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Transfer learning for temporal nodes Bayesian networks

机译:时间节点贝叶斯网络的转移学习

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摘要

Traditional machine learning algorithms depend heavily on the assumption that there is sufficient data to learn a reliable model. This is not always the case, and in situations where data is limited, transfer learning can be applied to compensate for the lack of information by learning from several sources. In this work, we present a novel methodology for inducing a Temporal Nodes Bayesian Network (TNBN) when training data is scarce by applying a transfer learning strategy. A TNBN is a probabilistic graphical model that offers a compact representation for dynamic domains by defining multiple time intervals in which events can occur. Learning a TNBN poses additional challenges to learning traditional Bayesian networks due to the incorporation of time intervals. Our proposal incorporates novel approaches to transfer knowledge from several TNBNs to learn the structure, parameters and intervals of a target TNBN. To evaluate our algorithm, we performed experiments with a synthetic network, where we created auxiliary models by altering the structure, parameters and temporal intervals of the original model. Results show that the proposed algorithm is capable of retrieving a reliable model even when few records are available for the target domain. We also performed experiments with a real-world data set belonging to the medical domain of HIV, where we were able to learn some documented mutational pathways and their temporal relations by applying transfer learning.
机译:传统的机器学习算法在很大程度上取决于以下假设:有足够的数据来学习可靠的模型。并非总是如此,在数据有限的情况下,可以通过从多个来源进行学习来应用转移学习来弥补信息的不足。在这项工作中,我们提出了一种新颖的方法,该方法可通过应用转移学习策略在训练数据稀缺时诱导时间节点贝叶斯网络(TNBN)。 TNBN是一种概率图形模型,它通过定义可能发生事件的多个时间间隔来提供动态域的紧凑表示。由于合并了时间间隔,学习TNBN给学习传统贝叶斯网络带来了额外的挑战。我们的建议采用了新颖的方法,可以从多个TNBN传递知识,以学习目标TNBN的结构,参数和间隔。为了评估我们的算法,我们使用综合网络进行了实验,在该网络中,我们通过更改原始模型的结构,参数和时间间隔来创建辅助模型。结果表明,即使很少有记录可用于目标域,该算法也能够检索可靠的模型。我们还使用属于HIV医学领域的真实数据集进行了实验,通过应用转移学习,我们能够了解一些已记录的突变途径及其时间关系。

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