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Improving cascading classifiers with particle swarm optimization

机译:通过粒子群优化改进级联分类器

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This paper addresses the issue of class related reject thresholds for cascading classifier systems. It has been demonstrated in the literature that class related reject thresholds provide an error-reject tradeoff better than a single global threshold. In this work we argue that the error-reject tradeoff yielded by class-related reject thresholds can be further improved if a proper algorithm is used to find the thresholds. In light of this, we propose using a recently developed optimization algorithm called particle swarm optimization. It has been proved to be very effective in solving real valued global optimization problems. In order to show the benefits of such an algorithm, we have applied it to optimize the thresholds of a cascading classifier system devoted to recognize handwritten digits.
机译:本文解决了级联分类器系统中与类相关的拒绝阈值的问题。在文献中已经证明,与类相关的拒绝阈值提供了比单个全局阈值更好的错误拒绝权衡。在这项工作中,我们认为,如果使用适当的算法来找到阈值,则可以进一步改善与类相关的拒绝阈值所产生的错误拒绝权衡。有鉴于此,我们建议使用最近开发的优化算法,称为粒子群优化。它已被证明在解决实际价值全局优化问题上非常有效。为了展示这种算法的优势,我们将其用于优化用于识别手写数字的级联分类器系统的阈值。

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