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A generalized Bayesian framework for the analysis of subscription based businesses

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  • Rahul Madhavan
  • Ankit Baraskar

Abstract

We have created a framework for analyzing subscription based businesses in terms of a unified metric which we call SCV (single customer value). The major advance in this paper is to model customer churn as an exponential decay variable, which directly follows from experimental data relating to subscription based businesses. This Bayesian probabilistic model was used to compute an expected value for the revenue contribution of a single user. We obtain an exact closed-form solution for the constant churn model, and an approximate closed-form solution for the exponential decay model. In addition, we define a general methodology for decision making processes using sensitivity analysis of the model equation, which we illustrate with a real-life case study for a food based subscription business.

Suggested Citation

  • Rahul Madhavan & Ankit Baraskar, 2017. "A generalized Bayesian framework for the analysis of subscription based businesses," Papers 1704.05729, arXiv.org.
  • Handle: RePEc:arx:papers:1704.05729
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    References listed on IDEAS

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    1. Romero, Jaime & van der Lans, Ralf & Wierenga, Berend, 2013. "A Partially Hidden Markov Model of Customer Dynamics for CLV Measurement," Journal of Interactive Marketing, Elsevier, vol. 27(3), pages 185-208.
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