Learning When to Quit in Sales Conversations
Emaad Manzoor, Eva Ascarza, Oded Netzer

TL;DR
This paper introduces a language model-based decision agent that optimizes when salespeople should quit conversations, significantly reducing failed call time and increasing sales efficiency by mimicking an optimal stopping policy.
Contribution
It develops a novel sequential decision model using large language models to improve sales call outcomes by learning optimal stopping strategies from textual data.
Findings
Reduces failed call time by 54%
Increases expected sales by up to 37%
Identifies cognitive biases in human decision-making
Abstract
Salespeople frequently face the dynamic screening decision of whether to persist in a conversation or abandon it to pursue the next lead. Yet, little is known about how these decisions are made, whether they are efficient, or how to improve them. We study these decisions in the context of high-volume outbound sales where leads are ample, but time is scarce and failure is common. We formalize the dynamic screening decision as an optimal stopping problem and develop a generative language model-based sequential decision agent - a stopping agent - that learns whether and when to quit conversations by imitating a retrospectively-inferred optimal stopping policy. Our approach handles high-dimensional textual states, scales to large language models, and works with both open-source and proprietary language models. When applied to calls from a large European telecommunications firm, our stopping…
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Taxonomy
TopicsAI in Service Interactions · Mobile Crowdsensing and Crowdsourcing · Forecasting Techniques and Applications
