破产预测的神经结构框架

IF 1.5 4区 经济学 Q3 BUSINESS, FINANCE Quantitative Finance Pub Date : 2023-07-20 DOI:10.1080/14697688.2023.2230241
Christakis Charalambous, Spiros H. Martzoukos, Zenon Taoushianis
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引用次数: 2

摘要

我们开发了一个框架来同时计算破产预测结构参数模型的不可观测参数。更具体地说,我们计算不可观察的参数,如资产价值和资产波动性,通过在结构模型中嵌入一个神经网络来学习,该神经网络将神经网络的输入空间(例如公司的可观察财务和市场数据)映射到不可观察的参数空间。在这样的“神经-结构”框架中,神经网络和结构模型在学习阶段作为一个单元一起工作,分别向彼此提供向前和向后的信息,直到神经网络的权重根据价值函数进行优化。实证结果表明,结构模型(如Black-Scholes-Merton模型和Down-and-Out期权模型)在样本外的歧视性权力、信息含量和经济影响方面表现优于结构模型的其他规范。重要的是,它们也比标准神经网络表现得更好,这表明神经网络和结构模型之间的联合动力学在学习阶段是有用的,可以提高神经网络的预测性能(和训练效率)。最后,我们的方法提供了方法上(和经验上)的改进,超过了逻辑规范,如坎贝尔等人[在寻找遇险风险。[J]金融,2008,63(3):2899-2939。其中,金融和市场数据是输入,输出是破产的概率,而我们的方法包括一个中间步骤,以获得不可观察参数,随后获得破产的概率。
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A neuro-structural framework for bankruptcy prediction

We develop a framework to simultaneously compute the unobservable parameters underlying the structural-parametric models for bankruptcy prediction. More specifically, we compute the unobservable parameters such as, asset value and asset volatility, through learning by embedding in the structural models a neural network that maps the neural network’s input space (e.g. companies’ observable financial and market data) to the unobservable parameter space. Within such a ‘neuro-structural’ framework, the neural network and the structural model work together as a one unit during the learning phase by providing to each other forward and backward information, respectively, until the weights of the neural network are optimized according to a merit function. Empirical results show that structural models, like the Black-Scholes-Merton and the Down-and-Out option models, with parameters computed with our approach, perform better than alternative specifications of the structural models, out of sample, in terms of discriminatory power, information content and economic impact. Importantly, they also perform better than a standard neural network, suggesting that the co-joint dynamics between the neural network and the structural model are useful during the learning phase and can improve the prediction performance (and the training efficiency) of neural networks. Finally, our approach provides methodological (and empirical) enhancements over logit specifications such as, Campbell et al. [In search of distress risk. J Finance, 2008, 63, 2899–2939]. There, financial and market data are the inputs, and the output is the probability of bankruptcy whereas our approach includes an intermediary step to obtain the unobservable parameters and subsequently the probability of bankruptcy.

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来源期刊
Quantitative Finance
Quantitative Finance 社会科学-数学跨学科应用
CiteScore
3.20
自引率
7.70%
发文量
102
审稿时长
4-8 weeks
期刊介绍: The frontiers of finance are shifting rapidly, driven in part by the increasing use of quantitative methods in the field. Quantitative Finance welcomes original research articles that reflect the dynamism of this area. The journal provides an interdisciplinary forum for presenting both theoretical and empirical approaches and offers rapid publication of original new work with high standards of quality. The readership is broad, embracing researchers and practitioners across a range of specialisms and within a variety of organizations. All articles should aim to be of interest to this broad readership.
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