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21,049 AI articles curated from 50+ sources with AI-powered sentiment analysis, importance scoring, and key takeaways.

21049 articles
AINeutralarXiv – CS AI · Mar 176/10
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MALicious INTent Dataset and Inoculating LLMs for Enhanced Disinformation Detection

Researchers released MALINT, the first human-annotated English dataset for detecting disinformation and its malicious intent, developed with expert fact-checkers. The study benchmarked 12 language models and introduced intent-based inoculation techniques that improved zero-shot disinformation detection across six datasets, five LLMs, and seven languages.

🧠 Llama
AIBullisharXiv – CS AI · Mar 176/10
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NCCL EP: Towards a Unified Expert Parallel Communication API for NCCL

Researchers have developed NCCL EP, a new communication library for Mixture-of-Experts (MoE) AI model architectures that improves GPU-initiated communication performance. The library provides unified APIs supporting both low-latency inference and high-throughput training modes, built entirely on NVIDIA's NCCL Device API.

🏢 Nvidia
AIBullisharXiv – CS AI · Mar 176/10
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GPrune-LLM: Generalization-Aware Structured Pruning for Large Language Models

Researchers introduce GPrune-LLM, a new structured pruning framework that improves compression of large language models by addressing calibration bias and cross-task generalization issues. The method partitions neurons into behavior-consistent modules and uses adaptive metrics based on distribution sensitivity, showing consistent improvements in post-compression performance.

AINeutralarXiv – CS AI · Mar 176/10
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Bridging Protocol and Production: Design Patterns for Deploying AI Agents with Model Context Protocol

Researchers identify three critical gaps in the Model Context Protocol (MCP) that prevent AI agents from operating safely at production scale, despite MCP having over 10,000 active servers and 97 million monthly SDK downloads. The paper proposes three new mechanisms to address missing identity propagation, adaptive tool budgeting, and structured error semantics based on enterprise deployment experience.

AINeutralarXiv – CS AI · Mar 176/10
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Evidence-based Distributional Alignment for Large Language Models

Researchers propose Evi-DA, an evidence-based technique that improves how large language models predict population response distributions across different cultures and domains. The method uses World Values Survey data and reinforcement learning to achieve up to 44% improvement in accuracy compared to existing approaches.

AINeutralarXiv – CS AI · Mar 176/10
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Not All Queries Need Rewriting: When Prompt-Only LLM Refinement Helps and Hurts Dense Retrieval

Research reveals that LLM query rewriting in RAG systems shows highly domain-dependent performance, degrading retrieval effectiveness by 9% in financial domains while improving it by 5.1% in scientific contexts. The study identifies that effectiveness depends on whether rewriting improves or worsens lexical alignment between queries and domain-specific terminology.

AINeutralarXiv – CS AI · Mar 176/10
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Feature-level Interaction Explanations in Multimodal Transformers

Researchers introduce FL-I2MoE, a new Mixture-of-Experts layer for multimodal Transformers that explicitly identifies synergistic and redundant cross-modal feature interactions. The method provides more interpretable explanations for how different data modalities contribute to AI decision-making compared to existing approaches.

AIBullisharXiv – CS AI · Mar 176/10
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Pragma-VL: Towards a Pragmatic Arbitration of Safety and Helpfulness in MLLMs

Researchers introduce Pragma-VL, a new alignment algorithm for Multimodal Large Language Models that balances safety and helpfulness by improving visual risk perception and using contextual arbitration. The method outperforms existing baselines by 5-20% on multimodal safety benchmarks while maintaining general AI capabilities in mathematics and reasoning.

AIBullisharXiv – CS AI · Mar 176/10
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From Stochastic Answers to Verifiable Reasoning: Interpretable Decision-Making with LLM-Generated Code

Researchers propose a new framework that uses LLMs as code generators rather than per-instance evaluators for high-stakes decision-making, creating interpretable and reproducible AI systems. The approach generates executable decision logic once instead of querying LLMs for each prediction, demonstrated through venture capital founder screening with competitive performance while maintaining full transparency.

🧠 GPT-4
AIBullisharXiv – CS AI · Mar 176/10
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FedTreeLoRA: Reconciling Statistical and Functional Heterogeneity in Federated LoRA Fine-Tuning

Researchers propose FedTreeLoRA, a new framework for privacy-preserving fine-tuning of large language models that addresses both statistical and functional heterogeneity across federated learning clients. The method uses tree-structured aggregation to allow layer-wise specialization while maintaining shared consensus on foundational layers, significantly outperforming existing personalized federated learning approaches.

AIBullisharXiv – CS AI · Mar 176/10
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Learning from Partial Chain-of-Thought via Truncated-Reasoning Self-Distillation

Researchers introduce Truncated-Reasoning Self-Distillation (TRSD), a post-training method that enables AI language models to maintain accuracy while using shorter reasoning traces. The technique reduces computational costs by training models to produce correct answers from partial reasoning, achieving significant inference-time efficiency gains without sacrificing performance.

AINeutralarXiv – CS AI · Mar 176/10
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Evaluation of Audio Language Models for Fairness, Safety, and Security

Researchers introduce a structural taxonomy and unified evaluation framework for Audio Large Language Models (ALLMs) to assess fairness, safety, and security. The study reveals systematic differences in how ALLMs handle audio versus text inputs, with FSS behavior closely tied to acoustic information integration methods.

AIBullisharXiv – CS AI · Mar 176/10
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Learning Retrieval Models with Sparse Autoencoders

Researchers introduce SPLARE, a new method that uses sparse autoencoders (SAEs) to improve learned sparse retrieval in language models. The technique outperforms existing vocabulary-based approaches in multilingual and out-of-domain settings, with SPLARE-7B achieving top results on multilingual retrieval benchmarks.

AIBullisharXiv – CS AI · Mar 176/10
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PREBA: Surgical Duration Prediction via PCA-Weighted Retrieval-Augmented LLMs and Bayesian Averaging Aggregation

Researchers developed PREBA, a retrieval-augmented framework that uses PCA-weighted retrieval and Bayesian averaging to improve surgical duration prediction accuracy by up to 40% using large language models. The system grounds LLM predictions in institution-specific clinical data without requiring computationally intensive training, achieving performance competitive with supervised machine learning methods.

AINeutralarXiv – CS AI · Mar 176/10
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How Transformers Reject Wrong Answers: Rotational Dynamics of Factual Constraint Processing

Researchers discovered that transformer language models process factual information through rotational dynamics rather than magnitude changes, actively suppressing incorrect answers instead of passively failing. This geometric pattern only emerges in models above 1.6B parameters, suggesting a phase transition in factual processing capabilities.

AIBullisharXiv – CS AI · Mar 176/10
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PolyGLU: State-Conditional Activation Routing in Transformer Feed-Forward Networks

Researchers introduce PolyGLU, a new transformer architecture that enables dynamic routing among multiple activation functions, mimicking biological neural diversity. The 597M-parameter PolychromaticLM model shows emergent specialization patterns and achieves strong performance despite training on significantly fewer tokens than comparable models.

🏢 Nvidia
AIBearisharXiv – CS AI · Mar 176/10
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Artificial Intelligence: Beyound Ocularcentrism, the New Age of Humans Beyond the Spectacle

A research paper examines how AI-generated visual content is transforming society's relationship with reality and representation, intensifying visual media's dominance in shaping public consciousness. An experiment in Bolzano, Italy revealed people's strong preference for visually striking AI-generated urban development scenarios over practical solutions, highlighting how AI accelerates image commodification and deepens societal alienation.

AIBearisharXiv – CS AI · Mar 176/10
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Are Dilemmas and Conflicts in LLM Alignment Solvable? A View from Priority Graph

Researchers propose a priority graph model to understand conflicts in LLM alignment, revealing that unified stable alignment is challenging due to context-dependent inconsistencies. The study identifies 'priority hacking' as a vulnerability where adversaries can manipulate safety alignments, and suggests runtime verification mechanisms as a potential solution.

AINeutralarXiv – CS AI · Mar 176/10
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Understanding Reasoning in LLMs through Strategic Information Allocation under Uncertainty

Researchers developed an information-theoretic framework to explain 'Aha moments' in large language models during reasoning tasks. The study reveals that strong reasoning performance stems from uncertainty externalization rather than specific tokens, decomposing LLM reasoning into procedural information and epistemic verbalization.

AIBullisharXiv – CS AI · Mar 176/10
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Computational Concept of the Psyche

Researchers propose a new computational concept for modeling the human psyche as an operating system for artificial general intelligence. The approach treats the psyche as a decision-making system that operates in a state space including needs, sensations, and actions to optimize goal achievement while minimizing risks.

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