In this paper we study the problem of bilinear regression and we further address the case when the response matrix contains missing data that referred as the problem of inductive matrix completion. We propose a quasi-Bayesian approach first to the problem of bilinear regression where a quasi-likelihood is employed. Then, we adapt this approach to the context of inductive matrix completion. Under a low-rankness assumption and leveraging PAC-Bayes bound technique, we provide statistical properties for our proposed estimators and for the quasi-posteriors. We propose a Langevin Monte Carlo method to approximately compute the proposed estimators. Some numerical studies are conducted to demonstrated our methods.
翻译:在本文中,我们研究双线回归问题,并在答复矩阵中包含被称为感测矩阵完成问题的缺失数据时,进一步处理这种情况。我们首先建议对使用准类似回归的双线回归问题采取准巴伊西亚办法。然后,我们根据感测矩阵完成情况调整这一办法。根据低级别假设和运用PAC-Bayes约束技术,我们为我们拟议的估算员和准替代人员提供统计属性。我们建议采用Langevin Monte Carlo方法,以大致计算拟议的估算员。我们进行了一些数字研究,以展示我们的方法。