Majority voting ensemble with a decision trees for business failure prediction during economic downturns

Accurate business failure prediction represents an advantage for market players and is important for risk management. The purpose of this study is to develop a more accurate and stable business failure prediction model by using a majority voting ensemble method with a decision tree (DT) with experim...

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Main Authors: Soo Young Kim, Arun Upneja
Format: Article
Language:English
Published: Elsevier 2021-04-01
Series:Journal of Innovation & Knowledge
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2444569X21000081
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spelling doaj-0653dc21067542d19179bdbc28ef9bd02021-03-17T04:15:23ZengElsevierJournal of Innovation & Knowledge2444-569X2021-04-0162112123Majority voting ensemble with a decision trees for business failure prediction during economic downturnsSoo Young Kim0Arun Upneja1School of Hotel and Tourism Management, Sejong Cyber University, 121 Kunja-ro, Kwanjin-gu, Seoul 05000 Republic of Korea; Corresponding author.School of Hospitality Administration, Boston University, 928 Commonwealth Avenue, Boston MA 02215 USAAccurate business failure prediction represents an advantage for market players and is important for risk management. The purpose of this study is to develop a more accurate and stable business failure prediction model by using a majority voting ensemble method with a decision tree (DT) with experimental data on US restaurant between 1980 and 2017. According to the diversity principle and individual optimized principle, DT and logit were selected as basic learning algorithms for the voting ensemble of business failure prediction. Three models, including an entire period (EP) model, an economic downturn (ED) model, and an economic expansion (EE) model, were developed by using WEKA 3.9. The prediction accuracy of the models were 88.02% for the EP model, 80.81% for the ED model, and 87.02 % for the EE model. While the EE model revealed the market capitalization, operating cash flow after interest and dividends (OCFAID), cash conversion cycle (CCC), return on capital employed (ROCE), accumulated retained earnings, stock price, and Tobin’s Q as significant variables, the ED model exposed quite different variables such as OCFAID, KZ index, stock price, and CCC. The EP model combined most of the variables from two sub-divided models except for Tobin’s Q, stock price, and debt to equity (D/E) ratio. The contribution of the paper is twofold. First, this is the first study to comprehensively evaluate the financial and market-driven variables in the context of predicting restaurant failure, especially during economic recessions. This research has employed several accounting-based measures, market-based variables, and a macro-economic factor to improve the relevance and effectiveness of prediction models. And second, by using an ensemble model with a DT, it has improved both the interpretability of the results and the prediction accuracy.http://www.sciencedirect.com/science/article/pii/S2444569X21000081Business failure predictionFinancial distressMajority votingEnsembleDecision tree (DT)Economic downturns
collection DOAJ
language English
format Article
sources DOAJ
author Soo Young Kim
Arun Upneja
spellingShingle Soo Young Kim
Arun Upneja
Majority voting ensemble with a decision trees for business failure prediction during economic downturns
Journal of Innovation & Knowledge
Business failure prediction
Financial distress
Majority voting
Ensemble
Decision tree (DT)
Economic downturns
author_facet Soo Young Kim
Arun Upneja
author_sort Soo Young Kim
title Majority voting ensemble with a decision trees for business failure prediction during economic downturns
title_short Majority voting ensemble with a decision trees for business failure prediction during economic downturns
title_full Majority voting ensemble with a decision trees for business failure prediction during economic downturns
title_fullStr Majority voting ensemble with a decision trees for business failure prediction during economic downturns
title_full_unstemmed Majority voting ensemble with a decision trees for business failure prediction during economic downturns
title_sort majority voting ensemble with a decision trees for business failure prediction during economic downturns
publisher Elsevier
series Journal of Innovation & Knowledge
issn 2444-569X
publishDate 2021-04-01
description Accurate business failure prediction represents an advantage for market players and is important for risk management. The purpose of this study is to develop a more accurate and stable business failure prediction model by using a majority voting ensemble method with a decision tree (DT) with experimental data on US restaurant between 1980 and 2017. According to the diversity principle and individual optimized principle, DT and logit were selected as basic learning algorithms for the voting ensemble of business failure prediction. Three models, including an entire period (EP) model, an economic downturn (ED) model, and an economic expansion (EE) model, were developed by using WEKA 3.9. The prediction accuracy of the models were 88.02% for the EP model, 80.81% for the ED model, and 87.02 % for the EE model. While the EE model revealed the market capitalization, operating cash flow after interest and dividends (OCFAID), cash conversion cycle (CCC), return on capital employed (ROCE), accumulated retained earnings, stock price, and Tobin’s Q as significant variables, the ED model exposed quite different variables such as OCFAID, KZ index, stock price, and CCC. The EP model combined most of the variables from two sub-divided models except for Tobin’s Q, stock price, and debt to equity (D/E) ratio. The contribution of the paper is twofold. First, this is the first study to comprehensively evaluate the financial and market-driven variables in the context of predicting restaurant failure, especially during economic recessions. This research has employed several accounting-based measures, market-based variables, and a macro-economic factor to improve the relevance and effectiveness of prediction models. And second, by using an ensemble model with a DT, it has improved both the interpretability of the results and the prediction accuracy.
topic Business failure prediction
Financial distress
Majority voting
Ensemble
Decision tree (DT)
Economic downturns
url http://www.sciencedirect.com/science/article/pii/S2444569X21000081
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