AI Navigate

LLM-Augmented Digital Twin for Policy Evaluation in Short-Video Platforms

arXiv cs.AI / 3/13/2026

📰 NewsDeveloper Stack & InfrastructureIdeas & Deep AnalysisModels & Research

Key Points

  • Introduces a new LLM-augmented digital twin for short-video platforms with a modular four-twin architecture (User, Content, Interaction, Platform) to study policy effects under closed-loop dynamics.
  • Proposes an event-driven execution layer and a unified optimizer that enable reproducible experiments while allowing selective adoption of LLM-based decision services.
  • Describes LLM capabilities as schema-constrained, pluggable components (e.g., persona generation, content captioning, campaign planning, trend prediction) integrated into the Platform Twin.
  • Enables scalable simulations of platform policies, including AI-enabled policies, under realistic feedback and long-horizon, distributional outcomes.

Abstract

Short-video platforms are closed-loop, human-in-the-loop ecosystems where platform policy, creator incentives, and user behavior co-evolve. This feedback structure makes counterfactual policy evaluation difficult in production, especially for long-horizon and distributional outcomes. The challenge is amplified as platforms deploy AI tools that change what content enters the system, how agents adapt, and how the platform operates. We propose a large language model (LLM)-augmented digital twin for short-video platforms, with a modular four-twin architecture (User, Content, Interaction, Platform) and an event-driven execution layer that supports reproducible experimentation. Platform policies are implemented as pluggable components within the Platform Twin, and LLMs are integrated as optional, schema-constrained decision services (e.g., persona generation, content captioning, campaign planning, trend prediction) that are routed through a unified optimizer. This design enables scalable simulations that preserve closed-loop dynamics while allowing selective LLM adoption, enabling the study of platform policies, including AI-enabled policies, under realistic feedback and constraints.