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Fast Multi-Instance Multi-Label Learning

机译:快速多实例多标签学习

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摘要

In many real-world tasks, particularly those involving data objects with complicated semantics such as images and texts, one object can be represented by multiple instances and simultaneously be associated with multiple labels. Such tasks can be formulated as multi-instance multi-label learning (MIML) problems, and have been extensively studied during the past few years. Existing MIML approaches have been found useful in many applications; however, most of them can only handle moderate-sized data. To efficiently handle large data sets, in this paper we propose the MIMLfast approach, which first constructs a low-dimensional subspace shared by all labels, and then trains label specific linear models to optimize approximated ranking loss via stochastic gradient descent. Although the MIML problem is complicated, MIMLfast is able to achieve excellent performance by exploiting label relations with shared space and discovering sub-concepts for complicated labels. Experiments show that the performance of MIMLfast is highly competitive to state-of-the-art techniques, whereas its time cost is much less. Moreover, our approach is able to identify the most representative instance for each label, and thus providing a chance to understand the relation between input patterns and output label semantics.
机译:在许多实际任务中,尤其是那些涉及具有复杂语义的数据对象(例如图像和文本)的任务,一个对象可以由多个实例表示,并同时与多个标签关联。这些任务可以表述为多实例多标签学习(MIML)问题,并且在过去几年中已得到广泛研究。已经发现,现有的MIML方法在许多应用中都很有用。但是,它们大多数只能处理中等大小的数据。为了有效处理大型数据集,本文提出了一种MIMLfast方法,该方法首先构造一个所有标签都共享的低维子空间,然后训练标签特定的线性模型以通过随机梯度下降来优化近似排名损失。尽管MIML问题很复杂,但是MIMLfast可以通过利用共享空间中的标签关系并发现复杂标签的子概念来获得出色的性能。实验表明,MIMLfast的性能与最新技术高度竞争,而其时间成本却要低得多。而且,我们的方法能够为每个标签确定最具代表性的实例,从而为理解输入模式与输出标签语义之间的关系提供了机会。

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