We propose a unified framework for likelihood-based regression modeling when the response variable has finite support. Our work is motivated by the fact that, in practice, observed data are discrete and bounded. The proposed methods assume a model which includes models previously considered for interval-censored variables with log-concave distributions as special cases. The resulting log-likelihood is concave, which we use to establish asymptotic normality of its maximizer as the number of observations $n$ tends to infinity with the number of parameters $d$ fixed, and rates of convergence of $L_1$-regularized estimators when the true parameter vector is sparse and $d$ and $n$ both tend to infinity with $\log(d) / n \to 0$. We consider an inexact proximal Newton algorithm for computing estimates and give theoretical guarantees for its convergence. The range of possible applications is wide, including but not limited to survival analysis in discrete time, the modeling of outcomes on scored surveys and questionnaires, and, more generally, interval-censored regression. The applicability and usefulness of the proposed methods are illustrated in simulations and data examples.
翻译:当响应变量得到有限的支持时,我们建议一个基于可能性的回归模型的统一框架。我们的工作动力是,在实践中,观测到的数据是互不相连的和受约束的。拟议的方法假设了一种模型,其中包括以前考虑过以日志-冷凝分布为特例的间隔-审查变量模型。由此产生的日志相似性是共性的,我们用它来确定其最大值的无症状正常度,因为观测数量零美元往往与固定参数数不尽相同,在真实参数矢量稀少、美元和美元和美元和美元均不固定的估算值交汇率之间,如果真实参数矢量稀少、美元和美元和美元均不固定,那么,我们的工作动力是。我们考虑了计算估计数的不精确的准牛顿算法,并为其趋汇提供理论保证。可能的应用范围很广,包括但不局限于在离散时间内进行生存分析,对分级调查和问卷的结果进行建模,以及更广义而言,模拟数据中的实用性和效用是模拟。