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Digital marketing attribution: Understanding the user path

Electronics (Switzerland), ISSN: 2079-9292, Vol: 9, Issue: 11, Page: 1-25
2020
  • 11
    Citations
  • 0
    Usage
  • 131
    Captures
  • 1
    Mentions
  • 0
    Social Media
Metric Options:   Counts1 Year3 Year

Metrics Details

  • Citations
    11
    • Citation Indexes
      10
    • Policy Citations
      1
      • 1
  • Captures
    131
  • Mentions
    1
    • Blog Mentions
      1
      • 1

Most Recent Blog

Electronics, Vol. 9, Pages 1822: Digital Marketing Attribution: Understanding the User Path

Electronics, Vol. 9, Pages 1822: Digital Marketing Attribution: Understanding the User Path Electronics doi: 10.3390/electronics9111822 Authors: Jesús Romero Leguina Ángel Cuevas Rumín Rubén Cuevas Rumín

Article Description

Digital marketing is a profitable business generating annual revenue over USD 200B and an inter-annual growth over 20%. The definition of efficient marketing investment strategies across different types of channels and campaigns is a key task in digital marketing. Attribution models are an instrument used to assess the return of investment of different channels and campaigns so that they can assist in the decision-making process. A new generation of more powerful data-driven attribution models has irrupted in the market in the last years. Unfortunately, its adoption is slower than expected. One of the main reasons is that the industry lacks a proper understanding of these models and how to configure them. To solve this issue, in this paper, we present an empirical study to better understand the key properties of user-paths and their impact on attribution models. Our analysis is based on a large-scale dataset including more than 95M user-paths from real advertising campaigns of an international hoteling group. The main contribution of the paper is a set of recommendation to build accurate, interpretable and computationally efficient attribution models such as: (i) the use of linear regression, an interpretable machine learning algorithm, to build accurate attribution models; (ii) user-paths including around 12 events are enough to produce accurate models; (iii) the recency of events considered in the user-paths is important for the accuracy of the model.

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