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A maximal figure-of-merit learning approach to maximizing mean average precision with deep neural network based classifiers

机译:一种最大值的优异学习方法,可以利用深神经网络基于深度神经网络的分类方式来最大化平均平均精度

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We propose a maximal figure-of-merit (MFoM) learning framework to directly maximize mean average precision (MAP) which is a key performance metric in many multi-class classification tasks. Conventional classifiers based on support vector machines cannot be easily adopted to optimize the MAP metric. On the other hand, classifiers based on deep neural networks (DNNs) have recently been shown to deliver a great discrimination capability in automatic speech recognition and image classification as well. However, DNNs are usually optimized with the minimum cross entropy criterion. In contrast to most conventional classification methods, our proposed approach can be formulated to embed DNNs and MAP into the objective function to be optimized during training. The combination of the proposed maximum MAP (MMAP) technique and DNNs introduces nonlinearity to the linear discriminant function (LDF) in order to increase the flexibility and discriminant power of the original MFoM-trained LDF based classifiers. Tested on both automatic image annotation and audio event classification, the experimental results show consistent improvements of MAP on both datasets when compared with other state-of-the-art classifiers without using MMAP.
机译:我们提出了一个最大值的绩效(MFOM)学习框架,直接最大化平均精度(MAP),这是许多多级分类任务中的关键性能度量。基于支持向量机的传统分类器不能容易地采用以优化地图度量。另一方面,最近已被证明基于深神经网络(DNN)的分类器在自动语音识别和图像分类中提供了很大的辨别能力。但是,DNN通常用最小跨熵标准进行优化。与大多数传统分类方法相比,我们所提出的方法可以配制以将DNN和映射到训练期间优化的目标函数。所提出的最大图(MMAP)技术和DNN的组合将非线性引入线性判别函数(LDF),以便提高原始MFOM训练基于LDF的分类器的灵活性和判别力。在自动图像注释和音频事件分类上测试,实验结果显示了与其他最先进的分类器相比,在两个数据集上的映射的一致性改进,而不使用MMAP。

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