贝叶斯网络结构的持续学习:一种映射研究

L. Silva, João Bezerra, M. Perkusich, K. Gorgônio, H. Almeida, A. Perkusich
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引用次数: 5

摘要

贝叶斯网络可以建立在知识、数据或两者的基础上。与用于构建模型的信息源无关,不准确性可能会发生,或者应用程序域可能会更改。因此,需要在使用过程中不断改进模型。随着新数据的收集,不断整合更新知识的算法在这一过程中发挥着至关重要的作用。对于贝叶斯网络结构的持续学习,目前的解决方案是基于其结构的细化或自适应。最近的研究人员致力于降低复杂性和内存使用,从而解决复杂和大规模的实际问题。本研究旨在识别和评估贝叶斯网络结构持续学习的解决方案,并概述相关的未来研究方向。我们的注意力仍然集中在结构上,因为如果结构不具有代表性,精确的参数是完全无用的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Continuous Learning of the Structure of Bayesian Networks: A Mapping Study
Bayesian networks can be built based on knowledge, data, or both. Independent of the source of information used to build the model, inaccuracies might occur or the application domain might change. Therefore, there is a need to continuously improve the model during its usage. As new data are collected, algorithms to continuously incorporate the updated knowledge can play an essential role in this process. In regard to the continu- ous learning of the Bayesian network’s structure, the current solutions are based on its structural refinement or adaptation. Recent researchers aim to reduce complexity and memory usage, allowing to solve complex and large-scale practical problems. This study aims to identify and evaluate solutions for the continuous learning of the Bayesian net- work’s structures, as well as to outline related future research directions. Our attention remains on the structures because the accurate parameters are completely useless if the structure is not representative.
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