Abstract

In recent years in Taiwan, scholars who study financial bankruptcy have mostly focused on individual listed and over-the-counter (OTC) industries or the entire industry, while few have studied the independent electronics industry. Thus, this study investigated the application of an advanced hybrid Z-score bankruptcy prediction model in selecting financial ratios of listed companies in eight related electronics industries (semiconductor, computer, and peripherals, photoelectric, communication network, electronic components, electronic channel, information service, and other electronics industries) using data from 2000 to 2019. Based on 22 financial ratios of condition attributes and one decision attribute recommended and selected by experts and in the literature, this study used five classifiers for binary logistic regression analysis and in the decision tree. The experimental results show that for the Z-score model, samples analyzed using the five classifiers in five groups (1:1–5:1) of different ratios of companies, the bagging classifier scores are worse (40.82%) than when no feature selection method is used, while the logistic regression classifier and decision tree classifier (J48) result in better scores. However, it is significant that the bagging classifier score improved to over 90% after using the feature selection technique. In conclusion, it was found that the feature selection method can be effectively applied to improve the prediction accuracy, and three financial ratios (the liquidity ratio, debt ratio, and fixed assets turnover ratio) are identified as being the most important determinants affecting the prediction of financial bankruptcy in providing a useful reference for interested parties to evaluate capital allocation to avoid high investment risks.

Highlights

  • Competition will become more intense when enterprises are located all over the world, and the rapid change in business models can have a great impact, with many enterprises committed to sustainable operation

  • In view of the importance of the electronics industry to Taiwan’s development and the fact that most people are keen on investing in this industry via the stock market, even when the world economy is in a situation of turbulence and the investment risk is constantly increasing, there will be a greater possibility of falling into a dangerous situation of huge investment loss if there is no adequate ability to manage the risk

  • Many listed companies that have high risks but are profitable are hidden in the stock market, and if investors do not have the capability of analysis and choose stock, identifying these companies will be akin to finding a needle in a haystack, and investors will deplete their years of savings

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Summary

Introduction

Competition will become more intense when enterprises are located all over the world, and the rapid change in business models can have a great impact, with many enterprises committed to sustainable operation. The government and people will suffer from bad management of business risks, which will lead to a sharp fall in investor confidence and plummeting of the stock market. In view of the importance of the electronics industry to Taiwan’s development and the fact that most people are keen on investing in this industry via the stock market, even when the world economy is in a situation of turbulence and the investment risk is constantly increasing, there will be a greater possibility of falling into a dangerous situation of huge investment loss if there is no adequate ability to manage the risk. It is important to analyze the financial information of the public stock market in the form of big data to protect against potential financial bankruptcy [1,2,3] of investment targets by using some effective prediction models or technologies, and to discover influential data to provide interested parties as a comprehensive reference for solving the problem of management of stock market risk

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