from Part VI - Temporal Models
Published online by Cambridge University Press: 19 May 2025
Temporal models are quite rich, allowing concurrency and temporal constraints to be handled. But the development of the temporal models is a bottleneck, to be eased with machine learning techniques. In this chapter, we first briefly address the problem of learning heuristics for temporal planning (Section 19.1). We then consider the issue of learning durative action schema and temporal methods (Section 19.2). The chapter outlines the proposed approaches, based on techniques seen earlier in the book, without getting into detailed descriptions of the corresponding procedures.
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