Paper List
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A Theoretical Framework for the Formation of Large Animal Groups: Topological Coordination, Subgroup Merging, and Velocity Inheritance
This paper addresses the core problem of how large, coordinated animal groups form in nature, challenging the classical view of gradual aggregation by...
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CONFIDE: Hallucination Assessment for Reliable Biomolecular Structure Prediction and Design
This paper addresses the critical limitation of current protein structure prediction models (like AlphaFold3) where high-confidence scores (pLDDT) can...
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Generative design and validation of therapeutic peptides for glioblastoma based on a potential target ATP5A
This paper addresses the critical bottleneck in therapeutic peptide design: how to efficiently optimize lead peptides with geometric constraints while...
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Pharmacophore-based design by learning on voxel grids
This paper addresses the computational bottleneck and limited novelty in conventional pharmacophore-based virtual screening by introducing a voxel cap...
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Human-Centred Evaluation of Text-to-Image Generation Models for Self-expression of Mental Distress: A Dataset Based on GPT-4o
This paper addresses the critical gap in evaluating how AI-generated images can effectively support cross-cultural mental distress communication, part...
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ANNE Apnea Paper
This paper addresses the core challenge of achieving accurate, event-level sleep apnea detection and characterization using a non-intrusive, multimoda...
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DeeDeeExperiment: Building an infrastructure for integrating and managing omics data analysis results in R/Bioconductor
This paper addresses the critical bottleneck of managing and organizing the growing volume of differential expression and functional enrichment analys...
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Cross-Species Antimicrobial Resistance Prediction from Genomic Foundation Models
This paper addresses the core challenge of predicting antimicrobial resistance across phylogenetically distinct bacterial species, where traditional m...
Linear Readout of Neural Manifolds with Continuous Variables
Department of Physics and Kempner Institute, Harvard University | Center for Computational Neuroscience, Flatiron Institute
30秒速读
IN SHORT: This paper addresses the core challenge of quantifying how the geometric structure of high-dimensional neural population activity (neural manifolds) determines the efficiency of linearly decoding continuous variables, amidst complex neural variability.
核心创新
- Theory Develops the first statistical-mechanical theory of 'regression capacity,' extending manifold capacity theory from discrete classification to continuous regression problems.
- Methodology Derives closed-form analytical formulas for regression capacity in synthetic models (e.g., spherical manifolds) and provides an instance-based estimator applicable to finite, real-world datasets.
- Biology Applies the framework to primate visual cortex data, quantitatively demonstrating a monotonic increase in linear decodability for object pose parameters (size, position) along the ventral stream (pixels → V4 → IT).
主要结论
- For synthetic spherical manifold models, regression capacity α decreases with increasing manifold dimensionality D and equivalent radius R_equiv (e.g., capacity drops as D increases for fixed R_equiv).
- In the mean-field model for point-like manifolds, capacity depends solely on the asymptotically equivalent tolerance ε_equiv = ε/(σ√(1-ρ)), where σ scales labels and ρ controls label correlations.
- Application to macaque ventral stream data shows regression capacity for object size and position increases (critical dimension N_crit decreases) from early (pixels) to late (IT) processing stages, indicating more efficient geometric organization for linear readout.
摘要: Brains and artificial neural networks compute with continuous variables such as object position or stimulus orientation. However, the complex variability in neural responses makes it difficult to link internal representational structure to task performance. We develop a statistical-mechanical theory of regression capacity that relates linear decoding efficiency of continuous variables to geometric properties of neural manifolds. Our theory handles complex neural variability and applies to real data, revealing increasing capacity for decoding object position and size along the monkey visual stream.