As third-party signals fade and privacy controls rise, the question for brands isn’t if they should pivot their data strategy, it’s how.
The data landscape has changed dramatically: cookies are crumbling, walled gardens are tightening, and consumers expect greater transparency around how their information is used.
Marketers now face a complex puzzle. Different data sources come with different consent models, levels of quality, and degrees of scale.
Get the mix wrong, and you risk wasted budget, ineffective targeting, or worse: eroding the trust you’ve worked hard to build with customers.
This guide is designed to cut through the noise.
We’ll define the three core types of customer data (first-, second-, and third-party), show where each shines, and explain how to combine them responsibly.
You’ll also find practical frameworks for migrating toward first-party strength, plus governance and measurement checklists to ensure your strategy is both effective and compliant.
When marketers talk about customer data, the conversation usually centers on three categories: first-party, second-party, and third-party.
Each type differs in how it’s collected, how much control you have over it, and what it’s best used for.
This is the gold standard. First-party data is information you collect directly from your customers through your own channels and systems.
Examples of customer data types include:
Because it’s gathered with direct consent, you control the context, accuracy, and recency. First-party data forms the foundation for personalization, retention, and long-term trust.
Second-party data is essentially someone else’s first-party data that you access through a trusted partnership. Think of it as data sharing with permission.
Examples of customer data types include:
This type of data is highly relevant and often more accurate than third-party sources, but it requires clear contracts, governance, and strong alignment between partners.
Third-party data comes from external aggregators who collect information from a wide range of sources: websites, apps, surveys, public records, and more. Marketers often use it for scale and reach.
Examples of customer data types include:
The tradeoff: third party data quality and accuracy can vary, availability is shrinking due to privacy regulations, and reliance on third party data can create compliance risks.
While third-party data can still play a role in broad awareness or filling specific gaps, its dominance is quickly fading.
Each type of customer data comes with clear strengths, inherent risks, and specific situations where it performs best.
Knowing where each one shines (and where it doesn’t) helps marketers design smarter, more compliant strategies.
Criteria | First-Party Data | Second-Party Data | Third-Party Data |
---|---|---|---|
Accuracy | Very high: collected directly from customer interactions. | High: sourced from trusted partner’s first-party data. | Variable: aggregated from many sources with inconsistent quality. |
Scale | Limited: constrained by your own audience size. | Moderate: depends on the size and relevance of partner audiences. | High: broad reach across demographics, geographies, and interests. |
Consent Strength | Strong: explicit opt-in and clear compliance alignment (GDPR, CCPA). | Strong (when contracts are clear): governed by partnership agreements. | Weak: often indirect, facing growing regulatory restrictions. |
Portability | High: can be activated across channels and integrated with clean rooms. | Moderate: requires secure exchanges and compatible systems. | Low: limited portability across platforms; often tied to walled gardens. |
Cost | Generally low: you already own it, though capture/management systems carry overhead. | Moderate: may involve contracts, tech setup, or exchange costs. | High: purchased from providers, with recurring costs for updates or access. |
Typical Use | Personalization, retention, clean-room collaboration, measurement. | Co-marketing campaigns, prospecting into adjacent audiences, channel enrichment. | Broad awareness, market sizing, upper-funnel testing, enrichment within specific platforms. |
Strengths:
Risks/limits:
Best fit:
Strengths:
Risks/limits:
Best fit:
Strengths:
Risks/limits:
Best fit:
Marketers rarely rely on just one type of data. In practice, the strongest strategies blend first-, second-, and third-party data depending on the goal.
Here’s how each comes into play across common scenarios:
A smart data strategy isn’t about choosing one type of data over another, it’s about sequencing and combining them in a way that balances precision, scale, and compliance.
Here’s a framework to guide decision-making:
Your foundation should always be first-party data.
Audit the identifiers you already capture (emails, device IDs, loyalty program logins), review your consent records, and map every capture point across web, app, and offline channels.
Then, design high-value collection experiences. Think gated content, member benefits, or personalized offers that give customers a clear reason to share data.
Once your first-party base is strong, look for opportunities to partner.
The best partners are those with complementary audiences; not direct competitors but brands whose customers overlap with yours in meaningful ways.
Define the use case up front, outline how long the data will be shared, and agree on success metrics before you exchange a single record.
Third-party data should no longer be a default.
Instead, apply it sparingly in contexts where its utility clearly outweighs the risks. For example: testing into a new market or layering demographic context for high-level audience insights.
Always benchmark performance against your first-party data to validate incremental value.
Strong governance is what keeps your strategy resilient.
Document every data source, its purpose, and its history. Establish retention rules and deletion expectations from day one.
Work closely with your legal and security teams to ensure compliance, and treat privacy not as a box to tick but as a core brand value.
Collecting data is only valuable if it’s trustworthy, well-governed, and tied to measurable business outcomes. Marketers should track performance and enforce safeguards in parallel.
To understand whether your data strategy is working, monitor:
Measurement means little without compliance and governance baked in:
Strong measurement paired with robust governance ensures that your data mix not only performs but also stays compliant and resilient as privacy standards evolve.
Turning raw data into business value requires the right infrastructure. A modern marketing stack should cover collection, collaboration, activation, and analytics, with privacy built in at every step.
Start with systems that centralize and standardize your own data:
To safely expand beyond your walls, invest in technologies that support secure data sharing:
Once data is unified and governed, it can power real-time engagement:
Finally, analytics tools close the loop and measure impact:
Shifting to a privacy-first, data-driven strategy doesn’t happen overnight.
If you’re wondering how to shift from third-party to first-party data, the most effective approach is phased: start with a baseline, build securely, test deliberately, and scale what works.
Begin by mapping what you already have. Identify all current data sources, the consent mechanisms tied to them, and any system dependencies.
Look for quick wins, such as fixing broken tags or improving opt-in language, to boost capture rates right away.
Strengthen your first-party foundation.
Standardize event tracking, establish persistent identifiers, and ensure consent records are accurate and accessible.
At the same time, prepare for collaboration and responsible data activation by setting up clean room access and defining clear partner selection criteria.
Run controlled tests with limited scope.
This might include a single second-party partnership to expand reach or a carefully chosen third-party dataset for enrichment.
Always benchmark these efforts against first-party-only cohorts to measure true incremental value.
Once you’ve proven impact, expand.
Broaden successful partnerships, refine enrichment, and embed learnings into standard workflows.
At this stage, governance becomes critical: formalize contracts, define retention and deletion rules, and set a cadence for ongoing validation to ensure compliance and data quality over time.
A phased roadmap not only reduces risk but also creates momentum, giving your team early wins while building toward long-term resilience.
In a world where privacy is tightening and third-party signals are fading, not all data is created equal.
The path forward is clear:
Marketers who embrace this balanced approach will do more than survive the loss of third-party cookies: they’ll build durable customer relationships, smarter activation strategies, and a stronger foundation for growth.
Omnilux, the world leader in medical-grade LED light therapy, partnered with Northbeam and Pinterest to transform its digital marketing performance. By leveraging Northbeam’s Clicks + Deterministic Views (C+DV) model, Omnilux was able to better understand the impact of its Pinterest ad views on real business results: seeing a 659% lift in ROAS, a 728% increase in transactions, and a 671% lift in revenue compared to a traditional clicks-only model.
Founded in 2003 and based in Napa, CA, Omnilux is a trusted name in skincare technology, known for its flagship product, the Omnilux Contour Face. While the company had built a strong reputation among dermatologists and skincare professionals worldwide, it faced a pressing challenge: identifying cost-effective channels that could reliably generate incremental demand and revenue.
As Omnilux prepared for the competitive 2025 holiday season, the team needed confidence in which channels were most efficient at driving purchases. Their goal was ambitious yet clear: achieve 3x ROAS on a 1-day attribution window—a benchmark critical for scaling growth profitably.
Wanting to better understand Pinterest’s role in the customer journey, Omnilux partnered with Northbeam to test Clicks + Deterministic Views, an industry-leading attribution model that goes beyond traditional clicks-only models by layering in verified impression & view data directly from participating ad platforms.
These platform events are combined with Northbeam’s industry-leading, first-party pixel and order data to provide a complete and accurate view of how marketing actually drives conversions. Unlike traditional “view-through” attribution, Northbeam links views deterministically, meaning every impression tied to a conversion is verified, not inferred.
Working closely with both Northbeam and Pinterest, Omnilux was able to quickly implement C+DV and begin measuring campaigns. This collaborative approach allowed the team to directly attribute both clicks and views to transaction data, providing unprecedented visibility into how Pinterest drives revenue.
The results were game-changing:
Beyond the numbers, Omnilux gained a qualitative advantage: a clear, data-backed understanding of Pinterest’s role in driving net-new demand. The marketing team was able to shift spend more efficiently, validate Pinterest as a growth channel, and streamline internal decision-making with trusted attribution.
“Northbeam’s partnership with Pinterest gave us a new level of clarity into how view-based engagements translate into real revenue. It’s been a game-changer for our strategy heading into the holiday season.” — Caleb Orion, Director of Acquisition & Ecommerce, Omnilux
Unlike other attribution tools that rely solely on last-click models, Northbeam’s privacy-preserving device graph and deterministic data integrations deliver a truer picture of channel impact. For Omnilux, this meant cutting through the noise, eliminating wasted spend, and doubling down on what works.
Ready to unlock profitable growth with Northbeam? Book a demo now.
Northbeam is pleased to announce Clicks + Deterministic Views (C+DV), a new attribution model now available in Northbeam. Â
C+DV takes verified impressions and view data directly from participating ad platforms and combines them with Northbeam’s first-party performance data.Â
Advertisers can use C+DV to measure how ad impressions and views influence conversions. This is “viewthrough” conversion measurement done deterministically, which means every impression tied to a conversion is verified, not inferred.Â
Put simply: you can now measure the impact of upper-funnel campaigns more accurately, whereas before advertisers struggled to measure those campaigns with clicks-focused models.Â
Clicks + Deterministic View solves a huge blind spot that plagues modern advertising, paving the way for a new era of growth marketing.Â
Clicks-only measurement is biased towards campaigns at the bottom of the funnel. This obscures the impact of your vital awareness campaigns.
If you’ve ever managed a digital marketing budget, you’ve probably fallen for this destructive bias.
It goes like this: you run amazing awareness campaigns on TikTok, Snap, and CTV. On these platforms people don't always click through immediately. The content performs great, engagement is solid, brand mentions are up, and revenue begins to climb across all your other channels. Â
But according to your attribution dashboard? Those awareness campaigns are basically worthless, as they aren’t connected to any measurable revenue via click behaviors.
Meanwhile, your Google Ads are getting credit for literally every conversion, even though you know most of those people discovered your brand somewhere else first. Even TikTok will admit that click-based measurement undervalues TikTok ads by 73%.Â
The longer you ignore or undervalue your awareness campaigns, the sooner the performance of your bottom-of-funnel conversion campaigns dry up. This leads to further consolidation of budget to lower funnel campaigns, which creates a self-destructive cycle that eventually kills the ad account – and maybe even your business.Â
Before C+DV, marketers focused on clicks and not views because clicks used to be the most reliable measure for proving revenue.Â
It's like being a basketball coach and only focusing on stats about who scored the final basket, while completely ignoring all the assists, steals, and defensive plays that made it possible.
Media consumption is constantly changing, and marketers seeking competitive CPMs are looking to these new channels for efficiency. Yet many of the rising new channels are difficult to measure exclusively with click-based attribution.Â
As marketers, our goal is to get our message in front of the right people at the right time (in a measurable way, I’d argue.) As attention shifts to new channels, it’s our job to follow. So where are people going?
The short answer: video. Video-first, algorithmic-led social platforms lead in time spent on-app by users, with YouTube, TikTok, and Instagram dominating the field.Â
Meta has shifted focus to video with extreme success: Instagram and Facebook continue to command a large share of user attention per day.Â
Connected television (CTV) is taking over: in 2025, 90% of US households use an internet-connected television device at least once a month, where users are streaming on Netflix, Hulu, and even free providers like Tubi.Â
TikTok continues to lead the field in users’ time spent on app. The algorithm-driven discovery model of TikTok’s feed has sweeping influence on other social media, all of whom are launching similar feeds. Users love TikTok, and they love video – as marketers, we must react.Â
But how do you reliably measure the performance impact of these emerging video channels?
As any marketer knows, videos drive considerably less clicks than static ads, but are massive for driving discovery and awareness.Â
Growth marketers needed a reliable model for measuring how these emerging placements drive revenue without clicks: C+DV is perfectly positioned to help you take advantage of this new media environment.Â
So what makes Clicks + Deterministic Views different? Instead of making educated guesses about what happened (like most view-through attribution models do), C+DV actually knows what happened.
We built direct integrations with the major platforms (Meta, TikTok, Snap, Pinterest, Axon, Vibe, and MNTN) to get verified impression data. Not modeled data. Not estimated data. The actual "yes, this specific person saw this specific ad" data.
Then we match that against our first-party pixel and order data using exact identifiers: order IDs, hashed emails, login data. When we say an impression led to a conversion, we can prove it.
This is called “deterministic” attribution, where other viewthrough modeling is “probabilistic.”
The difference between deterministic and probabilistic attribution:
We've been testing this with select customers, and the numbers are shocking:
These aren't small optimizations – these are massive revelations about how their paid media is affecting the bottom line.Â
Omnilux, a world leader in medical-grade LED light therapy, used C+DV to better understand the impact of their Pinterest campaigns: seeing a 695% lift in ROASÂ as a result.
“Northbeam’s partnership with Pinterest gave us a new level of clarity into how view-based engagements translate into real revenue. It’s been a game-changer for our strategy heading into the holiday season.” — Caleb Orion, Director of Acquisition & Ecommerce, Omnilux
See the full customer journey: Finally understand how both clicks and views work together to drive conversions, instead of just seeing the last touchpoint. Witness the funnels that drive your conversions from the moment of discovery to the point of sale, and optimize accordingly.Â
Upper-funnel campaigns get their due: Quantify the actual revenue contribution of your awareness and prospecting campaigns that have been flying under the radar. Better connect revenue to top of funnel campaigns. Justify to clients, bosses, and stakeholders that your awareness campaigns are worth the spend.Â
Make decisions with confidence: Every impression tied to a conversion is proven, not modeled, so you can trust your data. Optimize, reallocate, and experiment in your top of funnel campaigns while knowing you have a way to accurately measure their viewthrough impact.Â
Smarter budget allocation: Know exactly which campaigns are driving downstream revenue and scale what actually works. Stop wasting spend on awareness campaigns that boost vanity metrics but don’t drive measurable revenue.
Cross-platform clarity: Get all your verified impression data combined with our order-level tracking in one unified view. See all your channels in one single dashboard.
Privacy-first approach: All data processing happens in our secure clean room, ensuring compliance and protecting user privacy.
Stop wasting money: Eliminate the over-crediting of last-click channels and avoid underspending on the campaigns that create real demand.
Watch our full webinar for a full breakdown in how to use C+DV.
Thanks to Northbeam's direct integration with each ad platform included in this model, Northbeam can do true in-app "impression matching".Â
This means that conversions can be matched with impressions that helped generate those conversions at the user level.
The logic is straightforward:
When looking at ads under the C+DV model, paid clicks and paid views take full precedence over touchpoints with the following Category (Northbeam) labels:
    - Direct
    - Organic
    - Organic Search
    - Paid - Branded Search
    - Email
    - SMS
Credit between paid clicks and paid views is split as follows:
Read our full explanation on the Northbeam Documentation.
Top-of-funnel channels will see the biggest lift. If you have channels doing lots of demand generation or with low click-through rates, you'll see the highest impact.Â
Performance marketing stays accurate. For bottom-funnel campaigns with high click-through rates, you'll see more modest changes since clicks were already being tracked properly.
Upper-funnel campaigns will fill out a lot of previously-unattributed revenue. Those awareness campaigns that seemed like money pits? You're about to discover their real value.
We've been dealing with incomplete attribution data for so long that we'd almost gotten used to making important budget decisions with half the information. This feels like one of those moments where the industry actually takes a meaningful step forward.
As our VP of Product Stas Goldobin puts it:Â
"We built Clicks + Deterministic Views to set a new standard for attribution accuracy and transparency. There's no guesswork: every conversion is matched with certainty."
If you're already a Northbeam customer, here's how to get started:
Note: By selecting platforms, you're consenting to share impression data with us, so only admins can make these changes.
Ready to see the full picture of your marketing performance? If you're already a Northbeam customer, you can turn this on today in your account settings. If you're not, book a demo and we'll show you what you've been missing.
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