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#artificial-intelligence News & Analysis

Coverage of #artificial-intelligence has accelerated significantly, with 217 articles published in the last 30 days across the aggregator's indexed sources. Bullish sentiment dominates the discourse at 76%, up 8.1 percentage points compared to the prior quarter, while bearish takes represent just 15.2% of recent coverage. Research preprints from arXiv lead source volume, followed by reporting from The Verge and specialized AI publications. The conversation centers on major players including OpenAI and Anthropic, with ChatGPT remaining a frequent focal point. Related discussions touch on machine learning, research developments, and cryptocurrency assets including Bitcoin and various alternative tokens. Scan the articles below for the latest reporting and analysis.

sentiment · last 30d (217 articles) · +8.1pp bullish vs prior 90d
Top sources:arXiv – CS AI · 407The Verge – AI · 76AI News · 56crypto.news · 25Crypto Briefing · 20
Most-discussed entities:OpenAI · 53ChatGPT · 38Anthropic · 33Claude · 23Nvidia · 16
1377 articles
AINeutralarXiv – CS AI · Mar 94/10
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Agentic LLM Planning via Step-Wise PDDL Simulation: An Empirical Characterisation

Researchers developed PyPDDLEngine, an open-source tool that allows large language models to perform task planning through interactive PDDL simulation. Testing on 102 planning problems showed agentic LLM planning achieved 66.7% success versus 63.7% for direct LLM planning, but at 5.7x higher token cost, while classical planning methods reached 85.3% success.

🧠 Claude🧠 Haiku
AINeutralarXiv – CS AI · Mar 94/10
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Aggregative Semantics for Quantitative Bipolar Argumentation Frameworks

Researchers introduce a new family of gradual semantics called aggregative semantics for Quantitative Bipolar Argumentation Frameworks (QBAF) in AI systems. The approach uses a three-stage computation that separately aggregates attackers and supporters before combining them with argument weights, providing more interpretable and parametrisable AI reasoning systems.

AINeutralarXiv – CS AI · Mar 95/10
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TML-Bench: Benchmark for Data Science Agents on Tabular ML Tasks

Researchers introduced TML-Bench, a new benchmark for evaluating AI coding agents on tabular machine learning tasks similar to Kaggle competitions. The study tested 10 open-source language models across four competitions with different time budgets, finding that MiniMax-M2.1 achieved the best overall performance.

AINeutralThe Register – AI · Mar 65/10
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Don’t blame AI yet for poor jobs numbers, analysts say

The article title suggests analysts are cautioning against attributing recent poor employment data to artificial intelligence disruption. This indicates ongoing debate about AI's current impact on job markets versus other economic factors.

AINeutralGoogle AI Blog · Mar 54/10
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The latest AI news we announced in February

Google announced several AI updates in February 2026, though the article provides minimal detail beyond showing a thumbnail image. The announcement appears to be part of Google's ongoing AI development initiatives.

The latest AI news we announced in February
AINeutralarXiv – CS AI · Mar 54/10
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Multi-Agent-Based Simulation of Archaeological Mobility in Uneven Landscapes

Researchers developed a multi-agent simulation framework using reinforcement learning to model archaeological mobility patterns in complex terrain. The system combines global path planning with local adaptation to simulate human and animal movement in historical landscapes, demonstrated through pursuit scenarios and transport analysis.

AINeutralarXiv – CS AI · Mar 53/10
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A novel network for classification of cuneiform tablet metadata

Researchers developed a novel neural network architecture for classifying cuneiform tablet metadata using point-cloud representations. The convolution-inspired approach outperformed existing transformer-based methods like Point-BERT by gradually down-scaling point clouds while integrating local and global information.

AINeutralarXiv – CS AI · Mar 54/10
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HAMLET: A Hierarchical and Adaptive Multi-Agent Framework for Live Embodied Theatrics

Researchers have developed HAMLET, a hierarchical multi-agent AI framework that creates immersive, interactive theatrical experiences using large language models. The system generates narrative blueprints from simple topics and enables AI actors to perform with adaptive reasoning, emotional states, and physical interactions with scene props.

AINeutralarXiv – CS AI · Mar 54/10
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Self-Supervised Inductive Logic Programming

Researchers developed a new self-supervised Inductive Logic Programming approach called Poker that can learn recursive logic programs without requiring expert-crafted negative examples or problem-specific background theories. The system automatically generates and labels new training examples during learning, showing improved performance over existing methods when negative examples are unavailable.

AINeutralarXiv – CS AI · Mar 44/103
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Revealing Positive and Negative Role Models to Help People Make Good Decisions

Researchers present a framework for social planners to strategically reveal positive and negative role models to influence agent behavior in social networks. The study addresses optimization challenges when disclosure budgets are limited and proposes algorithms to maximize social welfare while maintaining fairness across different groups.

AINeutralarXiv – CS AI · Mar 44/102
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A Natural Language Agentic Approach to Study Affective Polarization

Researchers developed a multi-agent platform using large language models to study affective polarization in social media through virtual communities. The framework addresses limitations of real-world studies by creating simulated environments where AI agents engage in discussions to analyze political and social divisions.

AINeutralarXiv – CS AI · Mar 44/103
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Proactive Guiding Strategy for Item-side Fairness in Interactive Recommendation

Researchers propose HRL4PFG, a new interactive recommendation framework using hierarchical reinforcement learning to promote fairness by guiding user preferences toward long-tail items. The approach aims to balance item-side fairness with user satisfaction, showing improved performance in cumulative interaction rewards and user engagement length compared to existing methods.

AINeutralarXiv – CS AI · Mar 44/104
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ConEQsA: Concurrent and Asynchronous Embodied Questions Scheduling and Answering

Researchers introduce ConEQsA, an AI framework that enables embodied agents to handle multiple questions simultaneously in 3D environments with urgency-aware scheduling. The system uses shared memory to reduce redundant exploration and includes a new benchmark with 200 questions across 40 indoor scenes.

AINeutralarXiv – CS AI · Mar 44/102
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Sustainable Materials Discovery in the Era of Artificial Intelligence

Researchers propose ML-LCA framework to integrate machine learning-based materials discovery with lifecycle assessment for sustainable-by-design materials. The framework addresses the current inefficiency where environmental impacts are evaluated only after resources are invested in potentially unsustainable solutions.

AINeutralarXiv – CS AI · Mar 35/107
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SIGMAS: Second-Order Interaction-based Grouping for Overlapping Multi-Agent Swarms

Researchers introduce SIGMAS, a self-supervised AI framework for identifying group structures in multi-agent swarms like drone fleets without ground-truth supervision. The system uses second-order interactions to infer latent group memberships from agent trajectories, demonstrating robust performance across diverse synthetic swarm scenarios.

AINeutralarXiv – CS AI · Mar 34/104
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State Your Intention to Steer Your Attention: An AI Assistant for Intentional Digital Living

Researchers developed an AI assistant that helps users maintain focus on digital devices by analyzing their stated intentions against actual screen activity. The system uses large language models to monitor screenshots, applications, and URLs, providing gentle nudges when behavior deviates from stated goals, showing effectiveness in a three-week study with 22 participants.

AINeutralarXiv – CS AI · Mar 25/105
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Artificial Agency Program: Curiosity, compression, and communication in agents

Researchers present the Artificial Agency Program (AAP), a framework for developing AI systems as resource-bounded agents driven by curiosity and learning progress under physical constraints. The program aims to create AI that enhances human capabilities through better sensing, understanding, and action while reducing interface friction between people, tools, and environments.

AINeutralMIT Technology Review · Feb 274/106
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AI is rewiring how the world’s best Go players think

AI is fundamentally changing how professional Go players approach the ancient strategy game at the Korea Baduk Association in Seoul. The traditional training methods and thinking patterns of the world's top Go players are being transformed by artificial intelligence systems.

AIBullisharXiv – CS AI · Feb 274/105
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AHBid: An Adaptable Hierarchical Bidding Framework for Cross-Channel Advertising

Researchers propose AHBid, a new hierarchical bidding framework for cross-channel advertising that combines generative planning with real-time control using diffusion models. The system achieved a 13.57% improvement in return on investment compared to existing methods in large-scale tests.

AINeutralarXiv – CS AI · Feb 274/105
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Types of Relations: Defining Analogies with Category Theory

Researchers propose using category theory to formalize knowledge domains and construct analogies between different fields. The paper demonstrates this approach using the classic analogy between the solar system and hydrogen atom, showing how mathematical structures like functors and pullbacks can define analogical relationships.

$ATOM
AINeutralarXiv – CS AI · Feb 274/105
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TokEye: Fast Signal Extraction for Fluctuating Time Series via Offline Self-Supervised Learning From Fusion Diagnostics to Bioacoustics

Researchers developed TokEye, a self-supervised AI framework that can extract coherent signals from noisy time-series data in 0.5 seconds, initially designed for fusion reactor diagnostics. The system demonstrates applications beyond fusion research, including bioacoustics, suggesting broader potential for real-time signal processing across industries.

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