Paper List
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Autonomous Agents Coordinating Distributed Discovery Through Emergent Artifact Exchange
This paper addresses the fundamental limitation of current AI-assisted scientific research by enabling truly autonomous, decentralized investigation w...
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D-MEM: Dopamine-Gated Agentic Memory via Reward Prediction Error Routing
This paper addresses the fundamental scalability bottleneck in LLM agentic memory systems: the O(N²) computational complexity and unbounded API token ...
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Countershading coloration in blue shark skin emerges from hierarchically organized and spatially tuned photonic architectures inside skin denticles
This paper solves the core problem of how blue sharks achieve their striking dorsoventral countershading camouflage, revealing that coloration origina...
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Human-like Object Grouping in Self-supervised Vision Transformers
This paper addresses the core challenge of quantifying how well self-supervised vision models capture human-like object grouping in natural scenes, br...
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Hierarchical pp-Adic Framework for Gene Regulatory Networks: Theory and Stability Analysis
This paper addresses the core challenge of mathematically capturing the inherent hierarchical organization and multi-scale stability of gene regulator...
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Towards unified brain-to-text decoding across speech production and perception
This paper addresses the core challenge of developing a unified brain-to-text decoding framework that works across both speech production and percepti...
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Dual-Laws Model for a theory of artificial consciousness
This paper addresses the core challenge of developing a comprehensive, testable theory of consciousness that bridges biological and artificial systems...
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Pulse desynchronization of neural populations by targeting the centroid of the limit cycle in phase space
This work addresses the core challenge of determining optimal pulse timing and intensity for desynchronizing pathological neural oscillations when the...
SDSR: A Spectral Divide-and-Conquer Approach for Species Tree Reconstruction
Hebrew University of Jerusalem | Weizmann Institute of Science | Tel Aviv University
30秒速读
IN SHORT: This paper addresses the computational bottleneck in reconstructing species trees from thousands of species and multiple genes by introducing a scalable spectral divide-and-conquer framework that maintains accuracy while dramatically reducing runtime.
核心创新
- Methodology Introduces a spectral graph theory-based partitioning method using the Fiedler eigenvector of averaged gene Laplacian matrices to recursively divide species into biologically meaningful clans.
- Theory Provides theoretical guarantees of asymptotic consistency under the Multispecies Coalescent (MSC) model and finite-sample bounds for accurate partitioning.
- Methodology Develops a deterministic merging strategy based on outgroup rooting that avoids NP-hard optimization problems common in supertree methods.
主要结论
- SDSR combined with CA-ML achieves up to 10-fold faster runtime on 200-species datasets with 100 genes while maintaining comparable accuracy to full-data CA-ML.
- The algorithm provides O(m²) complexity for partitioning/merging steps and reduces the dominant reconstruction term from O(Km²n) to O(Kτmn), where τ is the threshold size.
- Theoretical analysis proves SDSR is asymptotically consistent under the MSC model with infinite genes, and partitions species into disjoint clans of the true species tree.
摘要: Recovering a tree that represents the evolutionary history of a group of species is a key task in phylogenetics. Performing this task using sequence data from multiple genetic markers poses two key challenges. The first is the discordance between the evolutionary history of individual genes and that of the species. The second challenge is computational, as contemporary studies involve thousands of species. Here we present SDSR, a scalable divide-and-conquer approach for species tree reconstruction based on spectral graph theory. The algorithm recursively partitions the species into subsets until their sizes are below a given threshold. The trees of these subsets are reconstructed by a user-chosen species tree algorithm. Finally, these subtrees are merged to form the full tree. On the theoretical front, we derive recovery guarantees for SDSR, under the multispecies coalescent (MSC) model. We also perform a runtime complexity analysis. We show that SDSR, when combined with a species tree reconstruction algorithm as a subroutine, yields substantial runtime savings as compared to applying the same algorithm on the full data. Empirically, we evaluate SDSR on synthetic benchmark datasets with incomplete lineage sorting and horizontal gene transfer. In accordance with our theoretical analysis, the simulations show that combining SDSR with common species tree methods, such as CA-ML or ASTRAL, yields up to 10-fold faster runtimes. In addition, SDSR achieves a comparable tree reconstruction accuracy to that obtained by applying these methods on the full data.