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Designing Efficient Cascaded Classifiers: Tradeoff between Accuracy and Cost

机译:设计高效的级联分类器:精度与成本之间的权衡

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We propose a method to train a cascade of classifiers by simultaneously optimizing all its stages. The approach relies on the idea of optimizing soft cascades. In particular, instead of optimizing a deterministic hard cascade, we optimize a stochastic soft cascade where each stage accepts or rejects samples according to a probability distribution induced by the previous stage-specific classifier. The overall system accuracy is maximized while explicitly controlling the expected cost for feature acquisition. Experimental results on three clinically relevant problems show the effectiveness of our proposed approach in achieving the desired tradeoff between accuracy and feature acquisition cost.
机译:我们提出了一种通过同时优化其所有阶段来训练级联分类器的方法。该方法依赖于优化软级联的想法。特别是,不是优化确定性硬级联,而是优化随机软级联,在该级联中,每个阶段根据前一阶段特定分类器引起的概率分布来接受或拒绝样本。在明确控制特征获取的预期成本的同时,使整个系统的精度最大化。在三个与临床相关的问题上的实验结果表明,我们提出的方法在实现精度和特征获取成本之间的所需折衷方面是有效的。

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