Towards Reinforcement Learning for In-Place Model Transformations

M. Eisenberg, Hans-Peter Pichler, Antonio Garmendía, M. Wimmer
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引用次数: 4

Abstract

Model-driven optimization has gained much interest in the last years which resulted in several dedicated extensions for in-place model transformation engines. The main idea is to exploit domain-specific languages to define models which are optimized by applying a set of model transformation rules. Objectives are guiding the optimization processes which are currently mostly realized by meta-heuristic searchers such as different kinds of Genetic Algorithms. However, meta-heuristic search approaches are currently challenged by reinforcement learning approaches for solving optimization problems. In this new ideas paper, we apply for the first time reinforcement learning for in-place model transformations. In particular, we extend an existing model-driven optimization approach with reinforcement learning techniques. We experiment with value-based and policy-based techniques. We investigate several case studies for validating the feasibility of using reinforcement learning for model-driven optimization and compare the performance against existing approaches. The initial evaluation shows promising results but also helped in identifying future research lines for the whole model transformation community.
面向就地模型转换的强化学习
模型驱动的优化在过去几年中获得了很多关注,这导致了一些针对就地模型转换引擎的专用扩展。主要思想是利用特定于领域的语言来定义通过应用一组模型转换规则来优化的模型。目标是指导优化过程,这些优化过程目前主要由元启发式搜索器(如各种遗传算法)实现。然而,元启发式搜索方法目前正受到强化学习方法解决优化问题的挑战。在这篇新思想的论文中,我们首次将强化学习应用于原地模型转换。特别是,我们用强化学习技术扩展了现有的模型驱动优化方法。我们尝试了基于价值和基于策略的技术。我们调查了几个案例研究,以验证使用强化学习进行模型驱动优化的可行性,并将其性能与现有方法进行比较。最初的评估显示了有希望的结果,但也有助于确定整个模型转换社区未来的研究方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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