Challenge: Existing methods for simulating realistic urban behaviors rely on static profiles and synchronous inference pipelines that hinder scalability.
Approach: They propose a lightweight generative agent framework for city-scale simulation powered by cognitively-grounded generative agents.
Outcome: Experiments with 4,000 agents show that MobileCity generates more human-like urban dynamics than baselines while maintaining high computational efficiency.

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Challenge: Existing models rely on rigid, hand-crafted rules to model nuanced behavior in urban environments.
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Challenge: Existing evaluation benchmarks for multimodal large language models (MLLMs) are language-centric or heavily reliant on simulated environments, rarely probing the nuanced, knowledge-intensive reasoning essential for practical, real-world scenarios.
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Challenge: Existing work on large language models lacks a realistic environment and parallelized framework to support complex interactions between agents and environments.
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Challenge: Humanoid Agents aims to guide Generative Agents to behave more like humans using System 1 processing . we introduce three elements of System 1 that can influence their behavior .
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Challenge: LLM-empowered agent simulations generate rich, adaptive, and often nonlinear interaction patterns.
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GTA: Generating Long-horizon Tasks for Web Agents at Scale (2026.acl-long)

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Challenge: Existing benchmarks provide only coarse start–goal annotations without intermediate trajectories . Existing frameworks provide no supervision over the agent's latent decision process .
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Mobile-R1: Towards Interactive Capability for VLM-Based Mobile Agent via Systematic Training (2026.acl-long)

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Challenge: Existing approaches to training agents for visual-language models trap them in local optima, hindering exploration and error correction with the environment.
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SimUSER: Simulating User Behavior with Large Language Models for Recommender System Evaluation (2025.acl-industry)

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Challenge: Recommender systems are a key component of our day-to-day lives, but evaluation remains a challenge due to the gap between offline metrics and online behaviors.
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Unveiling the Truth and Facilitating Change: Towards Agent-based Large-scale Social Movement Simulation (2024.findings-acl)

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UrbanLLM: Autonomous Urban Activity Planning and Management with Large Language Models (2024.findings-emnlp)

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Challenge: UrbanLLM is a fine-tuned large language model designed to tackle diverse urban problems.
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