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Kernel-based instance annotation in multi-instance multi-label learning

机译:多实例多标签学习中基于内核的实例标注

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Multi instance multi label learning is a framework in which objects are represented as bags of instances and labels are provided at the bag level. Instance annotation is the problem of assigning labels to the instances in a bag given only the bag label. Recently, OR-ed logistic regression (OR-LR) model and an EM based inference method have been proposed for instance annotation. Due to the linear nature of the logistic regression function, OR-LR performance on linearly inseparable data is limited. This paper addresses this problem by proposing a regularized kernel-based extension to the OR-LR framework. Experiments show that the kernel-based OR-LR algorithm achieves a significant improvement in classification accuracy over the linear OR-LR from 3% to 9% on audio bird song and image annotation datasets and two synthetic datasets.
机译:多实例多标签学习是一个框架,其中对象表示为实例包,并且在包级别提供标签。实例注释是仅在指定袋子标签的情况下为袋子中的实例分配标签的问题。最近,提出了OR-ed逻辑回归(OR-LR)模型和基于EM的推理方法进行实例注释。由于逻辑回归函数的线性性质,线性不可分数据的OR-LR性能受到限制。本文通过为OR-LR框架提出基于正则化内核的扩展来解决此问题。实验表明,基于音频的OR-LR算法在音频鸟歌和图像注释数据集以及两个合成数据集上,与线性OR-LR相比,分类准确度从3%提高到9%。

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