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Main Authors: Veerapaneni, Rishi, Park, Jonathan, Saleem, Muhammad Suhail, Likhachev, Maxim
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2404.06728
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author Veerapaneni, Rishi
Park, Jonathan
Saleem, Muhammad Suhail
Likhachev, Maxim
author_facet Veerapaneni, Rishi
Park, Jonathan
Saleem, Muhammad Suhail
Likhachev, Maxim
contents With the advent of machine learning, there have been several recent attempts to learn effective and generalizable heuristics. Local Heuristic A* (LoHA*) is one recent method that instead of learning the entire heuristic estimate, learns a "local" residual heuristic that estimates the cost to escape a region (Veerapaneni et al 2023). LoHA*, like other supervised learning methods, collects a dataset of target values by querying an oracle on many planning problems (in this case, local planning problems). This data collection process can become slow as the size of the local region increases or if the domain requires expensive collision checks. Our main insight is that when an A* search solves a start-goal planning problem it inherently ends up solving multiple local planning problems. We exploit this observation to propose an efficient data collection framework that does <1/10th the amount of work (measured by expansions) to collect the same amount of data in comparison to baselines. This idea also enables us to run LoHA* in an online manner where we can iteratively collect data and improve our model while solving relevant start-goal tasks. We demonstrate the performance of our data collection and online framework on a 4D $(x, y, θ, v)$ navigation domain.
format Preprint
id arxiv_https___arxiv_org_abs_2404_06728
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle A Data Efficient Framework for Learning Local Heuristics
Veerapaneni, Rishi
Park, Jonathan
Saleem, Muhammad Suhail
Likhachev, Maxim
Robotics
With the advent of machine learning, there have been several recent attempts to learn effective and generalizable heuristics. Local Heuristic A* (LoHA*) is one recent method that instead of learning the entire heuristic estimate, learns a "local" residual heuristic that estimates the cost to escape a region (Veerapaneni et al 2023). LoHA*, like other supervised learning methods, collects a dataset of target values by querying an oracle on many planning problems (in this case, local planning problems). This data collection process can become slow as the size of the local region increases or if the domain requires expensive collision checks. Our main insight is that when an A* search solves a start-goal planning problem it inherently ends up solving multiple local planning problems. We exploit this observation to propose an efficient data collection framework that does <1/10th the amount of work (measured by expansions) to collect the same amount of data in comparison to baselines. This idea also enables us to run LoHA* in an online manner where we can iteratively collect data and improve our model while solving relevant start-goal tasks. We demonstrate the performance of our data collection and online framework on a 4D $(x, y, θ, v)$ navigation domain.
title A Data Efficient Framework for Learning Local Heuristics
topic Robotics
url https://arxiv.org/abs/2404.06728