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AAAI 2022

Learning Parameterized Task Structure for Generalization to Unseen Entities

Conference Paper AAAI Technical Track on Machine Learning II Artificial Intelligence

Abstract

Real world tasks are hierarchical and compositional. Tasks can be composed of multiple subtasks (or sub-goals) that are dependent on each other. These subtasks are defined in terms of entities (e. g. , apple, pear) that can be recombined to form new subtasks (e. g. , pickup apple, and pickup pear). To solve these tasks efficiently, an agent must infer subtask dependencies (e. g. an agent must execute pickup apple before place apple in pot), and generalize the inferred dependencies to new subtasks (e. g. place apple in pot is similar to place apple in pan). Moreover, an agent may also need to solve unseen tasks, which can involve unseen entities. To this end, we formulate parameterized subtask graph inference (PSGI), a method for modeling subtask dependencies using first-order logic with subtask entities. To facilitate this, we learn entity attributes in a zero-shot manner, which are used as quantifiers (e. g. is pickable(X)) for the parameterized subtask graph. We show this approach accurately learns the latent structure on hierarchical and compositional tasks more efficiently than prior work, and show PSGI can generalize by modelling structure on subtasks unseen during adaptation.

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Context

Venue
AAAI Conference on Artificial Intelligence
Archive span
1980-2026
Indexed papers
28718
Paper id
369129765885814808