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On classification with bags, groups and sets

机译:关于袋,组和套的分类

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Many classification problems can be difficult to formulate directly in terms of the traditional supervised setting, where both training and test samples are individual feature vectors. There are cases in which samples are better described by sets of feature vectors, that labels are only available for sets rather than individual samples, or, if individual labels are available, that these are not independent. To better deal with such problems, several extensions of supervised learning have been proposed, where either training and/or test objects are sets of feature vectors. However, having been proposed rather independently of each other, their mutual similarities and differences have hitherto not been mapped out. In this work, we provide an overview of such learning scenarios, propose a taxonomy to illustrate the relationships between them, and discuss directions for further research in these areas. (C) 2015 Elsevier B.V. All rights reserved.
机译:在传统的监督环境下,训练和测试样本都是单独的特征向量,可能很难直接表达许多分类问题。在某些情况下,可以通过特征向量集更好地描述样本,标签仅适用于集合,而不适用于单个样本,或者,如果可以使用单个标记,则它们不是独立的。为了更好地处理此类问题,已经提出了监督学习的几种扩展,其中训练和/或测试对象是特征向量集。然而,已经提出了彼此相当独立的建议,到目前为止,它们的共同点和不同点尚未被绘制出来。在这项工作中,我们提供了此类学习方案的概述,提出了分类法以说明它们之间的关系,并讨论了在这些领域中进一步研究的方向。 (C)2015 Elsevier B.V.保留所有权利。

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