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DETNO: A Diffusion-Enhanced Transformer Neural Operator for Long-Term Traffic Forecasting

arXiv:2508.19389v1 Announce Type: new Abstract: Accurate long-term traffic forecasting remains a critical challenge in intelligent transportation systems, particularly when predicting high-frequency traffic phenomena such as shock waves and congestion boundaries over extended rollout horizons. Neural operators have recently gained attention as promising tools for modeling traffic flow. While effective at learning function space mappings, they inherently produce smooth predictions that fail to reconstruct high-frequency features such as sharp density gradients which results in rapid error accumulation during multi-step rollout predictions essential for real-time traffic management. To address these fundamental limitations, we introduce a unified Diffusion-Enhanced Transformer Neural Operator (DETNO) architecture. DETNO leverages a transformer neural operator with cross-attention mechanisms, providing model expressivity and super-resolution, coupled with a diffusion-based refinement component that iteratively reconstructs high-frequency traffic details through progressive denoising. This overcomes the inherent smoothing limitations and rollout instability of standard neural operators. Through comprehensive evaluation on chaotic traffic datasets, our method demonstrates superior performance in extended rollout predictions compared to traditional and transformer-based neural operators, preserving high-frequency components and improving stability over long prediction horizons.

General agents contain world models

arXiv:2506.01622v3 Announce Type: replace-cross Abstract: Are world models a necessary ingredient for flexible, goal-directed behaviour, or is model-free learning sufficient? We provide a formal answer to this question, showing that any agent capable of generalizing to multi-step goal-directed tasks must have learned a predictive model of its environment. We show that this model can be extracted from the agent's policy, and that increasing the agents performance or the complexity of the goals it can achieve requires learning increasingly accurate world models. This has a number of consequences: from developing safe and general agents, to bounding agent capabilities in complex environments, and providing new algorithms for eliciting world models from agents.

Investors are loving Lovable

Investors are clambering to get onto Swedish vibe-coding startup Lovable’s cap table, making unsolicited offers of investment that value the company at more than $4 billion.

My gaming buddy

257923 gaming buddy cvirginia

One of the most devastating parts of grief is how it can strike out of nowhere. There you are, doing a perfectly normal, everyday thing, and then that perfectly normal, everyday thing reminds you of something or someone who is no longer there. And when that presence you lost was intimately connected with your life, […]