利用时间序列会计数据进行破产预测的多头 LSTM 架构

Future Internet Pub Date : 2024-02-27 DOI:10.3390/fi16030079
Mattia Pellegrino, Gianfranco Lombardo, George Adosoglou, Stefano Cagnoni, P. Pardalos, A. Poggi
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引用次数: 0

摘要

随着机器学习(ML)技术的不断进步,一些模型已成功应用于财务和会计数据,用于预测公司破产的可能性。然而,时间序列在文献中受到的关注很少,缺乏对深度学习序列模型(如递归神经网络(RNN)和最近基于注意力的一般模型)应用的研究。在这项研究工作中,我们调查了长短期记忆(LSTM)网络在利用会计数据时间序列进行破产预测方面的应用。我们工作的主要贡献如下:(a) 我们提出了一种多头 LSTM,该 LSTM 可对时间窗口中的每个财务变量进行独立建模,并将其与单输入 LSTM 和其他传统 ML 模型进行了比较。多头 LSTM 的表现优于所有其他模型。(b) 我们确定破产预测的最佳时间序列长度等于 4 年的会计数据。(c) 我们公开了用于实验的数据集,其中包括 1999 年至 2018 年期间美国股票市场上 8262 家不同上市公司的数据。此外,我们还证明了多头 LSTM 模型在减少误报和更好地划分两类方面的功效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Multi-Head LSTM Architecture for Bankruptcy Prediction with Time Series Accounting Data
With the recent advances in machine learning (ML), several models have been successfully applied to financial and accounting data to predict the likelihood of companies’ bankruptcy. However, time series have received little attention in the literature, with a lack of studies on the application of deep learning sequence models such as Recurrent Neural Networks (RNNs) and the recent Attention-based models in general. In this research work, we investigated the application of Long Short-Term Memory (LSTM) networks to exploit time series of accounting data for bankruptcy prediction. The main contributions of our work are the following: (a) We proposed a multi-head LSTM that models each financial variable in a time window independently and compared it with a single-input LSTM and other traditional ML models. The multi-head LSTM outperformed all the other models. (b) We identified the optimal time series length for bankruptcy prediction to be equal to 4 years of accounting data. (c) We made public the dataset we used for the experiments which includes data from 8262 different public companies in the American stock market generated in the period between 1999 and 2018. Furthermore, we proved the efficacy of the multi-head LSTM model in terms of fewer false positives and the better division of the two classes.
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