In many scientific areas, data with quantitative and qualitative (QQ) responses are commonly encountered with a large number of predictors. By exploring the association between QQ responses, existing approaches often consider a joint model of QQ responses given the predictor variables. However, the dependency among predictive variables also provides useful information for modeling QQ responses. In this work, we propose a generative approach to model the joint distribution of the QQ responses and predictors. The proposed generative model provides efficient parameter estimation under a penalized likelihood framework. It achieves accurate classification for qualitative response and accurate prediction for quantitative response with efficient computation. Because of the generative approach framework, the asymptotic optimality of classification and prediction of the proposed method can be established under some regularity conditions. The performance of the proposed method is examined through simulations and real case studies in material science and genetics.
翻译:在许多科学领域,大量预测者通常会遇到定量和定性反应数据。通过探索 答复之间的联系,现有方法往往会考虑根据预测变量作出联合反应的模型,然而,预测变量之间的依赖性也为建立响应的模型提供了有用的信息。在这项工作中,我们建议采用一种基因化方法,以模型形式联合分发 答复和预测器。提议的基因化模型在受惩罚的可能性框架内提供了有效的参数估计。它实现了质量反应的精确分类和以高效计算对定量反应的准确预测。由于基因化方法框架,可以在一些正常条件下确定拟议方法分类和预测的无症状的最佳性。通过模拟和材料科学和遗传学的实际案例研究,对拟议方法的绩效进行审查。