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Unsupervised kernel parameter estimation by constrained nonlinear optimization for clustering nonlinear biological data

机译:非线性生物数据聚类的约束非线性优化无监督核参数估计

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Data on a wide-range of bio-chemical phenomena is often highly non-linear. Due to this characteristic, data analysis tasks, such as clustering can become non-trivial. In recent years, the use of kernel-based algorithms has gained popularity for data analysis and clustering to ameliorate the above challenges. In this paper, we propose a novel approach for kernel parameter estimation using constrained nonlinear programming and conditionally positive definite kernels. The central idea is to maximize the trace of the kernel matrix, which maximizes the variance in the feature space. Therefore, the parameter estimation process does not involve any user intervention or prior understanding of the data and the parameters are learned only from data. The results from the proposed method significantly improve upon results obtained with other leading non-linear analysis techniques.
机译:关于广泛的生化现象的数据通常是高度非线性的。由于此特性,诸如群集之类的数据分析任务可能变得不那么重要。近年来,基于内核的算法的使用在数据分析和聚类中得到了普及,以缓解上述挑战。在本文中,我们提出了一种使用约束非线性规划和有条件正定核的核参数估计的新方法。中心思想是最大化核矩阵的迹线,从而最大化特征空间中的方差。因此,参数估计过程不涉及任何用户干预或对数据的事先了解,并且仅从数据中学习参数。所提出的方法的结果大大改善了其他领先的非线性分析技术所获得的结果。

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