Surveys without Questions: A Reinforcement Learning Approach
Atanu R Sinha, Deepali Jain, Nikhil Sheoran, Sopan Khosla, Reshmi, Sasidharan

TL;DR
This paper proposes a reinforcement learning-based method to derive proxy customer ratings from clickstream data, addressing survey limitations by providing continuous, interaction-specific insights that improve understanding of customer experience.
Contribution
It introduces a novel RL approach to generate proxy ratings from clickstream data without requiring survey data for training, and offers new metrics for analyzing customer interactions.
Findings
Proxy ratings align reasonably with actual survey data.
Customer-level metrics better predict purchase behavior.
Interaction-specific insights help identify actions impacting customer experience.
Abstract
The 'old world' instrument, survey, remains a tool of choice for firms to obtain ratings of satisfaction and experience that customers realize while interacting online with firms. While avenues for survey have evolved from emails and links to pop-ups while browsing, the deficiencies persist. These include - reliance on ratings of very few respondents to infer about all customers' online interactions; failing to capture a customer's interactions over time since the rating is a one-time snapshot; and inability to tie back customers' ratings to specific interactions because ratings provided relate to all interactions. To overcome these deficiencies we extract proxy ratings from clickstream data, typically collected for every customer's online interactions, by developing an approach based on Reinforcement Learning (RL). We introduce a new way to interpret values generated by the value…
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