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LOW Academic International

Synthetic Mixed Training: Scaling Parametric Knowledge Acquisition Beyond RAG

arXiv:2603.23562v1 Announce Type: new Abstract: Synthetic data augmentation helps language models learn new knowledge in data-constrained domains. However, naively scaling existing synthetic data methods by training on more synthetic tokens or using stronger generators yields diminishing returns below the performance...

1 min 3 weeks, 6 days ago
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LOW Academic International

Safe Reinforcement Learning with Preference-based Constraint Inference

arXiv:2603.23565v1 Announce Type: new Abstract: Safe reinforcement learning (RL) is a standard paradigm for safety-critical decision making. However, real-world safety constraints can be complex, subjective, and even hard to explicitly specify. Existing works on constraint inference rely on restrictive assumptions...

1 min 3 weeks, 6 days ago
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LOW Academic European Union

AscendOptimizer: Episodic Agent for Ascend NPU Operator Optimization

arXiv:2603.23566v1 Announce Type: new Abstract: AscendC (Ascend C) operator optimization on Huawei Ascend neural processing units (NPUs) faces a two-fold knowledge bottleneck: unlike the CUDA ecosystem, there are few public reference implementations to learn from, and performance hinges on a...

1 min 3 weeks, 6 days ago
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LOW Academic United States

StateLinFormer: Stateful Training Enhancing Long-term Memory in Navigation

arXiv:2603.23571v1 Announce Type: new Abstract: Effective navigation intelligence relies on long-term memory to support both immediate generalization and sustained adaptation. However, existing approaches face a dilemma: modular systems rely on explicit mapping but lack flexibility, while Transformer-based end-to-end models are...

1 min 3 weeks, 6 days ago
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LOW Academic European Union

Dual-Criterion Curriculum Learning: Application to Temporal Data

arXiv:2603.23573v1 Announce Type: new Abstract: Curriculum Learning (CL) is a meta-learning paradigm that trains a model by feeding the data instances incrementally according to a schedule, which is based on difficulty progression. Defining meaningful difficulty assessment measures is crucial and...

1 min 3 weeks, 6 days ago
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LOW Academic International

PoiCGAN: A Targeted Poisoning Based on Feature-Label Joint Perturbation in Federated Learning

arXiv:2603.23574v1 Announce Type: new Abstract: Federated Learning (FL), as a popular distributed learning paradigm, has shown outstanding performance in improving computational efficiency and protecting data privacy, and is widely applied in industrial image classification. However, due to its distributed nature,...

1 min 3 weeks, 6 days ago
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LOW Academic International

The Geometric Price of Discrete Logic: Context-driven Manifold Dynamics of Number Representations

arXiv:2603.23577v1 Announce Type: new Abstract: Large language models (LLMs) generalize smoothly across continuous semantic spaces, yet strict logical reasoning demands the formation of discrete decision boundaries. Prevailing theories relying on linear isometric projections fail to resolve this fundamental tension. In...

1 min 3 weeks, 6 days ago
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LOW Academic European Union

Residual Attention Physics-Informed Neural Networks for Robust Multiphysics Simulation of Steady-State Electrothermal Energy Systems

arXiv:2603.23578v1 Announce Type: new Abstract: Efficient thermal management and precise field prediction are critical for the design of advanced energy systems, including electrohydrodynamic transport, microfluidic energy harvesters, and electrically driven thermal regulators. However, the steady-state simulation of these electrothermal coupled...

1 min 3 weeks, 6 days ago
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LOW Academic European Union

LineMVGNN: Anti-Money Laundering with Line-Graph-Assisted Multi-View Graph Neural Networks

arXiv:2603.23584v1 Announce Type: new Abstract: Anti-money laundering (AML) systems are important for protecting the global economy. However, conventional rule-based methods rely on domain knowledge, leading to suboptimal accuracy and a lack of scalability. Graph neural networks (GNNs) for digraphs (directed...

1 min 3 weeks, 6 days ago
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LOW Academic European Union

Steering Code LLMs with Activation Directions for Language and Library Control

arXiv:2603.23629v1 Announce Type: new Abstract: Code LLMs often default to particular programming languages and libraries under neutral prompts. We investigate whether these preferences are encoded as approximately linear directions in activation space that can be manipulated at inference time. Using...

1 min 3 weeks, 6 days ago
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LOW Academic United States

Boost Like a (Var)Pro: Trust-Region Gradient Boosting via Variable Projection

arXiv:2603.23658v1 Announce Type: new Abstract: Gradient boosting, a method of building additive ensembles from weak learners, has established itself as a practical and theoretically-motivated approach to approximate functions, especially using decision tree weak learners. Comparable methods for smooth parametric learners,...

1 min 3 weeks, 6 days ago
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LOW Academic United States

Kronecker-Structured Nonparametric Spatiotemporal Point Processes

arXiv:2603.23746v1 Announce Type: new Abstract: Events in spatiotemporal domains arise in numerous real-world applications, where uncovering event relationships and enabling accurate prediction are central challenges. Classical Poisson and Hawkes processes rely on restrictive parametric assumptions that limit their ability to...

1 min 3 weeks, 6 days ago
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LOW Academic International

Self Paced Gaussian Contextual Reinforcement Learning

arXiv:2603.23755v1 Announce Type: new Abstract: Curriculum learning improves reinforcement learning (RL) efficiency by sequencing tasks from simple to complex. However, many self-paced curriculum methods rely on computationally expensive inner-loop optimizations, limiting their scalability in high-dimensional context spaces. In this paper,...

1 min 3 weeks, 6 days ago
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LOW Academic European Union

Latent Algorithmic Structure Precedes Grokking: A Mechanistic Study of ReLU MLPs on Modular Arithmetic

arXiv:2603.23784v1 Announce Type: new Abstract: Grokking-the phenomenon where validation accuracy of neural networks on modular addition of two integers rises long after training data has been memorized-has been characterized in previous works as producing sinusoidal input weight distributions in transformers...

1 min 3 weeks, 6 days ago
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LOW Academic European Union

Resolving gradient pathology in physics-informed epidemiological models

arXiv:2603.23799v1 Announce Type: new Abstract: Physics-informed neural networks (PINNs) are increasingly used in mathematical epidemiology to bridge the gap between noisy clinical data and compartmental models, such as the susceptible-exposed-infected-removed (SEIR) model. However, training these hybrid networks is often unstable...

1 min 3 weeks, 6 days ago
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LOW Academic European Union

Symbolic--KAN: Kolmogorov-Arnold Networks with Discrete Symbolic Structure for Interpretable Learning

arXiv:2603.23854v1 Announce Type: new Abstract: Symbolic discovery of governing equations is a long-standing goal in scientific machine learning, yet a fundamental trade-off persists between interpretability and scalable learning. Classical symbolic regression methods yield explicit analytic expressions but rely on combinatorial...

1 min 3 weeks, 6 days ago
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LOW Academic European Union

Deep Convolutional Neural Networks for predicting highest priority functional group in organic molecules

arXiv:2603.23862v1 Announce Type: new Abstract: Our work addresses the problem of predicting the highest priority functional group present in an organic molecule. Functional Groups are groups of bound atoms that determine the physical and chemical properties of organic molecules. In...

1 min 3 weeks, 6 days ago
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LOW Academic International

HDPO: Hybrid Distillation Policy Optimization via Privileged Self-Distillation

arXiv:2603.23871v1 Announce Type: new Abstract: Large language models trained with reinforcement learning (RL) for mathematical reasoning face a fundamental challenge: on problems the model cannot solve at all - "cliff" prompts - the RL gradient vanishes entirely, preventing any learning...

1 min 3 weeks, 6 days ago
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LOW Academic International

Optimal Variance-Dependent Regret Bounds for Infinite-Horizon MDPs

arXiv:2603.23926v1 Announce Type: new Abstract: Online reinforcement learning in infinite-horizon Markov decision processes (MDPs) remains less theoretically and algorithmically developed than its episodic counterpart, with many algorithms suffering from high ``burn-in'' costs and failing to adapt to benign instance-specific complexity....

1 min 3 weeks, 6 days ago
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LOW Academic International

GRMLR: Knowledge-Enhanced Small-Data Learning for Deep-Sea Cold Seep Stage Inference

arXiv:2603.23961v1 Announce Type: new Abstract: Deep-sea cold seep stage assessment has traditionally relied on costly, high-risk manned submersible operations and visual surveys of macrofauna. Although microbial communities provide a promising and more cost-effective alternative, reliable inference remains challenging because the...

1 min 3 weeks, 6 days ago
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LOW Academic International

Wireless communication empowers online scheduling of partially-observable transportation multi-robot systems in a smart factory

arXiv:2603.23967v1 Announce Type: new Abstract: Achieving agile and reconfigurable production flows in smart factories depends on online multi-robot task assignment (MRTA), which requires online collision-free and congestion-free route scheduling of transportation multi-robot systems (T-MRS), e.g., collaborative automatic guided vehicles (AGVs)....

1 min 3 weeks, 6 days ago
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LOW Academic European Union

Kirchhoff-Inspired Neural Networks for Evolving High-Order Perception

arXiv:2603.23977v1 Announce Type: new Abstract: Deep learning architectures are fundamentally inspired by neuroscience, particularly the structure of the brain's sensory pathways, and have achieved remarkable success in learning informative data representations. Although these architectures mimic the communication mechanisms of biological...

1 min 3 weeks, 6 days ago
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LOW Academic European Union

Transcending Classical Neural Network Boundaries: A Quantum-Classical Synergistic Paradigm for Seismic Data Processing

arXiv:2603.23984v1 Announce Type: new Abstract: In recent years, a number of neural-network (NN) methods have exhibited good performance in seismic data processing, such as denoising, interpolation, and frequency-band extension. However, these methods rely on stacked perceptrons and standard activation functions,...

1 min 3 weeks, 6 days ago
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LOW News United States

Birthright citizenship: more on Pete Patterson’s claims

Attorney Pete Patterson’s latest post on birthright citizenship repeats the biggest mistakes of his original post and also makes some new mistakes, chasing irrelevances and mangling the key legal issues. […]The postBirthright citizenship: more on Pete Patterson’s claimsappeared first onSCOTUSblog.

1 min 3 weeks, 6 days ago
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LOW News United States

Justices dubious about “harsh” rules for omissions by bankrupt debtors

Yesterday’s argument in Keathley v. Buddy Ayers Construction displayed a bench almost uniformly skeptical of a lower court’s absolute standard for responding to the failure of a debtor in bankruptcy […]The postJustices dubious about “harsh” rules for omissions by bankrupt...

1 min 3 weeks, 6 days ago
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LOW News United States

Justices to hear argument on whether a crime’s “contemplated effects” can expand venue beyond where offense was committed

The Supreme Court will hear oral argument on Monday in Abouammo v. United States, in which it will consider whether federal prosecutors can try a defendant not only in the […]The postJustices to hear argument on whether a crime’s “contemplated...

1 min 3 weeks, 6 days ago
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LOW News United Kingdom

Google unveils TurboQuant, a new AI memory compression algorithm — and yes, the internet is calling it ‘Pied Piper’

Google’s TurboQuant has the internet joking about Pied Piper from HBO's "Silicon Valley." The compression algorithm promises to shrink AI’s “working memory” by up to 6x, but it’s still just a lab experiment for now.

1 min 3 weeks, 6 days ago
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LOW News International

Reddit takes on the bots with new ‘human verification’ requirements for fishy behavior

Reddit will require suspected automated accounts to verify they’re human, as it ramps up efforts to curb bot-driven spam and manipulation.

1 min 3 weeks, 6 days ago
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LOW News International

Harvey confirms $11B valuation: Sequoia triples down

Investors like Sequoia, Andreessen Horowitz, Kleiner Perkins, and Elad Gil can't get enough of AI legal tech startup Harvey.

1 min 3 weeks, 6 days ago
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LOW News European Union

Meta launches new initiative to support entrepreneurship, drive AI adoption

Meta CEO Mark Zuckerberg said in a memo to staff that small businesses have always been a big part of the company's business model, and that while tens of millions of entrepreneurs already use its platforms to grow and connect...

1 min 3 weeks, 6 days ago
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Impact Distribution

Critical 0
High 2
Medium 37
Low 3752