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Multiple-Instance Learning with Evolutionary Instance Selection

机译:具有进化实例选择的多实例学习

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Multiple-Instance Learning (MIL) represents a new class of supervised learning tasks, where training examples are bags of instances with labels only available for the bags. To solve the instance label ambiguity, instance selection based MIL models were proposed to convert bag learning to traditional vector learning. However, existing MIL instance selection approaches are all based on the instances inside the bags. In this case, at the original instance space, those potential informative instances, which do not occur in the bags are discarded. In this paper, we propose a novel learning method, MILEIS (Multiple-Instance Learning with Evolutionary Instance Selection), to adaptively determine the informative instances for feature mapping. The unique evolutionary search mechanism, including instance initialization, mutation, and crossover, ensures that MILEIS can adjust itself to the data without explicit specification of functional or distributional form for the underlying model. By doing so, MILEIS can also take full advantage of those creative informative instances to help feature mapping in an accurate way. Experiments and comparisons on real-world applications demonstrate the effectiveness of the proposed method.
机译:多实例学习(MIL)代表了一类新的有监督的学习任务,其中的培训示例是带有实例标签的实例包,其中的标签仅适用于该包。为了解决实例标签的歧义,提出了基于实例选择的MIL模型,将袋学习转换为传统的矢量学习。但是,现有的MIL实例选择方法都基于包中的实例。在这种情况下,在原始实例空间,那些没有出现在袋子中的潜在信息实例将被丢弃。在本文中,我们提出了一种新颖的学习方法MILEIS(带有进化实例选择的多实例学习),以自适应地确定用于特征映射的信息实例。独特的进化搜索机制,包括实例初始化,变异和交叉,确保MILEIS可以针对数据进行调整,而无需为底层模型明确指定功能或分布形式。这样,MILEIS还可以充分利用这些创造性的信息实例,以准确的方式帮助进行特征映射。在实际应用中的实验和比较证明了该方法的有效性。

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