Reinforcement Learning for Marketing

Reinforcement Learning for Marketing

Reinforcement learning for marketing is the use of agents that choose customer experience actions, observe outcomes, and improve future marketing decisions through feedback.

Key points

  • Hightouch frames reinforcement learning as the discovery engine behind AI Decisioning: teams cannot know in advance which offer, send time, channel, or message will work for each individual, so agents need to learn through experience [src-024].
  • The marketing analogue of RL is familiar campaign iteration: design a campaign, launch it, measure results, adjust the approach, and repeat. RL automates that loop at far higher scale [src-024].
  • In a cross-sell example, the agent decides what to send, when to send it, and through which channel; customers and customer data are the environment; outcomes such as purchases, cart additions, visits, opens, or lifetime value become rewards [src-024].
  • Agents can optimise for multiple rewards, balancing immediate engagement such as clicks with higher-value outcomes such as purchases or retention [src-024].
  • The key scale claim is that reinforcement-learning systems can test thousands of combinations of messages, timings, and channels at the individual customer level, while human teams usually test one or two hypotheses per week across segments [src-024].

Related entities

  • Hightouch — source publisher and AI Decisioning vendor

Related concepts

Source references

  • [src-024] Hightouch — “Under the hood of AI Decisioning, part two: Reinforcement learning”