumble, YelpVisit TIMF → -
6

NeoReach
Enterprise Analytics & Influencer CampaignsAn enterprise-focused agency combining managed campaigns with a powerful self-service data platform for influencer search, audience analytics, and attribution modeling.Clients: Amazon, Airbnb, Netflix, Honda, The New York TimesVisit NeoReach → -
7

Ubiquitous
Creator-First Marketing PlatformA tech-driven platform combining self-service tools with managed campaign options, emphasizing speed and scalability for brands managing multiple influencer relationships.Clients: Lyft, Disney, Target, American Eagle, NetflixVisit Ubiquitous → -
8

Obviously
Scalable Enterprise Influencer CampaignsA tech-enabled agency built for high-volume campaigns, coordinating hundreds of creators simultaneously with end-to-end logistics, content rights management, and product seeding.Clients: Google, Ulta Beauty, Converse, AmazonVisit Obviously →
