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SEMI-SUPERVISED RANDOM DECISION FORESTS FOR MACHINE LEARNING

机译:用于机器学习的半监督随机决策森林

摘要

Semi-supervised random decision forests for machine learning are described, for example, for interactive image segmentation, medical image analysis, and many other applications. In examples, a random decision forest comprising a plurality of hierarchical data structures is trained using both unlabeled and labeled observations. In examples, a training objective is used which seeks to cluster the observations based on the labels and similarity of the observations. In an example, a transducer assigns labels to the unlabeled observations on the basis of the clusters and certainty information. In an example, an inducer forms a generic clustering function by counting examples of class labels at leaves of the trees in the forest. In an example, an active learning module identifies regions in a feature space from which the observations are drawn using the clusters and certainty information; new observations from the identified regions are used to train the random decision forest.
机译:描述了用于机器学习的半监督随机决策森林,例如,用于交互式图像分割,医学图像分析和许多其他应用。在示例中,使用未标记和标记的观察值来训练包括多个分层数据结构的随机决策森林。在示例中,使用了训练目标,该训练目标试图基于标记和观测值的相似性对观测值进行聚类。在示例中,换能器基于聚类和确定性信息将标签分配给未标记的观察。在一个示例中,诱导器通过对森林中树木的叶子处的类标签的示例进行计数来形成通用的聚类函数。在一个示例中,主动学习模块使用聚类和确定性信息识别特征空间中的区域,从中可以得出观察结果;来自已识别区域的新观测值用于训练随机决策森林。

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