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arxiv 2309.14459 v2 pith:52D5JYYX submitted 2023-09-25 cs.HC

Bridging the Gulf of Envisioning: Cognitive Design Challenges in LLM Interfaces

classification cs.HC
keywords envisioningcognitiveend-usersgoalgulfintentionsinteractionslanguage
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Large language models (LLMs) exhibit dynamic capabilities and appear to comprehend complex and ambiguous natural language prompts. However, calibrating LLM interactions is challenging for interface designers and end-users alike. A central issue is our limited grasp of how human cognitive processes begin with a goal and form intentions for executing actions, a blindspot even in established interaction models such as Norman's gulfs of execution and evaluation. To address this gap, we theorize how end-users 'envision' translating their goals into clear intentions and craft prompts to obtain the desired LLM response. We define a process of Envisioning by highlighting three misalignments: (1) knowing whether LLMs can accomplish the task, (2) how to instruct the LLM to do the task, and (3) how to evaluate the success of the LLM's output in meeting the goal. Finally, we make recommendations to narrow the envisioning gulf in human-LLM interactions.

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Cited by 3 Pith papers

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    MiXR enables in-situ 3D design by harvesting real-world geometry for user-defined compositions that generative AI then refines, outperforming text-only generative methods in control and fidelity per a 12-person study.

  2. MiXR: Harvesting and Recomposing Geometry from Real-World Objects for In-Situ 3D Design

    cs.HC 2026-05 unverdicted novelty 6.0

    MiXR enables in-situ 3D compositional modeling by harvesting real-world geometry in XR and using generative AI to synthesize coherent models from user-defined assemblies.

  3. Personalizing LLM-Based Conversational Programming Assistants

    cs.SE 2026-04 unverdicted novelty 2.0

    The paper describes ongoing efforts to characterize developer diversity in cognition and context and to use personalization to make LLM-based conversational programming assistants more inclusive.