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Using an Interpolation Method to Make Classification Decision

机译:使用插值法做出分类决策

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Pattern recognition techniques have been widely used. In this paper, we propose an interpolation method for making classification decision (AIMMCD). This method makes an interpolation of the class labels of the patterns of the training set for classifying a new pattern. Compared with conventional pattern recognition techniques, AIMMCD has several advantages. First, when we use AIMMCD to produce the class label for the test pattern, no any training procedure. This means that AIMMCD to be computationally efficient. Second, when AIMMCD predicts the class label for real-world data, it takes into account the information of the class labels of all the patterns from the training set in a reasonable way. Indeed, the algorithm assumes that the training sample close to a pattern will have much influence on the class prediction of this pattern and the training sample far from this pattern will have little influence. Third, though AIMMCD has a very simple form, it is directly applicable to not only two-class problems but also multi-class problems.
机译:模式识别技术已被广泛使用。在本文中,我们提出了一种用于做出分类决策的插值方法(AIMMCD)。该方法对训练集的模式的类别标签进行插值,以对新模式进行分类。与传统的模式识别技术相比,AIMMCD具有许多优势。首先,当我们使用AIMMCD生成测试模式的类标签时,没有任何训练过程。这意味着AIMMCD具有更高的计算效率。其次,当AIMMCD预测真实数据的类别标签时,它将以合理的方式考虑训练集中所有模式的类别标签信息。实际上,该算法假设接近某个模式的训练样本将对该模式的类别预测产生很大的影响,而远离该模式的训练样本将具有很小的影响。第三,尽管AIMMCD具有非常简单的形式,但它不仅直接适用于两类问题,而且也适用于多类问题。

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