Using Machine Learning for Decreasing State Uncertainty in Planning
Author(s) -
Senka Krivić,
Michael Cashmore,
Daniele Magazzeni,
Sándor Szedmák,
Justus Piater
Publication year - 2020
Publication title -
journal of artificial intelligence research
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.79
H-Index - 123
eISSN - 1943-5037
pISSN - 1076-9757
DOI - 10.1613/jair.1.11567
Subject(s) - computer science , process (computing) , machine learning , artificial intelligence , state (computer science) , automated planning and scheduling , active learning (machine learning) , algorithm , operating system
We present a novel approach for decreasing state uncertainty in planning prior to solving the planning problem. This is done by making predictions about the state based on currently known information, using machine learning techniques. For domains where uncertainty is high, we define an active learning process for identifying which information, once sensed, will best improve the accuracy of predictions. We demonstrate that an agent is able to solve problems with uncertainties in the state with less planning effort compared to standard planning techniques. Moreover, agents can solve problems for which they could not find valid plans without using predictions. Experimental results also demonstrate that using our active learning process for identifying information to be sensed leads to gathering information that improves the prediction process.
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