Paper List
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Mapping of Lesion Images to Somatic Mutations
This paper addresses the critical bottleneck of delayed genetic analysis in cancer diagnosis by predicting a patient's full somatic mutation profile d...
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Reinventing Clinical Dialogue: Agentic Paradigms for LLM‑Enabled Healthcare Communication
This paper addresses the core challenge of transforming reactive, stateless LLMs into autonomous, reliable clinical dialogue agents capable of longitu...
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Binary Latent Protein Fitness Landscapes for Quantum Annealing Optimization
通过将序列映射到二元潜在空间进行基于QUBO的适应度优化,桥接蛋白质表示学习和组合优化。
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Controlling Fish Schools via Reinforcement Learning of Virtual Fish Movement
证明了无模型强化学习可以利用虚拟视觉刺激有效引导鱼群,克服了缺乏精确行为模型的问题。
Formation of Artificial Neural Assemblies by Biologically Plausible Inhibition Mechanisms
Neuroscience Graduate Program, Federal University of Rio Grande do Sul, Brazil | Department of Computer Science, University of Exeter, UK | Department of Computer Science, University of Sheffield, UK | Physics Department, Federal University of Rio Grande do Sul, Brazil
30秒速读
IN SHORT: This work addresses the core limitation of the Assembly Calculus model—its fixed-size, biologically implausible k-WTA selection process—by introducing a dynamic, gamma-oscillation-inspired E%-WTA mechanism and feedforward inhibition, enabling more realistic, self-determined assembly formation and superior retrieval.
核心创新
- Methodology Proposes the E%-Winners-Take-All (E%-WTA) selection mechanism, inspired by gamma oscillation dynamics, which allows a variable number of neurons to fire based on input strength, replacing the fixed-k selection of the original model.
- Methodology Integrates a biologically plausible feedforward inhibition mechanism based on the cortical excitatory-inhibitory neuron ratio (e.g., pi=0.2), enhancing network stability and assembly formation.
- Biology Defines a more rigorous, multi-condition criterion for assembly formation (stationary pattern, synchronization, higher synaptic density), moving beyond the original model's simpler 'no new winners' rule.
主要结论
- The E%-WTA model with feedforward inhibition (ωinh = -0.2, β ≤ 0.01) successfully forms neural assemblies where size is dynamically determined by network activity, not preset, addressing a key biological limitation.
- The new model achieves a superior assembly recovery rate (evocation accuracy) compared to the original AC model, demonstrating enhanced functional stability and memory retrieval capability.
- The introduced formation conditions (stationary pattern, synchronization, higher synaptic density) converge reliably in simulations, providing a robust framework for defining and identifying stable neural assemblies.
摘要: As proposed by Hebb’s theory, neural assemblies are groups of excitatory neurons that fire synchronously and exhibit high synaptic density, representing external stimuli and supporting cognitive functions such as language and decision-making. Recently, a model called Assembly Calculus (AC) was proposed, enabling the formation of artificial neural assemblies through the kk-winners-take-all selection process and Hebbian learning. Although the model is capable of forming assemblies according to Hebb’s theory, the adopted selection process does not incorporate essential aspects of biological neural computation, as neural activity, which is often governed by statistical distributions consistent with power-law scaling. Given this limitation, the present work aimed to bring the model’s dynamics closer to that observed in real cortical networks. To achieve this, a new selection mechanism inspired by the dynamics of gamma oscillation cycles, called E%-winners-take-all, was implemented, combined with an inhibition process based on the ratio between excitatory and inhibitory neurons observed in various regions of the cerebral cortex. The results obtained from our model (called E%-WTA model) were compared with those of the original model, and the analyses demonstrated that the introduced modifications allowed the network’s own dynamics to determine the size of the formed assemblies. Furthermore, the recovery rate of these groups, through the evocation of the stimuli that generated them, became superior to that obtained in the original model.