Learning Task Knowledge and its Scope of Applicability in Experience-Based Planning Domains

February 27, 2019 Β· Declared Dead Β· πŸ› arXiv.org

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Authors Vahid Mokhtari, Luis Seabra Lopes, Armando Pinho, Roman Manevich arXiv ID 1902.10770 Category cs.AI: Artificial Intelligence Citations 1 Venue arXiv.org Last Checked 4 months ago
Abstract
Experience-based planning domains (EBPDs) have been recently proposed to improve problem solving by learning from experience. EBPDs provide important concepts for long-term learning and planning in robotics. They rely on acquiring and using task knowledge, i.e., activity schemata, for generating concrete solutions to problem instances in a class of tasks. Using Three-Valued Logic Analysis (TVLA), we extend previous work to generate a set of conditions as the scope of applicability for an activity schema. The inferred scope is a bounded representation of a set of problems of potentially unbounded size, in the form of a 3-valued logical structure, which allows an EBPD system to automatically find an applicable activity schema for solving task problems. We demonstrate the utility of our approach in a set of classes of problems in a simulated domain and a class of real world tasks in a fully physically simulated PR2 robot in Gazebo.
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