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Shared subspace least squares multi-label linear discriminant analysis

机译:共享子空间最小二乘多标签线性判别分析

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摘要

Multi-label linear discriminant analysis (MLDA) has been explored for multi-label dimension reduction. However, MLDA involves dense matrices eigen-decomposition which is known to be computationally expensive for large-scale problems. In this paper, we show that the formulation of MLDA can be equivalently casted as a least squares problem so as to significantly reduce the computation burden and scale to the data collections with higher dimension. Further, it is also found that appealing regularization techniques can be incorporated into the least-squares model to boost generalization accuracy. Experimental results on several popular multi-label benchmarks not only verify the established equivalence relationship, but also demonstrate the effectiveness and efficiency of our proposed algorithms.
机译:多标签线性判别分析(MLDA)已探讨多标签尺寸减少。 然而,MLDA涉及致密的矩阵eIgen分解,该分解是在计算上计算昂贵的大规模问题。 在本文中,我们表明,MLDA的配方可以等同地铸造为最小二乘问题,以便显着降低计算负担并缩放到具有更高维度的数据收集。 此外,还发现,可以将吸引力的正则化技术结合到最小二乘模型中以提高概括精度。 在几个流行的多标签基准上的实验结果不仅验证了建立的等价关系,还展示了我们所提出的算法的有效性和效率。

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