图形模型
计算机科学
Lasso(编程语言)
潜变量
条件独立性
二进制数据
图形
光学(聚焦)
算法
高斯分布
二进制数
数据挖掘
理论计算机科学
数学
人工智能
物理
算术
量子力学
万维网
光学
作者
Jie Cheng,Tianxi Li,Elizaveta Levina,Ji Zhu
标识
DOI:10.1080/10618600.2016.1237362
摘要
While graphical models for continuous data (Gaussian graphical models) and discrete data (Ising models) have been extensively studied, there is little work on graphical models for datasets with both continuous and discrete variables (mixed data), which are common in many scientific applications. We propose a novel graphical model for mixed data, which is simple enough to be suitable for high-dimensional data, yet flexible enough to represent all possible graph structures. We develop a computationally efficient regression-based algorithm for fitting the model by focusing on the conditional log-likelihood of each variable given the rest. The parameters have a natural group structure, and sparsity in the fitted graph is attained by incorporating a group lasso penalty, approximated by a weighted lasso penalty for computational efficiency. We demonstrate the effectiveness of our method through an extensive simulation study and apply it to a music annotation dataset (CAL500), obtaining a sparse and interpretable graphical model relating the continuous features of the audio signal to binary variables such as genre, emotions, and usage associated with particular songs. While we focus on binary discrete variables for the main presentation, we also show that the proposed methodology can be easily extended to general discrete variables.
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