Learning by Propagability

Bingbing Ni, Shuicheng Yan, A. Kassim, L. Cheong
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引用次数: 6

Abstract

In this paper, we present a novel feature extraction framework, called learning by propagability. The whole learning process is driven by the philosophy that the data labels and optimal feature representation can constitute a harmonic system, namely, the data labels are invariant with respect to the propagation on the similarity-graph constructed by the optimal feature representation. Based on this philosophy, a unified formulation for learning by propagability is proposed for both supervised and semi-supervised configurations. Specifically, this formulation offers the semi-supervised learning two characteristics: 1) unlike conventional semi-supervised learning algorithms which mostly include at least two parameters, this formulation is parameter-free; and 2) the formulation unifies the label propagation and optimal representation pursuing, and thus the label propagation is enhanced by benefiting from the graph constructed with the derived optimal representation instead of the original representation. Extensive experiments on UCI toy data, handwritten digit recognition, and face recognition all validate the effectiveness of our proposed learning framework compared with the state-of-the-art methods for feature extraction and semi-supervised learning.
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可传播性学习
在本文中,我们提出了一种新的特征提取框架,称为可传播性学习。整个学习过程是由数据标签和最优特征表示可以构成一个谐波系统的理念驱动的,即数据标签对于由最优特征表示构建的相似图上的传播是不变的。基于这一理念,提出了一个统一的可传播性学习公式,适用于监督和半监督配置。具体来说,该公式提供了半监督学习的两个特点:1)与传统的半监督学习算法不同,传统的半监督学习算法通常包括至少两个参数,该公式是无参数的;2)该公式将标签传播与追求最优表示统一起来,利用衍生的最优表示而不是原始表示构造的图来增强标签传播。与最先进的特征提取和半监督学习方法相比,在UCI玩具数据、手写数字识别和人脸识别上的大量实验都验证了我们提出的学习框架的有效性。
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