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实例探究 > Optimizing Agent Incentives with APT Test & Learn

Optimizing Agent Incentives with APT Test & Learn

技术
  • 分析与建模 - 预测分析
  • 分析与建模 - 实时分析
适用行业
  • 金融与保险
适用功能
  • 商业运营
  • 销售与市场营销
服务
  • 数据科学服务
  • 系统集成
挑战
A leading insurance provider wanted to optimize the incentive portfolio it offered to independent agencies but had difficulty measuring the true impact of each incentive. The challenge was to accurately isolate the incremental benefit of different incentive programs on agency performance. The provider needed to understand which incentives worked best for different types of agencies and how to target them effectively to maximize returns.
关于客户
The customer is a leading insurance provider that works with a network of independent agencies. The company is large, with over 1,000 employees, and operates primarily in the United States. The insurance provider aims to enhance its agency compensation strategies to drive performance and reward incremental growth. By leveraging advanced analytics and data-driven decision-making, the company seeks to optimize its incentive programs to achieve better results and higher efficiency.
解决方案
Using APT’s Test & Learn software, the insurance provider was able to test and compare the performance of different incentive programs. The software allowed the provider to identify the optimal incentive type and frequency for each agent or agency type. It also helped determine areas where incentives could be communicated through lower-cost, digital channels. By designing tests for new incentives and discontinuing unprofitable ones, the provider could validate the effectiveness of its strategies. The solution also included creating a process to remind high-potential agents about incentives predicted to drive the greatest incremental policies.
运营影响
  • The insurance provider was able to identify the optimal incentive type and frequency for each agent or agency type.
  • The provider determined areas where incentives could be communicated through lower-cost, digital channels.
  • The company worked with agents who had not responded profitably to existing incentives to identify feasible alternatives.
数量效益
  • Premiums increased by 4.2% vs. control for Incentive A.
  • Premiums increased by 6.1% vs. control for Incentive B.
  • Incremental premiums for Incentive A were $29.6MM with a $3.65 premium per payout dollar.

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