We propose a novel Riemannian method for solving the Extreme multi-label classification problem that exploits the geometric structure of the sparse low-dimensional local embedding models. A constrained optimization problem is formulated as an optimization problem on matrix manifold and solved using a Riemannian optimization method. The proposed approach is tested on several real world large scale multi-label datasets and its usefulness is demonstrated through numerical experiments. The numerical experiments suggest that the proposed method is fastest to train and has least model size among the embedding-based methods. An outline of the proof of convergence for the proposed Riemannian optimization method is also stated.
翻译:我们建议了一种新颖的里曼尼方法,用于解决极端多标签分类问题,该方法利用了稀有低维本地嵌入模型的几何结构。一个限制优化问题被作为矩阵多重的优化问题提出,并使用里曼尼优化方法加以解决。该拟议方法在几个真实的世界大型多标签数据集中进行测试,其有用性通过数字实验得到证明。数字实验表明,在嵌入方法中,拟议方法培训最快,模型大小最小。还概述了拟议里曼尼优化方法的趋同性证据。