Existing clustering methods are based on a single granularity of information, such as the distance and density of each data. This most fine-grained based approach is usually inefficient and susceptible to noise. Inspired by adaptive process of granular-ball division and differentiation, we present a novel clustering approach that retains the speed and efficiency of K-means clustering while out-performing time-tested density clustering approaches widely used in industry today. Our simple, robust, adaptive granular-ball clustering method can efficiently recognize clusters with unknown and complex shapes without the use of extra parameters. Moreover, the proposed method provides an efficient, adaptive way to depict the world, and will promote the research and development of adaptive and efficient AI technologies, especially density computing models, and improve the efficiency of many existing clustering methods.
翻译:现有集群方法基于单一的信息颗粒,如每项数据的距离和密度等。这种最精细的基于数据的方法通常效率低,容易受到噪音的影响。受颗粒球分化和差异化适应过程的启发,我们提出了一种新的集群方法,保持K手段集群的速度和效率,而当今工业广泛使用的经超效时间测试的密度集群方法则比以往高。我们简单、稳健、适应性强的颗粒球集群方法可以有效识别具有未知和复杂形状的集群,而不必使用额外参数。此外,拟议方法提供了一种高效、适应性的方法来描述世界,并将促进适应性和高效的AI技术的研究和开发,特别是密度计算模型,并提高许多现有集群方法的效率。</s>