India's largest platform and marketplace for GCCs & AI

Sign in

India's largest platform and marketplace for GCCs & AI

3AI Digital Library

Minimizing Policy Attrition

3AI August 16, 2020

Leading Life Insurance Company In Japan

Problem Statement

  • A high attrition in the customer base due to competition and miss-selling (45% is overall lapse rate)
  • Expectation was to build an approach to retain policies and to set up an early warning system to identify a potential attrition cases to prevent further revenue leakage

Analytics Led Approach

  • Attrition trends in the data over the years were analyzed and an approach was designed to provide a solution to contain further revenue leakage
  • Predictive attrition model was built to predict the propensity of policies to attrite
  • Given are high level process steps which were followed :
    • Data Load Exploration
    • Model variable Creation
    • Analytical Model Development
    • Business rules

Business Impact

  • Raw data was mined, and a methodology was built for developing a predictive attrition model to provide a probability score to influence the decisions to follow the case by the customer.
  • Model output was segmented to optimize the approach to follow the case and provided insights to treat each policy based on the segmented matrix Re-evaluate;Retain;Grow;Protect– for example, Retain is the quadrant high value and high risky policy, retaining such policies will optimize the effort as well as cost
  • Primary users, retention team were provided with insights for customer retention..

Critical Success Factors

  • 20% of the in-force portfolio has been identified with 69% of the premium to be at risk of attrition (Approx. $ 1.3 BN premium at risk)
  • Formulated a growth strategy to retain existing customers as well as grow their business
  • Integrated attrition prediction with every customer touch point system through a web service

    3AI Trending Articles

  • AI in Publishing

    Featured Article: Author: Deependra Singh, VP & Head Data Science and Analytics, Network 18 In recent years, the term “Artificial Intelligence” has been making headlines in almost every industry. From healthcare to finance, AI is transforming the way we work and live. But what about the media landscape? Could AI be a game-changer in this […]

  • Commodity Price Forecasts using ML driven Insights

    Featured Article: Author: Tarana Chauhan, Procurement Analyst, AB InBev Dependency on Commodities and Associated Risks: Companies with Agricultural commodities as their core raw material face several risks in supply security. Agricultural commodities not only suffer from the risks associated with market dynamics like all other commodities but are also impacted by environmental factors making them […]

  • Role of Generative AI in the Realm of Generative AI

    Featured Article: Author: Ramana Kompally, Director – Data & Analytics, Cloudsufi Generative Artificial Intelligence (AI) has taken the world by storm and every organization is looking forward to having a pie in the cake and augmenting the portfolio. While a plethora of applications is being envisaged using Generative AI (Gen AI), there is one niche […]

  • A Greener Future with AI: Minimizing Carbon Footprint for Sustainable Innovation

    Featured Article Author: Jemima Joy, ProV International Artificial Intelligence (AI) has transformed industries and opened doors to remarkable advancements, from generative art to complex decision-making systems. However, AI’s rapid growth comes with an often-overlooked environmental cost—its carbon footprint. As the demand for AI-powered tools grows, so does the energy consumption required to develop, train, and […]