Saved in:
Bibliographic Details
Main Authors: Wang, Yixuan, Huang, Yue, Qian, Hong, Wei, Yunzhao, Ding, Yifei, Wang, Wenkai, Liu, Zhi, Huang, Zhongjing, Zhou, Aimin, Guo, Jiajun
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2604.18398
Tags: Add Tag
No Tags, Be the first to tag this record!
Table of Contents:
  • Creativity has become a core competence in the era of LLMs and human-AI collaboration, underpinning innovation in real-world problem solving. Crucially, the systematic improvement of creativity necessitates scientifically valid assessment instruments. Psychometric research recognizes context-based assessment as an effective way to measure creative thinking. However, high-quality expert-designed contexts remain scarce. Existing LLM-based generators often struggle with insufficient assessment cues, weak narrative coherence, limited stylistic diversity, and poor support for creative thinking. To address these challenges, we propose AlphaContext, an evolutionary tree-based psychometric context generator for creativity assessment. First, the HyperTree Outline Planner formalizes expert-designed outlining as a rule-guided hypertree and performs top-down hierarchical planning. The MCTS-based Context Generator fills the outline via MCTS to balance global structure and local quality. Then, the Evolutionary Context Optimizer evolves contexts with MAP-Elites by repeatedly updating niche elites to jointly improve diversity and quality. Finally, the Assessment-Guided Evolution Refiner simulates virtual participants with diverse styles and recycles weak contexts for further evolution. Experiments show that AlphaContext yields an average improvement of 8% over competitive methods across 6 quality metrics.