Generalized Additive Models for Large Data Sets 论文

2014Journal of the Royal Statistical Society Series C (Applied Statistics)引用 356
Energy Load and Power ForecastingImage and Signal Denoising MethodsProbabilistic and Robust Engineering Design

详细信息

发表期刊/会议
Journal of the Royal Statistical Society Series C (Applied Statistics)
发表日期
2014-05-27
发表年份
2014

关键词

Energy Load and Power ForecastingImage and Signal Denoising MethodsProbabilistic and Robust Engineering Design

摘要

Summary We consider an application in electricity grid load prediction, where generalized additive models are appropriate, but where the data set's size can make their use practically intractable with existing methods. We therefore develop practical generalized additive model fitting methods for large data sets in the case in which the smooth terms in the model are represented by using penalized regression splines. The methods use iterative update schemes to obtain factors of the model matrix while requiring only subblocks of the model matrix to be computed at any one time. We show that efficient smoothing parameter estimation can be carried out in a well-justified manner. The grid load prediction problem requires updates of the model fit, as new data become available, and some means for dealing with residual auto-correlation in grid load. Methods are provided for these problems and parallel implementation is covered. The methods allow estimation of generalized additive models for large data sets by using modest computer hardware, and the grid load prediction problem illustrates the utility of reduced rank spline smoothing methods for dealing with complex modelling problems.