Motivated by the analysis of spectrographic data, we introduce a functional graphical model for learning the conditional independence structure of spectra. Absorbance spectra are modeled as continuous functional data through a cubic B-spline basis expansion. A Gaussian graphical model is assumed for basis expansion coefficients, where a sparse structure is induced for the precision matrix. Bayesian inference is carried out, providing an estimate of the conditional independence structure between frequency bands of the spectrum. The proposed model is applied to the analysis of the infrared absorbance spectra of strawberry purees.
翻译:在光谱数据分析的推动下,我们引入了一个功能图形模型,用于学习光谱的有条件独立结构。Absorbance光谱通过立方B-spline基扩展作为连续功能数据的模型。假设一个高斯图形模型用于基础扩展系数,在此基扩展系数中,为精确矩阵引出一个稀疏的结构。进行了贝叶斯推论,对频谱频带之间的有条件独立结构作了估计。拟议的模型用于分析草莓纯度红外吸收光谱。