An Iterative Instance Selection Based Framework for Multiple-Instance Learning

Liming Yuan, Xianbin Wen, Lu Zhao, Haixia Xu
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引用次数: 2

Abstract

The instance selection based model is an effective multiple-instance learning (MIL) framework, which solves the MIL problems by embedding examples (bags of instances) into a new feature space formed by some concepts (represented by some selected instances). Most previous studies use single-point concepts for the instance selection, where every possible concept is represented by only a single instance. In this paper, we apply multiple-point concepts for choosing instances, in which each possible concept is jointly represented by a group of similar instances. Furthermore, we establish an iterative instance selection based MIL framework based on multiple-point concepts, which is guaranteed to automatically converge to the needed number of concepts for a given problem. The experimental results demonstrate that the proposed framework can better handle not only common MIL problems but also hybrid ones compared to state-of-the-art MIL algorithms.
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基于迭代实例选择的多实例学习框架
基于实例选择的模型是一种有效的多实例学习(MIL)框架,它通过将实例(实例袋)嵌入到由一些概念(由一些选定的实例表示)形成的新特征空间中来解决MIL问题。以往的研究大多使用单点概念进行实例选择,其中每个可能的概念仅由单个实例表示。在本文中,我们采用多点概念选择实例,其中每个可能的概念由一组相似的实例联合表示。此外,我们建立了基于多点概念的迭代实例选择的MIL框架,保证了该框架能够自动收敛到给定问题所需的概念数量。实验结果表明,与现有的MIL算法相比,该框架不仅可以更好地处理常见的MIL问题,而且可以更好地处理混合MIL问题。
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