Action model learning
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Action model learning (sometimes abbreviated action learning) is an area of machine learning concerned with creation and modification of software agent's knowledge about effects and preconditions of the actions that can be executed within its environment. This knowledge is usually represented in logic-based action description language and used as the input for automated planners.
Learning action models is important when goals change. When an agent acted for a while, it can use its accumulated knowledge about actions in the domain to make better decisions. Thus, learning action models differs from reinforcement learning. It enables reasoning about actions instead of expensive trials in the world.[1]Action model learning is a form of inductive reasoning, where new knowledge is generated based on agent's observations. It differs from standard supervised learning in that correct input/output pairs are never presented, nor imprecise action models explicitly corrected.
Usual motivation for action model learning is the fact that manual specification of action models for planners is often a difficult, time consuming, and error-prone task (especially in complex environments).
Action models
Given a training set consisting of examples , where are observations of a world state from two consecutive time steps and is an action instance observed in time step , the goal of action model learning in general is to construct an action model , where is a description of domain dynamics in action description formalism like STRIPS, ADL or PDDL and is a probability function defined over the elements of . [2][3] However, many state of the art action learning methods assume determinism and do not induce . In addition to determinism, individual methods differ in how they deal with other attributes of domain (e.g. partial observability or sensoric noise).
Research
State of the art
Literature
Most action learning research papers are published in journals and conferences focused on artificial intelligence in general (e.g. Journal of Artificial Intelligence Research (JAIR), Artificial Intelligence, Applied Artificial Intelligence (AAI) or AAAI conferences). Despite mutual relevance of the topics, action model learning is usually not adressed on planning conferences like ICAPS.
See also
References
- ^ Amir, Eyal; Chang, Allen (2008). "Learning Partially Observable Deterministic Action Models". Journal of Artificial Intelligence Research (JAIR). 33: 349–402.
- ^ Certicky, Michal (2013). "Action Models and their Induction". Organon F, International Journal of Analytic Philosophy. 20. Institute of Philosophy of the Slovak Academy of Sciences: 206–215.
- ^ Certicky, Michal (2014). "Real-Time Action Model Learning with Online Algorithm 3SG". Applied Artificial Intelligence. 28. Taylor & Francis: 690–711. doi:10.1080/08839514.2014.927692.