Geng Sinong, Kuang Zhaobin, Peissig Peggy, Page David
The University of Wisconsin, Madison.
Marshfield Clinic Research Institute.
Proc Mach Learn Res. 2018 Jul;80:1714-1723.
We propose temporal Poisson square root graphical models (TPSQRs), a generalization of Poisson square root graphical models (PSQRs) specifically designed for modeling longitudinal event data. By estimating the temporal relationships for all possible pairs of event types, TPSQRs can offer a holistic perspective about whether the occurrences of any given event type could excite or inhibit any other type. A TPSQR is learned by estimating a collection of interrelated PSQRs that share the same template parameterization. These PSQRs are estimated jointly in a pseudo-likelihood fashion, where Poisson pseudo-likelihood is used to approximate the original more computationally-intensive pseudo-likelihood problem stemming from PSQRs. Theoretically, we demonstrate that under mild assumptions, the Poisson pseudo-likelihood approximation is for recovering the underlying PSQR. Empirically, we learn TPSQRs from Marshfield Clinic electronic health records (EHRs) with millions of drug prescription and condition diagnosis events, for adverse drug reaction (ADR) detection. Experimental results demonstrate that the learned TPSQRs can recover ADR signals from the EHR effectively and efficiently.
我们提出了时态泊松平方根图形模型(TPSQRs),它是泊松平方根图形模型(PSQRs)的一种推广,专门用于对纵向事件数据进行建模。通过估计所有可能的事件类型对之间的时间关系,TPSQRs可以提供一个整体视角,以了解任何给定事件类型的发生是否会激发或抑制其他类型。通过估计一组共享相同模板参数化的相互关联的PSQRs来学习TPSQR。这些PSQRs以伪似然方式联合估计,其中泊松伪似然用于近似源于PSQRs的原本计算量更大的伪似然问题。从理论上讲,我们证明了在温和假设下,泊松伪似然近似对于恢复潜在的PSQR是有效的。从经验上讲,我们从拥有数百万药物处方和病情诊断事件的马什菲尔德诊所电子健康记录(EHRs)中学习TPSQRs,用于药物不良反应(ADR)检测。实验结果表明,所学习的TPSQRs能够有效且高效地从EHR中恢复ADR信号。