ArXiv TLDR

seneca: A Personalized Conversational Planner

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2604.19425

Simon Bohnen, Gabriel Garbers, Lukas Ellinger, Georg Groh

cs.HC

TLDR

seneca is an AI-assisted conversational planner that integrates reflection, goal tracking, and personalization to bridge the gap in existing planning tools.

Key contributions

  • Introduces seneca, a conceptual framework for a personalized, AI-assisted conversational planner.
  • Integrates a conversational agent for reflection, a persistent database for goals, and an information processor.
  • Addresses the gap in planning tools by aligning users' expressed demands with their underlying needs.
  • Proposes a phased evaluation strategy with automated testing and longitudinal human studies.

Why it matters

Existing planning tools are fragmented and don't fully support self-regulation or goal alignment. seneca offers a novel, integrated approach to personal planning. This framework could significantly improve how individuals achieve their goals by providing personalized, adaptive, and reflective support.

Original Abstract

Knowledge work demands sustained self-regulation, prioritization, and reflection-yet existing planning tools only partially support these needs. Digital to-do list applications feature task persistence but lack goal representation. Paper-based planning frameworks offer effective planning strategies but cannot adapt to individual users. Conversational AI systems enable flexible reflection but lack persistence and accountability. Moreover, none of these tools address a fundamental challenge: users' expressed demands often diverge from their underlying needs. This paper introduces seneca, a conceptual framework for a personalized, AI-assisted planner that integrates the complementary strengths of these three approaches. seneca combines a conversational agent that scaffolds reflection and asks clarifying questions, a persistent database that tracks goals and behavioral patterns, and a processor that synchronizes information between them. We describe this architecture and outline a phased evaluation strategy combining automated testing with simulated users and longitudinal human studies measuring goal attainment, planning realism, and goal-value alignment.

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