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Cost-Sensitive Label Embedding for Multi-label Classification

机译:用于多标签分类的成本敏感标签嵌入

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Label embedding (LE) is an important family of multi-label classification algorithms that digest the label information jointly for better performance. Different real-world applications evaluate performance by different cost functions of interest. Current LE algorithms often aim to optimize one specific cost function, but they can suffer from bad performance with respect to other cost functions. In this paper, we resolve the performance issue by proposing a novel cost-sensitive LE algorithm that takes the cost function of interest into account. The proposed algorithm, cost-sensitive label embedding with multidimensional scaling (CLEMS), approximates the cost information with the distances of the embedded vectors by using the classic multidimensional scaling approach for manifold learning. CLEMS is able to deal with both symmetric and asymmetric cost functions, and effectively makes cost-sensitive decisions by nearest-neighbor decoding within the embedded vectors. We derive theoretical results that justify how CLEMS achieves the desired cost-sensitivity. Furthermore, extensive experimental results demonstrate that CLEMS is significantly better than a wide spectrum of existing LE algorithms and state-of-the-art cost-sensitive algorithms across different cost functions.
机译:标签嵌入(LE)是重要的多标签分类算法系列,它们共同消化标签信息以提高性能。不同的实际应用程序通过感兴趣的不同成本函数评估性能。当前的LE算法通常旨在优化一个特定的成本函数,但是相对于其他成本函数,它们可能会遭受性能不佳的困扰。在本文中,我们通过提出一种新的成本敏感型LE算法来解决性能问题,该算法考虑了感兴趣的成本函数。所提出的算法是具有成本敏感度的多维尺度缩放标签嵌入(CLEMS),它使用经典的多维尺度缩放方法进行流形学习,以嵌入向量的距离来近似成本信息。 CLEMS能够处理对称和非对称成本函数,并通过嵌入向量内的最近邻居解码有效地做出对成本敏感的决策。我们得出理论结果,证明CLEMS如何实现所需的成本敏感性。此外,大量的实验结果表明,CLEMS的性能远远优于现有的LE算法和跨不同成本函数的最新成本敏感算法。

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