LGAINEAug 19, 2021

Personalized next-best action recommendation with multi-party interaction learning for automated decision-making

arXiv:2108.08846v112 citations
Originality Incremental advance
AI Analysis

This addresses the need for automated, personalized decision-making in natural, social, and business systems, though it is incremental as it builds on existing deep learning and recommendation methods.

The paper tackles the problem of personalized next-best action recommendation in dynamic, interactive contexts by proposing a reinforced coupled recurrent neural network (CRN) to model multi-sequence interactions between customers and decision-makers, resulting in automated recommendations that optimize decision-making objectives.

Automated next-best action recommendation for each customer in a sequential, dynamic and interactive context has been widely needed in natural, social and business decision-making. Personalized next-best action recommendation must involve past, current and future customer demographics and circumstances (states) and behaviors, long-range sequential interactions between customers and decision-makers, multi-sequence interactions between states, behaviors and actions, and their reactions to their counterpart's actions. No existing modeling theories and tools, including Markovian decision processes, user and behavior modeling, deep sequential modeling, and personalized sequential recommendation, can quantify such complex decision-making on a personal level. We take a data-driven approach to learn the next-best actions for personalized decision-making by a reinforced coupled recurrent neural network (CRN). CRN represents multiple coupled dynamic sequences of a customer's historical and current states, responses to decision-makers' actions, decision rewards to actions, and learns long-term multi-sequence interactions between parties (customer and decision-maker). Next-best actions are then recommended on each customer at a time point to change their state for an optimal decision-making objective. Our study demonstrates the potential of personalized deep learning of multi-sequence interactions and automated dynamic intervention for personalized decision-making in complex systems.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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