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Digit recognition with confidence

机译:数字承认充满信心

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Assigning a confidence measure is a challenging stochastic inference problem. Some algorithms only yield the predicted value without evaluating the measure of confidence over the decision. Support vector machines is one algorithm that showed state of the art decision accuracy but lacks a measure of confidence over the decisions. In this paper we propose a confidence measure based on the VC (Vapnik and Chervonenkis) dimension of a learning algorithm. The resulting confidence measure is then tested on the well known US postal handwritten digit recognition. The results show high and improved correlation between the decision and the confidence measure.
机译:分配置信度量是一个具有挑战性的随机推理问题。某些算法仅产生预测值,而不会对对该决定的信心的衡量标准进行评估。支持向量机是一种算法,显示了最先进的决策准确性,但缺乏对这些决定的信心的衡量标准。在本文中,我们提出了一种基于VC(VAPNIK和Chervonenkis)的学习算法的置信度量。然后在众所周知的美国邮政编码识别上测试了由此产生的置信度量。结果表明了决策与置信度量之间的高度相关性和相关性。

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