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EXPERIMENTS WITH SOFT FUSION METHODS WHEN BAGGING k-NN CLASSIFIERS

机译:袋装K-NN分类器时软融合方法的实验

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We aim to investigate the performance of bagged kNN classifiers when fused using simple fusion methods. Experiments are performed under varying training set sizes including the very small case. Also, we manipulate the feature set size to see if it improves the bagging performance. We are interested in finding which methods of aggregation, in a bagging kNN scenario, would yield a superior performance. The results over different training set sizes show MProduct and Sum to be yield improved bagging performance. However, at very small sample size bagging is successful only when Vote is used. Reducing the feature set leads to improved bagging performance for some of the data sets.
机译:我们的目标是使用简单融合方法融合时袋装KNN分类器的性能。在包括非常小的案例的不同训练集尺寸下进行实验。此外,我们操作特征集大小以查看它是否提高了堆垛性能。我们有兴趣找到袋装朗斯方案中的哪种汇总方法,会产生卓越的性能。结果在不同训练套装尺寸上显示了Mproduct和Sum,得到了提高的装袋性能。但是,在非常小的样本量上,只有在使用投票时,袋装就成功。减少特征集导致一些数据集的提高堆垛性能。

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