学习自适应系统中规划的修正模型

Daniel Sykes, Domenico Corapi, J. Magee, J. Kramer, A. Russo, Katsumi Inoue
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引用次数: 60

摘要

环境域模型是自适应系统用于确定其行为的信息的关键部分。这些模型可能不完整或不准确。此外,由于自适应系统通常在易受变化影响的环境中运行,这些模型也常常是过时的。为了更新和修正这些模型,系统应该观察环境对其行为的反应,并将这些反应与模型预测的反应进行比较。在本文中,我们使用一种概率规则学习方法,NoMPRoL,使用运行系统以执行轨迹的形式反馈来更新模型。NoMPRoL是一种基于将归纳逻辑规划任务转化为等价的溯因逻辑规划任务的非单调概率规则学习技术。从本质上讲,它通过寻找一般规则来利用一致的观察结果,这些规则根据观察结果发生的条件来解释观察结果。然后使用更新的模型来生成在实际环境中更有可能成功的新行为。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning revised models for planning in adaptive systems
Environment domain models are a key part of the information used by adaptive systems to determine their behaviour. These models can be incomplete or inaccurate. In addition, since adaptive systems generally operate in environments which are subject to change, these models are often also out of date. To update and correct these models, the system should observe how the environment responds to its actions, and compare these responses to those predicted by the model. In this paper, we use a probabilistic rule learning approach, NoMPRoL, to update models using feedback from the running system in the form of execution traces. NoMPRoL is a technique for nonmonotonic probabilistic rule learning based on a transformation of an inductive logic programming task into an equivalent abductive one. In essence, it exploits consistent observations by finding general rules which explain observations in terms of the conditions under which they occur. The updated models are then used to generate new behaviour with a greater chance of success in the actual environment encountered.
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