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Filling missing values by local reconstruction for incomplete label distribution learning

机译:通过局部重构填充缺失值,以实现不完整的标签分发学习

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摘要

Label distribution learning (LDL) deals with the problems when we care more about the relative importance of different labels in the description of an instance, where labels are associated with each instance to some degree. LDL has achieved great success in many applications, but most existing LDL methods cannot handle learning tasks with incomplete annotation information. In this paper, we propose a novel incomplete label distribution learning method based on local reconstruction (IncomLDL-LR). Both the feature matrix and label information are included in a unified Principal Component Analysis (PCA) model to describe the intrinsic structure of original data in the supervised low-dimensional space. Based on the reasonable assumption that the incomplete label of each instance can be linearly reconstructed from its neighbours' labels, IncomLDL-LR gradually recovers the missing label values by the averaged column score of corresponding neighbours in the PCA space. The proposed algorithms are compared with state-of-the-art algorithms using five LDL evaluation metrics on 15 public datasets. Extensive experiments validate the effectiveness of our proposal.
机译:当我们在实例的描述中更加关注不同标签的相对重要性时,标签分发学习(LDL)就解决了这些问题,其中标签在某种程度上与每个实例相关联。 LDL在许多应用程序中都取得了巨大的成功,但是大多数现有的LDL方法无法处理带有不完整注释信息的学习任务。在本文中,我们提出了一种新的基于局部重构的不完全标签分布学习方法(IncomLDL-LR)。特征矩阵和标签信息都包含在统一的主成分分析(PCA)模型中,以描述在监督的低维空间中原始数据的固有结构。基于合理的假设,即可以从其邻居的标签线性重构每个实例的不完整标签,IncomLDL-LR通过PCA空间中相应邻居的平均列分数逐渐恢复丢失的标签值。在15个公共数据集上使用5个LDL评估指标,将提出的算法与最新算法进行了比较。大量的实验验证了我们建议的有效性。

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