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Semi-Supervised Clustering for Financial Risk Analysis

机译:用于财务风险分析的半监督聚类

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摘要

Many methods have been developed for financial risk analysis. In general, the conventional unsupervised approaches lack sufficient accuracy and semantics for the clustering, and the supervised approaches rely on large amount of training data for the classification. This paper explores the semi-supervised scheme for the financial data prediction, in which accurate predictions are expected with a small amount of labeled data. Due to lack of sufficient distinguishability in financial data, it is hard for the existing semi-supervised approaches to obtain satisfactory results. In order to improve the performance, we first convert the input labeled clues to the global prior probability, and propagate the'soft' prior probability to learn the posterior probability instead of directly propagating the'hard' labeled data. A label diffusion model is then constructed to adaptively fuse the information at feature space and label space, which makes the structures of data affinity and labeling more consistent. Experiments on two public real financial datasets validate the effectiveness of the proposed method.
机译:已经开发了许多方法以进行财务风险分析。通常,传统的无监督方法缺乏足够的准确性和聚类语义,监督方法依赖于分类的大量培训数据。本文探讨了金融数据预测的半监督方案,其中预期准确的预测,少量标记数据。由于财务数据缺乏足够的可区别性,因此存在现有的半监督方法以获得满意的结果。为了提高性能,首先将标记线索的输入转换为全局的现有概率,并传播了在后续概率的先前概率,而不是直接传播'标记的标记数据。然后构建标签扩散模型以自适应地使信息在特征空间和标签空间处的信息熔断,这使得数据亲和力的结构和标记更加一致。两个公共实际金融数据集的实验验证了该方法的有效性。

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