A common sales strategy involves having account executives (AEs) actively reach out and contact potential customers. However, not all contact attempts have a positive effect: some attempts do not change customer decisions, while others might even interfere with the desired outcome. In this work we propose using causal inference to estimate the effect of contacting each potential customer and setting the contact policy accordingly. We demonstrate this approach on data from Worthy, an online jewelry marketplace. We examined the Worthy business process to identify relevant decisions and outcomes, and formalized assumptions on how they were made. Using causal tools, we selected a decision point where improving AE contact activity appeared to be promising. We then generated a personalized policy and recommended reaching out only to customers for whom it would be beneficial. Finally, we validated the results in an A\B test over a 3-month period, resulting in an increase in item delivery rate of the targeted population by 22% (p-value=0.026). This policy is now being used on an ongoing basis.
翻译:共同的销售战略涉及让账户主管积极接触并接触潜在客户。然而,并非所有的接触尝试都具有积极效果:有些尝试不会改变客户的决定,而另一些尝试甚至可能干扰预期的结果。在这项工作中,我们提议使用因果推论来估计与每个潜在客户联系的效果,并据此制定联系政策。我们用Worthy在线珠宝市场的数据来证明这一方法。我们研究了有价值的商业程序,以确定相关的决定和结果,并正式地假定它们是如何作出的。我们利用因果工具选择了一个决定点,改进与客户的联系活动似乎有希望。我们随后制定了个性化的政策,并建议只与受益客户联系。最后,我们在A\B测试中证实了在3个月期间的结果,结果导致目标人口的项目交付率提高了22%(p-value=0.026)。目前,这项政策正在持续使用。