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進化型生成フレームワーク「EvoGens」:科学的アイデア創出のための探索的進化戦略
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ポイント
- 科学的アイデア創出を進化計算問題として捉え、多様性と新規性を向上させるフレームワークを提案した。
- 既存LLMのアイデア生成における意味的収束問題を解決するため、進化型探索と知識統合メカニズムを導入した点が新しい。
- 実験の結果、新規性・多様性が大幅に向上し、従来の評価基準下で質の高いアイデアを生成できることが示された。
Abstract
Generating novel research ideas is fundamental to scientific progress. While Large Language Models (LLMs) show promise in assisting this process, existing approaches often exhibit semantic convergence, resulting in limited diversity and novelty. To address this, we introduce EvoGens, an evolution-inspired framework that recasts scientific idea generation as an evolutionary search over a population of ideas. EvoGens iteratively applies rank-based mutation with differentiated retrieval planning to incorporate external knowledge, and semantic-aware crossover to fuse complementary concepts for conceptual reorganization. A lightweight evaluation signal guides the selection process, encouraging sustained exploration while mitigating premature convergence. Extensive experiments demonstrate that EvoGens substantially enhances exploration capabilities compared to state-of-the-art baselines. Specifically, it improves the Novelty from 0.1 to 0.4 and the Diversity from 0.24 to 0.55, while maintaining comparable idea quality under the current automatic evaluation protocol. These findings suggest that evolutionary mechanisms can serve as a useful framework for exploration-oriented research ideation, especially for broadening the novelty and diversity of candidate ideas under a shared automatic evaluation setting.
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