B2B attribution in 2024
As the B2B digital footprint grows, growth leaders have become increasingly eager to learn whether their efforts are actually driving pipeline and revenue.
B2B Attribution helps go-to-market teams overcome the challenge of their long and complex customer journeys. By collecting, joining and modeling all relevant B2B customer data from across the ecosystem, B2B attribution empowers go-to-market teams to build, repeat and scale success.
In this post, we’ll be deep-diving into everything B2B Attribution to make sure that you succeed with your marketing attribution In 2024.
What is B2B Attribution?
B2B Attribution is attribution focused on and tailored exclusively to the B2B customer journey.
This is because the B2B customer journey has two core defining elements:
1. The buying decision is typically made by multiple stakeholders.
That is, the B2B customer is not a single individual but a company where a host of employees are typically involved in the buying journey. Indeed where the individual starting the journey is very unlikely to be the one with the credit card.
2. The buying cycle is typically months-long; on average lasting between 6 and 12 months.
B2B sales cycles can easily last for many months after the first touchpoint (demo, trial, negotiations, etc.)
This is a huge element of B2B attribution that not enough people take into account: time to revenue. Or, in other words, how long it takes from the first time somebody from a potential account visits your website until the account is closed as won.
B2B Attribution is attribution modelling that caters for these two defining elements. B2B attribution is account-based and, as we’ll inspect in much greater detail below, tracks across the months-long B2B buyer journey.
By definition therefore, solutions such as your CRM’s Original Source or B2C-focused tool like Google Analytics, are inadequate for the B2B business.
Let’s see why.
Your CRM ‘original source’ is insufficient
Unfortunately, there are many B2B companies relying on their CRM system’s “original source” field to attribute towards the lead’s first-touch.
While this might offer revenue leaders a glimpse into what touchpoints might be converting leads, it paints only a fragment of the overall picture. This is for three main reasons:
Single-touch: it takes into account the impact of just one touch.
First-touch: it places all value for the conversion to the earliest visit.
Single source: it factors in just one source.
Combined, these three elements carve out only a narrow picture of everything that’s taking place in the customer journey prior to entering the CRM as an SQL. It means potentially not capturing the entirety of the customer (account) journey.
And without taking them all into account as a holistic customer journey, it’s impossible to know what your ROAS, ROI or LTV is on all your ads, campaigns and activities. Which in turn means it is impossible to start making data-driven decisions on what’s working and what isn’t.
More on the CRM Original Source here.
B2C tools don’t work either
In a nutshell, the difference between B2C and B2B attribution is the added complexity and length of the B2B customer journey. There are way more touchpoints and people involved in the B2B buying process, which also means it takes a lot longer to close a deal. A deal, as Steffen highlights in the episode, takes three, six, 12 months to close!
Let’s unpack this a little through a comparison.
A customer journey for, say, buying a new jacket, will look something along the lines of:
Clicks ad/ goes to site directly/ organically and goes through with purchase immediately, or
Clicks ad/ goes to site directly/ organically but does not go through purchase, so is retargeted and then moves to purchase.
Granted, the user might be using two (or more) devices which complicates matters a little.
Getting to the purchase might even take a few weeks, but unlikely much more than that.
Google Analytics is geared mostly to this B2C setup. Here’s a closer look.
1) Google Analytics tracks individual devices not accounts;
As we’ve already mentioned It’s very likely that two or more stakeholders are part of buying your B2B service or product.
But Google Analytics is unable to track this multi-stakeholder buyer journey. It doesn’t know that multiple IDs represent one and the same account, so you end up with gaps all over the place.
This is inadequate for optimising the efforts and user journeys that perform well. It also makes it unfairly difficult to identify where things are (significantly) underperforming.
2) Google Analytics can’t handle long user journeys
Google Analytics only tracks GCLID data for a maximum of 90 days.
Not exactly ideal for the B2B user, right?
From our own customer data, we’ve found that the average B2B buyer sits in the pipeline between 6 to 12 months - from the first touch to the deal being closed as won.
So tracking this vital data for no more than 3 months means most B2Bs are unable to ever see the true impact of their ad campaigns.
3) Only Google Analytics tracked data is taken into account
Google Analytics only takes into account information tracked through GCLID and Google Ads. Which leaves the rest of your paid (and non-paid) activities to be tracked and measured independently, if at all.
The fact is, Google does tracking well, and it does it automatically. Because of this, and because it’s typically the paid channel that takes the lion’s share of the attention (and budget) other activities are tracked much more loosely, if at all.
Ideally, you want to be in a position where you’re tracking (and storing) all your activities with the same vigour and accuracy.
More on Google Analytics’ B2B marketing attribution limitations here.
How does B2B Attribution software work?
So how does a B2B Attribution software solution overcome the challenges posed by the long and complex B2B customer journey?
B2B Tracking Script
The objective of the Tracking Script is twofold: (1) gather as much user and wider account behaviour as possible. (2) link this behaviour to an identified user.
To achieve this, the data tracking starts from the moment a user comes onto your site (and accepts ‘statistics cookies’) - whether through paid ads, direct, or organically. With UTMs on all links and ads to your site to ensure complete tracking.
Your tracking then records users’ interactions with your site, e.g. reading a blog post or subscribing to a newsletter, as well as any properties that describe that action. From which you are able to assign ‘traits’, such as first name and email, to these users’ actions.
The stored data is eventually converted from an anonymous user to an identified user - complete with all relevant details (email, company, etc.).
Integrations with all tools on the go-to-market ecosystem
The rest of your data comes from the tools you’re already working with, e.g. CRM, Ads, Automations, and Customer Success tools, as these already hold critical details about customers across your pipeline.
The integrations in themselves are not technically challenging, and so easily set up.
What does present a challenge is how these tools are defining their data. That is, how they’re labelling their fields, etc. But this relates to the cleaning process outlined in the next point on Data transformation.
Data transformation
Cleaning and Merging
All the data you’ve collected needs to be structured in a uniform way. In particular, you need the data coming from all your tools and site to have the same fields matched and merged under one field with a single label.
For example, your CRM might use “customers”, your ads platform “users”, and your success tool “clients”. These need to be matched and brought under one label, e.g. “users”.
As so for every single item of data.
A B2B Attribution tool cleans the data through:
UTM mapping
After UTM parameters values are extracted (e.g. utm_source, utm_campaign, utm_content) from the URL, the data processing will map certain combinations of UTM parameter values to a customized source and channel name. For example: map (utm_source=hs_automation) to (Source: Hubspot, Channel: Email).
Deduplication
The data coming in from your tools and the site will often overlap with each other. This is sorted and those duplicate fields are removed.
Removing unwanted data
The algorithm then takes into account any null values or not set values within fields, and excludes irrelevant tracking like the activities from your own employees.
Merging to account
As already mentioned defining component in the data set for B2B attribution is the company (account). It is this that places the various users from each company into one single customer account.
The most important element here is to find the company from amongst the data. The B2B attribution platform will set the following hierarchy:
Set a default source for this, e.g. Salesforce (CRM);
Add an alternative tool if it is missing, e.g. when it’s a lead;
If alternative tools have not got that information, your merging algorithm could pick up the email account and assess whether that is a company email address. Or if not, reverse look-up IP address.
Attribution modelling
The B2B attribution software will then move to model the data. This includes:
Setting conversion goals, i.e. what is a conversion, and crucially, be able to identify these from your data.
Setting up the parameters for your sessions and events on all your different data sources. Most companies rely on Google Analytics to define their sessions for web traffic (which carries some risks in its own right, more here) but when you have your own tracking and combine more sources, these are defined by the B2B attribution tool.
And whether some sessions or events should be excluded, such as we might track sent emails, but we do not want to attribute value to a sent email, but rather to emails that was clicked.
Setting up attribution goals/benchmarks by defining what is being attributing towards. For example, your MQLs, SQLs, or New Business.
This includes switching between these models in order to compare what is working against each goal. For instance, MQLs and not for New Bizz, etc. This helps see what occurred at different points in these deals with different marketing/sales models.If you’re working on campaigns or channels with different currencies the B2B attribution modelling will also solve for the currency you want to be reporting in.
Activation
Finally, there’s the activation. That is, where you’ll be working with the data and how.
B2B attribution software providers will offer their own application for this. Dreamdata is no exception. However, Dreamdata also opens up the data sitting in BigQuery where you can:
Run your own queries on our data models
Copy, manipulate, join and use the data within BigQuery
Connect your favourite BI, ML and Operational Analytics tools to the Bigquery data. These include: Hightouch, Google Data Studio, Tableau, PowerBI, Sisense, Looker, and Metabase.
Check out Dreamdata’s latest destinations and dashboards here.
We’ll look at these in more detail below.
Should I build a B2B marketing attribution platform myself?
The plain answer is no. At least not unless you’re an organisation of a certain size with the necessary resources to go down this route painlessly.
And definitely not if you have not tested an off-the-shelf solution first. The last thing you want to do is spend a ton of time, money and effort (which come at the expense of other projects) on a solution you don’t yet know if you need.
Most decisions to go down the build route are based on the following three assumptions.
First Assumption. You don’t need some of the features an off-the-shelf marketing attribution platform offers
Yes, there are some features from an off-the-shelf platform which you might not make use of - at least as far as you’re presently aware of.
Building your own means you would only have those features which you know that you need (at this stage).
However, as we learned in the post, these typically sit at the very top of the platform. That is, they are part of the final set of algorithms and reporting models.
Focusing only on these when building your solution in-house risks not handling the data properly at an earlier stage, e.g. when cleaning and merging your data.
This means that should you find out later that you do in fact want to run an attribution model you excluded initially, you will have to re-do almost the entire data processing and all subsequent steps again.
With an off-the-shelf solution like Dreamdata, you can simply choose not to use a feature without affecting the data collection and cleaning process. With Dreamdata all your data will be cleaned and merged irrespective of whether you end up using that data or not. Which means, should you decide to start applying a different attribution model in the future, you will immediately be able to run these without re-doing algorithms.
Second Assumption. You have the resources to build a solution in-house
If you’re making this assumption it is likely that you have given some thought to what it will take to build the platform in-house.
However, from the post we can see that there are many details which can easily be overlooked. In fact, at Dreamdata we encounter an oversimplified understanding of what happens in an attribution tool quite often.
Many B2B CMOs, ops professionals, and growth leaders (those typically wanting the solution) do not realise just how complex revenue attribution is until they start the process of setting up a solution themselves - this includes setting up both bought off-the-shelf and built in-house.
As laid out in some detail in the post, it really isn’t just pulling data out of the tools and putting them into a dataset. The complexity lies in the sum of all the intricate individual steps in the process.
The devil really is in the detail. If you haven’t set about collecting the right data, or things aren’t being mapped in a correct fashion, or you are not carrying out the necessary maintenance of the platform, you lose the all-important overview and the ability to derive maximum value from doing revenue attribution.
Third Assumption. An off-the-shelf platform doesn’t give you the bespoke tailored solution you want
It is true, almost by definition, that an off-the-shelf platform cannot offer the same level of bespokeness that an in-house solution can.
But, when considering this factor you really need to understand precisely what bespoke solution you’re considering.
Some B2B marketing attribution platforms like Dreamdata, offer a very high degree of customisation and support. The best of off-the-shelf options offer a partnership solution with continual support to ensure the platform is adapted to your needs to the greatest degree possible.
You can limit the scope (and thereby the cost and risk) by utilising an attribution platform like Dreamdata to do the time-consuming data crunching and use the resulting cleaned data to power your own BI or dashboard solution. In this way, you can build bespoke solutions tailored to your business in-house, without having to build up all the data infrastructure.
It is also worth noting the point made in the ‘maintenance’ section above. You need to weigh in the fact that an off-the-shelf platform like Dreamdata will be constantly using all its resources to innovate and find better and faster ways of doing things.
Creating this enduring competitive advantage (which is very unlikely to be done in-house) carries considerable value in its own right, especially if it factors in customisation.
What an off-the-shelf B2B marketing attribution offers
A safer investment of time and treasure
With an off-the-shelf B2B attribution platform like Dreamdata you are spared from the higher risk investment of building a solution yourself.
An off-the-shelf tool B2B attribution tool will already have most, if not all, the features you’re looking for.
Whether it’s to get a taster of what scope, functionality and features you want, or to trial the value of B2B attribution itself, or even to wait till you are further in your growth journey with more resource, an off-the-shelf tool like Dreamdata is the better choice.
Attribution models for every flavour
Out-of-the-box, a B2B marketing attribution software platform like Dreamdata allows you to analyse your revenue-generating journeys through many different attribution models, including:
First Touch
Linear
Last Touch
U-Shaped
W-Shaped
Linear Non-Direct
First Touch Non-Direct
Last Touch Non-Direct
U-Shaped Non-Direct
W-Shaped Non-Direct
Customisability
One of the motivations behind wanting to go it alone is a business requirement for high customisability. Nothing quite compares to doing this yourself, right?
Many off-the-shelf B2B marketing attribution software offer high levels of customisation within their applications. Dreamdata for instance offers a very wide selection of filters which enables a high level of dashboard customisation.
At a more technical level, Dreamdata offers custom attribution models which can be designed entirely by you.
But even if this doesn’t go far enough, Dreamdata offers free access to the data platform. Meaning that you get full access to all the modelled data. Which you can then connect to your favourite BI/visualiusation tool, ML model, and/or send back to your go-to-market tool using reverse ETL tools.
Maintenance
Ensuring the dashboards are presenting the correct data.
You’re going to need systematic monitoring of the data that’s being pulled, i.e. that your algorithms from top to bottom are all doing exactly what they should be. Otherwise, any analyses and attribution your running will be as good as useless.
Changes in requirements
What if your CMO or growth leader changes and sets out new performance targets and metrics? Here is where the extent of automation built into your modelling and reporting becomes very useful. Unless automatic, not a question of pressing a button. More redoing.
Changes in commercial tech stack
Say you buy another tool for your commercial tech stack, or even replace your CRM, how is your system going to manage the changes necessary?
Troubleshooting
There’s the obvious problem of troubleshooting any errors that prop up across the system. A particularly important point to bear in mind is if there’s a break taking three weeks to solve, what happens with the tracking data then?
Innovation or improvements
Are you planning to run with the pack (or peloton if you’re into cycling) or are you striving for a leadership position where you’re creating an enduring competitive advantage?
Sure, keeping up with trends and changes in the tech stack might suffice, but to really draw continued maximum benefit, you will need to have some innovation.
In summary, off-the-shelf B2B marketing attribution software like Dreamdata will:
Ensure the dashboards are presenting the correct data.
Accommodate changes in requirements
Accommodate changes in commercial techs tack
Help with troubleshooting
Ensure constant innovation or improvements
Dive deeper into the Build vs Buy question in this post.
What are the benefits of B2B marketing attribution?
Ok, so now we’ve covered what’s under the hood. But how does all this help B2B go-to-market teams build, repeat and scale success?
Well, here are some examples for Marketing, Sales and Data teams:
For Marketers
Unprecedented clarity of the B2B customer journey
By connecting all the dots on the B2B customer journey, B2B marketing attribution paints as complete a picture as possible of what is happening in that journey.
This means you will know when and how your leads are interacting with your efforts. And ultimately find what’s working and what isn’t in driving them down the funnel.
You also learn the crucial Time to Revenue metric - from first touch as anonymous user to deal closed as one (and beyond). Meaning that you can better plan and time your efforts.
Check out this post for much more on the benefits of Time to Revenue.
Dreamdata’s B2B marketing attribution software has a Customer Journey map that plots every touch every user and account makes.
Confidence to Scale
This clarity into all your channels, campaigns and other revenue-generating efforts means you finally gain the confidence to scale.
By connecting your efforts to pipeline and revenue you learn which are your high-converting channels and touchpoints, what campaigns are performing and which need scrapping. You can reduce wastage and double down on what works, so that when the order comes down to scale your efforts by X, you know exactly where to go.
With this clarity, forecasting becomes more accurate, as does improving loyalty, retention and brand reputation.
Don’t take our word for it.
Start using Dreamdata free now.
For Sales
Although attribution is attributed - pun intended - to Marketing, it’s benefits span the entirety of the go-to-market teams. This includes Sales.
Insight into the customer journey
A B2B Attribution tool can help Sales know when leads get hot. Meaning that there is no more time wasted on guessing when prospects and customers are heating up. No more sending misaligned or mistimed outreach.
A B2B marketing attribution platform like Dreamdata will have Demand Data telling you when and where your leads are active. This means you can see what content your lead has consumed and what pages they’ve visited, to create highly personalised outreach.
Being able to pull all the transformed data out of BigQuery, also means that your product-led Sales is made that much easier. Especially if you get your web-based product data into your CRM. Like Dreamdata did using hightouch.
Sales Performance
At the performance level too, B2B attribution software offers a Sales team plenty to work on. Dreamdata for instance, offers analysis of your performance by segment. Who in your team has done what and when. Which makes narrowing down successes - and repeating them - all the easier.
Worth mentioning too, the improvement of Marketing-Sales alignment a B2B attribution tools can usher. Working from the same data set, with the same metrics, and the same insights, means the synergies between both teams can improve from the outset.
More on Marketing-Sales alignment through B2B attribution in this article.
5 Use Cases for B2B Attribution with Dreamdata
Here are the following 5 use cases:
Scaling your Google Ads
Get more out of Capterra ads
Make the most out of G2 Buyer Intent data
Measuring the ROI of content
Pulling data out
Scaling your Google Ads
Once you’ve got your Google Ads connected to revenue, you’re able to accurately calculate the ROAS on each of your campaigns and the LTV on every one of your ads.
No matter how long it takes from the ad click event to the deal closed as won by the account.
This means that you can finally take control and optimise your Google ad spend: scaling the campaigns that actually work and scrapping the ones that don’t. So you can wave bye-bye to optimising for clicks and traffic and all the funny branded ads trickery to keep these metrics up. Revenue is the name of the game.
What’s more, the beauty of revenue attribution is that it encompasses the entirety of your paid and non-paid activities - not just your Google Ads campaigns. That is, every recordable activity across marketing, sales and customer success.
The ultimate result, and the one the C-suit will be most happy with, is that you’re able to improve ROI across all revenue-generating activities.
Boost lead quality
Attributing your Google Ads data to deals and revenue gives you the tools to finally nail down the quality of your leads. After all, scaling is only possible if leads are first qualified. No use sending rubbish leads over to sales.
But it doesn’t end here, you’re able to assess performance on pipeline generated too. How effectively are your campaigns generating MQLs and SQLs. With Dreamdata’s attribution to pipeline stage filters you can attribute to MQL and SQL as well as New Bizz. Helping you with lead quality.
Dreamdata’s Journeys feature will allow the marketer to look at what is happening once the lead leaves the marketing funnel and enters the sales pipeline.
2. Get more out of Capterra ads
Dreamdata connects your Capterra ads to revenue and pipeline generated. This means you can see the ROAS of each of your categories and at-a-glance assess which is proving the better investment.
From this, you can then decide whether you want to drop the category altogether, or increase bid to rank higher.
Cross-referencing your average position on the category against the number of visitors and ROAS can help you guage whether there is potential to capture more (quality) leads.
But there’s more.
You can test your assumptions on categories you assume you sit in. In other words, looking across all metrics you can verify whether the categories you suppose your leads would be swimming are in fact where your leads are swimming!
If one category is pumping more quality leads than the others, you know you can double down on that label (positioning) - outside Capterra.
In attributing revenue and pipeline towards unique URLs, Dreamdata’s B2B attribution platform you’re very quickly able to identify which G2 URLs may be underperforming. At a higher level too, you’ll be able to assess the value of the G2 channel/subscription as a whole.
The intent data shown in the reports help better understand customers’ intent and to some extent behaviour, which offers a cheat sheet for any outbound, especially cold, outreach.
From the visited URLs you’re able to learn which companies are researching your product, category, and competitors on G2. You can then find the personas at those companies you might want to contact.
If you’re in the Social Selling scene, you can also connect with these relevant individuals and bring them into your network.
Couple this with Dreamdata’s on-site tracking, and you have a very good overview of what the prospect might be looking for, helping you tailor and personalise your outreach.
For more on Dreamdata and G2 Buyer Intent data see this post.
4. Find out what content is delivering ROI
Despite being Dreamdata’s B2B attribution platform helps you quickly see what content marketing activities and channels are delivering the most value to the business.
By connecting your content to pipeline and revenue generated on each item of content and content grouping, Dreamdata enables you to know which content pieces are due for optimization, which ones may have low traffic but great ROI, which ones have high traffic but horrific conversion, and so on.
In short, you get to keep your powerhouses while opening up budget for more of the same content, a creative experiment, a new headcount.
Once again, the Customer Journey map plays a role here too. You can see when in your customer journey your individual content items are having an impact. This in turn helps narrow down your content target audience and intent levels.
5. Sending your transformed customer data back into your go-to-market tools using a Reverse ETL solution
The advent of reverse ETL has set Marketing and Sales teams towards the ambition of getting relevant data from their warehouse back into their tools.
“Reverse ETL is the process of copying data from a cloud data warehouse to operational systems of record, including but not limited to SaaS tools used for growth, marketing, sales and support.” - Tejas Manohar, CEO of Hightouch
But what if the data sitting in the warehouse is dirty in the first place? The whole process is jeopardised.
Dreamdata provides the clean, unified customer data in your warehouse, and as such the necessary trust in the data. This modelled data can then be synced to your CRM, ad platforms, etc. using reverse ETL tools, much more reliably.
Find a further 9 Data Platform use cases in this post.
SUMMARY
Why Dreamdata for
B2B Attribution?
Complete B2B Customer Journeys. Finally
Get unprecedented insights to every single touch of every customer journey; from anonymous visitor to paying customer.
Critical B2B marketing attribution Insights
Reveal the revenue-generating performance of activities across the pipeline, channels and campaigns.
Aggressively Build and Scale what works
Deepdive into every aspect of every channel, campaign and experiment to rapidly drive up your ROI.
FAQs
What is B2B attribution, and why is it important for businesses in 2024?
In 2024, B2B attribution refers to the process of determining which marketing touchpoints or channels contribute to a sale or conversion in the B2B space. It's crucial because it helps businesses understand the ROI of their marketing efforts and allocate resources effectively.
What are the primary attribution models used in B2B marketing today?
Attribution models like first-touch, last-touch, multi-touch, and even more advanced data-driven attribution models are commonly used in B2B marketing in 2024. Understanding these models and choosing the right one for your business is essential.
How can businesses overcome the challenges of B2B attribution, especially in complex, long sales cycles?
B2B sales cycles are often lengthy and involve multiple decision-makers. Overcoming attribution challenges in 2024 may involve using advanced tracking tools, CRM integrations, and lead scoring models to better attribute marketing efforts throughout the sales journey.
What role does marketing automation play in B2B attribution in 2024?
Marketing automation tools have become increasingly important in B2B attribution. They help track and attribute marketing interactions across various channels, making it easier to analyze the buyer's journey and identify influential touchpoints.
How can businesses leverage data analytics and AI in B2B attribution for better insights?
In 2024, data analytics and AI are powerful tools for B2B attribution. Businesses can use these technologies to analyze vast amounts of data, detect patterns, and gain insights into which marketing channels and strategies are most effective in driving conversions.