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Main Authors: Kaur, Kirandeep, Gupta, Vinayak, Gupta, Aditya, Shah, Chirag
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2601.09926
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author Kaur, Kirandeep
Gupta, Vinayak
Gupta, Aditya
Shah, Chirag
author_facet Kaur, Kirandeep
Gupta, Vinayak
Gupta, Aditya
Shah, Chirag
contents Current approaches to proactive assistance move beyond the ask-and-respond paradigm by anticipating user needs. In practice, they either burden users with clarifying questions or rely on context-based extrapolation, often leading to unnecessary or mistimed interventions. Such systems lack explicit mechanisms to model users' knowledge gaps, resulting in incomplete or suboptimal task outcomes. To address this, we propose PROPER, a framework that explicitly models user-specific knowledge gaps in a controlled manner. Central to our approach is the notion of dimensions: structured, task-relevant factors that define the considerations required for effective task completion. Given a user query, the DGA (Dimension Generating Agent) identifies explicit dimensions (from the user's query) and generates a set of candidate implicit dimensions capturing unarticulated aspects of the task. The RGA (Response Generating Agent) integrates both explicit and implicit dimensions selectively to produce personalized, context-aware, and proactively informative responses. We evaluate PROPER across multiple domains using a structured, gap-aware rubric that measures coverage, initiative appropriateness, and intent alignment. PROPER improves on quality scores and win rates across all domains, achieving up to 84% gains in single-turn evaluation and consistent dominance in multi-turn interactions. All code for PROPER is available at: https://github.com/i-kiran/ProPer-Agent.
format Preprint
id arxiv_https___arxiv_org_abs_2601_09926
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle PROPER Agents: Proactivity Driven Personalized Agents for Advancing Knowledge Gap Navigation
Kaur, Kirandeep
Gupta, Vinayak
Gupta, Aditya
Shah, Chirag
Machine Learning
Current approaches to proactive assistance move beyond the ask-and-respond paradigm by anticipating user needs. In practice, they either burden users with clarifying questions or rely on context-based extrapolation, often leading to unnecessary or mistimed interventions. Such systems lack explicit mechanisms to model users' knowledge gaps, resulting in incomplete or suboptimal task outcomes. To address this, we propose PROPER, a framework that explicitly models user-specific knowledge gaps in a controlled manner. Central to our approach is the notion of dimensions: structured, task-relevant factors that define the considerations required for effective task completion. Given a user query, the DGA (Dimension Generating Agent) identifies explicit dimensions (from the user's query) and generates a set of candidate implicit dimensions capturing unarticulated aspects of the task. The RGA (Response Generating Agent) integrates both explicit and implicit dimensions selectively to produce personalized, context-aware, and proactively informative responses. We evaluate PROPER across multiple domains using a structured, gap-aware rubric that measures coverage, initiative appropriateness, and intent alignment. PROPER improves on quality scores and win rates across all domains, achieving up to 84% gains in single-turn evaluation and consistent dominance in multi-turn interactions. All code for PROPER is available at: https://github.com/i-kiran/ProPer-Agent.
title PROPER Agents: Proactivity Driven Personalized Agents for Advancing Knowledge Gap Navigation
topic Machine Learning
url https://arxiv.org/abs/2601.09926