Attribution (marketing)


In marketing, attribution, also known as multi-touch attribution, is the identification of a set of user actions that contribute in some manner to a desired outcome, and then the assignment of a value to each of these events. Marketing attribution provides a level of understanding of what combination of events in what particular order influence individuals to engage in a desired behavior, typically referred to as a conversion.
As stated previously, the senior management of a firm would formulate a general business strategy for a firm.
At the corporate level, marketing objectives are typically broad-based in nature, and pertain to the general vision of the firm in the short, medium or long-term. As an example, if one pictures a group of companies, top management may state that sales for the group should increase by 25% over a ten-year period.

History

The roots of marketing attribution can be traced to the psychological theory of attribution. By most accounts, the current application of attribution theory in marketing was spurred by the transition of advertising spending from traditional, offline ads to digital media and the expansion of data available through digital channels such as paid and organic search, display, and email marketing.

Concept

The purpose of marketing attribution is to quantify the influence each advertising impression has on a consumer’s decision to make a purchase decision, or convert. Visibility into what influences the audience, when and to what extent, allows marketers to optimize media spend for conversions and compare the value of different marketing channels, including paid and organic search, email, affiliate marketing, display ads, social media and more. Understanding the entire conversion path across the whole marketing mix diminishes the accuracy challenge of analyzing data from siloed channels. Typically, attribution data is used by marketers to plan future ad campaigns and inform the performance of previous campaigns by analyzing which media placements were the most cost-effective and influential as determined by metrics such as return on ad spend or cost per lead.

Attribution models

Resulting from the disruption created by the rapid growth of online advertising over the last ten years, marketing organizations have access to significantly more data to track effectiveness and ROI. This change has impacted how marketers measure the effectiveness of advertisements, as well as the development of new metrics such as cost per click, Cost per thousand impressions, Cost per action/acquisition and click-through conversion. Additionally, multiple attribution models have evolved over time as the proliferation of digital devices and tremendous growth in data available have pushed the development of attribution technology.
Binary classification methods from statistics and machine learning can be used to build appropriate models. However, an important element of the models is model interpretability; therefore, logistic regression is often appropriate due to the ease of interpreting model coefficients.

Behavioral model

Suppose observed advertising data are where
covariates and ads
Covariates,, generally include different characteristics about the ad served and descriptive data about the consumer who saw the ad.
Utility theory

Counterfactual procedure

An important feature of the modeling approach is estimating the potential outcome of consumers supposing that they were not exposed to an ad. Because marketing is not a controlled experiment, it is helpful to derive potential outcomes in order to understand the true effect of marketing.
Mean outcome if all consumers saw the same advertisement is given by
A marketer is often interested in understanding the 'base', or the likelihood that a consumer will convert without being influenced by marketing. This allows the marketer to understand the true effectiveness of the marketing plan. The total number of conversions minus the 'base' conversions will give an accurate view of the number of conversions driven by marketing. The 'base' estimate can be approximated using the derived logistic function and using potential outcomes.
Once the base is derived, the incremental effect of marketing can be understood to be the lift over the 'base' for each ad supposing the others were not seen in the potential outcome. This lift over the base is often used as the weight for that characteristic inside the attribution model.
With the weights constructed, the marketer can know the true proportion of conversions driven by different marketing channels or tactics.

Marketing mix and attribution models

Depending on the company's marketing mix, they may use different types of attribution to track their marketing channels: