论文标题

多标签文本分类的多关系消息传递

Multi-relation Message Passing for Multi-label Text Classification

论文作者

Ozmen, Muberra, Zhang, Hao, Wang, Pengyun, Coates, Mark

论文摘要

与多标签分类问题相关的众所周知的挑战是在标签之间建模依赖性。大多数试图建模标签依赖性的尝试都集中在同时出现上,忽略了可以通过检测很少一起发生的标签子集提取的有价值的信息。例如,考虑客户产品评论;产品可能不会同时被“推荐”(即审稿人很高兴并推荐产品)和“紧急”(即审查提出立即采取措施以弥补不令人满意的经验)的标签。除了考虑积极和消极的依赖性外,还应考虑关系的方向。对于多标签图像分类问题,“船体”和“海上”标签具有明显的依赖性,但是前者的存在意味着后者比相反的情况更强烈。这些示例激发了标签之间多种类型的双向关系的建模。在本文中,我们提出了一种新的方法,标题为“多关系消息传递”(MRMP),以解决多标签分类问题。基准多标签文本分类数据集上的实验表明,与最先进的方法相比,MRMP模块的性能相似或卓越的性能。该方法仅施加较小的其他计算和内存开销。

A well-known challenge associated with the multi-label classification problem is modelling dependencies between labels. Most attempts at modelling label dependencies focus on co-occurrences, ignoring the valuable information that can be extracted by detecting label subsets that rarely occur together. For example, consider customer product reviews; a product probably would not simultaneously be tagged by both "recommended" (i.e., reviewer is happy and recommends the product) and "urgent" (i.e., the review suggests immediate action to remedy an unsatisfactory experience). Aside from the consideration of positive and negative dependencies, the direction of a relationship should also be considered. For a multi-label image classification problem, the "ship" and "sea" labels have an obvious dependency, but the presence of the former implies the latter much more strongly than the other way around. These examples motivate the modelling of multiple types of bi-directional relationships between labels. In this paper, we propose a novel method, entitled Multi-relation Message Passing (MrMP), for the multi-label classification problem. Experiments on benchmark multi-label text classification datasets show that the MrMP module yields similar or superior performance compared to state-of-the-art methods. The approach imposes only minor additional computational and memory overheads.

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