多媒体分类与自动标注的层次集成学习

Serhiy Koisnov, S. Marchand-Maillet
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引用次数: 7

摘要

提出了一种应用于多媒体自动标注的分层集成学习方法。与标准的多类别分类设置(假设独立、不重叠和详尽的类别集)相反,所提出的方法明确地对目标类之间的层次关系进行建模,并估计它们与查询的相关性,作为对给定类别描述的拟合优度与其固有不确定性之间的权衡。经验评估的有希望的结果证实了所提出方法的可行性,并与几种集成学习技术以及不同类型的基线分类器进行了比较
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hierarchical ensemble learning for multimedia categorization and autoannotation
This paper presents a hierarchical ensemble learning method applied in the context of multimedia autoannotation. In contrast to the standard multiple-category classification setting that assumes independent, non-overlapping and exhaustive set of categories, the proposed approach models explicitly the hierarchical relationships among target classes and estimates their relevance to a query as a trade-off between the goodness of fit to a given category description and its inherent uncertainty. The promising results of the empirical evaluation confirm the viability of the proposed approach, validated in comparison to several techniques of ensemble learning, as well as with different type of baseline classifiers
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来源期刊
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期刊介绍: Journal of Signal Processing is an academic journal supervised by China Association for Science and Technology and sponsored by China Institute of Electronics. The journal is an academic journal that reflects the latest research results and technological progress in the field of signal processing and related disciplines. It covers academic papers and review articles on new theories, new ideas, and new technologies in the field of signal processing. The journal aims to provide a platform for academic exchanges for scientific researchers and engineering and technical personnel engaged in basic research and applied research in signal processing, thereby promoting the development of information science and technology. At present, the journal has been included in the three major domestic core journal databases "China Science Citation Database (CSCD), China Science and Technology Core Journals (CSTPCD), Chinese Core Journals Overview" and Coaj. It is also included in many foreign databases such as Scopus, CSA, EBSCO host, INSPEC, JST, etc.
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