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首页> 外文期刊>Journal of intelligent & fuzzy systems: Applications in Engineering and Technology >Incorporating spatial context into fuzzy-possibilistic clustering using Bayesian inference
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Incorporating spatial context into fuzzy-possibilistic clustering using Bayesian inference

机译:使用贝叶斯推理将空间上下文纳入模糊可能性聚类

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Data clustering is the generic process of splitting a set of datums into a number of homogenous sets. Nevertheless, although a clustering process inputs datums as a set of separate mathematical objects, these entities are in fact correlated within a spatial context specific to the problem class in hand. For example, when the data acquisition process yields a 2D matrix of regularly sampled measurements, as it is the case with image sensors which utilize different modalities, adjacent datums are highly correlated. Hence, the clustering process must take into consideration the spatial context of the datums. A review of the literature, however, reveals that a significant majority of the well-established clustering techniques in the literature ignore spatial context. Other approaches, which do consider spatial context, however, either utilize pre- or post-processing operations or engineer into the cost function one or more regularization terms which reward spatial contiguity. We argue that employing cost functions and constraints based on heuristics and intuition is a hazardous approach from an epistemological perspective. This is in addition to the other shortcomings of those approaches. Instead, in this paper, we apply Bayesian inference on the clustering problem and construct a mathematical model for data clustering which is aware of the spatial context of the datums. This model utilizes a robust loss function and is independent of the notion of homogeneity relevant to any particular problem class. We then provide a solution strategy and assess experimental results generated by the proposed method in comparison with the literature and from the perspective of computational complexity and spatial contiguity.
机译:数据聚类是将一组基准分解为多个同质组的通用过程。尽管如此,尽管聚类过程将数据作为一组单独的数学对象输入,但是这些实体实际上在特定于手头问题类别的空间范围内相互关联。例如,当数据采集过程产生定期采样测量值的2D矩阵时(例如利用不同模态的图像传感器就是这种情况),相邻数据高度相关。因此,聚类过程必须考虑基准的空间环境。然而,对文献的回顾表明,文献中绝大多数公认的聚类技术都忽略了空间背景。但是,确实考虑空间上下文的其他方法,则利用预处理或后处理操作,或将一个或多个奖励空间连续性的正则化项设计到成本函数中。我们认为,从认识论的角度出发,采用基于启发式和直觉的成本函数和约束条件是一种危险的方法。这是这些方法的其他缺点的补充。取而代之的是,在本文中,我们对聚类问题应用贝叶斯推断,并为数据聚类构建了一个数学模型,该模型可以了解数据的空间背景。该模型利用了健壮的损失函数,并且与与任何特定问题类别相关的同质性概念无关。然后,我们提供了一种解决方案策略,并从计算复杂性和空间连续性的角度,与文献进行了比较,评估了该方法产生的实验结果。

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