Paper List
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Formation of Artificial Neural Assemblies by Biologically Plausible Inhibition Mechanisms
This work addresses the core limitation of the Assembly Calculus model—its fixed-size, biologically implausible k-WTA selection process—by introducing...
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How to make the most of your masked language model for protein engineering
This paper addresses the critical bottleneck of efficiently sampling high-quality, diverse protein sequences from Masked Language Models (MLMs) for pr...
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Module control in youth symptom networks across COVID-19
This paper addresses the core challenge of distinguishing whether a prolonged societal stressor (COVID-19) fundamentally reorganizes the architecture ...
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JEDI: Jointly Embedded Inference of Neural Dynamics
This paper addresses the core challenge of inferring context-dependent neural dynamics from noisy, high-dimensional recordings using a single unified ...
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ATP Level and Phosphorylation Free Energy Regulate Trigger-Wave Speed and Critical Nucleus Size in Cellular Biochemical Systems
This work addresses the core challenge of quantitatively predicting how the cellular energy state (ATP level and phosphorylation free energy) governs ...
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Packaging Jupyter notebooks as installable desktop apps using LabConstrictor
This paper addresses the core pain point of ensuring Jupyter notebook reproducibility and accessibility across different computing environments, parti...
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SNPgen: Phenotype-Supervised Genotype Representation and Synthetic Data Generation via Latent Diffusion
This paper addresses the core challenge of generating privacy-preserving synthetic genotype data that maintains both statistical fidelity and downstre...
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Continuous Diffusion Transformers for Designing Synthetic Regulatory Elements
This paper addresses the challenge of efficiently generating novel, cell-type-specific regulatory DNA sequences with high predicted activity while min...
On the Approximation of Phylogenetic Distance Functions by Artificial Neural Networks
Indiana University, Bloomington, IN 47405, USA
30秒速读
IN SHORT: This paper addresses the core challenge of developing computationally efficient and scalable neural network architectures that can learn accurate phylogenetic distance functions from simulated data, bridging the gap between simple distance methods and complex model-based inference.
核心创新
- Methodology Introduces minimal, permutation-invariant neural architectures (Sequence networks S and Pair networks P) specifically designed to approximate phylogenetic distance functions, ensuring invariance to taxa ordering without costly data augmentation.
- Methodology Leverages theoretical results from metric embedding (Bourgain's theorem, Johnson-Lindenstrauss Lemma) to inform network design, explicitly linking embedding dimension to the number of taxa for efficient representation.
- Methodology Demonstrates how equivariant layers and attention mechanisms can be structured to handle both i.i.d. and spatially correlated sequence data (e.g., models with indels or rate variation), adapting to the complexity of the generative evolutionary model.
主要结论
- The proposed minimal architectures (e.g., Sites-Invariant-S with ~7.6K parameters) achieve results comparable to state-of-the-art inference methods like IQ-TREE on simulated data under various models (JC, K2P, HKY, LG+indels), outperforming classic pairwise distance methods (d_H, d_JC, d_K2P) in most conditions.
- Architectures incorporating taxa-wise attention, while more memory-intensive, are necessary for complex evolutionary models with spatial dependencies; however, simpler networks suffice for simpler i.i.d. models, indicating an architecture-evolutionary model correspondence.
- Performance is highly sensitive to hyperparameters: validation error increases sharply with fewer than 4 attention heads or with hidden channel counts outside an optimal range (e.g., 32-128), aligning with theoretical requirements for learning graph-structured data.
摘要: Inferring the phylogenetic relationships among a sample of organisms is a fundamental problem in modern biology. While distance-based hierarchical clustering algorithms achieved early success on this task, these have been supplanted by Bayesian and maximum likelihood search procedures based on complex models of molecular evolution. In this work we describe minimal neural network architectures that can approximate classic phylogenetic distance functions and the properties required to learn distances under a variety of molecular evolutionary models. In contrast to model-based inference (and recently proposed model-free convolutional and transformer networks), these architectures have a small computational footprint and are scalable to large numbers of taxa and molecular characters. The learned distance functions generalize well and, given an appropriate training dataset, achieve results comparable to state-of-the art inference methods.