Marketing Attribution — The Beginning of a Data Journey

Manu Jerath
6 min readApr 7, 2022

The ability of a marketing organization to track marketing attribution is often considered an end in itself when it comes to advanced marketing analytics. Every marketing leader takes immense pride in talking about the marketing analytics teams at their organizations when they have implemented attribution tools/frameworks and can provide attribution data either via salesforce.com or via in case of more mature analytics teams in platforms like Tableau, Looker, DOMO, etc. Needless to say, marketing attribution is among the elite group of B2B marketing metrics that every data-driven marketing leader likes to track and is widely used across most innovative marketing analytics organizations.

The most common goal and outcome of generally available attribution models/tools is the ability for the revenue (both marketing and sales) teams to track the impact of marketing efforts on generating new pipeline and helping accelerate the existing pipeline.

This is exactly where most of the marketing teams end up dropping the ball. The primary use of the attribution data is mostly limited to tracking how much revenue and pipeline marketing teams are impacting.

We live in a world wherein a multitude of marketing tactics and channels are used by organizations to engage with their customers. Given the connected world we live in and how we gather information, for every closed deal, numerous marketing touches are involved from web engagement (visits, clicks) to email engagement, to webinars, e-books, white papers, in-person events, and the list of possible touches goes on and on. While all these touches have a varying degree of influence on the wins but they all come at a cost and it is not possible for any marketing leader to allocate her budget to these different tactics without some insights into how these tactics perform when it comes to winning those deals. Gone are the days when a marketer could just go by what she “felt” was right.

Given the growing pressure on the marketing teams to continuously justify the spending and deliver higher ROI,

marketing attribution metrics are among the best available metrics to demonstrate marketing’s quantifiable impact on the pipeline.

While others see attribution as an end in itself, we see attribution differently.

For us, marketing attribution is more of a framework that opens up the gates to a wealth of information about touch points, marketing engagements, and customer behavior that is very unique to the GTM strategy of an organization.

This data, if synthesized appropriately with key business outcomes in the focus can be leveraged to provide insights for continuously optimizing marketing execution.

From a data analytics perspective, marketing attribution data at its core is nothing more than a framework for tracking every touchpoint across the customer journey.

All these touch points from the very first touch (by sales and marketing teams across various channels) to the last touch (till a deal is closed) are organized in a relational database along with the time stamps for when those engagements happened. These touch points are then further related to the different data sources about campaigns, channels, accounts, opportunities, etc. to provide an enriched data source with comprehensive information that can be further mined to derive key insights into customer engagement behavior and marketing campaign conversions.

Some of the most common marketing use cases that I have implemented by leveraging this enriched data include:

  1. Aggregating the attribution data over a time period across the deals/opportunities to create a cluster chart/heat map providing visibility into the distribution and conversion across various marketing offers and channels throughout the deal cycle.
  2. Aggregating the attribution touch points data by different marketing tactics/channels/vendors and combining it with the spend data across different channels (especially digital channels) to track marketing ROI. Remember the questions you get asked from the board like: what was the impact of Facebook ads on pipeline generation last quarter? All those get answered now and on the fly!
  3. Using the insights from these data clusters to create GTM campaign playbooks for different industries, persona, and especially for ABM campaigns. You are able to see generalizations and best conversion paths around what campaigns and tactics among the marketing mix drive the highest engagements from decision-makers through different channels and different stages of the funnel.
  4. This attribution dataset provides the richest data with all the marketing engagements and sales touch points laid out in an organized time series format to track the journey of customers throughout the deal cycle along with the details around persona, frequency of engagement at different stages of the deal cycle. These insights are the foundation of customer journey analytics frameworks.

There are numerous companies dedicated to building attribution models for marketing organizations and many such 3rd party tools work some what well especially for very small organizations that are in very early stages of advanced marketing analytics and have a relatively simple GTM strategy. However, my experience across numerous engagements related to attribution modeling has shown that

most of the attribution tools lack one key thing — they are pre-built models with limited options for customization and most of the marketing organizations have to align with how the tools work and measure their performance per the pre-built models only.

I feel that this is a fundamental drawback with out-of-the-box marketing attribution tools with limited options to customize the tools to align them with the GTM strategy of the organizations that end up using them.

At marqeu, we live by the principle that marketing should drive how technology enables and empowers it to be much more impactful and not the other way round.

Across our marketing analytics focused customer engagements, I have seen customers using very rigid attribution models/algorithms that made them change the way they operate or measure their business. In some cases, these tools were customized to align with the business models but given how rigid most of the tools and methodologies are in the first place, they usually cannot withstand too many customizations and breakdown leading to never-ending “maintenance and support” cycle, that leads to nothing but wastage of time and money for the marketers. I am sure many of the enterprise marketing leaders reading have experienced this first hand.

I have been building multi-touch attribution models for the past 8+ years. In collaboration with our diverse customer base and phenomenal marketing leaders, I have developed algorithms and frameworks that are easy to implement, understand and more importantly, they empower marketers when it comes to discovering insights about what tactics, channels are driving better returns across the marketing mix and the impact their working is making.

I have designed “a marketing-driven approach to multi-touch attribution” that has a set of guiding principles and parameters as part of this framework.

During our engagements, I review this approach with the marketing teams and further enrich it with the insights that I gather from the marketers around how they operate their business. It is then I turn to technology to start building the attribution model that is designed from the ground-up just to work for the business. Modern marketing analytics/BI (Tableau, Looker, PowerBI, DOMO)/Data Warehousing (BigQuery, Snowflake, Redshift) platforms have made it easy to make sure data from all the platforms across the marketing tech stack is easily accessible in a central database to allow for building highly customized attribution models in a very short amount of time. In this approach, there is no customization or fixing needed as the model is built from the ground-up just around how an organization runs its business.

Think of this approach as making your “own pizza” approach to multi-touch attribution. This approach of letting business drive the technology definition and implementation has been of great success for all our customers.

We are always on the lookout for inputs and examples from the marketing community to keep adding value for our customers. We welcome the inputs from other marketing leaders and analytics practitioners around the approach to attribution in their organizations? What attribution tools you are using and to what extent the attribution data is being used to further build models for advanced marketing analytics use cases?

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Manu Jerath
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Principal @marqeuinc — Marketing Analytics, Data and Analytics Engineering professional