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Design method of triplet-decision tree classifier with division wait mechanism

机译:具有划分等待机制的三态决策树分类器的设计方法

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Abstract: A multistep method for segmentation of feature space using triplet decision tree is developed, and another approach to cope with uncertain samples by extended Bayesian discriminant function is introduced. The latter has the lower limit for posterior probability of classification. The triplet-decision tree includes a division-wait mechanism that postpone the decision about uncertain samples which are in marginal area and not able to be classified to any categories definitely. The third node is generated for such samples. Improvement of the triplet tree method is made by introducing linearly-combined variables related to principal components. Flexible and effective segmentation is accomplished by this refinement. Results of experiments by simulation data and real remotely-sensed data are compared by the two methods in the viewpoint of cutting of feature space and classification accuracy. When the normality or representability of sample is hold, classifier with extended quadratic discrimination function has the best performance. The advantage of triplet tree appears when categories are diversified in nature or training samples have poor representabilities. !5
机译:摘要:提出了一种使用三重态决策树的多步特征空间分割方法,并提出了另一种通过扩展贝叶斯判别函数处理不确定样本的方法。后者具有后验分类概率的下限。三元组决策树包含一个划分等待机制,该机制可以推迟对处于边缘区域且无法明确分类为任何类别的不确定样本的决策。为这些样本生成第三节点。通过引入与主成分有关的线性组合变量对三元树方法进行了改进。通过这种改进实现了灵活而有效的分割。从削减特征空间和分类精度的角度出发,通过两种方法对模拟数据和真实遥感数据的实验结果进行了比较。当样本的正态性或可表示性保持不变时,具有扩展二次判别功能的分类器将具有最佳性能。当类别在自然界中多样化或训练样本的可表示性较差时,三重树的优势就会显现。 !5

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