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MIRAI: Prediction and Generation of High-Impact Academic Research

arXiv:2606.05443v1 Announce Type: new Abstract: The rapid pace of scientific publishing has made the identification and synthesis of high-impact work an increasingly urgent challenge. We introduce MIRAI (Multi-year Inference of Research trends and Academic Impact), a deep learning framework that predicts paper impact using only it's title, abstract, and publication date. We train MIRAI on the arXiv academic graph to predict 5-year PageRank and citation counts, achieving Spearman's $\rho$ of...

arXiv CS 5d ago

Building Comparative Motivation Profiles with Instrumental Interventions

arXiv:2606.08243v1 Announce Type: new Abstract: Safety evaluations often infer latent motivations from behavioral patterns, but the construct validity of these inferences is unclear. We study this problem in alignment faking, where models comply with training objectives more often when they infer training pressure. This behavior is commonly interpreted as strategic self-preservation, but it may also reflect sensitivity to the model's inference about the expectation of researchers conducting...

arXiv CS 1d ago

Search-Time Contamination in Deep Research Agents: Measuring Performance Inflation in Public Benchmark Evaluation

arXiv:2606.05241v1 Announce Type: new Abstract: Public benchmarks enable fair and reproducible evaluation of LLM reasoning, but they become fragile for deep research agents that actively search the web during inference. Such agents may retrieve public benchmark metadata, question context, or even ground-truth answers via web search.

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Multi-Turn Evaluation of Deep Research Agents Under Process-Level Feedback

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Validity Threats for Foundation Model Research

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A Hypertoroidal Covering for Perfect Color Equivariance

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Test-Time Scaling in Multimodal Foundation Models: A Comprehensive Survey of Generation and Reasoning

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Animals were sharpening their senses long before the Cambrian explosion, ancient tracks reveal

Animals were sharpening their senses long before the Cambrian explosion, ancient tracks reveal Lisa Lock Scientific Editor Robert Egan Associate Editor Tracks left by some of the earliest complex animals are giving new insights into how they experienced the world. New research reveals how these creatures started to understand their surroundings, paving the way for animal life to spread across the planet. Today, many of us take our five senses for granted.

Phys.org 8d ago

Eroding a virtue: AI trains people to expect instant answers, and that's bad news for patience

Eroding a virtue: AI trains people to expect instant answers, and that's bad news for patience Gaby Clark Scientific Editor Andrew Zinin Lead Editor When I was growing up, teachers would assign research papers that required going to the library, or later, searching for relevant material on the internet. If the paper was going to turn out well, we students needed to patiently comb through piles of material, weaving what we found into a coherent argument that was well-supported with evidence....

Phys.org 6d ago