P-spline models have achieved great popularity both in statistical and in applied research. A possible drawback of P-spline is that they assume a smooth transition of the covariate effect across its whole domain. In some practical applications, however, it is desirable and needed to adapt smoothness locally to the data, and adaptive P-splines have been suggested. Yet, the extra flexibility afforded by adaptive P-spline models is obtained at the cost of a high computational burden, especially in a multidimensional setting. Furthermore, to the best of our knowledge, the literature lacks proposals for adaptive P-splines in more than two dimensions. Motivated by the need for analysing data derived from experiments conducted to study neurons' activity in the visual cortex, this work presents a novel locally adaptive anisotropic P-spline model in two (e.g., space) and three (space and time) dimensions. Estimation is based on the recently proposed SOP (Separation of Overlapping Precision matrices) method, which provides the speed we look for. The practical performance of the proposal is evaluated through simulations, and comparisons with alternative methods are reported. In addition to the spatio-temporal analysis of the data that motivated this work, we also discuss an application in two dimensions on the absenteeism of workers.
翻译:P-sp-spline模型在统计和应用研究中都非常受欢迎,P-sp-spline模型在统计和应用研究中都获得了很大的支持。P-spline模型的一个可能的缺点是,它们假定整个领域共同变量效应的平稳过渡,而P-sp-spline模型在统计和应用研究中可能有一个可能的缺点,因为P-sp-spline模型有可能是它们假定整个领域共同变量效应的平稳过渡;然而,在一些实际应用中,最好而且需要使当地顺利适应数据,并提出了适应性P-sp-spline建议;然而,适应性P-sp-sp-spline模型所提供的额外灵活性,是以高计算负担的代价,特别是在一个多层面环境中,特别是在一个多层面环境中。此外,据我们所知,文献缺乏关于适应性P-P-spline两个以上两个方面的建议。由于需要分析为研究视觉皮皮皮质中神经神经神经神经人活动的实验活动而获得的数据,因此,通过模拟、比较、分析结果分析结果,并报告一个替代工作的方法。