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All SourcesarXiv

Training LLMs for Divide-and-Conquer Reasoning Elevates Test-Time Scalability

Intermediate
Xiao Liang, Zhong-Zhi Li et al.Feb 2arXiv

The paper trains language models to solve hard problems by first breaking them into smaller parts and then solving those parts, instead of only thinking in one long chain.

#divide-and-conquer reasoning#chain-of-thought#reinforcement learning

MemSkill: Learning and Evolving Memory Skills for Self-Evolving Agents

Intermediate
Haozhen Zhang, Quanyu Long et al.Feb 2arXiv

MemSkill turns memory operations for AI agents into learnable skills instead of fixed, hand-made rules.

#memory skills#LLM agents#skill bank

SPARKLING: Balancing Signal Preservation and Symmetry Breaking for Width-Progressive Learning

Intermediate
Qifan Yu, Xinyu Ma et al.Feb 2arXiv

This paper shows how to safely make a neural network wider in the middle of training without it freaking out.

#Progressive Learning#Width Expansion#RMS scale

Thinking with Comics: Enhancing Multimodal Reasoning through Structured Visual Storytelling

Intermediate
Andong Chen, Wenxin Zhu et al.Feb 2arXiv

This paper shows that comics (multi-panel pictures with words) can help AI think through problems step by step, just like a student explains their work.

#multimodal reasoning#visual storytelling#comics

RANKVIDEO: Reasoning Reranking for Text-to-Video Retrieval

Intermediate
Tyler Skow, Alexander Martin et al.Feb 2arXiv

RANKVIDEO is a video-native reasoning reranker that helps search engines find the right videos for a text query by directly looking at the video’s visuals and audio, not just text captions.

#text-to-video retrieval#video-native reranking#multimodal reasoning

UniReason 1.0: A Unified Reasoning Framework for World Knowledge Aligned Image Generation and Editing

Intermediate
Dianyi Wang, Chaofan Ma et al.Feb 2arXiv

UniReason is a single, unified model that plans with world knowledge before making an image and then edits its own result to fix mistakes, like a student drafting and revising an essay.

#unified multimodal model#world knowledge reasoning#text-to-image generation

WideSeek: Advancing Wide Research via Multi-Agent Scaling

Beginner
Ziyang Huang, Haolin Ren et al.Feb 2arXiv

The paper tackles a new kind of search called Wide Research, where an AI must gather lots of related facts under complex rules and put them into a clean table.

#Wide Research#General Broad Information Seeking#Knowledge Graph

SLIME: Stabilized Likelihood Implicit Margin Enforcement for Preference Optimization

Intermediate
Maksim Afanasyev, Illarion IovFeb 2arXiv

SLIME is a new way to train chatbots so they follow human preferences without forgetting how to write well.

#SLIME#preference optimization#DPO

Unified Personalized Reward Model for Vision Generation

Intermediate
Yibin Wang, Yuhang Zang et al.Feb 2arXiv

The paper introduces UnifiedReward-Flex, a reward model that judges images and videos the way a thoughtful human would—by flexibly changing what it checks based on the prompt and the visual evidence.

#personalized reward model#multimodal reward#context-adaptive reasoning

SWE-Universe: Scale Real-World Verifiable Environments to Millions

Intermediate
Mouxiang Chen, Lei Zhang et al.Feb 2arXiv

SWE-Universe is a factory-like system that turns real GitHub pull requests into safe, repeatable coding practice worlds with automatic checkers.

#SWE-Universe#software engineering agents#pull requests

Why Steering Works: Toward a Unified View of Language Model Parameter Dynamics

Intermediate
Ziwen Xu, Chenyan Wu et al.Feb 2arXiv

The paper shows that three popular ways to control language models—fine-tuning a few weights, LoRA, and activation steering—are actually the same kind of action: a dynamic weight update driven by a control knob.

#language model steering#dynamic weight updates#activation steering

Rethinking Generative Recommender Tokenizer: Recsys-Native Encoding and Semantic Quantization Beyond LLMs

Intermediate
Yu Liang, Zhongjin Zhang et al.Feb 2arXiv

This paper proposes ReSID, a new way to turn items into short token codes (Semantic IDs) that are much easier for a recommender to predict.

#Semantic IDs#Generative Recommendation#Representation Learning
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