We present the first deep learning based architecture for collective matrix tri-factorization (DCMTF) of arbitrary collections of matrices, also known as augmented multi-view data. DCMTF can be used for multi-way spectral clustering of heterogeneous collections of relational data matrices to discover latent clusters in each input matrix, across both dimensions, as well as the strengths of association across clusters. The source code for DCMTF is available on our public repository: https://bitbucket.org/cdal/dcmtf_generic
翻译:我们为任意收集矩阵(又称扩大多视图数据)提供了第一个基于深层次学习的架构,即集体矩阵三因集集(DCMTF),该架构也称为“扩大多视图数据”。 DCMTF可用于将各种关系数据矩阵收集的多维光谱组合在一起,以发现每个输入矩阵(包括两个层面)的潜在集群,以及各组间关联的优势。DCMTF的源代码可在我们的公共储存库中查阅:https://bitbucket.org/cdal/dcmtf_generic。