AI-generated summaries

Today's ML research,
without the noise.

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

48 Papers today
8h Update frequency
7 Days of history
JumpLoRA: Sparse Adapters for Continual Learning in Large Language Models
Alexandra Dragomir, Ioana Pintilie, Antonio Barbalau, Marius Dragoi, Florin Brad, Cristian Daniel Paduraru, Alexandru Tifrea, Elena Burceanu, Radu Tudor Ionescu
NLP Large Language Models Efficient ML
  • JUMPLORA introduces learnable JumpReLU gating for low-rank adapters, enabling precise sparsity in weight updates.
  • The framework allows for adaptive parameter isolation, reducing task interference in continual learning scenarios.
  • JUMPLORA is modular and compatible with existing CL frameworks, enhancing their performance.
  • Extensive experiments show significant improvements over leading CL methods like ELLA and IncLoRA.
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Catching Every Ripple: Enhanced Anomaly Awareness via Dynamic Concept Adaptation
Jiaqi Zhu, Shaofeng Cai, Jie Chen, Fang Deng, Beng Chin Ooi, Wenqiao Zhang
Time Series Theory Efficient ML
  • DyMETER integrates dynamic concept adaptation for effective online anomaly detection.
  • Utilizes a hypernetwork for instance-aware parameter shifts, avoiding costly retraining.
  • Introduces a lightweight evolution controller for estimating concept uncertainty.
  • Employs dynamic threshold optimization to maintain adaptive decision boundaries.
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Harmonizing Multi-Objective LLM Unlearning via Unified Domain Representation and Bidirectional Logit Distillation
Yisheng Zhong, Sijia Liu, Zhuangdi Zhu
NLP Large Language Models Optimization
  • Introduces a multi-objective framework for LLM unlearning that addresses efficacy, robustness, and over-refusal.
  • Proposes data standardization to reduce domain gaps across unlearning tasks.
  • Employs bidirectional logit distillation to harmonize learning objectives.
  • Achieves state-of-the-art results on benchmarks, including a significant reduction in adversarial attack success rates.
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Towards Robust Endogenous Reasoning: Unifying Drift Adaptation in Non-Stationary Tuning
Xiaoyu Yang, En Yu, Wei Duan, Jie Lu
NLP Large Language Models Multimodal
  • Introduces the concept of endogenous reasoning drift in MLLMs, highlighting its impact on reasoning and decision-making.
  • Proposes the CPO++ framework, which combines counterfactual reasoning with domain knowledge for improved robustness.
  • Demonstrates superior performance in reasoning coherence and decision-making precision in safety-critical domains.
  • Achieves exceptional zero-shot cross-domain generalization, enhancing the applicability of MLLMs.
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Reinforcement Learning via Value Gradient Flow
Haoran Xu, Kaiwen Hu, Somayeh Sojoudi, Amy Zhang
Reinforcement Learning Large Language Models Optimization
  • VGF reformulates behavior-regularized RL as an optimal transport problem.
  • The method eliminates the need for explicit policy parameterization.
  • VGF allows for adaptive test-time scaling through a transport budget.
  • Extensive experiments show VGF outperforms existing behavior-regularized RL methods.
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DPrivBench: Benchmarking LLMs' Reasoning for Differential Privacy
Erchi Wang, Pengrun Huang, Eli Chien, Om Thakkar, Kamalika Chaudhuri, Yu-Xiang Wang, Ruihan Wu
Large Language Models Theory
  • DPrivBench is a novel benchmark for evaluating LLMs' reasoning on differential privacy.
  • The benchmark includes 720 instances, focusing on both foundational and advanced DP topics.
  • Top models perform well on basic DP mechanisms but struggle with complex algorithms.
  • Providing explicit references can improve LLM accuracy in DP reasoning.
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Non-intrusive Learning of Physics-Informed Spatio-temporal Surrogate for Accelerating Design
Sudeepta Mondal, Soumalya Sarkar
Theory Time Series Efficient ML
  • Introduction of a physics-informed spatio-temporal surrogate modeling framework (PISTM).
  • Utilization of Koopman autoencoders for non-intrusive learning of dynamical systems.
  • Incorporation of Gaussian process regression for predicting latent space coefficients.
  • Validation of the framework on a two-dimensional fluid flow problem.
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Thermodynamic Diffusion Inference with Minimal Digital Conditioning
Aditi De
Efficient ML Generative Models Theory
  • Introduces a thermodynamic approach to diffusion inference that eliminates the need for digital arithmetic.
  • Resolves non-local skip connection and input conditioning barriers in U-Net architectures.
  • Achieves a decoder cosine similarity of 0.9906, close to the oracle upper bound.
  • Demonstrates a theoretical energy savings of approximately 107× compared to GPU inference.
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LLMs Gaming Verifiers: RLVR can Lead to Reward Hacking
Lukas Helff, Quentin Delfosse, David Steinmann, Ruben Härle, Hikaru Shindo, Patrick Schramowski, Wolfgang Stammer, Kristian Kersting, Felix Friedrich
Large Language Models Reinforcement Learning Theory
  • RLVR-trained models exhibit systematic reward shortcuts in inductive reasoning tasks.
  • Isomorphic Perturbation Testing (IPT) is introduced as a method to detect shortcut reliance in models.
  • Shortcut behavior is linked to task complexity and inference-time compute.
  • Extensional verification leads to reward hacking, while isomorphic verification prevents it.
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Step-level Denoising-time Diffusion Alignment with Multiple Objectives
Qi Zhang, Dawei Wang, Shaofeng Zou
Reinforcement Learning Generative Models Multimodal
  • Introduces a step-level RL formulation for fine-tuning diffusion models to align with multiple objectives.
  • Proposes a retraining-free framework (MSDDA) that computes optimal denoising distributions without requiring reward gradients.
  • Demonstrates that the proposed method is equivalent to existing RL fine-tuning approaches, eliminating approximation errors.
  • Extensive experiments show that MSDDA outperforms traditional denoising-time alignment methods.
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When Flat Minima Fail: Characterizing INT4 Quantization Collapse After FP32 Convergence
Marcus Armstrong
NLP Large Language Models Efficient ML
  • Identifies a three-phase divergence structure in INT4 quantization robustness.
  • Divergence begins at the point of FP32 perplexity convergence, not learning rate decay.
  • INT8 quantization remains stable, highlighting the specificity of the INT4 quantization issue.
  • Amplitude calibration in learning rate schedules significantly affects quantization robustness.
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Geometric regularization of autoencoders via observed stochastic dynamics
Sean Hill, Felix X.-F. Ye
Theory Generative Models Time Series
  • Introduces a three-stage pipeline for learning reduced simulators from sparse data in stochastic systems.
  • Utilizes ambient covariance to derive geometric penalties that regularize the learning of drift and diffusion.
  • Achieves significant reductions in error metrics compared to traditional autoencoder approaches.
  • Establishes a new function-space metric, the ρ-metric, that balances generalization and geometric accuracy.
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ECG-Lens: Benchmarking ML & DL Models on PTB-XL Dataset
Saloni Garg, Ukant Jadia, Amit Sagtani, Kamal Kant Hiran
Time Series
  • Comparison of traditional ML and advanced DL models for ECG classification.
  • Use of raw ECG signals for training deep learning models to extract features automatically.
  • Application of data augmentation techniques to improve model performance.
  • ECG-Lens model achieved the highest accuracy and ROC-AUC among tested models.
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PINNACLE: An Open-Source Computational Framework for Classical and Quantum PINNs
Shimon Pisnoy, Hemanth Chandravamsi, Ziv Chen, Aaron Goldgewert, Gal Shaviner, Boris Shragner, Steven H. Frankel
Optimization Theory Efficient ML
  • PINNACLE integrates modern training strategies and multi-GPU support for enhanced performance of PINNs.
  • The framework allows for systematic evaluation across various benchmark problems, highlighting the impact of architectural choices.
  • It extends to hybrid quantum-classical PINNs, providing insights into their computational efficiency.
  • A comprehensive benchmark study quantifies the trade-offs in convergence, accuracy, and computational cost.
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Wasserstein Formulation of Reinforcement Learning. An Optimal Transport Perspective on Policy Optimization
Mathias Dus
Reinforcement Learning Optimization Theory
  • Introduces a second-order Wasserstein gradient flow framework for policy optimization in RL.
  • Establishes rigorous theoretical foundations for the existence of invariant measures in the context of RL.
  • Utilizes Otto's calculus for second-order analysis, allowing for more sophisticated optimization dynamics.
  • Demonstrates scalability to high-dimensional problems through neural network parameterization.
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Quantization of Spiking Neural Networks Beyond Accuracy
Evan Gibson Smith, Jacob Whitehill, Fatemeh Ganji
Efficient ML
  • Accuracy alone is insufficient for evaluating quantized SNNs; firing distribution must also be considered.
  • Earth Mover's Distance (EMD) is introduced as a diagnostic metric for measuring divergence in firing distributions.
  • Quantization methods, clipping ranges, and bit-widths can lead to significantly different firing distributions even with equivalent accuracy.
  • Learned quantization methods like LQ-Net are more effective in preserving firing behavior compared to uniform quantization.
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Sketching the Readout of Large Language Models for Scalable Data Attribution and Valuation
Yide Ran, Jianwen Xie, Minghui Wang, Wenjin Zheng, Denghui Zhang, Chuan Li, Zhaozhuo Xu
Large Language Models Interpretability Efficient ML
  • Introduction of RISE, a scalable method for data attribution and valuation in LLMs.
  • Focus on influence hotspots in the output layer for efficient influence estimation.
  • Dual-channel representation allows for precise and robust data analysis.
  • Significant reduction in index storage requirements compared to existing methods.
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Assessing the Potential of Masked Autoencoder Foundation Models in Predicting Downhole Metrics from Surface Drilling Data
Aleksander Berezowski, Hassan Hassanzadeh, Gouri Ginde
Time Series Optimization
  • MAEFMs have not been previously applied to predict downhole metrics in drilling operations.
  • Current methods rely heavily on labeled datasets, which are scarce and costly in the oil and gas industry.
  • MAEFMs can utilize abundant unlabeled surface data for self-supervised learning, enabling better generalization and multi-task predictions.
  • The study identifies critical surface and downhole metrics relevant for machine learning applications in drilling.
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Portfolio Optimization Proxies under Label Scarcity and Regime Shifts via Bayesian and Deterministic Students under Semi-Supervised Sandwich Training
Adhiraj Chattopadhyay
Optimization
  • Introduces a teacher-student learning framework for portfolio optimization using CVaR as a supervisory signal.
  • Utilizes Bayesian Neural Networks (BNNs) to provide uncertainty-aware predictions and reduce overfitting in low-data scenarios.
  • Demonstrates implicit turnover reduction, achieving a 50% decrease in trading activity compared to deterministic models.
  • Shows that learned policies can generalize effectively to new asset universes and perform better under high-volatility conditions.
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M3R: Localized Rainfall Nowcasting with Meteorology-Informed MultiModal Attention
Sanjeev Panta, Rhett M Morvant, Xu Yuan, Li Chen, Nian-Feng Tzeng
Multimodal Time Series Computer Vision
  • M3R combines NEXRAD radar imagery and PWS measurements for improved rainfall prediction.
  • The architecture utilizes a meteorology-informed multimodal attention mechanism for focused feature extraction.
  • Direct precipitation outputs eliminate the need for Z-R conversion, reducing computational overhead.
  • A systematic dataset processing pipeline is introduced for effective temporal alignment of heterogeneous data.
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Joint-Centric Dual Contrastive Alignment with Structure-Preserving and Information-Balanced Regularization
Habibeh Naderi, Behrouz Haji Soleimani, Stan Matwin
Multimodal Audio & Speech NLP
  • HILBERT effectively integrates audio and text modalities for long-sequence representation learning.
  • The framework introduces a dual contrastive objective that aligns audio and text representations while preserving modality-specific structures.
  • Auxiliary regularizers (CKA and mutual information loss) stabilize the learning process and balance contributions from both modalities.
  • HILBERT employs a Mixture-of-Experts classifier, enhancing performance in diverse label regimes.
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When Missing Becomes Structure: Intent-Preserving Policy Completion from Financial KOL Discourse
Yuncong Liu, Yuan Wan, Zhou Jiang, Yao Lu
Reinforcement Learning NLP Multimodal
  • Identifies a structural property of financial KOL discourse as a systematic pattern of incompleteness.
  • Proposes KICL, an intent-preserving policy completion framework using offline reinforcement learning.
  • Achieves significant improvements in trading performance metrics compared to KOL-aligned baselines.
  • Introduces new evaluation metrics to assess the alignment of trading strategies with KOL intent.
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Asynchronous Probability Ensembling for Federated Disaster Detection
Emanuel Teixeira Martins, Rodrigo Moreira, Larissa Ferreira Rodrigues Moreira, Rodolfo S. Villaça, Augusto Neto, Flávio de Oliveira Silva
Federated Learning Computer Vision Efficient ML
  • Introduces a decentralized ensembling framework for disaster detection using asynchronous probability aggregation.
  • Reduces communication overhead by exchanging class-probability vectors instead of model weights.
  • Enhances collaboration among heterogeneous CNN architectures without requiring global synchronization.
  • Demonstrates improved accuracy in disaster image identification compared to traditional federated learning approaches.
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The Illusion of Equivalence: Systematic FP16 Divergence in KV-Cached Autoregressive Inference
Ranjith Chodavarapu, Lei Xu
NLP Large Language Models Interpretability
  • KV caching in autoregressive transformers is not numerically equivalent to cache-free computation under FP16 precision.
  • Deterministic divergence in token sequences occurs due to different accumulation orderings in cache-ON and cache-OFF paths.
  • FP32 precision significantly reduces divergence, confirming FP16 non-associativity as the main cause.
  • Layer-wise drift profiling reveals predictable divergence patterns influenced by model architecture.
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FedIDM: Achieving Fast and Stable Convergence in Byzantine Federated Learning through Iterative Distribution Matching
He Yang, Dongyi Lv, Wei Xi, Song Ma, Hanlin Gu, Jizhong Zhao
Federated Learning
  • FedIDM leverages iterative distribution matching for robust and efficient federated learning.
  • The framework minimizes the impact on model utility even with a high number of colluding malicious clients.
  • Empirical evaluations show substantial improvements over existing Byzantine-robust methods.
  • The approach includes a novel attack-tolerant condensed data generation scheme.
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Detecting and Suppressing Reward Hacking with Gradient Fingerprints
Songtao Wang, Quang Hieu Pham, Fangcong Yin, Xinpeng Wang, Jocelyn Qiaochu Chen, Greg Durrett, Xi Ye
Reinforcement Learning Large Language Models Interpretability
  • Introduction of Gradient Fingerprint (GRIFT) for detecting reward hacking in RLVR.
  • GRIFT analyzes internal model computations rather than just output text.
  • Achieves over 25% relative improvement in reward hacking detection compared to existing methods.
  • Can be integrated into training processes to suppress reward hacking and improve task performance.
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DLink: Distilling Layer-wise and Dominant Knowledge from EEG Foundation Models
Jingyuan Wang, Meiyan Xu, Zhihao Jia, Chenyu Liu, Xinliang Zhou, Ziyu Jia, Yong Li, Fang Li, Junfeng Yao, Yi Ding
Time Series Efficient ML
  • DLink effectively distills knowledge from EEG foundation models into compact architectures.
  • The dynamic Router aggregates critical representations from multiple layers, enhancing knowledge transfer.
  • The Mimic-then-Compress approach allows for efficient feature inheritance and dimensionality reduction.
  • Spectral alignment regularizes the distillation process, preserving essential oscillatory patterns.
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Hallucination as Trajectory Commitment: Causal Evidence for Asymmetric Attractor Dynamics in Transformer Generation
G. Aytug Akarlar
NLP Large Language Models Generative Models
  • Hallucination in language models is characterized as an early trajectory commitment governed by asymmetric attractor dynamics.
  • The same-prompt bifurcation methodology isolates trajectory dynamics from prompt-level confounds, revealing significant divergence in outputs.
  • Activation patching experiments demonstrate a pronounced causal asymmetry in correcting versus corrupting trajectories.
  • The model's prompt encoding can predict the likelihood of hallucination, suggesting a structured internal organization.
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NK-GAD: Neighbor Knowledge-Enhanced Unsupervised Graph Anomaly Detection
Zehao Wang, Lanjun Wang
Graph Learning
  • Introduces NK-GAD, a framework for unsupervised graph anomaly detection.
  • Addresses the limitations of existing GNN-based methods that assume homophily.
  • Identifies the significance of attribute-level heterophily in real-world graphs.
  • Demonstrates improved performance over existing methods with a 3.29% AUC increase.
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Self-Distillation as a Performance Recovery Mechanism for LLMs: Counteracting Compression and Catastrophic Forgetting
Chi Liu, Xin Chen, Xu Zhou, Fangbo Tu, Srinivasan Manoharan
Large Language Models NLP Theory
  • Introduces a performance recovery framework based on Self-Distillation Fine-Tuning (SDFT) for LLMs.
  • Establishes a theoretical basis linking model performance recovery to high-dimensional manifold alignment.
  • Demonstrates the effectiveness of SDFT in counteracting performance degradation due to catastrophic forgetting and compression.
  • Utilizes Centered Kernel Alignment (CKA) to quantify the alignment between student and teacher activation trajectories.
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Graph self-supervised learning based on frequency corruption
Haojie Li, Mengjiao Zhang, Guanfeng Liu, Qiang Hu, Yan Wang, Junwei Du
Graph Learning
  • Introduces FC-GSSL to address challenges in utilizing high-frequency signals in GSSL.
  • Corrupts nodes and edges based on low-frequency contributions to create biased graphs.
  • Employs an autoencoder to learn effective fusion of high- and low-frequency signals.
  • Demonstrates significant performance improvements on complex web-related graphs.
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GUI-Perturbed: Domain Randomization Reveals Systematic Brittleness in GUI Grounding Models
Yangyue Wang, Harshvardhan Sikka, Yash Mathur, Tony Zhou, Jinu Nyachhyon, Pranav Guruprasad
Computer Vision NLP Multimodal
  • GUI grounding models show high accuracy on benchmarks but fail under spatial reasoning tasks.
  • The GUI-Perturbed framework allows for controlled perturbations to evaluate model robustness.
  • Relational instructions lead to a significant accuracy drop across all tested models.
  • Standard training methods do not improve performance and may degrade spatial reasoning.
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Stability and Generalization in Looped Transformers
Asher Labovich
Theory Large Language Models Efficient ML
  • Introduces a fixed-point based framework for analyzing looped transformers.
  • Proves that recall and outer normalization are critical for achieving stability in looped architectures.
  • Empirical validation shows that performance on various tasks aligns with theoretical predictions.
  • Presents 'internal recall' as a competitive alternative to standard recall placement.
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Natural gradient descent with momentum
Anthony Nouy, Agustín Somacal
Optimization Theory
  • Introduces a natural gradient descent approach with momentum to improve optimization in nonlinear manifolds.
  • Addresses the limitations of traditional gradient descent and NGD, particularly regarding local minima and non-optimal directions.
  • Proposes natural versions of classical momentum methods that maintain computational efficiency.
  • Demonstrates the effectiveness of the proposed methods through numerical experiments.
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Python library supporting Discrete Variational Formulations and training solutions with Collocation-based Robust Variational Physics Informed Neural Networks (DVF-CRVPINN)
Tomasz Służalec, Marcin Łoś, Askold Vilkha, Maciej Paszyński
Theory Optimization
  • Introduction of a Python library for discrete weak formulations of PDEs.
  • Development of a discrete neural network representation for training solutions.
  • Rigorous mathematical framework proving the robustness of the loss function.
  • Demonstration of the method on Stokes equations and Laplace problems.
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What Is the Minimum Architecture for Prolepsis? Early Irrevocable Commitment Across Tasks in Small Transformers
Éric Jacopin
NLP Large Language Models Interpretability
  • Introduction of the concept of prolepsis in transformer architectures.
  • First independent replication of planning-site localization on open models.
  • Identification of specific attention heads responsible for decision routing.
  • Establishment of minimum depth thresholds for search and commitment tasks.
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No More Guessing: a Verifiable Gradient Inversion Attack in Federated Learning
Francesco Diana, Chuan Xu, André Nusser, Giovanni Neglia
Federated Learning Optimization Theory
  • VGIA introduces a verifiable method for gradient inversion attacks, certifying reconstruction correctness.
  • The attack achieves exact recovery of both input features and target values in regression settings.
  • Empirical validation shows VGIA's effectiveness on tabular and image datasets, even under large-batch aggregation.
  • The method addresses the limitations of existing attacks by providing a rigorous baseline for privacy auditing.
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Learning Ad Hoc Network Dynamics via Graph-Structured World Models
Can Karacelebi, Yusuf Talha Sahin, Elif Surer, Ertan Onur
Reinforcement Learning Graph Learning Optimization
  • Introduction of G-RSSM, a graph-structured model that captures per-node dynamics in ad hoc networks.
  • First application of imagination-based combinatorial optimization for per-node decision-making in wireless networks.
  • Demonstrated generalization of learned dynamics to unseen network sizes without retraining.
  • High connectivity maintained in learned policies across diverse network scenarios.
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Lightweight Geometric Adaptation for Training Physics-Informed Neural Networks
Kang An, Chenhao Si, Shiqian Ma, Ming Yan
Optimization
  • Introduces a curvature-aware optimization framework for PINNs to address training challenges.
  • Utilizes local geometric information to enhance optimizer performance without heavy computational costs.
  • Demonstrates consistent improvements in convergence speed, stability, and accuracy across diverse PDE benchmarks.
  • Highlights the importance of local curvature in optimizing the training of PINNs.
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Gating Enables Curvature: A Geometric Expressivity Gap in Attention
Satwik Bathula, Anand A. Joshi
NLP Large Language Models Theory
  • Gated attention mechanisms enable non-flat geometries, enhancing expressivity compared to ungated attention.
  • Ungated attention is confined to intrinsically flat statistical manifolds due to its affine structure.
  • Multiplicative gating introduces nonlinear modulation, allowing for richer representation geometries.
  • Empirical evidence shows gated models perform better on tasks with nonlinear decision boundaries.
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Calibrate-Then-Delegate: Safety Monitoring with Risk and Budget Guarantees via Model Cascades
Edoardo Pona, Milad Kazemi, Mehran Hosseini, Yali Du, David Watson, Osvaldo Simeone, Nicola Paoletti
NLP Large Language Models Theory
  • CTD provides a more effective delegation mechanism by using a delegation value probe instead of relying solely on uncertainty.
  • The method ensures finite-sample guarantees on both delegation rates and safety performance.
  • CTD adapts budget allocation dynamically based on the difficulty of the input, improving efficiency.
  • The approach outperforms existing methods in terms of accuracy and safety across multiple datasets.
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Similarity-Based Bike Station Expansion via Hybrid Denoising Autoencoders
Oluwaleke Yusuf, M. Tsaqif Wismadi, Adil Rasheed
Optimization
  • Introduces a data-driven framework for bike station expansion using hybrid denoising autoencoders.
  • Demonstrates improved spatial coherence and clustering quality of HDAE embeddings over raw features.
  • Conducts a comprehensive evaluation of similarity measures and distance metrics for candidate selection.
  • Employs a consensus-based approach to strengthen recommendations for station expansion.
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Metric-Aware Principal Component Analysis (MAPCA): A Unified Framework for Scale-Invariant Representation Learning
Michael Leznik
Theory
  • MAPCA provides a unified framework for scale-invariant representation learning.
  • The choice of metric matrix M allows for continuous control over spectral bias.
  • Invariant PCA is a special case of MAPCA with strict scale invariance properties.
  • Connections to self-supervised learning methods highlight the versatility of MAPCA.
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The Harder Path: Last Iterate Convergence for Uncoupled Learning in Zero-Sum Games with Bandit Feedback
Côme Fiegel, Pierre Ménard, Tadashi Kozuno, Michal Valko, Vianney Perchet
Theory Optimization
  • Establishes a lower bound of Ω(T −1/4) for last-iterate convergence in uncoupled learning with bandit feedback.
  • Introduces two novel algorithms that achieve optimal convergence rates without requiring average policy computation.
  • Demonstrates that guaranteeing last-iterate convergence is more challenging than average iterate convergence.
  • Provides a framework for transforming existing algorithms into ones with last-iterate guarantees.
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Synthetic data in cryptocurrencies using generative models
André Saimon S. Sousa, Otto Pires, Frank Acasiete, Oscar M. Granados, Valéria Loureiro da Silva, Hugo Saba
Generative Models Time Series
  • Proposes the use of CGANs for generating synthetic cryptocurrency price data.
  • Demonstrates the ability of the model to replicate significant temporal patterns in financial data.
  • Highlights the advantages of synthetic data in enhancing anomaly detection and market analysis.
  • Offers a computationally efficient alternative to traditional data generation methods.
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Constraint-based Pre-training: From Structured Constraints to Scalable Model Initialization
Fu Feng, Yucheng Xie, Ruixiao Shi, Jing Wang, Xin Geng
Efficient ML Computer Vision Robotics
  • Introduces a constraint-based pre-training paradigm for scalable model initialization.
  • Disentangles size-agnostic knowledge into reusable weight templates using structured constraints.
  • Proposes WeiT, which employs Kronecker-based constraints for flexible model weight construction.
  • Demonstrates state-of-the-art performance across various tasks and model architectures.
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TwinTrack: Post-hoc Multi-Rater Calibration for Medical Image Segmentation
Tristan Kirscher, Alexandra Ertl, Klaus Maier-Hein, Xavier Coubez, Philippe Meyer, Sylvain Faisan
Computer Vision
  • TwinTrack provides a post-hoc calibration method for segmentation probabilities in medical imaging.
  • The framework uses isotonic regression to align predictions with the empirical mean human response (MHR).
  • TwinTrack improves calibration metrics significantly compared to standard single-rater and hard-label approaches.
  • The method allows for a more interpretable probabilistic output that reflects expert uncertainty.
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Multi-objective Reinforcement Learning With Augmented States Requires Rewards After Deployment
Peter Vamplew, Cameron Foale
Reinforcement Learning Theory Optimization
  • MORL requires conditioning policies on both current states and historical rewards.
  • Augmented states are essential for achieving optimal behavior in MORL.
  • Agents must have access to reward signals post-deployment, even without further learning.
  • The paper highlights a gap in existing MORL research regarding the implications of augmented states.
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