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Default Prediction and Bankruptcy Hazard Analysis into Recurent neuro-genetic hybrid networks to AdaBoost Ml Regression and Logistic Regression models in Finance

机译:递归神经遗传混合网络中AdaBoost Ml回归和Logistic回归模型的默认预测和破产风险分析

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Fund managers, and portfolio administrators must secure the net present value of their invested capital, providing an increasing return to investors. Regression models from the domain of Econometrics are used successfully in financial analysis, whilst Artificial Neural Networks and Genetic Algorithms in the field of Artificial Intelligence may offer significant results. A thorough comparison of additive model AdaBoost Ml regression, to various Logistic regression models such as: Logistic, Logit Boost, Simple Logistic, and hybrids of Recurrent neural networks optimized by Genetic Algorithms gives valuable information on the efficiency of these methods in Corporate Financial Analysis. Simple Logistic regression and Logistic Model Trees performed optimally.
机译:基金经理和投资组合管理人必须确保其投资资本的净现值,从而为投资者提供更高的回报。来自计量经济学领域的回归模型已成功用于财务分析,而人工智能领域的人工神经网络和遗传算法可能会提供重要的结果。将加性模型AdaBoost M1回归与各种Logistic回归模型(如Logistic,Logit Boost,Simple Logistic和通过遗传算法优化的递归神经网络的混合模型)进行全面比较,可提供有关这些方法在公司财务分析中效率的宝贵信息。简单的Logistic回归和Logistic模型树表现最佳。

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