Exabytes of data are generated daily by humans, leading to the growing need for new efforts in dealing with the grand challenges for multi-label learning brought by big data. For example, extreme multi-label classification is an active and rapidly growing research area that deals with classification tasks with an extremely large number of classes or labels; utilizing massive data with limited supervision to build a multi-label classification model becomes valuable for practical applications, etc. Besides these, there are tremendous efforts on how to harvest the strong learning capability of deep learning to better capture the label dependencies in multi-label learning, which is the key for deep learning to address real-world classification tasks. However, it is noted that there has been a lack of systemic studies that focus explicitly on analyzing the emerging trends and new challenges of multi-label learning in the era of big data. It is imperative to call for a comprehensive survey to fulfill this mission and delineate future research directions and new applications.
翻译:人类每天生成大量数据,导致越来越需要作出新的努力,应对海量数据带来的多标签学习的重大挑战,例如,极端多标签分类是一个积极和迅速增长的研究领域,涉及数量极多的类别或标签的分类任务;利用有限的监督的大规模数据来建立多标签分类模式,对于实际应用等都具有宝贵价值。此外,在如何收获深层次学习的强大学习能力,以更好地捕捉多标签学习中的标签依赖性,这是深层次学习解决现实世界分类任务的关键,然而,人们注意到,缺乏系统研究,明确侧重于分析大数据时代多标签学习的新趋势和新挑战。必须呼吁进行全面调查,以完成这项任务,并界定未来的研究方向和新应用。