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Minimally-supervised classification using multiple observation sets

机译:使用多个观察集的微量监督分类

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We discuss building complex classifiers from a single labeled example and vast number of unlabeled observation sets, each derived from observation of a single process or object. When data can be measured by observation, it is often plentiful and it is often possible to make more than one observation of the state of a process or object. We discuss how to exploit the variability across such sets of observations of the same object to estimate class labels for unlabeled examples given a minimal number of labeled examples. In contrast to similar semisupervised classification procedures that define the likelihood that two observations share a label as a function of the embedded distance between the two observations, this method uses the Naive Bayes estimate of how often the two observations did result from the same observed process. Exploiting this additional source of information in an iterative estimation procedure can generalize complex classification models from single labeled observations. Some examples involving classification of tracked objects in a low-dimensional feature space given thousands of unlabeled observation sets are used to illustrate the effectiveness of this method.
机译:我们讨论从单个标记的示例和大量未标记的观察集中构建复杂的分类器,每个观察集可以从观察单个进程或对象中派生。当数据可以通过观察测量数据时,通常很丰富,并且通常可以使得一个以上的过程或物体的状态观察。我们讨论如何利用相同对象的这种观察组的可变性来估计未标记示例的类标签,给出了最小的标记示例。与定义两个观察到两个观察之间的嵌入距离的函数定义了类似的半熟的分类程序,这种方法使用朴素的贝叶斯估计两种观察到相同观察过程所产生的频率。利用迭代估计过程中的这种附加信息来源可以从单个标记的观察中概括复杂的分类模型。涉及在低维特征空间中涉及履带对象的分类的一些示例,用于给出数千个未标记的观察集来说明该方法的有效性。

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