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Hedging your bets: Optimizing accuracy-specificity trade-offs in large scale visual recognition

机译:对冲您的赌注:在大规模视觉识别中优化准确性-特异性的权衡

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As visual recognition scales up to ever larger numbers of categories, maintaining high accuracy is increasingly difficult. In this work, we study the problem of optimizing accuracy-specificity trade-offs in large scale recognition, motivated by the observation that object categories form a semantic hierarchy consisting of many levels of abstraction. A classifier can select the appropriate level, trading off specificity for accuracy in case of uncertainty. By optimizing this trade-off, we obtain classifiers that try to be as specific as possible while guaranteeing an arbitrarily high accuracy. We formulate the problem as maximizing information gain while ensuring a fixed, arbitrarily small error rate with a semantic hierarchy. We propose the Dual Accuracy Reward Trade-off Search (DARTS) algorithm and prove that, under practical conditions, it converges to an optimal solution. Experiments demonstrate the effectiveness of our algorithm on datasets ranging from 65 to over 10,000 categories.
机译:随着视觉识别扩展到越来越多的类别,保持高精度越来越困难。在这项工作中,我们研究了在大规模识别中优化精度-特异性折衷的问题,这是由于观察到对象类别形成了包含许多抽象级别的语义层次结构所致。分类器可以选择适当的级别,在不确定性的情况下要权衡特异性以提高准确性。通过优化此折衷,我们获得了分类器,这些分类器在保证任意高的准确性的同时,尝试尽可能具体化。我们将问题描述为最大化信息增益,同时通过语义层次结构确保固定的,任意小的错误率。我们提出了双精度奖励折衷搜索(DARTS)算法,并证明了在实际条件下,该算法收敛于最优解。实验证明了我们的算法在从65个类别到10,000多个类别的数据集上的有效性。

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