However, the COVID-19 pandemic introduced unprecedented disruptions to global economies, significantly affecting businesses' operational and financial performance across all sectors. [
6,
7] These new and non-standard factors can significantly impact companies' financial stability and can affect the effectiveness of existing prediction models. Although existing bankruptcy models may be built on robust mathematical and statistical principles, their ability to predict bankruptcy in a pandemic period may be limited [
8]. New and unexpected factors such as government stimulus measures, moratoriums on loan repayments, temporary closures of businesses and fluctuations in markets can affect the performance of these models. In this context, models that were once reliable under stable economic conditions may exhibit reduced accuracy in times of crisis. This raises a critical question about the robustness and adaptability of traditional financial distress prediction models when applied to post-pandemic conditions. Therefore, much attention is currently being paid to the analysis and updating of existing bankruptcy models to take into account new factors and improve their accuracy in a pandemic environment. This may include adjusting weighting factors, adding new predictive variables, or modifying mathematical algorithms based on new data and experience gained during the pandemic.
Although the automotive industry faced particular challenges, including supply chain disruptions and shifts in consumer demand, research exploring the pandemic's impact on model performance remains limited. To address these gaps, this study evaluates the effectiveness of financial distress prediction models originally developed by authors from Visegrad countries when applied to Slovak automotive companies’ financial data across two periods. The analysis first assesses the models' performance during the pre-pandemic period (2017-2019), identifying the models with the highest prediction performance. Subsequently, the top-performing models are selected and applied to data from the pandemic period (2020-2022) to examine any changes in predictive performance. Observing a notable decline in performance during the pandemic, we proceeded to re-estimate the coefficients within each model. This re-estimation approach preserves the original variables and statistical methods, adapting the models to better reflect the changed economic conditions.
By examining financial distress prediction models under varying economic conditions, this study offers valuable insights into the limitations of traditional models under unprecedented challenges like the COVID-19 pandemic. The findings underscore the importance of continuous evaluation of predictive models' performance to ensure their reliability in times of economic instability. For practitioners and policymakers, the study provides a framework for enhancing financial risk assessment tools, especially within sectors like automotive sensitive to global disruptions. For researchers, the study offers a methodology for evaluating and refining existing models.
The next parts of this paper are organised as follows. In the Literature review section, we highlight the current state of financial distress prediction, focusing on the situation within the Visegrad region. Methodology and Data section describes the data used in the study, explains the study methodology and describes the models selected for the study. The results section presents the empirical results, first analysing the predictive accuracy of the selected models during the pre-pandemic period, then contrasting these findings with the models' performance in the pandemic period, and, finally re-estimating the models’ coefficients to address pandemic-induced economic changes. The discussion section offers a discussion of the key insights and practical implications of our findings while also mentioning the main study limitations and suggesting directions for future research. The last section concludes the study.
1.1. Literature Review
Predicting companies' financial condition is a widespread area of economic research. Since Fitzpatrick published the first study on this topic in 1932, bankruptcy prediction has become a subject of interest for various researchers and industry professionals.
Bankruptcy prediction models are especially prevalent in economically advanced Western countries. Models developed in the latter half of the 20th century are still used today. Beaver [
9] introduced univariate analysis, becoming a pioneer in the field of bankruptcy prediction. Building on this research, Altman [
10] applied multivariate discriminant analysis to create a model for predicting bankruptcy. Later in 1980, Ohlson developed a new model based on logistic regression [
11]. In 1984, Zmijewski proposed the application of a probit model for predicting company bankruptcy [
12]. Altman's model, as well as Ohlson's logit model, were developed within the context of the US economy. Since then, numerous other models have been created across various countries worldwide. In addition to modern machine learning techniques, traditional methods such as logistic regression, multivariate discriminant analysis, and classification trees remain commonly used [
13,
14,
15].
Dasgupta et al. [
16] compared the performance of logistic regression and discriminant analysis models using neural networks. Their research found that the performance of neural networks was higher compared to the other two mentioned methods. However, the authors also noted that the performance of neural networks was not significantly higher than that of the other models. Huo et al. [
17] conducted a comparative study on bankruptcy prediction for restaurant firms using multivariate discriminant analysis (MDA) and logistic regression models. The study revealed that while both models were effective, logistic regression provided more accurate predictions, especially in volatile industries like hospitality.
Inam et al. [
18] applied artificial neural networks (ANN), logistic regression, and multivariate discriminant analysis to predict the bankruptcy of companies in Pakistan. The study compared the predictive power of these techniques, highlighting the performance of ANNs over classical statistical methods. Logistic regression and discriminant analysis, while still effective, showed limitations in handling non-linear relationships.
The first ex-ante analysis in Slovakia was published by Chrastinova [
19]. The so-called CH-index model was designed specifically for Slovak agricultural enterprises based on discriminant analysis. Another well-known Slovak model is the G-index, developed using a discriminant analysis for agricultural enterprises [
20]. Since then, several authors have created new models or examined the applicability of existing models within the Slovak context. Gavurova et al. [
21] explored the accuracy of various bankruptcy prediction models within the Slovak business environment. The study highlighted that traditional model like Altman’s Z-score required customisation for specific regions, as macroeconomic variables such as inflation and interest rates affected the models' predictive accuracy. This research underlines the need to adapt prediction models to local economic conditions to enhance their utility [
21]. Horvathova et al. [
22] conducted a comparative analysis of neural networks and classical discriminant analysis in predicting bankruptcy. The study demonstrated that neural networks offered greater accuracy than discriminant analysis. However, the researchers acknowledged the continued relevance of classical methods like discriminant analysis for simpler datasets and interpretability [
22].
In addition, several new models have been developed by Slovak researchers. The V4 bankruptcy prediction model was developed by Kliestik et al. [
1] based on the data on enterprises from V4 countries during the periods of 2015 and 2016 using the multiple discriminant analysis by the authors [
1,
23]. Valaskova et al. [
6] developed models for enterprises in V4 countries, achieving over 88% accuracy using multiple discriminant analysis. The study identified total indebtedness ratios as the most significant predictor, providing valuable insights into the post-pandemic economic environment. Kovacova and Kliestik [
24] created the logit and probit models in their study. The study's results indicate that the model based on logit functions slightly outperforms the classification ability of the probit model in predicting bankruptcies in the Slovak Republic. Durica and Adamko [
25] created a bankruptcy prediction model for Slovak companies based on multiple discriminant analysis with a classification accuracy of over 82%.
In the Czech Republic, Neumaier and Neumaierová family of bankruptcy prediction models – IN95, IN99, IN01, and IN05 – are the most well-known Czech predictive models and represent a significant contribution to financial health assessment in the Czech Republic. These models were designed to adapt to local economic conditions and provide robust predictions of financial distress by evaluating various financial indicators [
26,
27]. These models are often used for predicting the financial state of the companies also in Slovakia.
Karas and Srbova [
28] developed a bankruptcy prediction model specifically for the Czech construction industry, addressing the sector's unique financial characteristics. Their study critiques traditional models like the Altman Z-score, highlighting their limited applicability to construction firms. Horak et al. [
29] compared multivariate discriminant analysis (MDA), artificial neural networks (ANNs), and support vector machines (SVMs) for bankruptcy prediction of Czech industrial companies. Their findings indicated that ANNs and SVMs performed better than MDA, however, the authors emphasised the continued use of classical methods like MDA in certain practical applications due to their simplicity and ease of interpretation. Pech et al. [
30] analysed the performance of various bankruptcy prediction models over a five-year period, finding that Zmijevski’s model achieved the highest overall success rate. Their study highlighted significant variations in model accuracy across industries, recommending sector-specific adjustments to improve predictions.
Recent studies from Polish authors have introduced innovative approaches to bankruptcy prediction, leveraging both traditional and advanced methodologies. Machine learning models, enhanced with oversampling techniques, achieved up to 99% predictive accuracy, highlighting the utility of ensemble learning for addressing imbalanced datasets in financial forecasting [
31,
32]. Ensemble classifier models, including boosting and bagging, outperformed traditional single-classifier approaches when tested on data on Polish firms, providing robust early warnings of bankruptcy over a two-year horizon [
33]. Another study focused on logit and discriminant models tailored to the Polish industrial sector, emphasising the need for locally adapted prediction methods over unadjusted global models [
34]. Hybrid machine learning techniques, such as those combining XGBoost and artificial neural networks, further improved predictive accuracy by dynamically integrating advanced algorithms and addressing imbalances in Polish financial datasets [
32]. Multivariable models also outperformed univariate approaches for Polish manufacturing companies, confirming that combining multiple financial indicators yields better predictions of financial distress [
35].
In Hungary, the first Hungarian model was constructed by Virag and Hajdu [
36] based on the data on Hungarian enterprises covering the period 1990-1991. The authors created a model using both MDA and logistic regression. However, many studies related to prediction models from Hungarian authors are in their national language, so they are difficult to use for an international reader.
As visible, bankruptcy prediction models have historically been widely used to predict the financial distress of firms. In recent years, the development of bankruptcy prediction models has gained further attention due to the global economic shocks triggered by the COVID-19 pandemic. The pandemic significantly impacted global economies, leading to widespread financial distress across numerous sectors. Several studies have analysed the performance and adaptations of existing bankruptcy prediction models during the pandemic. However, several authors found that the pandemic revealed several limitations in using traditional bankruptcy prediction models and the need for more dynamic models capable of incorporating sudden economic shocks.
For instance, Lubis and Gandakusuma [
37] conducted a re-estimation of traditional bankruptcy models, finding that the original Altman Z-score required significant adjustments to remain accurate during the pandemic. Candera [
38] conducted a comparative analysis of service companies during the pandemic period and found that traditional models such as the Springate and Altman Z-scores underperformed, as they failed to account for non-financial variables that became critical during the pandemic.
Al Qamashoui and Mishrif [
39] conducted a study focused on predicting bankruptcy risks in distressed insurance companies in Oman during the pandemic period. The authors used the Altman Z-score model to assess financial distress in both pre- and post-pandemic periods (2019-2020). The study revealed that while traditional financial models, such as the Z-score, could predict financial distress to some extent, they were less effective when used in the volatile insurance sector, mainly due to external factors such as market instability and government intervention during the pandemic. The authors recommended incorporating real-time data and non-financial factors to improve model accuracy. Similarly, Dengang and Oktafiani [
40], have called for the inclusion of external factors like market conditions, government interventions, and non-financial metrics.. Putri et al. [
41] analyzed the financial health of Indonesian state-owned construction companies during 2019-2023. The study used existing bankruptcy prediction models, including the Altman Z-score. The findings suggested that while the Z-score model provided reasonable predictions, adjustments to account for government policies and market fluctuations during the pandemic were necessary to enhance accuracy.
Stoyancheva et al. [
42] conducted an assessment of the bankruptcy risk in Bulgarian agricultural enterprises using several classical models, including the Altman, Springate, and Fulmer models. The study highlighted that while these models provided accurate predictions before the pandemic (2019), they required adjustments during the pandemic period. The research suggests that sector-specific factors must be integrated to improve prediction accuracy. Similarly, Purwanti et al. [
43] analysed the banking sector in Indonesia and found that model accuracy during the pandemic was significantly reduced, emphasising the need for real-time data and adaptive algorithms.