Quantifying Memorization and Privacy Risks in Genomic Language Models
arXiv:2603.08913v1 Announce Type: new Abstract: Genomic language models (GLMs) have emerged as powerful tools for learning representations of DNA sequences, enabling advances in variant prediction, regulatory element identification, and cross-task transfer learning. However, as these models are increasingly trained or...
The $qs$ Inequality: Quantifying the Double Penalty of Mixture-of-Experts at Inference
arXiv:2603.08960v1 Announce Type: new Abstract: Mixture-of-Experts (MoE) models deliver high quality at low training FLOPs, but this efficiency often vanishes at inference. We identify a double penalty that structurally disadvantages MoE architectures during decoding: first, expert routing fragments microbatches and...
Semantic Level of Detail: Multi-Scale Knowledge Representation via Heat Kernel Diffusion on Hyperbolic Manifolds
arXiv:2603.08965v1 Announce Type: new Abstract: AI memory systems increasingly organize knowledge into graph structures -- knowledge graphs, entity relations, community hierarchies -- yet lack a principled mechanism for continuous resolution control: where do the qualitative boundaries between abstraction levels lie,...
MAPLE: Elevating Medical Reasoning from Statistical Consensus to Process-Led Alignment
arXiv:2603.08987v1 Announce Type: new Abstract: Recent advances in medical large language models have explored Test-Time Reinforcement Learning (TTRL) to enhance reasoning. However, standard TTRL often relies on majority voting (MV) as a heuristic supervision signal, which can be unreliable in...
The Coupling Within: Flow Matching via Distilled Normalizing Flows
arXiv:2603.09014v1 Announce Type: new Abstract: Flow models have rapidly become the go-to method for training and deploying large-scale generators, owing their success to inference-time flexibility via adjustable integration steps. A crucial ingredient in flow training is the choice of coupling...
Dynamic Multi-period Experts for Online Time Series Forecasting
arXiv:2603.09062v1 Announce Type: new Abstract: Online Time Series Forecasting (OTSF) requires models to continuously adapt to concept drift. However, existing methods often treat concept drift as a monolithic phenomenon. To address this limitation, we first redefine concept drift by categorizing...
Exclusive Self Attention
arXiv:2603.09078v1 Announce Type: new Abstract: We introduce exclusive self attention (XSA), a simple modification of self attention (SA) that improves Transformer's sequence modeling performance. The key idea is to constrain attention to capture only information orthogonal to the token's own...
Decoupling Reasoning and Confidence: Resurrecting Calibration in Reinforcement Learning from Verifiable Rewards
arXiv:2603.09117v1 Announce Type: new Abstract: Reinforcement Learning from Verifiable Rewards (RLVR) significantly enhances large language models (LLMs) reasoning but severely suffers from calibration degeneration, where models become excessively over-confident in incorrect answers. Previous studies devote to directly incorporating calibration objective...
Causally Sufficient and Necessary Feature Expansion for Class-Incremental Learning
arXiv:2603.09145v1 Announce Type: new Abstract: Current expansion-based methods for Class Incremental Learning (CIL) effectively mitigate catastrophic forgetting by freezing old features. However, such task-specific features learned from the new task may collide with the old features. From a causal perspective,...
Latent-DARM: Bridging Discrete Diffusion And Autoregressive Models For Reasoning
arXiv:2603.09184v1 Announce Type: new Abstract: Most multi-agent systems rely exclusively on autoregressive language models (ARMs) that are based on sequential generation. Although effective for fluent text, ARMs limit global reasoning and plan revision. On the other hand, Discrete Diffusion Language...
$P^2$GNN: Two Prototype Sets to boost GNN Performance
arXiv:2603.09195v1 Announce Type: new Abstract: Message Passing Graph Neural Networks (MP-GNNs) have garnered attention for addressing various industry challenges, such as user recommendation and fraud detection. However, they face two major hurdles: (1) heavy reliance on local context, often lacking...
The Radio-Frequency Transformer for Signal Separation
arXiv:2603.09201v1 Announce Type: new Abstract: We study a problem of signal separation: estimating a signal of interest (SOI) contaminated by an unknown non-Gaussian background/interference. Given the training data consisting of examples of SOI and interference, we show how to build...
Transductive Generalization via Optimal Transport and Its Application to Graph Node Classification
arXiv:2603.09257v1 Announce Type: new Abstract: Many existing transductive bounds rely on classical complexity measures that are computationally intractable and often misaligned with empirical behavior. In this work, we establish new representation-based generalization bounds in a distribution-free transductive setting, where learned...
Proxy-Guided Measurement Calibration
arXiv:2603.09288v1 Announce Type: new Abstract: Aggregate outcome variables collected through surveys and administrative records are often subject to systematic measurement error. For instance, in disaster loss databases, county-level losses reported may differ from the true damages due to variations in...
Reward-Zero: Language Embedding Driven Implicit Reward Mechanisms for Reinforcement Learning
arXiv:2603.09331v1 Announce Type: new Abstract: We introduce Reward-Zero, a general-purpose implicit reward mechanism that transforms natural-language task descriptions into dense, semantically grounded progress signals for reinforcement learning (RL). Reward-Zero serves as a simple yet sophisticated universal reward function that leverages...
TA-GGAD: Testing-time Adaptive Graph Model for Generalist Graph Anomaly Detection
arXiv:2603.09349v1 Announce Type: new Abstract: A significant number of anomalous nodes in the real world, such as fake news, noncompliant users, malicious transactions, and malicious posts, severely compromises the health of the graph data ecosystem and urgently requires effective identification...
Interactive 3D visualization of surface roughness predictions in additive manufacturing: A data-driven framework
arXiv:2603.09353v1 Announce Type: new Abstract: Surface roughness in Material Extrusion Additive Manufacturing varies across a part and is difficult to anticipate during process planning because it depends on both printing parameters and local surface inclination, which governs the staircase effect....
SCOTUSblog’s new podcast partners
SCOTUSblog is excited to announce the addition of podcasts Amarica’s Constitution and Divided Argument to its podcast lineup, joining Advisory Opinions. While both podcasts will maintain their editorial and creative independence, […]The postSCOTUSblog’s new podcast partnersappeared first onSCOTUSblog.
Birthright citizenship: legal takeaways of mice and men and elephants and dogs
Brothers in Law is a recurring series by brothers Akhil and Vikram Amar, with special emphasis on measuring what the Supreme Court says against what the Constitution itself says. For more content from […]The postBirthright citizenship: legal takeaways of mice...
Google brings Gemini in Chrome to India
As part of the rollout, Gemini will support languages including Hindi, Bengali, Gujarati, Kannada, Malayalam, Marathi, Telugu, and Tamil.
Amazon launches its healthcare AI assistant on its website and app
Health AI can answer questions, explain health records, manage prescription renewals, book appointments, and more.
AI-powered apps struggle with long-term retention, new report shows
AI can drive stronger early monetization for apps, but sustaining value remains the challenge, RevenueCat's latest report finds.
AgentMail raises $6M to build an email service for AI agents
AgentMail provides an API platform that lets you give AI agents their own email inboxes, with support for two-way conversations, parsing, threading, labeling, searching, and replying.
Google gives in to users’ complaints over AI-powered ‘Ask Photos’ search feature
The option appears on the Google Photos Search screen and lets users pick which experience they want.
Legora reaches $5.55 billion valuation as AI legal tech boom endures
Legora, an AI platform for lawyers, is now valued at $5.55 billion following a $550 million Series D led by Accel to fuel its growth in the U.S.
Meta acquired Moltbook, the AI agent social network that went viral because of fake posts
Meta says that Moltbook's approach to "connecting agents through an always-on-directory" is novel.
YouTube expands AI deepfake detection to politicians, government officials, and journalists
YouTube's AI deepfake detection tool is becoming available to politicians, journalists, and officials, letting them flag unauthorized likenesses for removal.
Adobe is debuting an AI assistant for Photoshop
Adobe is also adding new AI-powered image-editing features to Firefly.
Zoom introduces an AI-powered office suite, says AI avatars for meetings arrive this month
Zoom is also introducing real-time deepfake detection tech for meetings.
Google rolls out new Gemini capabilities to Docs, Sheets, Slides, and Drive
The idea behind the new features is to make the apps more personal and capable to help users get things done faster, right within the platforms themselves.