AIApr 27

Sparse Personalized Text Generation with Multi-Trajectory Reasoning

arXiv:2604.2499688.7h-index: 18
Predicted impact top 22% in AI · last 90 daysOriginality Incremental advance
AI Analysis

For LLM personalization systems facing cold-start users with limited data, PAT provides a method to leverage similar users' signals, outperforming existing approaches.

PAT addresses cold-start LLM personalization where user interaction histories are sparse, using a dual-trajectory retrieval and reinforcement learning-based reasoning mechanism to improve generation quality and alignment, achieving consistent gains across benchmarks.

As Large Language Models (LLMs) advance, personalization has become a key mechanism for tailoring outputs to individual user needs. However, most existing methods rely heavily on dense interaction histories, making them ineffective in cold-start scenarios where such data is sparse or unavailable. While external signals (e.g., content of similar users) can offer a potential remedy, leveraging them effectively remains challenging: raw context is often noisy, and existing methods struggle to reason over heterogeneous data sources. To address these issues, we introduce PAT (Personalization with Aligned Trajectories), a reasoning framework for cold-start LLM personalization. PAT first retrieves information along two complementary trajectories: writing-style cues from stylistically similar users and topic-specific context from preference-aligned users. It then employs a reinforcement learning-based, iterative dual-reasoning mechanism that enables the LLM to jointly refine and integrate these signals. Experimental results across real-world personalization benchmarks show that PAT consistently improves generation quality and alignment under sparse-data conditions, establishing a strong solution to the cold-start personalization problem.

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