Paper List
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SpikGPT: A High-Accuracy and Interpretable Spiking Attention Framework for Single-Cell Annotation
This paper addresses the core challenge of robust single-cell annotation across heterogeneous datasets with batch effects and the critical need to ide...
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Unlocking hidden biomolecular conformational landscapes in diffusion models at inference time
This paper addresses the core challenge of efficiently and accurately sampling the conformational landscape of biomolecules from diffusion-based struc...
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Personalized optimization of pediatric HD-tDCS for dose consistency and target engagement
This paper addresses the critical limitation of one-size-fits-all HD-tDCS protocols in pediatric populations by developing a personalized optimization...
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Realistic Transition Paths for Large Biomolecular Systems: A Langevin Bridge Approach
This paper addresses the core challenge of generating physically realistic and computationally efficient transition paths between distinct protein con...
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Consistent Synthetic Sequences Unlock Structural Diversity in Fully Atomistic De Novo Protein Design
This paper addresses the core pain point of low sequence-structure alignment in existing synthetic datasets (e.g., AFDB), which severely limits the pe...
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MoRSAIK: Sequence Motif Reactor Simulation, Analysis and Inference Kit in Python
This work addresses the computational bottleneck in simulating prebiotic RNA reactor dynamics by developing a Python package that tracks sequence moti...
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On the Approximation of Phylogenetic Distance Functions by Artificial Neural Networks
This paper addresses the core challenge of developing computationally efficient and scalable neural network architectures that can learn accurate phyl...
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EcoCast: A Spatio-Temporal Model for Continual Biodiversity and Climate Risk Forecasting
This paper addresses the critical bottleneck in conservation: the lack of timely, high-resolution, near-term forecasts of species distribution shifts ...
Emergent Bayesian Behaviour and Optimal Cue Combination in LLMs
Huawei Noah’s Ark Lab, London, UK | AI Centre, Department of Computer Science, University College London, London, UK
30秒速读
IN SHORT: This paper addresses the critical gap in understanding whether LLMs spontaneously develop human-like Bayesian strategies for processing uncertain information, revealing that high accuracy does not guarantee robust multimodal integration.
核心创新
- Methodology Introduces BayesBench, the first psychophysics-inspired behavioral benchmark for LLMs with four magnitude estimation tasks (length, location, distance, duration) across text and image modalities.
- Methodology Develops Bayesian Consistency Score (BCS) to detect Bayes-consistent behavioral shifts even when accuracy saturates, enabling separation of capability from computational strategy.
- Biology Demonstrates emergent Bayesian behavior in capable LLMs without explicit training, with Llama-4 Maverick showing cue-combination efficiency exceeding human biological systems (RRE > 1 against Bayesian oracle).
主要结论
- GPT-5 Mini achieves perfect text accuracy (NRMSE ≈ 0) but fails to integrate visual cues efficiently, showing poor cue-combination efficiency (RRE < 1) despite high capability.
- Llama-4 Maverick demonstrates emergent Bayesian behavior with cue-combination efficiency exceeding Bayesian reliability-weighted baselines (RRE > 1), suggesting non-linear integration strategies.
- Bayesian Consistency Score reveals that more accurate models show stronger evidence of Bayesian behavior, with BCS positively correlated with accuracy across nine evaluated LLMs.
摘要: Large language models (LLMs) excel at explicit reasoning, but their implicit computational strategies remain underexplored. Decades of psychophysics research show that humans intuitively process and integrate noisy signals using near-optimal Bayesian strategies in perceptual tasks. We ask whether LLMs exhibit similar behaviour and perform optimal multimodal integration without explicit training or instruction. Adopting the psychophysics paradigm, we infer computational principles of LLMs from systematic behavioural studies. We introduce a behavioural benchmark - BayesBench: four magnitude estimation tasks (length, location, distance, and duration) over text and image, inspired by classic psychophysics, and evaluate a diverse set of nine LLMs alongside human judgments for calibration. Through controlled ablations of noise, context, and instruction prompts, we measure performance, behaviour and efficiency in multimodal cue-combination. Beyond accuracy and efficiency metrics, we introduce a Bayesian Consistency Score that detects Bayes-consistent behavioural shifts even when accuracy saturates. Our results show that while capable models often adapt in Bayes-consistent ways, accuracy does not guarantee robustness. Notably, GPT-5 Mini achieves perfect text accuracy but fails to integrate visual cues efficiently. This reveals a critical dissociation between capability and strategy, suggesting accuracy-centric benchmarks may over-index on performance while missing brittle uncertainty handling. These findings reveal emergent principled handling of uncertainty and highlight the correlation between accuracy and Bayesian tendencies. We release our psychophysics benchmark and consistency metric as evaluation tools and to inform future multimodal architecture designs111Project webpage: https://bayes-bench.github.io.