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Potential improvement of classifier accuracy by using fuzzy measures

机译:使用模糊测度可能提高分类器的准确性

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Typical digit recognizers classify an unknown digit pattern by computing its distance from the cluster centers in a feature space. In this paper, we propose a methodology that has many salient aspects. First, the classification rule is dependent on the "difficulty" of the unknown sample. Samples "far" from the center, which tend to fall on the boundaries of classes are error prone and, hence, "difficult". An "overlapping zone" is defined in the feature space to identify such difficult samples. A table is precomputed to facilitate an efficient lookup of the class corresponding to all the points in the overlapping zone. The lookup function itself is defined by a modification of the KNN rule. A characteristic function defining the new boundaries is computed using the topology of the set of samples in the overlapping zones. Our two-pronged approach uses different classification schemes with the "difficult" and "easy" samples. The method described has improved the performance of the gradient structural concavity digit recognizer described by Favata et al. (1996).
机译:典型的数字识别器通过计算未知数字模式到特征空间中距聚类中心的距离来对其进行分类。在本文中,我们提出了一种具有许多显着方面的方法。首先,分类规则取决于未知样本的“难度”。远离中心的样本往往会落在类的边界上,因此容易出错,因此很困难。在特征空间中定义了一个“重叠区域”以识别这种困难的样本。预先计算了一个表格,以方便有效地查找与重叠区域中所有点相对应的类。查找功能本身是通过修改KNN规则定义的。使用重叠区域中的样本集的拓扑来计算定义新边界的特征函数。我们的两管齐下的方法对“困难”和“简单”样本使用不同的分类方案。所描述的方法改善了Favata等人所描述的梯度结构凹度数字识别器的性能。 (1996)。

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