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Collaborative clustering with the use of Fuzzy C-Means and its quantification

机译:模糊C-均值的协同聚类及其量化

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In this study, we introduce the concept of collaborative fuzzy clustering-a conceptual and algorithmic machinery for the collective discovery of a common structure (relationships) within a finite family of data residing at individual data sites. There are two fundamental features of the proposed optimization environment. First, given existing constraints which prevent individual sites from exchanging detailed numeric data, any communication has to be realized at the level of information granules. The specificity of these granules impacts the effectiveness of ensuing collaborative activities. Second, the fuzzy clustering realized at the level of the individual data site has to constructively consider the findings communicated by other sites and act upon them while running the optimization confined to the particular data site. Adhering to these two general guidelines, we develop a comprehensive optimization scheme and discuss its two-phase character in which the communication phase of the granular findings intertwines with the local optimization being realized at the level of the individual site and exploits the evidence collected from other sites. The proposed augmented form of the objective function is essential in the navigation of the overall optimization that has to be completed on a basis of the data and available information granules. The intensity of collaboration is optimized by choosing a suitable tradeoff between the two components of the objective function. The objective function based clustering used here concerns the well-known Fuzzy C-Means (FCM) algorithm. Experimental studies presented include some synthetic data, selected data sets coming from the machine learning repository and the weather data coming from Environment Canada.
机译:在这项研究中,我们介绍了协作模糊聚类的概念-一种概念和算法机制,用于集体发现位于单个数据站点的有限数据族内的公共结构(关系)。所建议的优化环境有两个基本特征。首先,由于存在阻止单个站点交换详细数字数据的现有限制,因此必须在信息粒度级别上实现任何通信。这些颗粒的特异性影响随后开展合作活动的有效性。其次,在单个数据站点级别实现的模糊聚类必须建设性地考虑其他站点传达的发现,并在运行限于特定数据站点的优化时对它们采取行动。遵循这两个通用准则,我们制定了一个全面的优化方案,并讨论了它的两阶段特征,即粒状发现的交流阶段与在单个站点级别实现的局部优化交织在一起,并利用从其他站点收集的证据网站。目标函数的拟议扩展形式对于必须基于数据和可用信息粒度完成的整体优化导航至关重要。通过在目标函数的两个组件之间选择适当的折衷,可以优化协作的强度。这里使用的基于目标函数的聚类涉及众所周知的模糊C均值(FCM)算法。提出的实验研究包括一些综合数据,来自机器学习存储库的部分数据集以及来自加拿大环境局的天气数据。

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