AI-generated summaries

Today's ML research,
without the noise.

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

67 Papers today
8h Update frequency
7 Days of history
The Geometry of Polynomial Group Convolutional Neural Networks
Yacoub Hendi, Daniel Persson, Magdalena Larfors
Theory
  • Introduction of a mathematical framework for PGCNNs using graded group algebras.
  • Two parametrization methods (Hadamard and Kronecker products) for polynomial activation functions.
  • Dimension of the neuromanifold is determined by the number of layers and group size, not by activation degree.
  • Description of the general fiber of the Kronecker parametrization and conjectured results for the Hadamard parametrization.
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Reconsidering Dependency Networks from an Information Geometry Perspective
Kazuya Takabatake, Shotaro Akaho
Theory Optimization Graph Learning
  • Introduces an information-geometric perspective to analyze dependency networks.
  • Develops the concept of full conditional divergence and derives an upper bound for stationary distributions.
  • Reformulates learning tasks into independent optimization problems for each node.
  • Proves convergence of the learned model distribution to the true distribution with sufficient training samples.
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Softmax gradient policy for variance minimization and risk-averse multi armed bandits
Gabriel Turinici
Reinforcement Learning Theory Optimization
  • Introduces a softmax parameterization for risk-aware MABs focusing on variance minimization.
  • Proposes a new algorithm that constructs unbiased estimates using independent draws from arm distributions.
  • Demonstrates convergence of the proposed algorithm under natural conditions.
  • Provides empirical results that illustrate the practical behavior of the algorithm.
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Is One Token All It Takes? Graph Pooling Tokens for LLM-based GraphQA
Ankit Grover, Lodovico Giaretta, Rémi Bourgerie, Sarunas Girdzijauskas
Large Language Models Graph Learning Optimization
  • Introduction of multi-token hierarchical graph pooling to enhance information retention in GraphQA.
  • Evaluation of various pooling operators to characterize their stability and performance trade-offs.
  • Demonstration that LoRA adapters can stabilize complex pooling methods during training.
  • Adaptation of the FandE score to reveal saturation issues in current GraphQA benchmarks.
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Finite-time analysis of Multi-timescale Stochastic Optimization Algorithms
Kaustubh Kartikey, Shalabh Bhatnagar
Optimization Theory
  • Finite-time mean-squared error bounds for Hessian estimators in multi-timescale stochastic optimization are derived.
  • Convergence guarantees to first-order stationary points are established for both the two-time-scale and three-time-scale algorithms.
  • The interaction between multiple time-scales is characterized, leading to optimal step-size choices.
  • Numerical experiments validate the theoretical results and demonstrate the benefits of second-order methods.
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MAC-Attention: a Match-Amend-Complete Scheme for Fast and Accurate Attention Computation
Jinghan Yao, Sam Adé Jacobs, Walid Krichene, Masahiro Tanaka, Dhabaleswar K Panda
NLP Large Language Models Efficient ML
  • MAC-Attention preserves fidelity and access while accelerating long-context decoding.
  • The method employs a three-stage process: Match, Amend, and Complete.
  • It achieves significant reductions in KV accesses and latency compared to existing methods.
  • MAC-Attention is model-agnostic and can be integrated into various inference stacks.
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GUIDE: Reinforcement Learning for Behavioral Action Support in Type 1 Diabetes
Saman Khamesian, Sri Harini Balaji, Di Yang Shi, Stephanie M. Carpenter, Daniel E. Rivera, W. Bradley Knox, Peter Stone, Hassan Ghasemzadeh
Reinforcement Learning
  • GUIDE provides behavioral recommendations alongside insulin dosing to improve T1D management.
  • The framework utilizes a patient-specific glucose predictor and supports both offline and online RL methods.
  • CQL-BC algorithm achieved 85.49% average time-in-range with low hypoglycemia exposure.
  • The learned policy reflects patients' action patterns, ensuring practical applicability.
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Policy Improvement Reinforcement Learning
Huaiyang Wang, Xiaojie Li, Deqing Wang, Haoyi Zhou, Zixuan Huang, Yaodong Yang, Jianxin Li, Yikun Ban
Reinforcement Learning Large Language Models Optimization
  • Identifies the lack of policy improvement feedback in existing RLVR methods as a source of instability.
  • Introduces the PIRL framework to optimize inter-iteration policy improvement directly.
  • Proposes PIPO, an algorithm that implements closed-loop optimization through retrospective verification.
  • Demonstrates empirical effectiveness of PIPO over GRPO and its variants in mathematical reasoning tasks.
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Big2Small: A Unifying Neural Network Framework for Model Compression
Jing-Xiao Liao, Haoran Wang, Tao Li, Daoming Lyu, Yi Zhang, Chengjun Cai, Feng-Lei Fan
Theory Efficient ML
  • Establishes a unifying mathematical framework for model compression based on measure theory.
  • Demonstrates that various compression techniques can be viewed as manifestations of a shared mathematical substrate.
  • Introduces Big2Small, a data-free model compression framework that utilizes Implicit Neural Representations.
  • Implements Outlier-Aware Preprocessing and Frequency-Aware Loss to enhance weight reconstruction fidelity.
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Reasoning Shift: How Context Silently Shortens LLM Reasoning
Gleb Rodionov
Large Language Models NLP Theory
  • LLMs exhibit shorter reasoning traces when presented with irrelevant context.
  • The reduction in reasoning length is associated with decreased self-verification and uncertainty management.
  • Performance on straightforward problems remains unaffected, but challenging tasks may suffer.
  • The study emphasizes the importance of context management in LLMs.
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Model-Based Learning of Near-Optimal Finite-Window Policies in POMDPs
Philip Jordan, Maryam Kamgarpour
Reinforcement Learning Theory Robotics
  • Introduces a model-based method for estimating superstate MDPs from POMDP trajectories.
  • Establishes tight sample complexity guarantees for model estimation.
  • Demonstrates the effectiveness of finite-window policies in approximating optimal policies.
  • Provides an efficient algorithm for learning m-step history-dependent policies.
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Concept frustration: Aligning human concepts and machine representations
Enrico Parisini, Christopher J. Soelistyo, Ahab Isaac, Alessandro Barp, Christopher R.S. Banerji
Interpretability
  • Introduces the concept of 'concept frustration' to describe inconsistencies in human and machine concept alignment.
  • Develops a geometric framework for comparing supervised and unsupervised representations.
  • Demonstrates that frustration can be detected using task-aligned geometry, improving upon traditional methods.
  • Provides a closed-form expression for classifier accuracy under a linear-Gaussian model, highlighting the impact of frustration.
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AMShortcut: An Inference- and Training-Efficient Inverse Design Model for Amorphous Materials
Yan Lin, Jonas A. Finkler, Tao Du, Jilin Hu, Morten M. Smedskjaer
Generative Models Efficient ML
  • AMShortcut improves inference efficiency for amorphous materials by reducing the number of required sampling steps.
  • The model can be trained once for all relevant properties, allowing flexible inference based on arbitrary combinations of these properties.
  • Experiments show that AMShortcut achieves significant reductions in inference time without compromising accuracy.
  • The approach addresses the computational challenges associated with the inverse design of amorphous materials.
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Routing-Free Mixture-of-Experts
Yilun Liu, Jinru Han, Sikuan Yan, Volker Tresp, Yunpu Ma
NLP Large Language Models Efficient ML
  • Introduction of Routing-Free MoE architecture that eliminates centralized routing mechanisms.
  • Development of a unified adaptive load-balancing framework for optimizing expert and token balancing.
  • Demonstrated consistent performance improvements over standard MoE and other baselines in language modeling tasks.
  • Enhanced scalability and robustness of the proposed model.
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Biomimetic PINNs for Cell-Induced Phase Transitions: UQ-R3 Sampling with Causal Gating
Anci Lin, Xiaohong Liu, Zhiwen Zhang, Weidong Zhao, Wenju Zhao
Optimization Theory Efficient ML
  • Introduction of Bio-PINNs to effectively model cell-induced phase transitions.
  • Utilization of a progressive distance gate to enhance spatial causality in modeling.
  • Implementation of an uncertainty-quantification proxy for efficient sampling.
  • Demonstration of significant performance improvements over traditional methods.
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Learning to Shuffle: Block Reshuffling and Reversal Schemes for Stochastic Optimization
Lam M. Nguyen, Dzung T. Phan, Jayant Kalagnanam
Optimization Theory Large Language Models
  • Introduction of an LLM-guided program evolution pipeline for discovering effective shuffling rules.
  • Identification and analysis of two core components: block reshuffling and paired reversal.
  • Block reshuffling leads to reduced prefix-gradient variance constants, improving optimization stability.
  • Paired reversal cancels leading order-dependent second-order terms, enhancing learning rate sensitivity.
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From Physics to Surrogate Intelligence: A Unified Electro-Thermo-Optimization Framework for TSV Networks
Mohamed Gharib, Leonid Popryho, Inna Partin-Vaisband
Optimization Graph Learning
  • Introduces a unified framework for electro-thermal modeling and optimization of TSV networks.
  • Combines physics-informed analytical modeling with GNN surrogates for efficient design-space exploration.
  • Achieves significant reduction in computational time, enabling rapid evaluation of millions of TSV configurations.
  • Demonstrates strong validation results against full-wave FEM simulations.
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Scheduling LLM Inference with Uncertainty-Aware Output Length Predictions
Haoyu Zheng, Yongqiang Zhang, Fangcheng Fu, Xiaokai Zhou, Hao Luo, Hongchao Zhu, Yuanyuan Zhu, Hao Wang, Xiao Yan, Jiawei Jiang
NLP Large Language Models Efficient ML
  • Existing methods rely on point estimates for output lengths, which do not align with the stochastic nature of LLM inference.
  • Output lengths can be modeled as a heavy-tailed distribution, specifically using the log-t distribution.
  • The Tail Inflated Expectation (TIE) metric accounts for the risks of generating long outputs, improving scheduling decisions.
  • TIE reduces per-token latency by 2.31× for online inference and increases throughput by 1.42× for offline tasks.
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Differentiable Initialization-Accelerated CPU-GPU Hybrid Combinatorial Scheduling
Mingju Liu, Jiaqi Yin, Alvaro Velasquez, Cunxi Yu
Optimization
  • Introduces a hybrid CPU-GPU framework for combinatorial scheduling using ILP.
  • Combines differentiable optimization with classical ILP solvers to enhance performance.
  • Achieves up to 10× performance gain and narrows optimality gap to < 0.1%.
  • Demonstrates the first use of differentiable optimization as a warm-start mechanism for ILP solvers.
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Two-Stage Optimizer-Aware Online Data Selection for Large Language Models
Fangxin Wang, Peyman Baghershahi, Langzhou He, Henry Peng Zou, Sourav Medya, Philip S. Yu
NLP Large Language Models Optimization
  • Introduces an optimizer-aware framework for online data selection in LLM fine-tuning.
  • Develops a two-stage Filter-then-Weight algorithm for efficient sample selection and weighting.
  • Demonstrates improved convergence and performance over existing online data selection methods.
  • Establishes a connection between gradient matching and second-order target utility.
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Performance of Neural and Polynomial Operator Surrogates
Josephine Westermann, Benno Huber, Thomas O'Leary-Roseberry, Jakob Zech
Theory Efficient ML Optimization
  • Neural operators and polynomial surrogates are compared for efficiency in approximating PDE solutions.
  • Polynomial surrogates show better data efficiency for smooth input fields, while neural operators excel with rough inputs.
  • Derivative-informed training improves data efficiency, providing a competitive edge in low-data scenarios.
  • No single method is universally superior; the choice depends on the problem's regularity and computational constraints.
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Screening Is Enough
Ken M. Nakanishi
NLP Large Language Models Efficient ML
  • Introduction of Multiscreen architecture enabling absolute query-key relevance through screening.
  • Achieves 40% fewer parameters than Transformer while maintaining comparable validation loss.
  • Enables stable optimization at larger learning rates and improves long-context performance.
  • Reduces inference latency by up to 3.2 times compared to Transformer models.
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Transfer learning for nonparametric Bayesian networks
Rafael Sojo, Pedro Larrañaga, Concha Bielza
Graph Learning
  • Introduction of two transfer learning algorithms for nonparametric Bayesian networks: PCS-TL and HC-TL.
  • Development of metrics to address the negative transfer problem in transfer learning.
  • Evaluation of methods using synthetic datasets and real-world data from the UCI repository.
  • Statistical validation of results showing improved performance with the proposed methods.
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The Spectral Edge Thesis: A Mathematical Framework for Intra-Signal Phase Transitions in Neural Network Training
Yongzhong Xu
Theory
  • The Spectral Edge Thesis provides a new mathematical framework for understanding phase transitions in neural network training.
  • Empirical studies confirm that gap dynamics in the Gram matrix are indicative of grokking events.
  • The framework is architecture-agnostic, relying on NTK eigenvalues and Hessian curvatures.
  • Theoretical results include a coupled ODE system for signal strengths and characterizations of the intra-signal gap.
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ParetoBandit: Budget-Paced Adaptive Routing for Non-Stationary LLM Serving
Annette Taberner-Miller
Large Language Models Reinforcement Learning Optimization
  • Introduces ParetoBandit, the first adaptive router for LLMs that enforces budget constraints while adapting to non-stationary conditions.
  • Utilizes an online primal-dual budget pacer for real-time cost management.
  • Implements geometric forgetting to effectively handle shifts in model quality and pricing.
  • Features a hot-swap model registry for seamless integration of new models during operation.
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Beta-Scheduling: Momentum from Critical Damping as a Diagnostic and Correction Tool for Neural Network Training
Ivan Pasichnyk
Optimization Interpretability Efficient ML
  • Introduces a diagnostic pipeline that connects damping regimes, gradient attribution, and surgical corrections.
  • Successfully identifies and corrects errors in neural network layers without full retraining, achieving significant computational savings.
  • Demonstrates cross-optimizer invariance in identifying problematic layers, suggesting architectural rather than optimizer-related issues.
  • Proposes a zero-parameter momentum schedule that enhances convergence speed.
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Embedded Variational Neural Stochastic Differential Equations for Learning Heterogeneous Dynamics
Sandeep Kumar Samota, Reema Gupta, Snehashish Chakraverty
Time Series
  • Introduction of a novel V-NSDE model for socioeconomic data analysis.
  • Combines Neural SDEs and VAEs to capture complex dynamics.
  • Utilizes district-level data from Odisha, highlighting inter-district heterogeneity.
  • Demonstrates effective learning of trends and fluctuations in noisy data.
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An Isotropic Approach to Efficient Uncertainty Quantification with Gradient Norms
Nils Grünefeld, Jes Frellsen, Christian Hardmeier
NLP Large Language Models Efficient ML
  • Introduces a lightweight method for uncertainty quantification in neural networks using gradient norms.
  • Derives epistemic and aleatoric uncertainty estimators from a first-order Taylor expansion with an isotropy assumption.
  • Validates the method against MCMC estimates, demonstrating strong correspondence and scalability.
  • Investigates the effectiveness of uncertainty types in predicting answer correctness in LLMs, revealing benchmark-dependent performance.
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Exploring Silent Data Corruption as a Reliability Challenge in LLM Training
Anton Altenbernd, Philipp Wiesner, Odej Kao
Large Language Models
  • Silent Data Corruption (SDC) poses a significant reliability challenge in LLM training.
  • The study uses targeted fault injection to analyze the effects of SDC on training processes.
  • Different bit positions and execution stages exhibit varying sensitivity to SDC.
  • A lightweight detection method is proposed to identify harmful parameter updates.
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One-for-All: A Lightweight Stabilized and Parameter-Efficient Pre-trained LLM for Time Series Forecasting
Prasanjit Dey, Soumyabrata Dev, Bianca Schoen-Phelan
Time Series Large Language Models Efficient ML
  • Introduction of Gaussian Rank-Stabilized Low-Rank Adapters (rsLoRA) for efficient fine-tuning of LLMs.
  • Achieves a 98.3% reduction in parameters compared to conventional transformers.
  • Demonstrates state-of-the-art efficiency-accuracy trade-offs across multiple time-series tasks.
  • Enables deployment on edge devices due to significantly reduced memory requirements.
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Spectral Compact Training: Pre-Training Large Language Models via Permanent Truncated SVD and Stiefel QR Retraction
Björn Roman Kohlberger
Large Language Models Efficient ML Optimization
  • Introduces SCT, which uses permanent truncated SVD for weight storage, avoiding dense matrix construction.
  • Achieves up to 199× memory reduction per MLP layer, enabling training on consumer hardware.
  • Identifies rank 128 as the optimal configuration for efficiency and perplexity.
  • Demonstrates that convergence gaps compared to dense training are primarily due to learning rate configurations.
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Deep Networks Favor Simple Data
Weyl Lu, Chenjie Hao, Yubei Chen
Generative Models Computer Vision Theory
  • Deep networks consistently assign higher density to simpler data, a behavior observed across various architectures and datasets.
  • Two new density estimators (Jacobian-based and autoregressive self-estimators) are introduced to analyze this phenomenon.
  • The study finds a strong correlation between estimated density and sample complexity, quantified using Spearman rank correlation.
  • The OOD anomaly is a specific instance of a broader trend favoring simpler data in deep learning models.
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Derived Fields Preserve Fine-Scale Detail in Budgeted Neural Simulators
Wenshuo Wang, Fan Zhang
Optimization Theory Efficient ML
  • Introduces Derived-Field Optimization (DerivOpt) for state design in neural simulators.
  • Demonstrates that primitive and derived fields have different distortion characteristics under fixed storage budgets.
  • Shows significant improvements in fine-scale fidelity and overall simulation accuracy using DerivOpt.
  • Highlights the importance of carried-state design as a primary consideration in neural simulation frameworks.
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Toward Personalized Darts Training: A Data-Driven Framework Based on Skeleton-Based Biomechanical Analysis and Motion Modeling
Z hantao Chen, Dongyi He, Jin Fang, Xi Chen, Yisuo Liu, Xiaozhen Zhong, Xuejun Hu
Computer Vision Robotics Optimization
  • Proposes a data-driven framework for personalized darts training using biomechanical analysis.
  • Utilizes Kinect 2.0 and optical cameras for markerless motion capture in real-world settings.
  • Develops two key modules for trajectory fitting and motion deviation identification.
  • Demonstrates the ability to provide targeted training recommendations based on individual performance.
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A Comprehensive Information-Decomposition Analysis of Large Vision-Language Models
Lixin Xiu, Xufang Luo, Hideki Nakayama
Multimodal Interpretability Computer Vision
  • Introduces a PID framework for analyzing LVLMs, focusing on information decomposition.
  • Profiles 26 LVLMs across four datasets, revealing insights into their decision-making processes.
  • Identifies two task regimes and two contrasting strategies among model families.
  • Uncovers a three-phase pattern in layer-wise processing, emphasizing visual instruction tuning.
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Lead Zirconate Titanate Reservoir Computing for Classification of Written and Spoken Digits
Thomas Buckley, Leslie Schumm, Manor Askenazi, Edward Rietman
Computer Vision Audio & Speech Theory
  • PZT reservoir achieved 89.0% accuracy on MNIST, outperforming logistic regression.
  • Reservoir computing shows equivalent performance to baseline methods on simpler tasks like AudioMNIST.
  • Task complexity is crucial in determining the effectiveness of physical reservoirs.
  • PZT's nonlinearity and fading memory enhance its suitability for reservoir computing.
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Lipschitz Dueling Bandits over Continuous Action Spaces
Mudit Sharma, Shweta Jain, Vaneet Aggarwal, Ganesh Ghalme
Reinforcement Learning Theory Optimization
  • Introduces the first algorithm for Lipschitz Dueling Bandits, LOG-DUELLI.
  • Achieves a regret bound of ˜O(T^(dz+1)/(dz+2)).
  • Utilizes round-based exploration and recursive region elimination.
  • Maintains logarithmic space complexity, optimal for continuous action spaces.
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Temporal Memory for Resource-Constrained Agents: Continual Learning via Stochastic Compress-Add-Smooth
Michael Chertkov
Theory Efficient ML Robotics
  • Introduces a stochastic memory framework using Bridge Diffusion for continual learning.
  • Employs a Compress-Add-Smooth recursion to efficiently incorporate new experiences.
  • Demonstrates linear scaling of retention half-life with the segment budget, outperforming traditional FIFO buffers.
  • Provides a fully analytical model for studying forgetting mechanisms in continual learning.
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Target-Aligned Reinforcement Learning
Leonard S. Pleiss, James Harrison, Maximilian Schiffer
Reinforcement Learning Theory Optimization
  • TARL mitigates the stability-recency tradeoff by focusing on well-aligned target and online network estimates.
  • A novel offline-online target alignment metric is introduced to quantify agreement between value estimates.
  • The framework can be integrated into existing RL algorithms that utilize target networks.
  • Theoretical analysis shows that learning from aligned transitions acts as a variance reduction mechanism.
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Online Reasoning Calibration: Test-Time Training Enables Generalizable Conformal LLM Reasoning
Cai Zhou, Zekai Wang, Menghua Wu, Qianyu Julie Zhu, Flora C. Shi, Chenyu Wang, Ashia Wilson, Tommi Jaakkola, Stephen Bates
NLP Large Language Models Efficient ML
  • Introduction of ORCA framework for calibrating LLM reasoning at test time.
  • Utilizes meta-learning to adaptively update calibration modules for each input.
  • Demonstrates significant efficiency improvements in compute costs during reasoning tasks.
  • Achieves robust performance across various models and out-of-distribution scenarios.
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Property-Level Flood Risk Assessment Using AI-Enabled Street-View Lowest Floor Elevation Extraction and ML Imputation Across Texas
Xiangpeng Li, Yu-Hsuan Ho, Sam D Brody, Ali Mostafavi
Computer Vision
  • AI-enabled extraction of LFE from Google Street View imagery can enhance flood risk assessments.
  • A three-stage pipeline was developed for LFE extraction and imputation across Texas.
  • Direct extraction was successful for 49% of structures, with imputation improving data completeness.
  • The study provides a replicable framework for jurisdictions lacking comprehensive elevation data.
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Multimodal Machine Learning for Early Prediction of Metastasis in a Swedish Multi-Cancer Cohort
Franco Rugolon, Korbinian Randl, Braslav Jovanovic, Ioanna Miliou, Panagiotis Papapetrou
Multimodal
  • Multimodal classifiers outperformed unimodal approaches, achieving F1 scores above 81% for breast, lung, and prostate cancers.
  • Intermediate fusion strategy consistently delivered the best predictive performance across multiple cancer types.
  • Deep learning classifiers showed superior performance compared to traditional machine learning models.
  • SHAP analysis provided insights into the relative importance of different data modalities for each cancer type.
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Chameleons do not Forget: Prompt-Based Online Continual Learning for Next Activity Prediction
Marwan Hassani, Tamara Verbeek, Sjoerd van Straten
Time Series
  • Introduction of CNAPwP framework for next activity prediction in dynamic environments.
  • Development of a task-specific forgetting metric to assess knowledge retention.
  • Creation of new datasets with recurring concept drifts for robust evaluation.
  • Demonstration of CNAPwP's competitive performance against existing methods.
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PASM: Population Adaptive Symbolic Mixture-of-Experts Model for Cross-location Hurricane Evacuation Decision Prediction
Xiao Qian, Shangjia Dong
Interpretability Large Language Models Theory
  • PASM addresses the limitations of traditional evacuation prediction models that fail to generalize across different regions.
  • The model combines symbolic regression with a mixture-of-experts architecture to create interpretable and specialized decision rules.
  • PASM significantly outperforms existing models like XGBoost and meta-learning approaches in cross-location predictions.
  • The routing mechanism in PASM allows for tailored predictions for different subpopulations, enhancing the model's applicability in real-world scenarios.
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Diversity-Aware Reverse Kullback-Leibler Divergence for Large Language Model Distillation
Hoang-Chau Luong, Dat Ba Tran, Lingwei Chen
NLP Large Language Models Optimization
  • RKL is advantageous for LLM distillation due to its focus on dominant modes but has limitations leading to overconfidence and low diversity.
  • The authors provide a theoretical analysis of RKL's gradient behavior, highlighting its impact on target and non-target class alignment.
  • DRKL is introduced to address RKL's limitations by removing non-target gradient effects and enhancing non-target supervision.
  • Extensive experiments show that DRKL outperforms existing distillation objectives in terms of performance and fidelity-diversity trade-off.
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Generalization Bounds for Spectral GNNs via Fourier Domain Analysis
Vahan A. Martirosyan, Daniele Malitesta, Hugues Talbot, Jhony H. Giraldo, Fragkiskos D. Malliaros
Graph Learning Theory
  • Introduces a Fourier-domain analysis for spectral GNNs, allowing for clearer understanding of generalization.
  • Derives data-dependent generalization bounds that consider depth, polynomial order, and parameter norms.
  • Establishes tighter bounds for linear spectral GNNs, highlighting the importance of polynomial base selection.
  • Demonstrates that the network's Jacobian norm influences generalization and sensitivity.
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Offline Constrained RLHF with Multiple Preference Oracles
Brenden Latham, Mehrdad Moharrami
Reinforcement Learning Theory Optimization
  • Introduces the first formal treatment of constrained RLHF with multiple reward oracles.
  • Develops a dual-only algorithm that optimizes policy and Lagrange multiplier using offline pairwise comparisons.
  • Establishes non-asymptotic, sample-dependent and sample-independent guarantees for optimality and constraint violation.
  • Extends the framework to handle multiple constraints and general f-divergence regularization.
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Tucker Attention: A generalization of approximate attention mechanisms
Timon Klein, Jonas Kusch, Sebastian Sager, Stefan Schnake, Steffen Schotthöfer
NLP Large Language Models Efficient ML
  • Tucker Attention generalizes existing approximate attention mechanisms, providing a more efficient representation of attention weights.
  • The method significantly reduces the number of parameters required compared to GQA and MLA while maintaining performance.
  • Tucker Attention encompasses existing methods as special cases, enhancing its applicability and interpretability.
  • The framework offers insights into the low-rank structure of attention weights, improving understanding of attention mechanisms.
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Event Embedding of Protein Networks: Compositional Learning of Biological Function
Antonin Sulc
Graph Learning
  • Enforced compositional structure improves pathway coherence and functional analogy accuracy in protein networks.
  • Event2Vec outperforms DeepWalk in clustering biological pathways, achieving significantly higher coherence.
  • The study demonstrates that protein arithmetic can effectively transfer functional relationships between proteins.
  • Geometric properties of embeddings can be influenced by compositionality, but some are also present in non-compositional models.
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Perspective: Towards sustainable exploration of chemical spaces with machine learning
Leonardo Medrano Sandonas, David Balcells, Anton Bochkarev, Jacqueline M. Cole, Volker L. Deringer, Werner Dobrautz, Adrian Ehrenhofer, Thorben Frank, Pascal Friederich, Rico Friedrich, Janine George, Luca Ghiringhelli, Alejandra Hinostroza Caldas, Veronika Juraskova, Hannes Kneiding, Yury Lysogorskiy, Johannes T. Margraf, Hanna Türk, Anatole von Lilienfeld, Milica Todorović, Alexandre Tkatchenko, Mariana Rossi, Gianaurelio Cuniberti
Efficient ML
  • AI's growing computational demands pose sustainability challenges in molecular and materials science.
  • Strategies for enhancing efficiency include multi-fidelity approaches and active learning.
  • Incorporating physics-based constraints can optimize resource use in AI workflows.
  • Bridging the gap between computational predictions and real-world applications is crucial.
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Structural Pass Analysis in Football: Learning Pass Archetypes and Tactical Impact from Spatio-Temporal Tracking Data
Oktay Karakuş, Hasan Arkadaş
Theory
  • Introduces a structural framework for analyzing football passes based on their impact on defensive organization.
  • Develops three metrics (LBS, SGM, SDI) to quantify the structural effects of passes.
  • Identifies four pass archetypes through unsupervised clustering of structural features.
  • Demonstrates that higher Tactical Impact Value correlates with greater territorial progression.
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ActivityNarrated: An Open-Ended Narrative Paradigm for Wearable Human Activity Understanding
Lala Shakti Swarup Ray, Mengxi Liu, Alcina Pinto, Deepika Gurung, Daniel Geissler, Paul Lukowoicz, Bo Zhou
Time Series NLP Multimodal
  • Proposes a shift from closed-set classification to open-ended narrative modeling for HAR.
  • Introduces a novel data collection methodology that pairs wearable sensor data with natural language descriptions.
  • Establishes a retrieval-based evaluation framework for assessing semantic alignment.
  • Demonstrates that open-vocabulary approaches yield more robust representations than traditional methods.
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Training-Free Dynamic Upcycling of Expert Language Models
Eros Fanì, Oğuzhan Ersoy
NLP Large Language Models Efficient ML
  • DUME allows for the aggregation of existing dense experts into a single multi-domain MoE model without additional training.
  • The method utilizes ridge regression for optimal routing initialization, enhancing performance and scalability.
  • DUME outperforms traditional multitask training methods in both causal language modeling and reasoning scenarios.
  • The model retains a high percentage of performance from specialized dense experts while allowing for dynamic expert addition.
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Monodense Deep Neural Model for Determining Item Price Elasticity
Lakshya Garg, Sai Yaswanth, Deep Narayan Mishra, Karthik Kumaran, Anupriya Sharma, Mayank Uniyal
Optimization Theory Time Series
  • Introduces a scalable framework for estimating item price elasticity using large-scale transactional data.
  • Proposes the Monodense deep neural network architecture to capture complex demand-price relationships.
  • Eliminates the need for control/treatment groups, making it feasible for retailers with extensive item catalogs.
  • Ensures monotonicity in the relationship between price and demand, maintaining economic validity.
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HabitatAgent: An End-to-End Multi-Agent System for Housing Consultation
Hongyang Yang, Yanxin Zhang, Yang She, Yue Xiao, Hao Wu, Yiyang Zhang, Jiapeng Hou, Rongshan Zhang
NLP Large Language Models Graph Learning
  • HabitatAgent is the first LLM-powered multi-agent architecture for housing consultation.
  • The system includes specialized agents for memory management, retrieval, generation, and validation.
  • It addresses challenges such as evolving user preferences, heterogeneous evidence, and the need for auditable recommendations.
  • HabitatAgent significantly improves end-to-end accuracy in housing consultation scenarios.
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Reward-Based Online LLM Routing via NeuralUCB
Ming-Hua Tsai, Phat Tran
Large Language Models Reinforcement Learning Optimization
  • NeuralUCB is proposed as a novel approach for cost-aware LLM routing.
  • The method effectively balances model quality and inference costs, outperforming existing baselines.
  • UtilityNet is introduced to predict utility rewards based on contextual information.
  • The study addresses the challenges of sparse feedback in contextual bandit problems.
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IMPACT: Influence Modeling for Open-Set Time Series Anomaly Detection
Xiaohui Zhou, Yijie Wang, Hongzuo Xu, Weixuan Liang, Xiaoli Li, Guansong Pang
Time Series
  • IMPACT is the first framework to utilize influence modeling for open-set time series anomaly detection.
  • The framework effectively addresses the dual challenges of anomaly contamination and realistic anomaly generation.
  • The TIS module quantifies the influence of training samples, while the RADG module generates high-quality pseudo anomalies.
  • Extensive experiments show that IMPACT significantly outperforms existing methods in terms of accuracy and robustness.
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Disentangled Graph Prompting for Out-Of-Distribution Detection
Cheng Yang, Yu Hao, Qi Zhang, Chuan Shi
Graph Learning
  • DGP is the first method to combine fine-grained ID pattern modeling with a pre-training+prompting framework for graph OOD detection.
  • The method generates both class-specific and class-agnostic prompt graphs to enhance the detection of OOD samples.
  • DGP achieves a 3.63% relative AUC improvement over the best existing graph OOD detection baseline.
  • Extensive experiments validate DGP's robustness, interpretability, and scalability across various real-world datasets.
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Total Variation Guarantees for Sampling with Stochastic Localization
Jakob Kellermann
Theory Generative Models
  • Establishes the first total variation distance guarantees for the SLIPS algorithm.
  • Demonstrates linear scaling of convergence steps with respect to dimensionality.
  • Provides theoretical insights into optimal discretization choices based on empirical observations.
  • Addresses limitations of traditional sampling methods in high-dimensional, multi-modal distributions.
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Phase space integrity in neural network models of Hamiltonian dynamics: A Lagrangian descriptor approach
Abrari Noor Hasmi, Haralampos Hatzikirou, Hadi Susanto
Theory
  • Introduces Lagrangian Descriptors as a framework for evaluating Hamiltonian neural network models.
  • Demonstrates the inadequacy of traditional trajectory-based metrics for assessing global phase-space geometry.
  • Benchmarks various neural network architectures against Reservoir Computing on Hamiltonian systems.
  • Finds that symplectic architectures preserve energy but may distort phase-space topology.
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The Persistent Vulnerability of Aligned AI Systems
Aengus Lynch
NLP Large Language Models Theory
  • Introduction of ACDC for efficient identification of dangerous computational subgraphs in AI models.
  • Development of Latent Adversarial Training (LAT) to effectively remove embedded dangerous behaviors.
  • Demonstration of vulnerabilities in frontier models through Best-of-N jailbreaking techniques.
  • Evidence of agentic misalignment, where models can autonomously choose harmful actions under certain conditions.
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Hierarchical Discrete Flow Matching for Graph Generation
Yoann Boget, Pablo Strasser, Alexandros Kalousis
Generative Models Graph Learning Efficient ML
  • Introduction of a hierarchical generative framework that reduces computational costs in graph generation.
  • Adoption of discrete flow matching to minimize denoising iterations.
  • Demonstrated state-of-the-art performance on multiple benchmarks with reduced training and generation time.
  • Scalable to larger graphs, addressing limitations of existing denoising-based models.
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Representation choice shapes the interpretation of protein conformational dynamics
Axel Giottonini, Thomas Lemmin
Theory Interpretability Time Series
  • Representation choice in MD simulations significantly affects the interpretation of protein dynamics.
  • Orientation features provide a rotation-aware, geometrically grounded representation of protein backbone motion.
  • Different representations highlight distinct aspects of conformational dynamics, necessitating a multi-representation approach.
  • ManiProt, an open-source library, enables efficient computation and analysis of various protein representations.
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G-Drift MIA: Membership Inference via Gradient-Induced Feature Drift in LLMs
Ravi Ranjan, Utkarsh Grover, Xiaomin Lin, Agoritsa Polyzou
Large Language Models NLP Generative Models
  • Introduction of G-Drift MIA as a white-box membership inference method for LLMs.
  • Utilizes gradient-induced feature drift to measure changes in internal representations.
  • Demonstrates significant performance improvements over existing MIAs.
  • Establishes a connection between representation stability under gradient perturbations and memorization.
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Convergence of Byzantine-Resilient Gradient Tracking via Probabilistic Edge Dropout
Amirhossein Dezhboro, Fateme Maleki, Arman Adibi, Erfan Amini, Jose E. Ramirez-Marquez
Optimization Federated Learning Theory
  • GT-PD preserves convergence properties of gradient tracking in the presence of Byzantine agents.
  • The method employs a universal self-centered projection and probabilistic edge dropout to isolate adversarial messages.
  • GT-PD-L introduces a leaky integrator to control tracking errors, achieving linear convergence even under partial isolation.
  • Experimental results show significant performance improvements over traditional robust aggregation methods.
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Super-Resolving Coarse-Resolution Weather Forecasts With Flow Matching
Aymeric Delefosse, Anastase Charantonis, Dominique Béréziat
Generative Models Time Series Efficient ML
  • Introduces a modular framework for weather forecasting that decouples spatial resolution from model training.
  • Utilizes learned generative super-resolution as a post-processing step to enhance coarse-resolution forecasts.
  • Formulates super-resolution as a stochastic inverse problem, preserving large-scale structures while reconstructing small-scale variability.
  • Demonstrates competitive forecast skill at 0.25° resolution relative to operational ensemble baselines.
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CliffSearch: Structured Agentic Co-Evolution over Theory and Code for Scientific Algorithm Discovery
Youssef Mroueh, Carlos Fonseca, Brian Belgodere, David Cox
Optimization Theory Large Language Models
  • Introduces a structured evolutionary loop for scientific algorithm discovery that integrates theory and code.
  • Reviewer judgments of correctness and originality are prioritized as first-class selection criteria.
  • Mutation is divided into exploration for novelty and correction for targeted repair, improving the discovery process.
  • Demonstrated effectiveness through three benchmark studies, showcasing significant discoveries.
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