Learning Faster by Discovering and Exploiting Object Similarities
In this paper we explore the question: “Is it possible to speed up the learning process of an autonomous agent by performing experiments in a more complex environment (i.e., an environment with a greater number of different objects)?” To this end, we use a simple robotic domain, where the robot has...
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doaj-186b70b0f91846469cf22c8b437534152020-11-25T03:09:24ZengSAGE PublishingInternational Journal of Advanced Robotic Systems1729-88142013-03-011010.5772/5465910.5772_54659Learning Faster by Discovering and Exploiting Object SimilaritiesTadej Janež0Jure Žabkar1Martin Možina2Ivan Bratko3 Artificial Intelligence Laboratory, Faculty of Computer and Information Science, University of Ljubljana, Ljubljana, Slovenia Artificial Intelligence Laboratory, Faculty of Computer and Information Science, University of Ljubljana, Ljubljana, Slovenia Artificial Intelligence Laboratory, Faculty of Computer and Information Science, University of Ljubljana, Ljubljana, Slovenia Artificial Intelligence Laboratory, Faculty of Computer and Information Science, University of Ljubljana, Ljubljana, SloveniaIn this paper we explore the question: “Is it possible to speed up the learning process of an autonomous agent by performing experiments in a more complex environment (i.e., an environment with a greater number of different objects)?” To this end, we use a simple robotic domain, where the robot has to learn a qualitative model predicting the change in the robot's distance to an object. To quantify the environment's complexity, we defined cardinal complexity as the number of objects in the robot's world, and behavioural complexity as the number of objects' distinct behaviours. We propose Error reduction merging (ERM) , a new learning method that automatically discovers similarities in the structure of the agent's environment. ERM identifies different types of objects solely from the data measured and merges the observations of objects that behave in the same or similar way in order to speed up the agent's learning. We performed a series of experiments in worlds of increasing complexity. The results in our simple domain indicate that ERM was capable of discovering structural similarities in the data which indeed made the learning faster, clearly superior to conventional learning. This observed trend occurred with various machine learning algorithms used inside the ERM method.https://doi.org/10.5772/54659 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Tadej Janež Jure Žabkar Martin Možina Ivan Bratko |
spellingShingle |
Tadej Janež Jure Žabkar Martin Možina Ivan Bratko Learning Faster by Discovering and Exploiting Object Similarities International Journal of Advanced Robotic Systems |
author_facet |
Tadej Janež Jure Žabkar Martin Možina Ivan Bratko |
author_sort |
Tadej Janež |
title |
Learning Faster by Discovering and Exploiting Object Similarities |
title_short |
Learning Faster by Discovering and Exploiting Object Similarities |
title_full |
Learning Faster by Discovering and Exploiting Object Similarities |
title_fullStr |
Learning Faster by Discovering and Exploiting Object Similarities |
title_full_unstemmed |
Learning Faster by Discovering and Exploiting Object Similarities |
title_sort |
learning faster by discovering and exploiting object similarities |
publisher |
SAGE Publishing |
series |
International Journal of Advanced Robotic Systems |
issn |
1729-8814 |
publishDate |
2013-03-01 |
description |
In this paper we explore the question: “Is it possible to speed up the learning process of an autonomous agent by performing experiments in a more complex environment (i.e., an environment with a greater number of different objects)?” To this end, we use a simple robotic domain, where the robot has to learn a qualitative model predicting the change in the robot's distance to an object. To quantify the environment's complexity, we defined cardinal complexity as the number of objects in the robot's world, and behavioural complexity as the number of objects' distinct behaviours. We propose Error reduction merging (ERM) , a new learning method that automatically discovers similarities in the structure of the agent's environment. ERM identifies different types of objects solely from the data measured and merges the observations of objects that behave in the same or similar way in order to speed up the agent's learning. We performed a series of experiments in worlds of increasing complexity. The results in our simple domain indicate that ERM was capable of discovering structural similarities in the data which indeed made the learning faster, clearly superior to conventional learning. This observed trend occurred with various machine learning algorithms used inside the ERM method. |
url |
https://doi.org/10.5772/54659 |
work_keys_str_mv |
AT tadejjanez learningfasterbydiscoveringandexploitingobjectsimilarities AT jurezabkar learningfasterbydiscoveringandexploitingobjectsimilarities AT martinmozina learningfasterbydiscoveringandexploitingobjectsimilarities AT ivanbratko learningfasterbydiscoveringandexploitingobjectsimilarities |
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