Systematising clustering techniques through cross-disciplinary research, leading to the development of new methods

Impact Pub Date : 2024-01-22 DOI:10.21820/23987073.2024.1.57
Kohei Inoue
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Abstract

Clustering algorithms can help scientists gain valuable insights from data. Thereâ–™s a variety of clustering methods in use, which means there are gaps between the methods used in different fields. Associate Professor Kohei Inoue, Department of Media Design, Kyushu University, Japan, wants to bridge these gaps by investigating the relationships among various clustering methods developed in different fields, in order to systematise the world of clustering. He is bringing two decades of research activities in pattern recognition and image processing to this work. In order to clarify the relationships between different clustering methods, Inoue and the team are conducting an interdisciplinary survey. First, the researchers are working to clarify the relationship between the technologies used across different fields. So far, they have successfully clarified the relationship between the rolling guidance filter and the local mode filter. In a previous study, Inoue and his collaborators proposed a robust K-means clustering al-algorithm. The researchers demonstrated the effectiveness of their technique utilising a BBC dataset originating from BBC News. In their work, the team is collaborating with a laboratory at a university in Japan that is studying non-photorealistic rendering. They have so far published several co-authored papers, as well as having obtained results from their joint research. Ultimately, by systemising clustering technology, Inoue believes that the characteristics of each method, as well as the interrelationships between each method, can be explained and clustering technology enhanced, as well as new clustering techniques developed.
通过跨学科研究使聚类技术系统化,从而开发出新的方法
聚类算法可以帮助科学家从数据中获得有价值的见解。目前使用的聚类方法多种多样,这意味着不同领域使用的方法之间存在差距。日本九州大学媒体设计系副教授 Kohei Inoue 希望通过研究不同领域开发的各种聚类方法之间的关系来弥补这些差距,从而使聚类世界系统化。他将自己二十年来在模式识别和图像处理领域的研究成果带到了这项工作中。为了理清不同聚类方法之间的关系,Inoue 和团队正在进行一项跨学科调查。首先,研究人员正在努力厘清不同领域所用技术之间的关系。到目前为止,他们已经成功阐明了滚动引导滤波器和局部模式滤波器之间的关系。在之前的一项研究中,Inoue 和他的合作者提出了一种稳健的 K-means 聚类算法。研究人员利用源自 BBC News 的 BBC 数据集展示了其技术的有效性。在工作中,该团队与日本一所大学的实验室合作,研究非逼真渲染。迄今为止,他们已经发表了多篇合著论文,并在联合研究中取得了成果。井上认为,通过将聚类技术系统化,最终可以解释每种方法的特点以及每种方法之间的相互关系,从而提高聚类技术,并开发出新的聚类技术。
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