Skip to content
  • September 22, 2025
SciPapermill SciPapermill

Follow the latest research

×
SciPapermill SciPapermill

Follow the latest research

  • Home
  • Topics
    • AI
    • Audio and Speech
    • Computational Linguistics
    • Computer Vision
    • Distributed Computing
    • Machine Learning
  • Contact Us
  • 0
  • Home
  • Contact Us

Contact Us

Thank you for your interest in reaching out to us. We value your feedback and inquiries.

General Inquiries:

  • Email: support@scipapermill.com
  • Large Language Models: Navigating Novelty, Nudging Nuance, and Ensuring Safety in the AI Frontier
  • Reinforcement Learning’s New Frontier: From Empathetic LLMs to Self-Improving Robots and Scalable Multi-Agent Systems
  • Speech Synthesis Supercharged: Latest Innovations in Expressive, Multilingual, and Real-Time TTS
  • Speech Recognition’s Next Frontier: LLMs, Multimodality, and Real-World Robustness
  • Arabic NLP in the Spotlight: From Cultural Nuances to Robust AI Systems
  • September 2025
  • August 2025
  • July 2025
  • June 2025
  • Agents
  • Arabic AI
  • Artificial Intelligence
  • Audio and Speech Processing
  • Computation and Language
  • Computer Vision
  • Computers and Society
  • Cryptography and Security
  • Distributed Computing
  • Graphics
  • Hardware Architecture
  • Human-Computer Interaction
  • Image and Video Processing
  • Image Generation
  • Information Retrieval
  • Logic in Computer Science
  • Machine Learning
  • math.NA
  • Multiagent Systems
  • Networking and Internet Architecture
  • Numerical Analysis
  • Programming Languages
  • Robotics
  • Social and Information Networks
  • Software Engineering
  • Sound
  • Statistical Machine Learning
  • Systems and Control
No comments to show.
  • Forums
  • About Us
  • Contact Us
  • Privacy Policy

SciPapermill: Follow the latest research. Copyright 2025 | Powered By SpiceThemes

Login

Don't have an account? Register here

Forgot your password?

Summary:

  • 🚀 New paper: A-SEA3L-QA introduces a self-evolving adversarial workflow for Arabic long-context QA generation. It leverages multiple LVLMs in an end-to-end, automated pipeline to improve performance without human intervention. https://arxiv.org/pdf/2509.02864″
  • 💡 Key insight: The system enables continuous learning by iteratively refining outputs and enhancing question difficulty. This approach significantly boosts long-context comprehension capabilities of Arabic LVLMs.
  • 🤖 A-SEA3L-QA also provides a large-scale benchmark (AraLongBench) to evaluate Arabic QA models, exposing weaknesses in current systems. This is a major step forward for low-resource language NLP.

Resources:

AraLongBench (benchmark dataset)

Code:

https://github.com/wangk0b/Self_Improving_ARA_LONG_Doc.git

Link:

https://arxiv.org/pdf/2509.02864