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Latent class models for financial data analysis: some statistical developments

机译:潜在类别模型的财务数据分析:一些统计发展

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I exploit the potential of latent class models for proposing an innovative framework for financial data analysis. By stressing the latent nature of the most important financial variables, expected return and risk, I am able to introduce a new methodological dimension in the analysis of financial phenomena. In my proposal, (i) I provide innovative measures of expected return and risk, (ii) I suggest a financial data classification consistent with the latent risk-return profile, and (iii) I propose a set of statistical methods for detecting and testing the number of groups of the new data classification. The results lead to an improvement in both risk measurement theory and practice and, if compared to traditional methods, allow for new insights into the analysis of financial data. Finally, I illustrate the potentiality of my proposal by investigating the European stock market and detailing the steps for the appropriate choice of a financial portfolio.
机译:我利用潜在类模型为财务数据分析提出创新框架的潜力。通过强调最重要的财务变量,预期收益和风险的潜在性质,我能够在分析财务现象时引入新的方法论维度。在我的建议中,(i)我提供了预期收益和风险的创新度量,(ii)我建议了一种与潜在风险-收益特征一致的财务数据分类,并且(iii)我提出了一套用于检测和测试的统计方法新数据分类的组数。结果导致风险度量理论和实践的改进,并且与传统方法相比,可以对财务数据的分析提供新的见解。最后,我将通过调查欧洲股票市场并详细说明适当选择金融投资组合的步骤来说明我的提议的潜力。

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