Performance Comparisons of Reinforcement Learning Algorithms for Sequential Experimental Design
Barlas, Y. & Salako, K. ORCID: 0000-0003-0394-7833 (2024).
Performance Comparisons of Reinforcement Learning Algorithms for Sequential Experimental Design.
Paper presented at the Workshop on Generalization in Planning (GenPlan), AAAI 2025, 4 Mar 2025, Philadelphia, USA.
Abstract
Recent developments in sequential experimental design look to construct a policy that can efficiently navigate the design space, in a way that maximises the expected information gain. Whilst there is work on achieving tractable policies for experimental design problems, there is significantly less work on obtaining policies that are able to generalise well – i.e. able to give good performance despite a change in the underlying statistical properties of the experiments. Conducting experiments sequentially has recently brought about the use of reinforcement learning, where an agent is trained to navigate the design space to select the most informative designs for experimentation. However, there is still a lack of understanding about the benefits and drawbacks of using certain reinforcement learning algorithms to train these agents. In our work, we investigate several reinforcement learning algorithms and their efficacy in producing agents that take maximally informative design decisions in sequential experimental design scenarios. We find that agent performance is impacted depending on the algorithm used for training, and that particular algorithms, using dropout or ensemble approaches, empirically showcase attractive generalisation properties.
Publication Type: | Conference or Workshop Item (Paper) |
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Subjects: | Q Science > QA Mathematics > QA75 Electronic computers. Computer science |
Departments: | School of Science & Technology School of Science & Technology > Computer Science School of Science & Technology > Computer Science > Software Reliability |
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