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arxiv_ai 90% Match Research Paper AI Researchers,Creative Technologists,Product Designers,Content Creators 1 week ago

Magellan: Guided MCTS for Latent Space Exploration and Novelty Generation

large-language-models › reasoning
📄 Abstract

Abstract: Large Language Models (LLMs) often struggle with generating truly innovative ideas, typically defaulting to high-probability, familiar concepts within their training data's "gravity wells." While advanced search-based methods like Tree of Thoughts (ToT) attempt to mitigate this, they are fundamentally limited by their reliance on unprincipled, inconsistent self-evaluation heuristics to guide exploration. To address this gap, we introduce \textbf{Magellan}, a novel framework that reframes creative generation as a principled, guided exploration of an LLM's latent conceptual space. At its core, Magellan employs Monte Carlo Tree Search (MCTS) governed by a hierarchical guidance system. For long-range direction, a "semantic compass" vector, formulated via orthogonal projection, steers the search towards relevant novelty. For local, step-by-step decisions, a landscape-aware value function replaces flawed self-evaluation with an explicit reward structure that balances intrinsic coherence, extrinsic novelty, and narrative progress. Extensive experiments demonstrate that Magellan significantly outperforms strong baselines, including ReAct and ToT, in generating scientific ideas with superior plausibility and innovation. Our work shows that for creative discovery, a principled, guided search is more effective than unconstrained agency, paving the way for LLMs to become more capable partners in innovation.
Authors (1)
Lufan Chang
Submitted
October 24, 2025
arXiv Category
cs.AI
arXiv PDF

Key Contributions

Magellan introduces a novel framework using MCTS guided by a hierarchical system (semantic compass and landscape-aware value function) to explore LLM latent spaces for creative generation. It reframes generation as principled exploration, replacing flawed self-evaluation heuristics with explicit reward structures for better novelty.

Business Value

Can unlock new avenues for creative industries, product development, and scientific discovery by enabling AI to generate truly novel concepts and ideas, overcoming human cognitive biases.