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Datathon with a retargeting ad company. Churn date prediction (Normalized RSME 38), clustering (98% Silhouette), automated identification of the gaps between best and average client within a cluster.

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cnai-ds/Datathon-Criteo-Benchmark-Churn-Date

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Datathon with Online Advertisement

Modelling

There are mainly 2 business values of the solution to the company.

  1. The models can break down the root cause of the problem by country, industry, and cluster.
  2. The model can further provide the actionable data by automatically identifying the best performing client and the average client (a client closest to the cluster centroid) within the cluster in terms of tenure, and calculating all the differences between the two, such as spend by environment, device, criteo product and etc.

    This idea is based on a hypothesis that the more similar the clients are, the more related their strategies can be.
    Since the result of clustering is 98% silhouette score, the score which represents the similarity within each cluster, we can conclude that the clients can benchmark the best performing client in terms of tenure and can follow the same strategy.
    We believe that it is a valuable solution for the company, because it can radically reduce the time of analyzing and identifying the problem by the automation, instead of using visualization tools or excel, and quickly adopt the strategies at granular level which are supported by data.

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Cohort Analysi

Survival Curve

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Datathon with a retargeting ad company. Churn date prediction (Normalized RSME 38), clustering (98% Silhouette), automated identification of the gaps between best and average client within a cluster.

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