Paper List
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An AI Implementation Science Study to Improve Trustworthy Data in a Large Healthcare System
This paper addresses the critical gap between theoretical AI research and real-world clinical implementation by providing a practical framework for as...
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The BEAT-CF Causal Model: A model for guiding the design of trials and observational analyses of cystic fibrosis exacerbations
This paper addresses the critical gap in cystic fibrosis exacerbation management by providing a formal causal framework that integrates expert knowled...
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Hierarchical Molecular Language Models (HMLMs)
This paper addresses the core challenge of accurately modeling context-dependent signaling, pathway cross-talk, and temporal dynamics across multiple ...
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Stability analysis of action potential generation using Markov models of voltage‑gated sodium channel isoforms
This work addresses the challenge of systematically characterizing how the high-dimensional parameter space of Markov models for different sodium chan...
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Approximate Bayesian Inference on Mechanisms of Network Growth and Evolution
This paper addresses the core challenge of inferring the relative contributions of multiple, simultaneous generative mechanisms in network formation w...
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EnzyCLIP: A Cross-Attention Dual Encoder Framework with Contrastive Learning for Predicting Enzyme Kinetic Constants
This paper addresses the core challenge of jointly predicting enzyme kinetic parameters (Kcat and Km) by modeling dynamic enzyme-substrate interaction...
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Tissue stress measurements with Bayesian Inversion Stress Microscopy
This paper addresses the core challenge of measuring absolute, tissue-scale mechanical stress without making assumptions about tissue rheology, which ...
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DeepFRI Demystified: Interpretability vs. Accuracy in AI Protein Function Prediction
This study addresses the critical gap between high predictive accuracy and biological interpretability in DeepFRI, revealing that the model often prio...
D-MEM: Dopamine-Gated Agentic Memory via Reward Prediction Error Routing
UC San Diego | Carnegie Mellon University
30秒速读
IN SHORT: This paper addresses the fundamental scalability bottleneck in LLM agentic memory systems: the O(N²) computational complexity and unbounded API token costs caused by processing every user utterance through expensive memory evolution pipelines, regardless of information value.
核心创新
- Methodology Introduces D-MEM, a bio-inspired architecture implementing dopamine-gated fast/slow routing based on Agentic Reward Prediction Error (RPE), decoupling short-term interaction from long-term cognitive restructuring.
- Methodology Develops the LoCoMo-Noise benchmark with systematic 75% noise injection (Filler: 40%, Status: 30%, Tangent: 30%) to simulate real-world conversational dynamics and evaluate memory robustness.
- Methodology Implements zero-cost retrieval augmentation through hybrid BM25 search with Reciprocal Rank Fusion and an O(1) Shadow Buffer fallback mechanism to prevent adversarial hallucinations.
主要结论
- D-MEM reduces API token consumption by 80% (from 1,648K to 319K tokens) while maintaining or improving accuracy on complex reasoning tasks under extreme noise conditions (ρ=0.75).
- The architecture achieves superior multi-hop reasoning performance (42.7% F1 vs. A-MEM's 27.0%, a +15.7 point gap) by preserving cleaner relational memory structures through selective cognitive restructuring.
- The Critic Router successfully gates 80% of computational resources while maintaining overall F1 score of 37.4% on standard benchmarks, demonstrating the effectiveness of the bio-inspired RPE mechanism.
摘要: The integration of structured, long-term memory is critical for the development of autonomous Large Language Model (LLM) agents. Recent advancements, such as the Agentic Memory (A-MEM) framework, have achieved significant progress by dynamically constructing and evolving knowledge graphs. However, existing architectures inherently operate as synchronous, "append-and-evolve-all" systems. Processing every user utterance through a computationally expensive O(N²) memory evolution pipeline introduces severe write-latency, unbounded API token costs, and catastrophic context window pollution caused by conversational noise. To address this scalability bottleneck, we introduce D-MEM (Dopamine-Gated Agentic Memory), a biologically inspired architecture that decouples short-term interaction from long-term cognitive restructuring. Drawing inspiration from the Dopamine-driven Reward Prediction Error (RPE) gating mechanism in the mammalian Ventral Tegmental Area (VTA), D-MEM implements a highly efficient Fast/Slow routing system. We introduce a lightweight Critic Router that continuously evaluates the Information Entropy (Surprise) and Long-term Utility of incoming stimuli. Routine inputs with low RPE are either bypassed entirely or cached in an O(1) fast-access buffer, preserving computational resources. Conversely, inputs generating a high RPE—such as factual contradictions or paradigm-shifting preference changes—trigger a "dopamine release" that activates the slow, O(N) deep memory evolution pipeline, actively reshaping the agent's global knowledge graph. To enable rigorous evaluation under realistic conditions, we further introduce the LoCoMo-Noise benchmark, which systematically injects controlled conversational noise into long-term dialogue sessions to simulate real-world interaction dynamics. Extensive evaluations demonstrate that D-MEM reduces API token consumption by over 80% and eliminates O(N²) write-latency bottlenecks, all while strictly outperforming synchronous baselines in complex multi-hop reasoning and adversarial resilience. By selectively gating cognitive restructuring and leveraging zero-cost retrieval augmentations, D-MEM provides a highly scalable and cost-efficient foundation for lifelong agentic memory. To support reproducibility, we open-source our implementation at https://github.com/london-and-tequila/dmem.