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...
Approximate Bayesian Inference on Mechanisms of Network Growth and Evolution
Harvard T.H. Chan School of Public Health
30秒速读
IN SHORT: This paper addresses the core challenge of inferring the relative contributions of multiple, simultaneous generative mechanisms in network formation when the true likelihood is intractable.
核心创新
- Methodology Proposes an event-wise mixture-of-mechanisms model that assigns generative rules (e.g., Preferential Attachment, Random Attachment) to each edge formation event, rather than to nodes, increasing model flexibility and realism.
- Methodology Introduces a novel GNN-MDN (Graph Neural Network - Mixture Density Network) architecture that automatically learns informative, low-dimensional network embeddings for conditional density estimation, bypassing the need for manually specified summary statistics.
- Theory Formalizes a unified framework that incorporates both growth mechanisms (adding nodes/edges) and evolution mechanisms (modifying existing edges), allowing the model to capture a wider range of network dynamics like triangle formation.
主要结论
- The proposed GNN-MDN method provides valid approximate Bayesian inference, demonstrated via simulation studies showing that the 95% credible intervals achieve nominal coverage (e.g., containing the true parameter values).
- The event-wise model successfully infers dominant mechanisms in simulated scenarios; for instance, it accurately recovers a weight vector of (0.95, 0.025, 0.025) for a scenario where Preferential Attachment is the primary growth mechanism.
- The method is applicable to real-world networks, providing interpretable decompositions of their formation processes into quantifiable contributions from mechanisms like Random Attachment, Preferential Attachment, and Triangle Formation.
摘要: Mechanistic models can provide an intuitive and interpretable explanation of network growth by specifying a set of generative rules. These rules can be defined by domain knowledge about real-world mechanisms governing network growth or may be designed to facilitate the appearance of certain network motifs. In the formation of real-world networks, multiple mechanisms may be simultaneously involved; it is then important to understand the relative contribution of each of these mechanisms. In this paper, we propose the use of a conditional density estimator, augmented with a graph neural network, to perform inference on a flexible mixture of network-forming mechanisms. This event-wise mixture-of-mechanisms model assigns mechanisms to each edge formation event rather than stipulating node-level mechanisms, thus allowing for an explanation of the network generation process, as well as the dynamic evolution of the network over time. We demonstrate that our approximate Bayesian approach yields valid inferences for the relative weights of the mechanisms in our model, and we utilize this method to investigate the mechanisms behind the formation of a variety of real-world networks.