AMLSI: A Novel Accurate Action Model Learning Algorithm

11/26/2020
by   Maxence Grand, et al.
0

This paper presents new approach based on grammar induction called AMLSI Action Model Learning with State machine Interactions. The AMLSI approach does not require a training dataset of plan traces to work. AMLSI proceeds by trial and error: it queries the system to learn with randomly generated action sequences, and it observes the state transitions of the system, then AMLSI returns a PDDL domain corresponding to the system. A key issue for domain learning is the ability to plan with the learned domains. It often happens that a small learning error leads to a domain that is unusable for planning. Unlike other algorithms, we show that AMLSI is able to lift this lock by learning domains from partial and noisy observations with sufficient accuracy to allow planners to solve new problems.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/14/2022

An Accurate HDDL Domain Learning Algorithm from Partial and Noisy Observations

The Hierarchical Task Network (HTN) formalism is very expressive and use...
research
12/08/2021

TempAMLSI : Temporal Action Model Learning based on Grammar Induction

Hand-encoding PDDL domains is generally accepted as difficult, tedious a...
research
10/03/2018

Action Model Acquisition using LSTM

In the field of Automated Planning and Scheduling (APS), intelligent age...
research
11/09/2021

Learning Numerical Action Models from Noisy Input Data

This paper presents the PlanMiner-N algorithm, a domain learning techniq...
research
07/09/2021

Safe Learning of Lifted Action Models

Creating a domain model, even for classical, domain-independent planning...
research
11/04/2014

Learning of Agent Capability Models with Applications in Multi-agent Planning

One important challenge for a set of agents to achieve more efficient co...
research
10/22/2018

A Review on Learning Planning Action Models for Socio-Communicative HRI

For social robots to be brought more into widespread use in the fields o...

Please sign up or login with your details

Forgot password? Click here to reset