一种利用特征与标签之间最大依赖关系的标签压缩编码方法

Lei Cao, Jianhua Xu
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引用次数: 9

摘要

标签压缩编码策略是针对具有高维和/或稀疏标签向量的多标签分类问题。在不显著降低分类性能的前提下,其效率取决于两个关键方面:将原始二进制标签向量快速编码为真实码字或二进制码字,以及将预测码字快速解码为二进制标签向量,从而分别减少训练和测试过程中的计算成本。本文提出了一种新的多标签分类的标签压缩编码方法,该方法利用Hilbert-Schmidt独立准则最大化特征和标签之间的依赖关系,从而同时考虑特征和标签信息。通过求解特征值问题,我们的方法得到了一个小范围的编码矩阵和一个快速的解码操作。在10个不同的基准数据集上的实验表明,根据5个基于排名和基于实例的性能评估指标,我们提出的技术优于现有的3种方法,包括基于压缩感知的方法、主标签空间变换技术及其条件版本。
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A label compression coding approach through maximizing dependence between features and labels for multi-label classification
Label compression coding strategy aims at multi-label classification problems with high-dimensional and/or sparse label vectors. Without deteriorating classification performance significantly, its efficiency depends on two key aspects: coding raw binary label vectors into real or binary codewords shortly, and decoding binary label vectors from predicted codewords speedily, which reduce the computational costs in training and testing procedures respectively. In this paper, we propose a novel label compression coding method for multi-label classification, which maximizes dependence between features and labels using Hilbert-Schmidt independence criterion and thus considers both feature and label information simultaneously. Via solving an eigenvalue problem, our method results in a small-scale coding matrix and a fast decoding operation. The experiments on ten various bench-mark data sets illustrate that our proposed technique is superior to three existing approaches, including compressive sensing based method, principal label space transformation technique and its conditional version, according to five ranking-based and instance-based performance evaluation measures.
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