The chain graph model admits both undirected and directed edges in one graph, where symmetric conditional dependencies are encoded via undirected edges and asymmetric causal relations are encoded via directed edges. Though frequently encountered in practice, the chain graph model has been largely under investigated in literature, possibly due to the lack of identifiability conditions between undirected and directed edges. In this paper, we first establish a set of novel identifiability conditions for the Gaussian chain graph model, exploiting a low rank plus sparse decomposition of the precision matrix. Further, an efficient learning algorithm is built upon the identifiability conditions to fully recover the chain graph structure. Theoretical analysis on the proposed method is conducted, assuring its asymptotic consistency in recovering the exact chain graph structure. The advantage of the proposed method is also supported by numerical experiments on both simulated examples and a real application on the Standard & Poor 500 index data.
翻译:链形图模型在一张图中承认了非方向和定向边缘,其中通过非方向边缘编码了对称的有条件依赖性,通过定向边缘编码了不对称因果关系。尽管在实践中经常遇到,但链式图模型在很大程度上在文献中受到调查,可能是因为未定向边缘和定向边缘之间缺乏可识别性条件。在本文件中,我们首先为高斯链式图模型建立一套新型的可识别性条件,利用低级加上稀有的精确矩阵分解。此外,高效的学习算法建立在可识别性条件的基础上,以完全恢复链式图结构。对拟议方法进行了理论分析,确保了在恢复精确链式图结构方面的一致性。在模拟示例和对标准与贫穷500指数数据的实际应用上,也支持了拟议方法的优势。</s>