Explaining intuitive difficulty judgments by modeling physical effort and risk
May 11, 2019 Β· Declared Dead Β· π Annual Meeting of the Cognitive Science Society
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Authors
Ilker Yildirim, Basil Saeed, Grace Bennett-Pierre, Tobias Gerstenberg, Joshua Tenenbaum, Hyowon Gweon
arXiv ID
1905.04445
Category
cs.AI: Artificial Intelligence
Cross-listed
cs.RO
Citations
12
Venue
Annual Meeting of the Cognitive Science Society
Last Checked
4 months ago
Abstract
The ability to estimate task difficulty is critical for many real-world decisions such as setting appropriate goals for ourselves or appreciating others' accomplishments. Here we give a computational account of how humans judge the difficulty of a range of physical construction tasks (e.g., moving 10 loose blocks from their initial configuration to their target configuration, such as a vertical tower) by quantifying two key factors that influence construction difficulty: physical effort and physical risk. Physical effort captures the minimal work needed to transport all objects to their final positions, and is computed using a hybrid task-and-motion planner. Physical risk corresponds to stability of the structure, and is computed using noisy physics simulations to capture the costs for precision (e.g., attention, coordination, fine motor movements) required for success. We show that the full effort-risk model captures human estimates of difficulty and construction time better than either component alone.
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