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Rethinking Recommendation Paradigms: From Pipelines to Agentic Recommender Systems

1 Pith paper cite this work. Polarity classification is still indexing.

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abstract

Large-scale industrial recommenders typically use a fixed multi-stage pipeline (recall, ranking, re-ranking) and have progressed from collaborative filtering to deep and large pre-trained models. However, both multi-stage and so-called One Model designs remain essentially static: models are black boxes, and system improvement relies on manual hypotheses and engineering, which is hard to scale under heterogeneous data and multi-objective business constraints. We propose an Agentic Recommender System (AgenticRS) that reorganizes key modules as agents. Modules are promoted to agents only when they form a functionally closed loop, can be independently evaluated, and possess an evolvable decision space. For model agents, we outline two self-evolution mechanisms: reinforcement learning style optimization in well-defined action spaces, and large language model based generation and selection of new architectures and training schemes in open-ended design spaces. We further distinguish individual evolution of single agents from compositional evolution over how multiple agents are selected and connected, and use a layered inner and outer reward design to couple local optimization with global objectives. This provides a concise blueprint for turning static pipelines into self-evolving agentic recommender systems.

fields

cs.IR 1

years

2026 1

verdicts

UNVERDICTED 1

representative citing papers

SAGER: Self-Evolving User Policy Skills for Recommendation Agent

cs.IR · 2026-04-16 · unverdicted · novelty 7.0

SAGER equips LLM recommendation agents with per-user evolving policy skills via two-representation architecture, contrastive CoT diagnosis, and skill-augmented listwise reasoning, yielding SOTA gains orthogonal to memory accumulation.

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Showing 1 of 1 citing paper.

  • SAGER: Self-Evolving User Policy Skills for Recommendation Agent cs.IR · 2026-04-16 · unverdicted · none · ref 4 · internal anchor

    SAGER equips LLM recommendation agents with per-user evolving policy skills via two-representation architecture, contrastive CoT diagnosis, and skill-augmented listwise reasoning, yielding SOTA gains orthogonal to memory accumulation.