Are Indonesian construction companies financially distressed? A prediction using artificial neural networks

Q2 Economics, Econometrics and Finance Investment Management and Financial Innovations Pub Date : 2023-04-06 DOI:10.21511/imfi.20(2).2023.04
Farida Titik Kristanti, Zahra Safriza, Dwi Fitrizal Salim
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引用次数: 2

Abstract

Construction companies are very dependent on the projects carried out by a company. Therefore, measuring whether a company is distressed or non-distressed can be done by looking at the ratios derived from the components of the financial statements from both the balance sheet and the company’s profit and loss. This study offers a new method for measuring financial distress in companies with Artificial Neural Networks (ANN). The model provided comes from several financial ratios in 17 construction companies listed on the Indonesia Stock Exchange. The model is expected to produce the best model by showing the lowest prediction error rate. The results showed that the best ANN model has 25 inputs, 20 hidden layer neurons, and 1 best model output. The model obtained will be tested directly on the sample used; the results are that 6 construction companies in Indonesia have financial distress and 11 non-distress problems. This result proves that the best model obtained can predict the level of financial distress of companies with a small error rate to produce 6 companies identified as financially distressed. This result can be a warning for companies to increase revenue by adding new projects to get out of financial distress status. Traditional financial distress models such as Altman, Zmijewski, Springate, and Fulmer, which have become researchers’ guidelines for measuring financial distress, can be added to the ANN 25-20-1 model as a comparison to strengthen the research results.
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印尼建筑公司是否陷入财务困境?利用人工神经网络进行预测
建筑公司非常依赖于一个公司所执行的项目。因此,衡量一家公司是否陷入困境,可以通过查看从资产负债表和公司损益中得出的财务报表组成部分的比率来完成。本研究为利用人工神经网络(ANN)测量企业财务困境提供了一种新的方法。所提供的模型来自于印度尼西亚证券交易所上市的17家建筑公司的几个财务比率。期望该模型能显示出最低的预测错误率,从而得到最好的模型。结果表明,最佳人工神经网络模型有25个输入、20个隐层神经元和1个最佳模型输出。得到的模型将直接在使用的样品上进行测试;结果表明,印尼有6家建筑公司存在财务困境,11家存在非财务困境问题。这一结果证明,所获得的最佳模型能够以较小的错误率预测企业的财务困境水平,从而产生6家被认定为财务困境的企业。这一结果可能是对企业的一个警告,即通过增加新项目来增加收入,以摆脱财务困境。Altman、Zmijewski、Springate、Fulmer等传统的财务困境模型已经成为研究者衡量财务困境的指导,可以加入ANN 25-20-1模型进行比较,加强研究成果。
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来源期刊
Investment Management and Financial Innovations
Investment Management and Financial Innovations Economics, Econometrics and Finance-Finance
CiteScore
2.50
自引率
0.00%
发文量
99
审稿时长
11 weeks
期刊介绍: The international journal “Investment Management and Financial Innovations” encompasses the results of theoretical and empirical researches carried out both on macro- and micro-levels, concerning various aspects of financial management and corporate governance, investments and innovations (including using of quantitative methods). It is focused on the international community of financiers, both academics and practitioners. Key topics: financial and investment markets; government policy and regulation; corporate governance; information and market efficiency; financial forecasting and simulation; financial institutions: investment companies, investment funds, investment banks, hedge funds, private pension funds; objects of real and financial investing; financial instruments and derivatives; efficiency of investment projects; econometric and statistic methods in project management; alternative investments; ratings and rating agencies.
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