Initial State Prediction in Planning
Krivic, Senka (University of Innsbruck) | Cashmore, Michael (King's College London) | Ridder, Bram (King's College London) | Magazzeni, Daniele (King's College London) | Szedmak, Sandor (Aalto University) | Piater, Justus (University of Innsbruck)
While recent advances in offline reasoning techniques and online execution strategies have made planning under uncertainty more robust, the application of plans in partially-known environments is still a difficult and important topic. In this paper we present an approach for predicting new information about a partially-known initial state, represented as a multigraph utilizing Maximum-Margin Multi-Valued Regression. We evaluate this approach in four different domains, demonstrating high recall and accuracy.
Feb-4-2017