AIFeb 2, 2025

CollabLLM: From Passive Responders to Active Collaborators

arXiv:2502.00640v3107 citationsh-index: 42ICML
Originality Incremental advance
AI Analysis

It addresses inefficient human-LLM interactions for users needing collaborative tasks, offering a novel method but with incremental improvements over existing approaches.

The paper tackles the problem of LLMs being passive responders by introducing CollabLLM, a training framework that enhances multiturn collaboration, resulting in 18.5% higher task performance and 17.6% increased user satisfaction.

Large Language Models are typically trained with next-turn rewards, limiting their ability to optimize for long-term interaction. As a result, they often respond passively to ambiguous or open-ended user requests, failing to help users reach their ultimate intents and leading to inefficient conversations. To address these limitations, we introduce CollabLLM, a novel and general training framework that enhances multiturn human-LLM collaboration. Its key innovation is a collaborative simulation that estimates the long-term contribution of responses using Multiturn-aware Rewards. By reinforcement fine-tuning these rewards, CollabLLM goes beyond responding to user requests, and actively uncovers user intent and offers insightful suggestions-a key step towards more human-centered AI. We also devise a multiturn interaction benchmark with three challenging tasks such as document creation. CollabLLM significantly outperforms our baselines with averages of 18.5% higher task performance and 46.3% improved interactivity by LLM judges. Finally, we conduct a large user study with 201 judges, where CollabLLM increases user satisfaction by 17.6% and reduces user spent time by 10.4%.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes