AI-generated summaries

Today's ML research,
without the noise.

Daily summaries of the latest machine learning papers from arXiv, processed every 8 hours.

52 Papers today
8h Update frequency
7 Days of history
Enhancing the Reliability of Medical AI through Expert-guided Uncertainty Modeling
Aleksei Khalin, Ekaterina Zaychenkova, Aleksandr Yugay, Andrey Goncharov, Sergey Korchagin, Alexey Zaytsev, Egor Ershov
Computer Vision Interpretability Efficient ML
  • Integration of expert knowledge improves uncertainty estimation in medical AI.
  • The proposed method effectively separates epistemic and aleatoric uncertainty.
  • A two-ensemble approach outperforms state-of-the-art uncertainty estimation methods.
  • Significant performance improvements were observed across multiple medical tasks.
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Detecting Complex Money Laundering Patterns with Incremental and Distributed Graph Modeling
Haseeb Tariq, Alen Kaja, Marwan Hassani
Graph Learning
  • Introduction of the ReDiRect framework for detecting money laundering patterns.
  • Focus on unsupervised learning and distributed processing of transaction graphs.
  • Development of a new evaluation metric for assessing money laundering detection effectiveness.
  • Demonstrated superior performance over existing AML detection techniques.
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FourierMoE: Fourier Mixture-of-Experts Adaptation of Large Language Models
Juyong Jiang, Fan Wang, Hong Qi, Sunghun Kim, Jing Tang
NLP Large Language Models Efficient ML
  • FourierMoE addresses limitations of traditional PEFT methods in multi-task learning.
  • The method utilizes spectral analysis to inform frequency-aware adaptation strategies.
  • FourierMoE integrates MoE architecture with IDFT for efficient expert specialization.
  • Extensive experiments show superior performance across multiple benchmarks with fewer parameters.
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Efficient and Principled Scientific Discovery through Bayesian Optimization: A Tutorial
Zhongwei Yu, Rasul Tutunov, Alexandre Max Maraval, Zikai Xie, Zhenzhi Tan, Jiankang Wang, Zijing Li, Liangliang Xu, Qi Yang, Jun Jiang, Sanzhong Luo, Zhenxiao Guo, Haitham Bou-Ammar, Jun Wang
Optimization
  • Bayesian Optimization formalizes the scientific discovery process, reducing reliance on trial-and-error.
  • The tutorial provides practical coding examples and theoretical foundations tailored for various audiences.
  • Real-world case studies validate the effectiveness of BO in optimizing experimental design in scientific research.
  • Key components of BO, such as surrogate models and acquisition functions, are essential for balancing exploration and exploitation.
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PAC-Bayesian Reward-Certified Outcome Weighted Learning
Yuya Ishikawa, Shu Tamano
Theory
  • PROWL incorporates reward uncertainty into the learning framework for individualized treatment rules.
  • The method provides a conservative reward estimate and a lower bound on expected value, improving robustness.
  • A nonasymptotic PAC-Bayes lower bound is established for randomized ITRs, characterized by a general Bayes update.
  • An automated calibration procedure for learning rates is introduced, enhancing optimization efficiency.
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Care-Conditioned Neuromodulation for Autonomy-Preserving Supportive Dialogue Agents
Shalima Binta Manir, Tim Oates
NLP Large Language Models
  • Introduces Care-Conditioned Neuromodulation (CCN) for supportive dialogue agents.
  • Formulates supportive dialogue as a multi-objective alignment problem focusing on autonomy support.
  • Constructs a benchmark for relational failure modes in multi-turn dialogues.
  • Demonstrates significant improvements in autonomy-preserving utility over existing methods.
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Learning from the Right Rollouts: Data Attribution for PPO-based LLM Post-Training
Dong Shu, Denghui Zhang, Jessica Hullman
Reinforcement Learning Large Language Models Interpretability
  • I-PPO integrates data attribution into the PPO training process to filter out unfaithful episodes.
  • The framework uses gradient alignment to compute influence scores for episodes in the rollout buffer.
  • I-PPO significantly accelerates training and improves model performance compared to SFT and traditional PPO.
  • The filtering mechanism acts as an intrinsic early stopping method, enhancing training efficiency.
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PI-JEPA: Label-Free Surrogate Pretraining for Coupled Multiphysics Simulation via Operator-Split Latent Prediction
Brandon Yee, Pairie Koh
Efficient ML
  • PI-JEPA allows for pretraining on unlabeled parameter fields, reducing reliance on expensive labeled simulation data.
  • The framework employs masked latent prediction and operator-splitting to enhance the modeling of multiphysics processes.
  • Experimental results show substantial improvements in prediction accuracy compared to existing neural operator methods.
  • The approach demonstrates that label-free pretraining can significantly lower the costs associated with surrogate model deployment in engineering applications.
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Malliavin Calculus for Counterfactual Gradient Estimation in Adaptive Inverse Reinforcement Learning
Vikram Krishnamurthy, Luke Snow
Reinforcement Learning Theory Optimization
  • Introduces a novel Langevin-based algorithm for adaptive inverse reinforcement learning using Malliavin calculus.
  • Overcomes limitations of traditional Monte Carlo methods and kernel smoothing in estimating counterfactual gradients.
  • Achieves optimal convergence rates for counterfactual gradient estimation without resampling.
  • Provides a comprehensive algorithmic framework and numerical implementation to validate the approach.
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Soft MPCritic: Amortized Model Predictive Value Iteration
Thomas Banker, Nathan P. Lawrence, Ali Mesbah
Reinforcement Learning Robotics Optimization
  • Soft MPCritic combines RL and MPC to leverage their complementary strengths.
  • The framework operates entirely in value space, enhancing computational efficiency.
  • An amortized warm-start strategy is introduced to improve the integration of MPC within RL.
  • Soft MPCritic demonstrates effectiveness in both classic and complex control tasks.
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Crystalite: A Lightweight Transformer for Efficient Crystal Modeling
Tin Hadลพi Veljkoviฤ‡, Joshua Rosenthal, Ivor Lonฤariฤ‡, Jan-Willem van de Meent
Generative Models Graph Learning Efficient ML
  • Crystalite introduces a lightweight diffusion Transformer for crystal modeling.
  • Utilizes Subatomic Tokenization for efficient atom representation.
  • Incorporates the Geometry Enhancement Module (GEM) for direct geometric bias in attention.
  • Achieves state-of-the-art results in crystal structure prediction and generation.
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Learn by Surprise, Commit by Proof
Kang-Sin Choi
NLP Large Language Models Optimization
  • LSCP allows models to autonomously learn new information by verifying against existing knowledge.
  • The framework uses a self-gating mechanism to adjust learning intensity based on the model's conviction about new content.
  • Experiments show that LSCP significantly reduces rote memorization compared to standard fine-tuning methods.
  • The approach models biological memory consolidation, selectively transferring information from short-term to long-term memory.
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CANDI: Curated Test-Time Adaptation for Multivariate Time-Series Anomaly Detection Under Distribution Shift
HyunGi Kim, Jisoo Mok, Hyungyu Lee, Juhyeon Shin, Sungroh Yoon
Time Series
  • CANDI addresses the critical issue of distribution shift in MTSAD, which leads to increased false positives.
  • The framework employs False Positive Mining to curate informative samples for adaptation.
  • CANDI incorporates a lightweight Spatiotemporally-Aware Normality Adaptation module to update the model without compromising pre-trained knowledge.
  • The proposed method shows significant performance improvements over existing baselines, with a notable AUROC gain.
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UQ-SHRED: uncertainty quantification of shallow recurrent decoder networks for sparse sensing via engression
Mars Liyao Gao, Yuxuan Bao, Amy S. Rude, Xinwei Shen, J. Nathan Kutz
Time Series Theory Efficient ML
  • UQ-SHRED provides valid uncertainty quantification for sparse sensing problems.
  • The framework uses noise injection and energy score minimization to learn predictive distributions.
  • UQ-SHRED maintains computational efficiency by utilizing a single trained network.
  • The method is validated across multiple complex real-world datasets, demonstrating its versatility.
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Taming the Exponential: A Fast Softmax Surrogate for Integer-Native Edge Inference
Dimitrios Danopoulos, Enrico Lupi, Michael Kagan, Maurizio Pierini
Efficient ML NLP Large Language Models
  • Introduction of Head-Calibrated Clipped-Linear Softmax (HCCS) as a surrogate for traditional softmax.
  • HCCS maintains the ordering of logits and produces stable probability distributions without explicit exponentiation.
  • Lightweight calibration method for optimizing surrogate parameters per attention head using representative datasets.
  • First int8-optimized softmax implementation for AMD Versal AI Engines, enhancing throughput significantly.
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CuTeGen: An LLM-Based Agentic Framework for Generation and Optimization of High-Performance GPU Kernels using CuTe
Tara Saba, Anne Ouyang, Xujie Si, Fan Long
Optimization Large Language Models Efficient ML
  • CuTeGen is an iterative framework for GPU kernel synthesis that emphasizes progressive refinement.
  • The framework utilizes the CuTe abstraction layer to enhance kernel generation stability and performance.
  • Delayed profiling integration prevents premature convergence to suboptimal solutions during kernel optimization.
  • CuTeGen achieves significant performance improvements over existing implementations, particularly in matrix multiplication and activation workloads.
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Label Shift Estimation With Incremental Prior Update
Yunrui Zhang, Gustavo Batista, Salil S. Kanhere
Theory Efficient ML
  • Introduces LEIP, a new method for label shift estimation that updates priors incrementally.
  • Assumes no concept drift while allowing for changes in label distribution between training and testing.
  • Demonstrates superior performance compared to existing maximum likelihood-based methods.
  • Applicable to any black-box probabilistic classifier with linear time complexity.
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Improving Latent Generalization Using Test-time Compute
Arslan Chaudhry, Sridhar Thiagarajan, Andrew Lampinen
NLP Large Language Models Reinforcement Learning
  • In-weights learning in LLMs often struggles with latent generalization, particularly in deductive reasoning tasks.
  • Test-time compute, or 'thinking', can significantly improve latent generalization compared to traditional train-time data augmentation methods.
  • Models trained to generate long chains-of-thought through RL can generalize effectively to both in-distribution and out-of-distribution knowledge.
  • Despite improvements, thinking models still face challenges with pure reversal tasks, indicating a gap compared to in-context learning performance.
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CRIT: Graph-Based Automatic Data Synthesis to Enhance Cross-Modal Multi-Hop Reasoning
Junyoung Sung, Seungwoo Lyu, Minjun Kim, Sumin An, Arsha Nagrani, Paul Hongsuck Seo
Multimodal Graph Learning Computer Vision
  • CRIT addresses the gap in multimodal benchmarks by providing a dataset that requires cross-modal multi-hop reasoning.
  • The graph-based automatic data generation pipeline ensures the creation of complex reasoning tasks without relying on VLMs.
  • Models trained on the CRIT dataset exhibit significant performance improvements in cross-modal reasoning tasks.
  • The dataset includes diverse domains and a manually verified test set for reliable evaluation.
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Application of parametric Shallow Recurrent Decoder Network to magnetohydrodynamic flows in liquid metal blankets of fusion reactors
M. Lo Verso, C. Introini, E. Cervi, L. Savoldi, J. N. Kutz, A. Cammi
Time Series Efficient ML Theory
  • Introduction of SHRED as a data-driven approach for MHD state reconstruction.
  • Integration of SVD for dimensionality reduction enhances computational efficiency.
  • High reconstruction accuracy across various magnetic field configurations.
  • Ability to infer magnetic field dynamics from limited sensor data.
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Feature Weighting Improves Pool-Based Sequential Active Learning for Regression
Dongrui Wu
Theory Optimization Efficient ML
  • Introduces feature weighting in distance computation for active learning in regression.
  • Proposes five new active learning approaches that incorporate feature weights.
  • Demonstrates consistent performance improvements over existing methods.
  • Validates effectiveness across both single-task and multi-task regression problems.
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Batched Contextual Reinforcement: A Task-Scaling Law for Efficient Reasoning
Bangji Yang, Hongbo Ma, Jiajun Fan, Ge Liu
Large Language Models Reinforcement Learning Efficient ML
  • Introduction of Batched Contextual Reinforcement (BCR) for efficient reasoning in LLMs.
  • Discovery of a task-scaling law indicating that increasing concurrent problems reduces token usage while maintaining accuracy.
  • BCR achieves significant token reductions (15.8% to 62.6%) without degrading accuracy across multiple benchmarks.
  • Emergent self-regulated efficiency allows models to optimize reasoning autonomously, reducing unnecessary verbosity.
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annbatch unlocks terabyte-scale training of biological data in anndata
Ilan Gold, Felix Fischer, Lucas Arnoldt, F. Alexander Wolf, Fabian J. Theis
Efficient ML
  • Annbatch significantly reduces data loading times for large biological datasets.
  • The framework integrates fully with the anndata ecosystem, ensuring compatibility with existing tools.
  • Implements efficient data retrieval techniques such as pseudo-random access and pre-shuffling.
  • Achieves a throughput of ~35,000 samples per second, outperforming existing solutions.
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ZEUS: Accelerating Diffusion Models with Only Second-Order Predictor
Yixiao Wang, Ting Jiang, Zishan Shao, Hancheng Ye, Jingwei Sun, Mingyuan Ma, Jianyi Zhang, Yiran Chen, Hai Li
Generative Models Efficient ML Computer Vision
  • ZEUS utilizes a second-order predictor for efficient denoiser evaluations, simplifying the acceleration process.
  • The method avoids complex architectural changes and high-order predictors that can degrade output quality.
  • An interleaved caching scheme is introduced to maintain stability during aggressive speedups.
  • ZEUS is compatible with various model architectures and requires minimal integration effort.
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Forecasting Supply Chain Disruptions with Foresight Learning
Benjamin Turtel, Paul Wilczewski, Kris Skotheim
NLP Large Language Models Time Series
  • Introduces a new forecasting task linking real-time news to future supply chain disruptions.
  • Develops an end-to-end modeling approach that directly produces probabilistic forecasts from raw news inputs.
  • Achieves superior predictive performance compared to pretrained models and strong baselines.
  • Induces structured reasoning behavior in the model, improving uncertainty handling and signal prioritization.
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DDCL: Deep Dual Competitive Learning: A Differentiable End-to-End Framework for Unsupervised Prototype-Based Representation Learning
Giansalvo Cirrincione
Theory
  • Introduction of DDCL as the first fully differentiable end-to-end framework for unsupervised representation learning.
  • Replacement of external k-means clustering with an internal Dual Competitive Layer for direct optimization.
  • Theoretical analysis includes loss decomposition, collapse analysis, and global Lyapunov stability.
  • Empirical validation shows DDCL outperforms traditional methods by significant margins in clustering accuracy.
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On the Role of Depth in the Expressivity of RNNs
Maude Lizaire, Michael Rizvi-Martel, ร‰ric Dupuis, Guillaume Rabusseau
Theory Time Series NLP
  • Depth increases the expressivity of RNNs, enhancing memory capacity and input transformation capabilities.
  • 2RNNs can compute higher-order polynomials as depth increases, unlike standard RNNs.
  • Multiplicative interactions in 2RNNs provide unique expressive capabilities that cannot be replicated by deep RNNs with only nonlinear activations.
  • Empirical results confirm theoretical insights, showing depth's impact on performance across various tasks.
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AA-SVD : Anchored and Adaptive SVD for Large Language Model Compression
Atul Kumar Sinha, Franรงois Fleuret
NLP Large Language Models Efficient ML
  • AA-SVD enables rapid compression of large language models without retraining.
  • The method accounts for both original outputs and input distribution shifts, improving accuracy.
  • AA-SVD refines transformer blocks end-to-end, minimizing output distortion.
  • Experimental results show superior performance compared to existing SVD-based methods.
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DySCo: Dynamic Semantic Compression for Effective Long-term Time Series Forecasting
Xiang Ao, Yinyu Tan, Mengru Chen
Time Series
  • DySCo addresses the limitations of traditional time series forecasting methods by introducing a learnable compression paradigm.
  • The framework includes EGDS for dynamic sampling, HFED for multi-granularity modeling, and CSIM for adaptive fusion of representations.
  • Experimental results show significant improvements in predictive accuracy and efficiency when DySCo is integrated into existing models.
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JetPrism: diagnosing convergence for generative simulation and inverse problems in nuclear physics
Zeyu Xia, Tyler Kim, Trevor Reed, Judy Fox, Geoffrey Fox, Adam Szczepaniak
Generative Models
  • JetPrism addresses the limitations of standard CFM loss metrics in evaluating generative models for nuclear physics.
  • The framework introduces a multi-metric evaluation protocol to accurately track convergence and generative fidelity.
  • Validation on a realistic dataset shows that physics-informed metrics can improve significantly beyond the plateau of standard loss.
  • JetPrism is designed to be extensible for various applications beyond nuclear physics, including medical imaging and finance.
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LI-DSN: A Layer-wise Interactive Dual-Stream Network for EEG Decoding
Chenghao Yue, Zhiyuan Ma, Zhongye Xia, Xinche Zhang, Yisi Zhang, Xinke Shen, Sen Song
Time Series
  • LI-DSN overcomes the limitations of late-fusion paradigms in EEG decoding.
  • The Temporal-Spatial Integration Attention (TSIA) mechanism enables layer-wise interaction between temporal and spatial features.
  • The model employs an adaptive fusion strategy with learnable channel weights.
  • LI-DSN consistently outperforms 13 state-of-the-art models across various EEG tasks.
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Graph Neural Operator Towards Edge Deployability and Portability for Sparse-to-Dense, Real-Time Virtual Sensing on Irregular Grids
William Howes, Jason Yoo, Kazuma Kobayashi, Subhankar Sarkar, Farid Ahmed, Souvik Chakraborty, Syed Bahauddin Alam
Graph Learning Efficient ML
  • VIRSO provides accurate sparse-to-dense reconstruction for irregular geometries.
  • The framework is designed with edge deployability and power efficiency in mind.
  • Achieves mean relative L2 errors below 1% across various benchmarks.
  • Significantly reduces energy-delay product compared to traditional methods.
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Expert-Choice Routing Enables Adaptive Computation in Diffusion Language Models
Shuibai Zhang, Caspian Zhuang, Chihan Cui, Zhihan Yang, Fred Zhangzhi Peng, Yanxin Zhang, Haoyue Bai, Zack Jia, Yang Zhou, Guanhua Chen, Ming Liu
NLP Large Language Models Generative Models
  • EC routing provides deterministic load balancing, outperforming TC routing in DLMs.
  • Timestep-dependent expert capacity scheduling enhances learning efficiency.
  • Retrofitting existing TC DLMs to EC routing improves convergence speed and accuracy.
  • EC routing allows for adaptive computation policies in DLMs.
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Auction-Based Online Policy Adaptation for Evolving Objectives
Guruprerana Shabadi, Kaushik Mallik
Reinforcement Learning Robotics Optimization
  • Introduces a modular framework for adaptive policies in multi-objective reinforcement learning.
  • Utilizes an auction-based mechanism for dynamic coordination among competing objectives.
  • Achieves better performance than monolithic policies through concurrent training and environment-aware bidding.
  • Facilitates interpretability by allowing clear identification of the active policy and objective.
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Model Merging via Data-Free Covariance Estimation
Marawan Gamal Abdel Hameed, Derek Tam, Pascal Jr Tikeng Notsawo, Colin Raffel, Guillaume Rabusseau
Theory Efficient ML Optimization
  • Introduces ACTMat, a data-free method for estimating covariance matrices for model merging.
  • Revisits the interference minimization framework to enhance model merging without requiring training data.
  • Demonstrates superior performance of ACTMat over existing data-free merging methods across multiple benchmarks.
  • Addresses the limitations of traditional merging methods that rely on heuristics and lack theoretical justification.
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Unifying Group-Relative and Self-Distillation Policy Optimization via Sample Routing
Gengsheng Li, Tianyu Yang, Junfeng Fang, Mingyang Song, Mao Zheng, Haiyun Guo, Dan Zhang, Jinqiao Wang, Tat-Seng Chua
Reinforcement Learning Large Language Models Optimization
  • SRPO unifies GRPO and SDPO to enhance reinforcement learning efficiency.
  • The framework routes samples based on correctness, improving credit assignment.
  • An entropy-aware mechanism stabilizes training by focusing on reliable signals.
  • SRPO outperforms both GRPO and SDPO in terms of peak performance and efficiency.
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DISCO-TAB: A Hierarchical Reinforcement Learning Framework for Privacy-Preserving Synthesis of Complex Clinical Data
Arshia Ilaty, Hossein Shirazi, Amir Rahmani, Hajar Homayouni
Reinforcement Learning Generative Models Large Language Models
  • DISCO-TAB integrates a fine-tuned LLM with a hierarchical RL optimization strategy for synthetic data generation.
  • The framework evaluates data synthesis at four granularities, enhancing the assessment of generated clinical data.
  • It employs Automated Constraint Discovery and Inverse-Frequency Reward Shaping to preserve medical logic.
  • DISCO-TAB achieves up to 38.2% improvement in clinical classifier utility compared to existing methods.
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LEO: Graph Attention Network based Hybrid Multi Sensor Extended Object Fusion and Tracking for Autonomous Driving Applications
Mayank Mayank, Bharanidhar Duraisamy, Florian Geiss
Graph Learning Multimodal Robotics
  • Introduction of LEO, a spatio-temporal GAT framework for extended object tracking.
  • Utilization of a parallelogram-based ground-truth formulation for complex object geometries.
  • Implementation of a dual-attention mechanism for robust sensor fusion.
  • Demonstrated real-time efficiency suitable for production systems.
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Apriel-Reasoner: RL Post-Training for General-Purpose and Efficient Reasoning
Rafael Pardinas, Ehsan Kamalloo, David Vazquez, Alexandre Drouin
NLP Large Language Models Reinforcement Learning
  • Introduction of a fully reproducible multi-domain RL post-training recipe.
  • Development of an adaptive domain sampling mechanism to maintain target domain ratios.
  • Implementation of a difficulty-aware length penalty to optimize reasoning lengths based on problem difficulty.
  • Apriel-Reasoner shows improved accuracy and efficiency compared to Apriel-Base.
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Beyond Logit Adjustment: A Residual Decomposition Framework for Long-Tailed Reranking
Zhanliang Wang, Hongzhuo Chen, Quan Minh Nguyen, Mian Umair Ahsan, Kai Wang
Computer Vision Theory Efficient ML
  • Decomposes residual correction into classwise and pairwise components to address long-tailed classification issues.
  • Introduces REPAIR, a post-hoc reranker that adapts corrections based on input context and competition features.
  • Validates the framework on five benchmarks, showing improved performance in rare disease diagnosis and other long-tailed scenarios.
  • Demonstrates that fixed offsets are inadequate when label pairs induce incompatible ordering constraints across contexts.
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Massively Parallel Exact Inference for Hawkes Processes
Ahmer Raza, Hudson Smith
Time Series Efficient ML Theory
  • Introduces a massively parallel algorithm for maximum likelihood estimation of linear exponential Hawkes processes.
  • Reduces computational complexity from O(Nยฒ) to O(N/P + log N) using parallel prefix scan.
  • Maintains exact likelihood computation without additional assumptions, preserving model interpretability.
  • Demonstrates orders-of-magnitude speedups on large-scale datasets, scaling to tens of millions of events.
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Optimizing EEG Graph Structure for Seizure Detection: An Information Bottleneck and Self-Supervised Learning Approach
Lincan Li, Rikuto Kotoge, Xihao Piao, Zheng Chen, Yushun Dong
Graph Learning Time Series Interpretability
  • IRENE optimizes EEG graph structures using Information Bottleneck principles to enhance seizure detection.
  • The framework employs self-supervised learning to create robust spatial-temporal representations without relying on labeled data.
  • IRENE addresses the challenges of noisy EEG data and inter-patient variability effectively.
  • The method demonstrates superior performance compared to existing state-of-the-art seizure detection techniques.
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Universal Hypernetworks for Arbitrary Models
Xuanfeng Zhou
Computer Vision Graph Learning NLP
  • UHN is a fixed-architecture generator that can produce weights for various models without redesigning the generator.
  • It supports multi-model generalization and multi-task learning across different architectures.
  • UHN allows for recursive generation of hypernetworks, enhancing its flexibility and scalability.
  • Empirical results show UHN's competitive performance against direct training across diverse benchmarks.
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Training In-Context and In-Weights Mixtures Via Contrastive Context Sampling
Deeptanshu Malu, Deevyanshu Malu, Aditya Nemiwal, Sunita Sarawagi
NLP Large Language Models Theory
  • Inter-example similarity is crucial for the emergence of ICL during fine-tuning.
  • Contrastive-Context effectively balances ICL and IWL by sampling across similarity levels.
  • The method outperforms traditional fine-tuning approaches in various tasks and models.
  • Theoretical insights from a minimal model support the empirical findings.
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Sven: Singular Value Descent as a Computationally Efficient Natural Gradient Method
Samuel Bright-Thonney, Thomas R. Harvey, Andre Lukas, Jesse Thaler
Optimization Efficient ML Theory
  • Sven optimizes neural networks by treating each data point's residual as a separate condition.
  • The algorithm approximates the Moore-Penrose pseudoinverse using truncated SVD, leading to efficient computation.
  • Sven significantly outperforms standard first-order methods like Adam in regression tasks.
  • The method is scalable with a manageable computational overhead relative to stochastic gradient descent.
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Pseudo-Quantized Actor-Critic Algorithm for Robustness to Noisy Temporal Difference Error
Taisuke Kobayashi
Reinforcement Learning Robotics Theory
  • Introduces the Pseudo-Quantized Actor-Critic (PQAC) algorithm for robust learning in RL.
  • Addresses the instability caused by noisy temporal difference errors in traditional RL methods.
  • Utilizes a sigmoid function to model optimality and achieve gradient vanishing for noise exclusion.
  • Demonstrates improved stability and efficiency in learning compared to baseline methods.
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Variational LSTM with Augmented Inputs: Nonlinear Response History Metamodeling with Aleatoric and Epistemic Uncertainty
Manisha Sapkota, Min Li, Bowei Li
Time Series
  • Introduces a Variational LSTM model for nonlinear structural metamodeling.
  • Augmented inputs effectively capture record-to-record variability and system uncertainty.
  • Monte Carlo dropout is used to quantify epistemic uncertainty in predictions.
  • Validated on nonlinear systems subjected to stochastic seismic and wind loads.
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When Reward Hacking Rebounds: Understanding and Mitigating It with Representation-Level Signals
Rui Wu, Ruixiang Tang
Reinforcement Learning Large Language Models Optimization
  • Identification of a three-phase rebound pattern in reward hacking during RL training.
  • Demonstration that the shortcut concept direction is a strong indicator of hacking behavior.
  • Introduction of Advantage Modification, which integrates concept-level signals into training to mitigate hacking.
  • Use of a controlled environment-manipulation testbed to study reward hacking dynamics.
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Generalization Bounds and Statistical Guarantees for Multi-Task and Multiple Operator Learning with MNO Networks
Adrien Weihs, Hayden Schaeffer
Theory Multimodal Efficient ML
  • Introduces a covering-number-based generalization analysis for multiple operator learning.
  • Derives explicit metric-entropy bounds for hypothesis classes related to MNO architecture.
  • Establishes an approximation-estimation tradeoff for expected test error on unseen data.
  • Clarifies the impact of hierarchical sampling budgets on generalization performance.
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Residuals-based Offline Reinforcement Learning
Qing Zhu, Xian Yu
Reinforcement Learning Optimization Theory
  • Introduces a residuals-based Bellman optimality operator for offline RL.
  • Addresses limitations of offline RL by generating unseen states through empirical residuals.
  • Develops a residuals-based offline DQN algorithm.
  • Demonstrates effectiveness in a stochastic CartPole environment.
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Smoothing the Landscape: Causal Structure Learning via Diffusion Denoising Objectives
Hao Zhu, Di Zhou, Donna Slonim
Graph Learning Theory Efficient ML
  • Introduction of Denoising Diffusion Causal Discovery (DDCD) for causal structure learning.
  • Utilization of denoising score matching to achieve smoother gradients and faster convergence.
  • Adaptive k-hop acyclicity constraint improves runtime efficiency.
  • DDCD-Smooth addresses the 'varsortability' problem, enhancing robustness to heterogeneous feature scales.
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World Action Verifier: Self-Improving World Models via Forward-Inverse Asymmetry
Yuejiang Liu, Fan Feng, Lingjing Kong, Weifeng Lu, Jinzhou Tang, Kun Zhang, Kevin Murphy, Chelsea Finn, Yilun Du
Reinforcement Learning Robotics Efficient ML
  • WAV enables world models to self-improve by verifying their own prediction errors.
  • The framework decomposes state prediction into state plausibility and action reachability.
  • WAV leverages action-free data and lower-dimensional features for more efficient verification.
  • Empirical results show 2ร— higher sample efficiency and an 18% improvement in policy performance.
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