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Biclustering and Subspace Learning with Regularization for Financial Risk Analysis

机译:带正则化的分类和子空间学习,用于财务风险分析

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Financial models draw on the need to turn critical (economical) information into better decision making models. When it comes to performance enhancement many advanced techniques have been used in bankruptcy detection with good results, yet rarely biclustering has been considered. In this paper, we propose a two-step approach based first on biclustering and second on subspace learning with constant regularization. The rationale behind biclustering is to discover patterns upholding instances and features that are highly correlated. Moreover, we placed great emphasis on building a weight affinity graph matrix and performing smooth subspace learning with regularization. In particular, the geometric topology of biclusters is preserved during learning. Experimental results demonstrate the success of the approach yielding excellent results in a real French data set of healthy and distressed companies.
机译:财务模型需要将关键(经济)信息转变为更好的决策模型。当涉及到性能增强时,许多先进的技术已用于破产检测中,并取得了良好的效果,但很少考虑采用双集群技术。在本文中,我们提出了一种两步方法,首先基于双聚类,然后基于具有恒定正则化的子空间学习。双重聚类背后的基本原理是发现支持高度相关的实例和特征的模式。此外,我们非常重视构建权重亲和图矩阵,并通过正则化执行平滑的子空间学习。尤其是,在学习过程中,可以保留双圆锥的几何拓扑。实验结果表明,该方法的成功在健康和陷入困境的公司的真实法国数据集中产生了出色的结果。

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