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A New Partially Segment-Wise Coupled Piece-Wise Linear Regression Model for Statistical Network Structure Inference

机译:统计网络结构推断的新的部分分段明智耦合分段明智线性回归模型

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We propose a new non-homogeneous dynamic Bayesian network with partially segment-wise sequentially coupled network parameters. The idea is to infer the segmentation of a time series of network data using multiple changepoint processes, and to model the data in each segment by linear regression models. The conventional uncoupled models infer the network interaction parameters for each segment separately, without any systematic information-sharing among segments. More recently, it was proposed to couple the network interaction parameters sequentially among segments. The idea is to enforce the parameters of any segment to stay similar to those of the previous segment. This coupling mechanism can be disadvantageous, as it enforces coupling and does not feature any options to uncouple. We propose a new consensus model that infers for each individual segment whether it should be coupled to (or better should stay uncoupled from) the preceding one.
机译:我们提出了一种新的非均匀动态贝叶斯网络,该网络具有部分按段顺序耦合的网络参数。该想法是使用多个变更点过程来推断网络数据的时间序列的分段,并通过线性回归模型对每个分段中的数据进行建模。常规的非耦合模型分别推断每个网段的网络交互参数,而无需在网段之间进行任何系统的信息共享。最近,提出了在段之间顺序地耦合网络交互参数。想法是强制任何段的参数保持与上一个段的参数相似。该耦合机制可能是不利的,因为它强制耦合,并且不具有任何解耦选项。我们提出了一种新的共识模型,该模型针对每个单独的细分推断其是否应该与前一个细分相结合(或更佳的分离度)。

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