LGJan 11, 2024

Quantifying Marketing Performance at Channel-Partner Level by Using Marketing Mix Modeling (MMM) and Shapley Value Regression

arXiv:2401.05653v3h-index: 1
Originality Synthesis-oriented
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It addresses the challenge of evaluating marketing performance at a granular partner level for businesses, though it appears incremental by proposing a simple adjustment to an existing regression method.

This paper tackles the problem of quantifying individual marketing partner contributions within a channel by applying Shapley Value Regression to complement Marketing Mix Modeling, using real-world financial services data to demonstrate its practicality as a more feasible alternative to complex testing methods.

This paper explores the application of Shapley Value Regression in dissecting marketing performance at channel-partner level, complementing channel-level Marketing Mix Modeling (MMM). Utilizing real-world data from the financial services industry, we demonstrate the practicality of Shapley Value Regression in evaluating individual partner contributions. Although structured in-field testing along with cooperative game theory is most accurate, it can often be highly complex and expensive to conduct. Shapley Value Regression is thus a more feasible approach to disentangle the influence of each marketing partner within a marketing channel. We also propose a simple method to derive adjusted coefficients of Shapley Value Regression and compare it with alternative approaches.

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