Joint Learning of Discriminative Prototypes and Large Margin Nearest Neighbor Classifiers

Martin Köstinger, Paul Wohlhart, P. Roth, H. Bischof
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引用次数: 12

Abstract

In this paper, we raise important issues concerning the evaluation complexity of existing Mahalanobis metric learning methods. The complexity scales linearly with the size of the dataset. This is especially cumbersome on large scale or for real-time applications with limited time budget. To alleviate this problem we propose to represent the dataset by a fixed number of discriminative prototypes. In particular, we introduce a new method that jointly chooses the positioning of prototypes and also optimizes the Mahalanobis distance metric with respect to these. We show that choosing the positioning of the prototypes and learning the metric in parallel leads to a drastically reduced evaluation effort while maintaining the discriminative essence of the original dataset. Moreover, for most problems our method performing k-nearest prototype (k-NP) classification on the condensed dataset leads to even better generalization compared to k-NN classification using all data. Results on a variety of challenging benchmarks demonstrate the power of our method. These include standard machine learning datasets as well as the challenging Public Figures Face Database. On the competitive machine learning benchmarks we are comparable to the state-of-the-art while being more efficient. On the face benchmark we clearly outperform the state-of-the-art in Mahalanobis metric learning with drastically reduced evaluation effort.
判别原型与大边界最近邻分类器的联合学习
本文提出了现有马哈拉诺比度量学习方法评估复杂性的重要问题。复杂度与数据集的大小成线性关系。这在大规模或时间预算有限的实时应用程序中尤其麻烦。为了缓解这个问题,我们提出用固定数量的判别原型来表示数据集。特别地,我们引入了一种新的方法来共同选择原型的定位,并在此基础上优化马氏距离度量。我们表明,选择原型的位置和并行学习度量可以大大减少评估工作量,同时保持原始数据集的判别本质。此外,对于大多数问题,我们的方法在压缩数据集上执行k-最近原型(k-NP)分类,与使用所有数据的k-NN分类相比,具有更好的泛化效果。在各种具有挑战性的基准测试上的结果证明了我们方法的强大功能。这些包括标准的机器学习数据集以及具有挑战性的公众人物面部数据库。在竞争激烈的机器学习基准上,我们可以与最先进的机器学习相媲美,同时效率更高。在面部基准上,我们明显优于马氏度量学习的最先进技术,大大减少了评估工作量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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