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Article

Reevaluating Bank Price-to-Book Ratios: An In-Depth Analysis of Equity Components across Economic Cycles

by
Fernando García Martínez
1,*,
Juan Domínguez Jiménez
2 and
Ricardo Queralt Sánchez de las Matas
3
1
Bank of Spain, 28014 Madrid, Spain
2
Finance and Accounting Department, School of Business, Economics and Law, CUNEF Universidad—Campus Almansa, 28040 Madrid, Spain
3
Quantitative Methods Department, School of Business, Economics and Law, CUNEF Universidad—Almansa, 28040 Madrid, Spain
*
Author to whom correspondence should be addressed.
J. Risk Financial Manag. 2024, 17(8), 363; https://doi.org/10.3390/jrfm17080363
Submission received: 26 June 2024 / Revised: 25 July 2024 / Accepted: 7 August 2024 / Published: 15 August 2024
(This article belongs to the Section Banking and Finance)

Abstract

:
This study explores the evolution of price-to-book (P/B) ratios among European banks from 2005 to 2020, a period where most banks in different countries had a P/B ratio below 1. By dissecting banks’ accounting equity into investor contributions and earnings-derived components, this research aims to evaluate how each component of equity affects these ratios and investigates whether their dynamics shifted during the period. We address a gap in prior research that has not extensively examined how individual equity components affect the overall P/B ratio. This aspect is crucial, especially in scenarios where the increase of specific components compensates for declines in others, thereby stabilizing total equity values. Our methodology involves regression analyses using a panel data model with random effects. The findings reveal that earnings-related equity components significantly influence P/B ratios. In contrast, investor contributions, which strengthen the solvency of the entity, appear to have a minimal impact. Additionally, our analysis highlights a significant quadratic relationship between the P/B ratios and both the profit or loss reported on Income Statements and distributed dividends.

1. Introduction

The 2008 financial crisis had a profound effect on global banking stocks, leading to a sustained decrease in banks’ price-to-book (P/B) ratios, often dipping below the critical 1.0 threshold. This level indicates that banks are valued at less than their net assets. The repercussions of this financial downturn extended into the early stages of the COVID-19 pandemic, further stressing the banking sector.
According to the discounted cash flow theory, understanding a bank’s market value requires analyzing investor expectations about future cash flows and the risks1 associated with them. These expectations are influenced by a complex array of factors, including available financial data. The Conceptual Framework for Financial Reporting (IASB 2018) states that while general-purpose financial reports do not directly determine an entity’s market value, they provide essential information that helps investors and creditors assess the value of the entity. The significant impact of accounting on bank price variations is well-documented (Leong et al. 2023).
Equity, defined as the residual interest in the assets of an entity after deducting liabilities, can be classified into two types of components, which are contributions and retained earnings (IASB 2018). Considering these two components, our study distinguishes the following:
  • Investor contributions:
    SC (Share Capital): the original purchase price or par value of common shares.
    SP (Share Premium): the amount paid over the par value by investors at issuance.
    TS (Treasury Stock): shares that have been repurchased and are held by the company.
    EHS (Equity Hybrid Securities): contracts that combine a non-derivative (host) component with an embedded derivative, as defined by International Financial Reporting Standards (IFRS 9).
    MI (Minority Interest): the portion of net assets in subsidiaries that are not owned by the parent company.
  • Earnings-derived components:
    YNI (Year Net Income): the annual profit or loss after taxes, as reported on the Income Statement.
    RE (Reserves): primarily consists of retained earnings, excluding Year Net Income.
    YOCI (Year Other Comprehensive Income): annual profit or loss after taxes reported in the Comprehensive Income statement, excluding Year Net Income.
    AOCI (Accumulated Other Comprehensive Income): the cumulative total of Other Comprehensive Income, excluding Year Net Income.
Our research advances the existing literature by examining how each component of bank equity influences P/B ratios across various economic cycles. Previous studies have not thoroughly investigated the individual effects of these components on the overall P/B ratio, especially in situations where certain values may increase to compensate for declines in others, thereby stabilizing total equity. Our findings provide deeper insights into how investors value different types of financial data.
To enhance the robustness of our analysis, we corroborated our results with data on various components of regulatory capital. Under the Basel Framework, banks are required to maintain a minimum level of regulatory capital, a critical measure to ensure their financial solvency and stability. This capital is primarily designed to absorb unexpected losses. We chose to corroborate the information about regulatory capital, like other studies (Sharma et al. 2023; Jordan et al. 2011), due to the distinction between expected losses, used to calculate equity, and unexpected losses, used to calculate regulatory capital, emphasizing the complementary nature of regulatory and financial data.
We analyzed multiple components of regulatory capital, unlike previous research that has typically focused on a single component. This approach is particularly important as we have observed that, over the years, increases in some components have compensated for decreases in others. The components we considered include:
CET1 (Common Equity Tier 1): this category includes accounting equity adjusted for deductions such as some intangible assets.
AT1 (Additional Tier 1): these instruments blend debt and equity characteristics and possess loss-absorbing capabilities. They are triggered when the issuing bank’s capital falls below a specified threshold, such as in the case of contingent convertible bonds (CoCos).
T2 (Tier 2): these are subordinated debt instruments.
DP (Dividend Perspective): this component includes the value of distributed dividends, used to analyze the effects of the reduction in regulatory capital.
We reveal that earnings-related components significantly impact the P/B ratio, whether they are reported in the Income Statement, Other Comprehensive Income, or on previous years’ Balance Sheets. In contrast, investor contributions, though crucial for strengthening the solvency of the entity, have minimal effect on the P/B ratios. Our analysis indicates a pronounced quadratic influence from the profit or loss reported on the Income Statement and from distributed dividends. Notably, these influential factors have remained consistent over the years, even as regulatory efforts to enhance bank solvency have intensified in response to financial crises. These findings are supported by data on regulatory capital. This research contributes to a deeper understanding of how investors interpret financial information and whether all types of financial data are valued equally by investors.
Our study spans the years 2005 to 2020, a period during which the P/B ratio of banks was below 1 in many countries. A P/B ratio under 1 often indicates potential challenges in raising additional equity, which could impose operational constraints. Our analysis encompasses a variety of economies and bank sizes and employs regression models to interpret these influences. Specifically, we use a panel data model with random effects, which is well-suited for datasets encompassing diverse groups, as it accounts for potential commonalities among them.

2. Theoretical Underpinning and Hypotheses

The P/B ratio is a widely used indicator of a bank’s future prospects (Richardson 2006). Following the 2008 financial crisis, the sustained decline in banks’ P/B ratios prompted further investigation into this metric. Research suggests that the widening gap between accounting and market values of financial institutions can be attributed to several factors:
During financial crises, underestimations of financial asset losses due to imperfect accounting standards and banks’ reluctance to write down book values were observed (Huizinga and Laeven 2012; Goh et al. 2015; Wagner 2009; Kolev 2019). The European Central Bank (2012) emphasized the need for recognizing losses from non-performing assets and enhancing transparency to improve P/B ratios.
The market value of a listed bank, like that of any other listed company, can be explained by various theories. One of these is the discounted cash flow theory, which suggests that a company’s value (including banks) is equal to the present value of the future cash flows it is expected to generate. Information about bank equity can be used by investors to assess the prospects of a bank’s future cash flows.
Post-2008 crisis observations revealed a decrease in equity components related to retained earnings, offset by an increase in shareholder proceeds (Handorf 2011). More shareholder proceeds in banks can contribute to financial stability by reducing the risk of costly banking crises, but lending may become more expensive if banks are required to finance their assets with more equity (Andersen and Juelsrud 2024). There can be a decrease in the market-to-book value after issuing capital (He et al. 2024). The question to answer is: are investors undervaluing their contributions to bank equity because they believe the bank is less profitable and will have lower future cash flows, despite the bank’s increased stability?
We posit our primary hypothesis for empirical examination. H1: the market does not uniformly value all information regarding the distinct components of a bank’s equity. This hypothesis is grounded in the observation that some components of equity may increase and offset others that decrease, leading to fluctuations in the P/B ratio even when total equity remains relatively stable. Our aim is to investigate the extent to which these variations influence market valuations and whether certain equity components are weighted more heavily by investors in their assessment of a bank.
Given the well-documented relationship between the P/B ratio and regulatory capital (Chousakos and Gorton 2017; Baker and Wurgler 2015; Jordan et al. 2011), we aim to validate our previous hypothesis concerning equity components by analyzing regulatory capital.
Researchers such as Aiyar et al. (2015) argue that raising minimum capital requirements entails significant social costs, including reduced bank profitability, depressed share prices, and constrained loan supply, even though these measures are necessary to mitigate the severe impacts of banking crises. Guerrieri and Modugno (2024) found that banks with a higher stressed capital minimum compared to the previous stress test cycle systematically experienced an increase in their stock prices. Nonetheless, some studies indicate that shareholder contributions to bank capital are limited, while shareholder payout policies, including share buybacks, remain significant (Graeff and Biondi 2017).
In the aftermath of the 2008 crisis, enhanced solvency regulations (Basel III) led to an uneven increase in certain capital components (Krishnan and He 2022). Despite this increased capital aimed at strengthening financial stability, many banks have not seen a corresponding rise in their P/B ratios. Some authors suggest that intensified banking competition is positively associated with upward earnings management but not with upward capital management (Casciello et al. 2024). The literature indicates that higher capital requirements for banks might result in a socially costly crowding out of deposits by equity (Arping 2019; Belkhir et al. 2021). Additionally, capital requirements can lead banks to excessively cut back on lending (Gersbach and Hahn 2010). Banks with low capital have an incentive to issue more loans during economic contractions to support their weaker borrowers and thereby avoid loan loss recognition and write-offs on their capital (Dursun-de Neef and Schandlbauer 2021).
At the onset of the COVID-19 crisis, regulators recommended restrictions on dividends to preserve regulatory capital and ensure systemic stability. These restrictions led to further declines in bank share prices. In Europe, Andreeva et al. (2023) documented a causal negative impact on bank share prices, noting a decrease of approximately 7% within two weeks of the announcement. This finding aligns with previous research demonstrating a relationship between dividend reductions and P/B ratios (Agrawal et al. 1996; Burdekin and Yang 2013; Marangu and Jagongo 2014; Calomiris and Nissim 2014; Bertsatos and Sakellaris 2016; Duke et al. 2015). Additionally, Gambacorta et al. (2023) found that banks with a low P/B ratio are more likely to pay out dividends, particularly those with a P/B ratio below the threshold of 0.7.
This situation indicates that higher solvency levels do not necessarily lead to higher market valuations. This raises a question: do investors prefer high current returns without considering the long-term future of the entity?
We propose a hypothesis to explore how European markets weigh these competing factors. H2: European financial markets place greater value on information regarding bank dividend distributions than on data related to their solvency. This hypothesis aims to investigate the relative importance of solvency metrics in influencing the market valuations of banks and to confirm that investors do not assess equity components equally.
Bank heterogeneity stems from differences in cultural context and size across countries. Studies highlight the varied applications of financial regulations internationally (Guermazi and Halioui 2020), the importance of considering bank size in regulatory analyses (Saunders and Willison 2021; Gharaibeh and Jaradat 2021), and the correlation between increased capital in banks and higher dividends (Belloni et al. 2021). We aim to investigate whether the market valuation of banks’ equity and capital components is consistent across different countries and whether this valuation is influenced by the bank’s size.
Additionally, due to the high variability in values, studies suggest that non-linear models sometimes provide a better fit than linear models (Das and Lev 1994; Pesaran and Timmermann 1995). Our study will test its hypotheses using both linear and non-linear models.

3. Materials and Methods

Our study began with a dataset comprising 67 European banking groups listed in the S&P Europe BMI Banks–Industry Group–Index. These banks represent 14 European countries, with financial data spanning from 2005 to 2020. This period was selected to cover the years during which the P/B ratio transitioned from being greater than 1 to less than 1 and maintained this lower value for most European banks.
We excluded post-2020 data and analyzed the results both with and without the year 2020 to determine its impact on our findings. The enduring impact of the COVID-19 crisis on the financial sector is undeniable, extending well beyond the pandemic’s eventual waning. Numerous studies have examined the specific effects of the COVID-19 epidemic on the performance, profitability, and stability of the banking sector (Shabir et al. 2023; Augeraud-Véron and Boungou 2023; Xiazi and Shabir 2022; Demir and Danisman 2021). Additionally, research has explored the systemic integration between countries’ banking markets during these years (Tabak et al. 2022). This crisis prompted unprecedented interventions, which produced diverse market reactions (O’Donnell et al. 2024), reactions that we consider incomparable to those of previous years without such interventions.
The financial data, sourced annually from SNL Financial and curated by S&P Capital IQ Pro, ensured consistency by excluding banks not listed throughout the entire analysis period. This resulted in a reduced sample of 46 banking groups. The breakdown of these groups by country is provided in the Appendix A.
For this analysis, we specifically utilized consolidated information, differing from methodologies employed in prior studies (DeYoung and Roland 2001; Chiorazzo et al. 2008; Macit and Topaloglu 2012). This decision was driven by the fact that banks conduct a substantial portion of their operations through other group entities, making the assessment of their contributions more accurately reflected in the consolidated accounting and regulatory information of the group. Moreover, individual accounting information varies across different countries, posing challenges for meaningful comparisons.
Our study did not expand the sample to include non-European countries, such as US banks, to maintain homogeneity within the dataset. Non-European banks operate under distinct accounting and regulatory frameworks, which would introduce heterogeneity and complicate comparative analyses. 3 Our decision is supported by analysis of the different behavior of P/B ratios in non-European countries following the financial crisis illustrated in the Section 4.
Extensive research documents the influence of financial information on capital market indicators (Kothari 2001). Previous studies have primarily focused on identifying information that impacts market prices, often measured by the coefficient of determination (adjusted R2) in regressions linking market prices and relevant information (Collins et al. 1997; Dontoh et al. 2007). Initially, our observations were treated as a time series due to the varying years in the dataset. The dependent variable selected for analysis is denoted as P/Bj, representing P/B ratio: the price per share as a multiple of the book value per share. Four categories of independent variables were utilized: those related to equity, regulatory capital, historical price-to-book ratios, and dummy variables.
Variables linked to reported equity include SCj (Share Capital to Equity), SPj (Share Premium to Equity), YNIj (Year Net Income to Equity), REj (Retained Earnings to Equity), YOCIt (Year Other Comprehensive Income to Equity), AOCIj (Accumulated Other Comprehensive Income to Equity), TSj (Treasury Stock to Equity), EHSj (Equity Hybrid Securities to Equity), and MIj (Minority Interest to Equity). These variables were constructed using book values from Balance Sheets and the Statement of Comprehensive Income of banks, without any adjustments. We believe unadjusted values are prevalent in the market and easily accessible to investors, contrary to adjusted values found in financial statement notes. Some studies replace book values with fair values, which have been found to impact banks’ share prices (Giner and Mora 2020; Liao et al. 2020; Fiechter and Novotny-Farkas 2017; Siekkinen 2016; Drago et al. 2013).
Variables related to regulatory capital are defined as CET1j (Common Equity Tier 1 to total regulatory capital), AT1j (Additional Tier 1 to total regulatory capital), T2j (Tier 2 to total regulatory capital), DPj (Dividend distributions from the last period). Studies suggest that listed banks often maintain stable dividends, irrespective of economic cycles (Belloni et al. 2021). The last variable is employed to analyze the regulatory capital reduction.
Another variable, LagPBj, representing the bank’s price-to-book ratio in the previous year, is included to examine whether past ratios contribute to explaining current ratios.
These variables are supplemented by two sets of dummy variables: “Country”, indicating the bank’s listing country, and “Quartile”, classifying banks based on asset volume quartiles.
The P/B used in our analysis are taken 30 days post-financial year-end, coinciding with when banks typically provide market information on their financial and prudential status. Independent variable values are measured at financial year-end, except for DPj and LagPBj, which incorporate figures from the preceding financial year.

4. Results

4.1. Descriptive Statistics and Other Considerations

Descriptive statistics in Table 1 confirm the minimal variability of the Dividend Perspective when not restricted in distribution, supporting our choice to estimate future dividends based on the previous year’s distribution. Moreover, annual earnings exhibit stability, with Income Statement figures surpassing those from Other Comprehensive Income. Notably, the mean P/B ratio slightly exceeds 1, while the median falls below, indicating variations across countries and years.
Figure 1 depicts the correlation among the independent variables and the dependent variable. Notably, two variables stand out for their significant positive correlation with the price-to-book ratio: earnings for the financial year, as recorded in the Income Statement, and the Dividend Perspective. Conversely, investor contributions, whether through share purchases or hybrid instruments, exhibit the most notable negative correlation with the price-to-book ratio.
The low correlations between variables, as depicted in the Figure 2, indicate a minimal risk of multicollinearity.
This study aims to explore the factors influencing P/B ratio by considering the outlined independent variables. Initially, we attempted to integrate equity and regulatory capital variables into a unified regression model. However, due to concerns regarding multicollinearity, such integration was unfeasible. Issues arose such as the equivalence between the sums of certain variables and the linear relationships among them, like CET1 being a linear combination of equity variables.
Consequently, we adopted two distinct regression models. The first model elucidates the P/B ratio using equity-related variables. The second model focuses on the relationship of the P/B ratio with the regulatory variables, aiming to confirm the results obtained with the first model.
Table 2 presents the performance of the price-to-book ratio across different years. Notably, the ratio dipped below 1 in 2008 and has remained below that threshold since. The onset of the COVID-19 crisis mirrored values akin to those witnessed during the 2008 crisis.
Table 3 compares the P/B ratio of our sample with other indexes. This table illustrates a significant drop in the P/B ratio in 2008, coinciding with the financial crisis, which severely impacted the banking sector. Although there has been a gradual recovery in the subsequent years, notable fluctuations remain. European banks, in particular, tend to recover differently compared to banks in other countries.
Table 4 shows a country-by-country breakdown of the P/B ratio and showcases the diverse financial landscapes within which financial institutions operate. This variance likely reflects the differing economic conditions and market sentiments prevalent in each country. Such a detailed analysis can provide insights into how regional factors influence financial metrics.

4.2. Modeling the Price-to-Book Ratio with the Equity

To examine the hypotheses, we conducted an analysis by modeling the P/B ratio utilizing variables associated with the equity components. Our approach, labeled as Equation (1), aimed to gauge the relationships between the P/B ratio and each individual equity component. This analysis employed linear regression techniques using cross-sectional data spanning the 2005–2020 period. The dependent variable in this model is the P/B ratio, while the independent variables comprise the relationships between each equity component and total equity, the preceding year’s P/B ratio, and selected dummy variables.
The sum of all equity component variables equated to 1. As the model has a constant, we opted to exclude the variable MIj, which exhibited minimal significance based on Table 1. Additionally, we excluded a dummy variable pertaining to the country Austria and another dummy variable representing size, specifically the first quartile. Equation (1) is
P / B j t = β 0 + β 1 S C j t + β 2 S P j t + β 3 Y N I j t + β 4 R E j t + β 5 Y O C I j t + β 6 A O C I j t + β 7 T S j t + β 8 E H S j t + β 9 C o u n t r y j t + β 10 Q u a r t i l e j t + β 11 L a g P B j t + u j t
The results obtained from Equation (1) are summarized in Table 5.
Table 5 summarizes the regression analysis outcomes for the P/B ratio across financial institutions, highlighting several key findings. Notably, Yearly Net Income (YNI) and Other Comprehensive Income (YOCI) significantly positively affect the price-to-book ratio, indicating that higher earnings and comprehensive income are associated with higher market valuation. The presence of country dummies and the significant impact of certain quartiles suggest that geographic and size-based factors also play crucial roles in determining the price-to-book ratio. The linear regression, based on cross-sectional data, encompassed observations from 45 banks across a span of 16 years, totaling 720 data points. Upon the exclusion of one year’s data (Lag(price_book)), the dataset was reduced to 675 observations.
However, this regression exhibited a notably poor goodness of fit, a trend that significantly improved upon the inclusion of the previous year’s P/B ratio. This enhancement, coupled with the observed evolution of the P/B ratio over the years as outlined in Table 2, underscores dynamic behavior within the dataset, prompting a comprehensive analysis combining time series and cross-sectional approaches.
Recognizing the necessity to incorporate information on each variable across each year, we advocate for the inclusion of time series analysis alongside the cross-sectional approach, necessitating the use of an econometric panel data model. This methodology enables the delineation of distinct banking behaviors across different years. To address concerns regarding endogeneity and control for within-bank dynamics, we employ panel data estimations with fixed effects.
Figure 3 visually illustrates the behavior of independent variables concerning the dependent variable, with the primary objective being the identification of potential outliers within the linear models that may have contributed to the diminished goodness of fit observed in Equation (1).
Figure 3 shows outliers among the independent variables. The literature indicates that the incidence of outliers can be reduced with non-linear adjustments to the linear models (McMillan 2004; Ogwang 2021).
If we apply panel data to Equation (1), in addition to adding quadratic adjustments to the independent variables, we obtain the following Equation (2):
P / B j t = β 0 + β 1 S C j t + β 2 S P j t + β 3 Y N I j t + β 4 R E j t + β 5 Y O C I j t + β 6 A O C I j t + β 7 T S j t + β 8 E H S j t + β 9 C o u n t r y j t  + β 10 Q u a r t i l e j t + β 11 L a g P B j t + β 12 S C j t 2 + β 13 S P j t 2 + β 14 Y N I j t 2 + β 15 R E j t 2 + β 16 Y O I j t 2  + β 17 A O C I j t 2 + β 18 T S j t 2 + β 19 E H S j t 2 + u j t
  • j = 1 to 46
  • t = 2005 to 2020
The results of Equation (2) are summarized in Table 6. We estimate a robust covariance matrix of parameters for a fixed effects or random effects panel model according to Arellano (1987).
Equation (2) improves the goodness of fit compared to Equation (1)2. In Equation (2), we observed several significant linear coefficients. Year Net Income, Other Comprehensive Income, Accumulated Other Comprehensive Income, Treasury Stock, Share Premium, and the price-to-book ratio from the previous year displayed substantial positive linear coefficients. Notably, Year Net Income also exhibited a significant positive quadratic coefficient. Year Net Income has a direct relationship, but this relationship is not just linear but also bends upwards, indicating that the increase in the dependent variable accelerates as Year Net Income grows, illustrating a more complex, non-linear relationship between the two. The economic impact is high if we consider the size of this last coefficient and their practical implications: changes in Year Net Income affect the bank P/P ratio significantly.
Our analysis confirms that profitability significantly explains variations in the price-to-book ratio. However, investor contributions as guarantees for third parties do not display a similar explanatory power. Both financial year variables related to earnings, documented in both the Income Statement and Other Comprehensive Income, were statistically significant. Additionally, earnings from Other Comprehensive Income in prior years also showed significance. This finding may be attributed to the accounting practice under IFRS 9, where certain earnings recorded in Other Comprehensive Income from previous financial periods were recycled in the Income Statement in subsequent financial years.
Among variables related to shareholders’ contributions, only Treasury Stock and Share Premium held significance. The market positively views shareholder remuneration through the repurchase of own shares, indicating a favorable perception. The Share Premium’s positive perception could be due to its status as a reserve available for dividend distribution. Notably, major banks chose to make substantial payments by reimbursing Share Premiums.
The analysis categorized countries based on their impact on the P/B ratio: some, like Austria, had no significant effect, while others significantly affected it, showing diverse economic behaviors. Additionally, the size of a bank’s assets influenced its P/B ratio, with larger banks and those in the second quartile facing more penalties, suggesting that larger asset volumes might not always be favorable in valuation metrics.
Equation (2) was run excluding data from the year 2020 to determine whether the onset of the COVID-19 crisis affected the results. The conclusions remained consistent. To further assess the robustness of Equation (2), we employed two complementary techniques: cross-validation and temporal stability assessment. Both methods confirmed the stability, consistency, and robustness of our model estimates3.

4.3. Modeling the Price-to-Book Ratio with the Regulatory Capital

With the aim of validating our model, we turn to different data: those provided on the regulatory capital of banks. In Equation (3), utilizing panel data, the P/B ratio serves as the dependent variable, while the ratio of each capital component over total capital is considered an independent variable. To avoid multicollinearity, the least relevant variable, AT1, was excluded based on Table 1. Expected dividend, combining solvency-related variables and a factor reducing bank solvency, was also included as an independent variable. Additionally, we incorporated the P/B ratio from the previous year, the same dummy variables from Equation (2), and quadratic adjustments as independent variables in this regression analysis. To address concerns regarding endogeneity and control for within-bank dynamics, we employ panel data estimations with fixed effects. Equation (3) can be summarized as
P / B j t = β 0 + β 1 C E T 1 j t + β 2 T 2 j t + β 3 C o u n t r y j t + β 4 Q u a r t i l e j t + β 5 D P j t + β 6 L a g P B j t + β 7 C E T 1 j t 2 + β 8 T 2 j t 2   + β 9 D P j t 2 + u j t
  • j = 1 to 46
  • t = 2005 to 2020
Table 7 summarizes the results of Equation (3).
As illustrated in Table 7, the explanatory power of the data in relation to the P/B ratio based on various capital components exhibited notably low goodness of fit. However, this improved considerably upon the inclusion of anticipated dividends, which contribute to a reduction in regulatory capital, and the consideration of the previous year’s P/B ratio. Notably, performance variations were observed across different countries but remained consistent across banks of varying sizes.
CET1 displayed a significant non-linear relationship with the price-to-book ratio, while Tier 2 exhibited no significant relationship. The impact of dividends demonstrated a concave quadratic influence. The economic impact is high if we evaluate the size of this coefficient and its practical implications; changes in dividends affect the P/B ratio significantly. We suggest a maximal effect around approximately 0.3, as visualized more explicitly in Figure 4. Notably, an increase in dividends did not linearly affect the P/B ratio; for instance, an increase from 0.10 to 0.11 in the dividend percentage did not have an equivalent impact compared to an increase from 0.15 to 0.16. The linear estimation tended to underestimate the effect of dividends, as evidenced by the disparity between the red curve and the blue line.
Equation (3) was run excluding data from the year 2020 to determine if the onset of the COVID-19 crisis affected the results. The conclusions remained consistent. To further assess the robustness of Equation (3), we employed two complementary techniques: cross-validation and temporal stability assessment, similar to Equation (2). Both methods confirmed the stability, consistency, and robustness of our model estimates.

5. Discussion

The P/B ratio dipped below 1 during the 2008 crisis and has maintained relative stability, even at the beginning of the 2020 crisis. The persistent sub-1 ratio post-2008 suggests a long-term adjustment in investor valuation frameworks, possibly reflecting a reassessment of risk or a shift in investment strategies.
We find a consistent stability in annual earnings reported. Furthermore, when dividend distribution faces no restrictions, there is a parallel stability in the proportion of dividends disbursed each year. There is a tendency for higher earnings in the Income Statement compared to Other Comprehensive Income. This could be justified by considering that profits recorded in the Income Statement can be distributed as dividends, unlike profits recorded in Other Comprehensive Income.
Previous studies have established a significant relationship between Income Statement results and the price-to-book (P/B) ratio (Balasubramnian et al. 2019). Additionally, prior research has consistently found no significant relationship between share capital and bank market value, often attributing this lack of correlation to factors such as increased cost of capital and declining profitability (He et al. 2024; Bertsatos and Sakellaris 2016; Handorf 2011).
Our study confirms that investors undervalue their contributions to bank equity due to perceptions of lower profitability and reduced future cash flows, despite increased bank stability. Additionally, our research expands on these findings in several key ways. First, we demonstrate that the positive relationship between equity components and bank market value extends beyond the results reported in the Income Statement. Specifically, our analysis reveals a nuanced, non-linear relationship between Income Statement performance figures and the P/B ratio. This indicates that as Year Net Income increases, the growth in the P/B ratio not only continues but accelerates, suggesting a progressively intensifying valuation impact from rising profits.
Second, our study finds that most components related to investor contributions intended as safeguards for third parties do not significantly explain share price movements. However, there are two notable exceptions: Treasury Stock and Share Premium. Treasury Stock reflects shareholder return on investment and equity reduction, while Share Premium accounts facilitate the distribution of dividends with fewer regulatory obstacles. Our findings suggest that the market does not value investor contributions aimed at protecting creditors; instead, it appears to reward strategies that reduce these safeguards.
Our analysis confirms a significant relationship between the P/B ratio and Common Equity Tier 1 (CET1) capital. In contrast, other forms of capital, such as Tier 2 regulatory capital, are less valued or not valued at all by investors. This finding aligns with earlier research (Belkhir et al. 2021; Jordan et al. 2011). Furthermore, consistent with prior studies by Andreeva et al. (2023), our research establishes a significant relationship between dividends paid and the P/B ratio. We confirm that investors do not value banks for merely boosting their minimum required regulatory capital in compliance with Basel III, as previous researchers have done (Ercegovac et al. 2020). This reaction persists despite findings by researchers like Song (2023) and Adelopo et al. (2022), who argued that increased capital requirements do not directly contribute to the observed reduction in profitability, with varying effects depending on the size of the bank (Gržeta et al. 2023). Possible explanations include banks’ resistance to raising equity due to government guarantees (Baron 2020), or that strong equity requirements do not impede banks’ performance but do reduce shareholder value (Durand and Le Quang 2022).
Our study highlights that investors prefer high current returns without considering the long-term future of the entity. We can identify a significant non-linear relationship between CET1 and the P/B ratio. This is evidenced by our discovery of a non-linear relationship between the Income Statement and the P/B ratio, particularly since the Income Statement factors into the calculation of CET1. Second, our findings reveal a pronounced concave quadratic effect, suggesting that the impact of dividends on the P/B ratio increases at a decreasing rate as dividend payments rise.
As for final conclusions and implications, our analysis suggests that the limitations imposed on dividend distributions and the application of Basel III, intended to strengthen banks’ capital bases and enhance their intermediation capabilities, do not inherently bolster the sustainability of their market prices. This implies a disconnect between regulatory intentions and market perceptions, highlighting a complex interplay where increased regulatory capital requirements may be viewed unfavorably by investors, regardless of their potential benefits for financial stability, even though some previous researchers suggest that it is not necessarily correct to assume that stricter regulations, such as Basel III, will negatively affect the profitability or efficiency of banks (Bolfek et al. 2024).
Several previous studies evaluated the role of regulatory capital in strengthening the resilience of bank lending activities during crisis periods. The results suggested that banks with higher regulatory capital ratios prior to the crises lend more resiliently to the real economy during the crisis than those with lower regulatory capital ratios ex-ante. This implies that recent reforms on bank regulatory capital have effectively built-up bank strength, which in turn helped banks continue lending to the real economy during crises (Mateev et al. 2024; Anani and Owusu 2023; Cao and Chou 2022; Alkhazali et al. 2024; Le et al. 2023; De Bandt et al. 2022).
However, the observed dominance of profitability and dividend policies over direct investor contributions in influencing market valuations necessitates a critical reevaluation of the impacts of Basel III, as highlighted by Vickers (2019). Regulation faces multiple challenges that call for a rethinking of its design (Durand and Le Quang 2022). Specifically, it is essential to examine how increases in regulatory capital adversely affect market value. The implementation of Basel III, which leads to a decline in the P/B ratio, may prompt banks to increase their dividend payouts, as posited by Gambacorta et al. (2023). Such actions could further deteriorate the financial condition of these entities, potentially creating a feedback loop that depresses market confidence and valuations even further.
There is a strong dynamic behavior in the P/B ratio, with past values exerting a significant influence on future values. This underscores the importance of historical trends in understanding the trajectory of this crucial metric.
There are differences between countries, and additionally, a bank’s asset volume played a role in the P/B ratio, with larger banks and those in the second quartile experiencing greater penalization, in line with previous research (Gharaibeh and Jaradat 2021). This situation suggests a complex interplay of factors influencing this metric.
Future studies should consider examining potential divergences in investor behavior, particularly between institutional investors and individual shareholders when trading bank shares. Additionally, considering data from other regions, such as the United States, can help address concerns regarding the external validity of our findings. Ultimately, our work invites further exploration of the effects of the COVID-19 crisis that began in 2020, providing a more comprehensive understanding of its impact on this ratio.

Author Contributions

Conceptualization, F.G.M.; methodology, F.G.M., J.D.J. and R.Q.S.d.l.M.; software, R.Q.S.d.l.M.; validation, F.G.M. and J.D.J., writing—original draft preparation, F.G.M.; writing—review and editing, F G.M. and J.D.J.; formal analysis, R.Q.S.d.l.M.; investigation, F.G.M., J.D.J. and R.Q.S; resources, F.G.M.; data curation, F.G.M., J.D.J. and R.Q.S.d.l.M.; visualisation, F.G.M., J.D.J. and R.Q.S.d.l.M.; writing—original draft preparation, F.G.M. and J.D.J.; writing—review and editing, F.G.M. and J.D.J. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Data Availability Statement

Dataset available on request from the authors.

Conflicts of Interest

The authors declare no conflicts of interest.

Appendix A

EntityCountry
Aareal BankGermany
AIB Group PlcIreland
Banca Monte dei PaschiItaly
Banca Popolare di SondrioItaly
Banco Comercial Português, SAPortugal
BankinterSpain
Banque Cantonale VaudoiseSwitzerland
Barclays Bank PlcUK
BBVASpain
BNP Paribas SAFrance
BPER Banca SpAItaly
Close Brothers Group PlcUK
Commerzbank AGGermany
Crédit AgricoleFrance
Credito Emiliano SpAItaly
Credito Valtellinese SpAItaly
Danske Bank A/SDenmark
DNB ASANorway
HSBC Holdings PlCUK
Intesa Sanpaolo SpAItaly
Jyske Bank A/SDenmark
KBC Group NVBrussels
Liechtensteinische Landesbank AGSwitzerland
Lloyds Banking Group PlcUK
Mediobanca - Banca di Credito Finanziario SpAItaly
Nordea Bank AbpFinland
Raiffeisen Bank International AGAustria
Ringkjøbing Landbobank A/SDenmark
Royal Bank of Scotland plcUK
SabadellSpain
SantanderSpain
Skandinaviska Enskilda Banken AB (publ.)Sweeden
Société Générale SAFrance
Spar Nord Bank A/SDenmark
SpareBank 1 Nord-NorgeNorway
SpareBank 1 SMNNorway
SpareBank 1 SR-Bank ASANorway
St. Galler Kantonalbank AGSwitzerland
Standard Chartered PlcUK
Svenska Handelsbanken AB (publ)Sweeden
Swedbank AB (publ)Sweeden
Sydbank A/SDenmark
UniCredit SpAItaly
Unione di Banche Italiane SpAItaly
Valiant Holding AGSwitzerland

Notes

1
Higher risk taking will likely increase the cash flows, but during crisis they likely result in huge loan losses due to large bad debts particularly in high-risk category loans.
2
The cross-sectional analysis in Table 4 has the same number of observations as the panel one in subsequent tables, because the cross-sectional analysis uses only banks that had data for all years within the period 2005 to 2020.
3
Cross-validation was carried out using a 4-fold cross-validation scheme, where we randomly divided the dataset into four subsets of similar size. In each iteration, one subset was used as the validation set while the remaining three were used to estimate the model. This procedure was repeated four times. We checked that the value of the estimates, their standard deviation, and the R-squared are similar to those of the full model, which allowed us to verify the consistency and robustness of the model. Additionally, to check the temporal stability of the model, we estimated two models, one without data from the first year and the other removing data from the last year, and adjusted the model in each of these periods. This allowed us to assess how the model estimates varied over time. These evaluations provide a comprehensive understanding of the stability and reliability of the model in different scenarios and periods, reinforcing the reliability and robustness of our results.

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Figure 1. Correlation among the independent variables and the dependent variable.
Figure 1. Correlation among the independent variables and the dependent variable.
Jrfm 17 00363 g001
Figure 2. Correlation of all variables.
Figure 2. Correlation of all variables.
Jrfm 17 00363 g002
Figure 3. Behaviour of independent variables with respect to the dependent variable.
Figure 3. Behaviour of independent variables with respect to the dependent variable.
Jrfm 17 00363 g003
Figure 4. Non-linear effect of the dividend.
Figure 4. Non-linear effect of the dividend.
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Table 1. Descriptive statistics of the variables.
Table 1. Descriptive statistics of the variables.
VariableMeanStdDesvMinQ1MedianQ3Max
PB1.0700.6600.0080.5970.9261.4203.982
SC0.1600.2080.0030.0500.0850.1801.593
TS−0.0130.070−0.998−0.005−0.0000.0000.001
SP0.1670.180−0.0060.0000.0920.2980.757
YNI0.0680.093−0.5310.0380.0740.1190.265
RE0.5460.263−0.6300.3730.5520.7361.816
YOCI−0.0020.045−0.356−0.0150.0000.0110.351
AOCI−0.0060.091−0.895−0.0200.0030.0250.318
EHS0.0390.0710.0000.0000.0000.0690.646
MI0.0420.064−0.0010.0000.0090.0590.420
DP0.0370.0460.0000.0100.0270.0530.619
CET10.7400.1390.2420.6440.7530.8311.000
AT10.0720.0600.0000.0030.0750.1090.418
T20.1890.1110.0000.1120.1680.2710.542
Table 2. Variation of the price-to-book ratio over the years.
Table 2. Variation of the price-to-book ratio over the years.
VariableYearMeanStdDesvMinQ1MedianQ3Max
PB20052.1610.5400.9501.8462.1432.5133.814
PB20062.2600.5831.0301.8902.1902.7003.982
PB20071.5550.4420.7501.2351.4941.8252.653
PB20080.7050.3680.1210.4240.6870.8651.878
PB20090.9790.4870.1500.6070.9721.1702.890
PB20100.9620.4180.0500.5841.0071.2811.939
PB20110.6590.3850.0300.3380.6630.8881.490
PB20120.7480.4020.0300.5240.6900.8861.723
PB20130.9430.4480.0300.6480.8851.1901.864
PB20140.9660.4970.0080.6360.9001.2202.243
PB20150.8830.4660.0280.5500.7381.2002.100
PB20160.9360.5160.0250.6090.8451.2691.982
PB20170.9880.4940.0170.6800.9511.2301.963
PB20180.8190.4240.1330.5180.7401.0581.952
PB20190.8180.4180.2140.5980.6701.1002.075
PB20200.7440.4880.1600.4600.5900.9502.310
Table 3. Price-to-book ratio comparison.
Table 3. Price-to-book ratio comparison.
VariableYearOur Sample—European BanksS&P Global 1200—BanksMSCI World Banks IndexS&P US 500—BanksS&P US 600—BanksMSCI Europe Banks Index
PB20052.161N/A2.1301.9682.0732.100
PB20062.260N/A2.2502.0691.9282.170
PB20071.555N/A1.6701.3311.3261.620
PB20080.705N/A0.8401.0181.0840.660
PB20090.9791.1301.2101.1330.9671.070
PB20100.9621.1161.1201.2511.1390.880
PB20110.6590.8560.8501.0291.0510.600
PB20120.7481.0421.0301.1461.1520.760
PB20130.9431.1901.2101.4341.6250.960
PB20140.9661.0881.0901.1311.5120.910
PB20150.8830.9951.0101.0581.4670.830
PB20160.9361.0191.0501.1911.8910.840
PB20170.9881.1751.2201.3931.6670.940
PB20180.8190.9280.9501.1381.3520.710
PB20190.8181.0411.0901.4241.3270.740
PB20200.7440.8560.8901.1271.0930.560
Table 4. Price-to-book ratio by country.
Table 4. Price-to-book ratio by country.
VariableCountryMeanStdDesvMinQ1MedianQ3Max
PBAustria1.0260.6500.4000.6080.8541.1152.800
PBBelgium1.2890.4970.2800.9881.3751.6501.900
PBDenmark1.2990.6530.3550.8091.1631.6073.200
PBFinland1.2820.4350.7140.9651.2101.4102.345
PBFrance0.8300.5440.2410.5190.6160.8532.588
PBGermany0.6140.4470.0760.2900.5030.7761.717
PBIreland0.5760.8040.0300.0500.1650.6572.420
PBItaly0.7890.6090.0080.3750.5951.0132.893
PBNorway1.1370.4150.4290.8801.0821.2432.537
PBPortugal0.8230.8480.0250.2910.5170.8592.726
PBSpain1.2600.8320.1600.7010.9761.5413.982
PBSweeden1.5100.5550.2241.2881.5231.7232.869
PBSwitzerland1.2180.5230.5700.7551.1771.4672.797
PBUK1.1760.6430.2910.6541.0481.5442.900
Table 5. Equation (1) Summary.
Table 5. Equation (1) Summary.
Equation (1)Equation (1)
(Intercept)0.995 *** (0.000)0.167 (0.501)
Country dummiesYesYes
SC0.122 (0.710)0.352 (0.221)
TS0.583 (0.135)0.633 * (0.059)
SP0.128 (0.713)0.423 (0.169)
YNI2.787 *** (0.000)1.487 *** (0.000)
RE0.265 (0.410)0.336 (0.234)
YOCI1.440 *** (0.006)2.545 *** (0.000)
AOCI1.032 *** (0.009)0.826 ** (0.015)
EHS−0.515 (0.185)0.081 (0.811)
quartile_TA2−0.261 *** (0.000)−0.124 *** (0.009)
quartile_TA3−0.123 ** (0.029)−0.067 (0.170)
quartile_TA4−0.330 *** (0.000)−0.172 *** (0.003)
Lag(price_book) 0.556 *** (0.000)
Num.Obs.720675
R20.4650.702
R2 Adj.0.4470.690
* p < 0.1, ** p < 0.05, *** p < 0.01.
Table 6. Results obtained with Equation (2).
Table 6. Results obtained with Equation (2).
Equation (2)Equation (2)
(Intercept)0.282 (0.257)0.179 (0.457)
Lag(price_book)0.413 *** (0.000)0.421 *** (0.000)
Country dummiesYesYes
SC−0.065 (0.853)0.221 (0.428)
TS0.811 (0.235)0.632 * (0.050)
SP1.043 ** (0.011)1.034 ** (0.011)
YNI2.430 *** (0.000)2.483 *** (0.000)
RE0.139 (0.685)0.355 (0.191)
YOCI2.253 *** (0.000)2.409 *** (0.000)
AOCI0.976 ** (0.010)0.956 *** (0.003)
EHS−0.552 (0.230)0.009 (0.977)
quartile_TA2−0.137 *** (0.003)−0.139 *** (0.002)
quartile_TA3−0.044 (0.354)−0.051 (0.284)
quartile_TA4−0.151 *** (0.007)−0.153 *** (0.006)
SC20.160 (0.374)
TS2−0.024 (0.975)
SP2−1.231 *** (0.006)−1.087 ** (0.015)
YNI26.109 *** (0.000)5.992 *** (0.000)
RE20.168 (0.321)
YOCI2−1.367 (0.549)
AOCI20.378 (0.535)
EHS21.509 (0.101)
Num.Obs.675675
R20.7330.731
R2 Adj.0.7190.719
* p < 0.1, ** p < 0.05, *** p < 0.01.
Table 7. Equation (3) Results.
Table 7. Equation (3) Results.
Equation (3)Equation (3)Equation (3)Equation (3)
(Intercept)−0.111 (0.722)0.828 ** (0.013)−0.336 (0.386)1.089 * (0.082)
Country dummiesYesYesYesYes
CET11.299 *** (0.000)0.446 (0.167)0.954 ** (0.010)−2.870 * (0.100)
T20.948 ** (0.014)0.568 (0.151)1.771 *** (0.000)0.444 (0.680)
DP 2.106 *** (0.000)2.792 *** (0.000)6.137 *** (0.000)
quartile_TA2 −0.330 *** (0.000)−0.444 *** (0.000)−0.387 *** (0.000)
quartile_TA3 −0.242 *** (0.000)−0.381 *** (0.000)−0.326 *** (0.000)
quartile_TA4 −0.441 *** (0.000)−0.616 *** (0.000)−0.557 *** (0.000)
Lag(price_book) 0.488 *** (0.000)0.469 *** (0.000)
CET12 2.705 ** (0.030)
T22 2.520 (0.220)
DP2 −8.808 *** (0.000)
Num.Obs.720704672672
R20.3080.3630.5570.587
R2 Adj.0.2930.3460.5430.573
* p < 0.1, ** p < 0.05, *** p < 0.01.
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MDPI and ACS Style

Martínez, F.G.; Jiménez, J.D.; Matas, R.Q.S.d.l. Reevaluating Bank Price-to-Book Ratios: An In-Depth Analysis of Equity Components across Economic Cycles. J. Risk Financial Manag. 2024, 17, 363. https://doi.org/10.3390/jrfm17080363

AMA Style

Martínez FG, Jiménez JD, Matas RQSdl. Reevaluating Bank Price-to-Book Ratios: An In-Depth Analysis of Equity Components across Economic Cycles. Journal of Risk and Financial Management. 2024; 17(8):363. https://doi.org/10.3390/jrfm17080363

Chicago/Turabian Style

Martínez, Fernando García, Juan Domínguez Jiménez, and Ricardo Queralt Sánchez de las Matas. 2024. "Reevaluating Bank Price-to-Book Ratios: An In-Depth Analysis of Equity Components across Economic Cycles" Journal of Risk and Financial Management 17, no. 8: 363. https://doi.org/10.3390/jrfm17080363

APA Style

Martínez, F. G., Jiménez, J. D., & Matas, R. Q. S. d. l. (2024). Reevaluating Bank Price-to-Book Ratios: An In-Depth Analysis of Equity Components across Economic Cycles. Journal of Risk and Financial Management, 17(8), 363. https://doi.org/10.3390/jrfm17080363

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