CrowdLLM: Building LLM-Based Digital Populations Augmented with Generative Models

arXiv — stat.MLWednesday, December 10, 2025 at 5:00:00 AM
  • The emergence of CrowdLLM introduces a novel approach to creating digital populations using large language models (LLMs) integrated with generative models. This innovation aims to enhance the diversity and fidelity of digital representations, addressing limitations found in existing LLM-based models that often fail to accurately reflect real human populations.
  • The development of CrowdLLM is significant as it offers a cost-effective solution for applications in social simulation, marketing, and recommendation systems, potentially transforming how organizations recruit participants for studies and gather insights from diverse demographics.
  • This advancement in LLM technology highlights ongoing discussions about the ethical implications of AI, particularly in areas like scam simulations and policy violations, as well as the need for robust frameworks to ensure the responsible use of AI in sensitive sectors such as finance and legal services.
— via World Pulse Now AI Editorial System

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