Searched for: subject%3A%22reinforcement%255C%252Blearning%22
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Pérez-Dattari, Rodrigo (author), Celemin, Carlos (author), Ruiz-del-Solar, Javier (author), Kober, J. (author)
Deep Reinforcement Learning (DRL) has become a powerful strategy to solve complex decision making problems based on Deep Neural Networks (DNNs). However, it is highly data demanding, so unfeasible in physical systems for most applications. In this work, we approach an alternative Interactive Machine Learning (IML) strategy for training DNN...
conference paper 2020
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Celemin, Carlos (author), Maeda, Guilherme (author), Ruiz-del-Solar, Javier (author), Peters, Jan (author), Kober, J. (author)
Robot learning problems are limited by physical constraints, which make learning successful policies for complex motor skills on real systems unfeasible. Some reinforcement learning methods, like Policy Search, offer stable convergence toward locally optimal solutions, whereas interactive machine learning or learning-from-demonstration methods...
journal article 2019
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Celemin, Carlos (author), Ruiz-del-Solar, Javier (author), Kober, J. (author)
Reinforcement Learning agents can be supported by feedback from human teachers in the learning loop that guides the learning process. In this work we propose two hybrid strategies of Policy Search Reinforcement Learning and Interactive Machine Learning that benefit from both sources of information, the cost function and the human corrective...
journal article 2018