面向复杂网络的高级多标签分类

Vinícius H. Resende, M. Carneiro
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引用次数: 3

摘要

多标签学习旨在解决数据项可以同时分配多个类标签的问题,如文本分类、图像标注、医学诊断等。然而,由于多标签技术大多是由单标签技术衍生而来,现有的多标签分类技术仅基于数据的物理特征(如距离、相似度或分布)进行多标签分类,而忽略了数据的语义含义,如地层模式。受近期使用复杂网络进行单标签学习的进展的启发,本探索性工作旨在研究一种能够将现有多标签分类器与基于复杂网络度量的高级分类器相结合的多标签解决方案,旨在提出一种除了物理属性之外还分析数据拓扑结构的多标签分类新概念。考虑人工数据集和现实世界数据集的实验结果分别强调了我们的技术与传统技术相比的显著特征及其提高传统技术预测性能的潜力,特别是在具有更高基数和标签密度的数据集中,这些数据集通常表示多标签学习更困难的场景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards a High-Level Multi-label Classification from Complex Networks
Multi-label learning aims to solve problems in which data items can have multiple class labels assigned simultaneously, e.g., text categorization, image annotation, medical diagnosis, etc. However, as most of multi-label techniques are derived from the single-label ones, existing techniques perform the multi-label classification only based on the physical features of the data (e.g., distance, similarity or distribution), ignoring the semantic meaning of the data, such as the formation pattern. Inspired by recent advances in the use of complex networks for single-label learning, this exploratory work aims to investigate a multi-label solution able to combine existing multi-label classifiers with a high-level classifier based on complex networks measures, aiming to present a new concept of multi-label classification that, besides the physical attributes, also analyzes the topological structure of the data. Experimental results considering both artificial and real-world data sets emphasize respectively the salient features of our technique in comparison to the traditional ones and its potential to improve the predictive performance of those techniques, especially in data sets characterized by higher cardinality and density of labels, which often denote more difficult scenarios to multi-label learning.
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