4.1. Optimal Tax Rates for Bird Index, PIT, CIT, and VAT
As previously outlined, tax revenue data for personal income tax (PIT), corporate income tax (CIT), value-added tax (VAT), and total government revenue—along with GDP, population, and GDP deflator values—were sourced from the Eurostat database to enable inflation adjustment and the calculation of the Bird Index using Equation (
2).
Table 2 presents the minimum and maximum values observed across the EU-27 countries for the deflated and normalized total, PIT, CIT, and VAT revenues over the 1995–2022 period. These normalized values were obtained by dividing each country’s deflated revenue-to-GDP ratio by the highest observed value of the corresponding variable across the entire panel and time span, as formalized in Equation (
5). This maximum normalization approach anchors all variables to a common peak reference, ensuring consistent scaling and equitable representation of relative fiscal performance across countries and years. The wide ranges highlight substantial heterogeneity in fiscal structures and revenue mobilization capacity within the EU. The Bird Index, for instance, spans from 23.87% to 100%, indicating that even the highest-performing country in a given year achieves only the reference maximum, while the lowest falls to less than a quarter of that peak. PIT revenues show a similarly broad dispersion (23.60% to 149.26%), reflecting diverse labor market structures, progressivity of tax systems, and enforcement efficiency. The most extreme variation is observed in CIT revenues, ranging from 6.00% to 179.59%, largely driven by the concentration of multinational profits in low-tax jurisdictions such as Ireland and Luxembourg due to profit-shifting strategies. VAT revenues, while less volatile, still range from 20.00% to 152.96%, influenced by differences in consumption patterns, tax base breadth, and compliance levels. By construction, a normalized value of 100% represents the historical maximum achieved by any EU country in the sample for that variable, while values above 100% indicate performance exceeding even the panel-wide peak in a given year. This framework facilitates a nuanced assessment of fiscal effort and efficiency, free from distortions introduced by country-specific scaling, and supports robust cross-sectional and temporal comparisons of tax policy outcomes across the European Union.
The dataset was then incorporated into regression models to examine the relationship between tax rates and corresponding revenues. Separate specifications were estimated for the Bird Index and each tax category (PIT, CIT, and VAT). In all models, the dependent variable was the log-transformed tax revenue, while the independent variables included the log-transformed tax rate and its squared term to capture potential non-linear (e.g., Laffer-type) effects. The inclusion of the quadratic term allowed the models to capture the nonlinear relationship inherent in the Laffer Curve, where revenue initially increases with tax rates but declines after a certain threshold due to reduced economic activity or tax avoidance. The logarithmic transformation enables the estimation of a non-symmetrical behavior in the relationship between the dependent and independent variables, enhancing the model’s flexibility to reflect the complex dynamics observed in the European Union data. For the Bird Index, the regression examined the relationship between fiscal effort and total government revenue, testing for a similar quadratic pattern.
The panel data regression models were estimated using either fixed effects or random effects, with the choice determined by the Hausman test. The Hausman test results, shown in
Table 3, indicated that the Bird Index regression required fixed effects due to a
p-value below 0.05, while the PIT, CIT, and VAT regressions used random effects, as their
p-values exceeded
. This ensured the econometric models were appropriately specified, enhancing the reliability of the findings. Initial fixed effects and random effects estimations revealed autocorrelation in the residuals, as indicated by the Durbin–Watson statistic (
Durbin & Watson, 1950). To address this, first differencing was applied to all variables.
A distinct regression approach was employed using the Seemingly Unrelated Regressions (SUR) method, tailored to either time series or cross-sectional data based on the Hausman test outcomes. The SUR method accounted for correlations between error terms across the Bird Index, PIT, CIT, and VAT regressions without applying first differencing, enhancing estimation efficiency and ensuring robust regression results by addressing potential cross-equation dependencies.
The regression results for the Bird Index, PIT, CIT, and VAT are presented in
Table 4,
Table 5,
Table 6 and
Table 7, using the Equation (
8), reporting two models per tax type, with the first model using fixed or random effects with first differencing and the second model using SUR.
Table 4 examines the relationship between fiscal effort, measured by the Bird Index, and total government revenue, with
as the dependent variable. The fixed effects specification accounts for unobserved country-specific factors, such as differing tax administration systems. In Model 1, estimated with fixed effects and first differencing, the intercept (
) and linear term (
) are highly significant, indicating that higher tax rates strongly boost revenue at lower levels. The quadratic term (
) is marginally significant, suggesting a subtle Laffer Curve effect. The adjusted
of
indicates a modest fit, implying that fiscal effort alone explains limited revenue variation, possibly due to the aggregation of diverse tax structures. The
F-statistic (
) confirms model significance, with 724 observations ensuring robustness (
Wang & Cui, 2017). Small standard errors (
for
,
for
,
for
) reflect precise estimates, though the weak quadratic term suggests a less pronounced nonlinear effect.
Model 2, estimated using SUR, offers a stronger fit, with an adjusted of , capturing a substantial portion of revenue variation. The SUR method accounts for correlations between error terms across the Bird Index and other tax regressions, enhancing efficiency. The intercept () is insignificant, suggesting no baseline revenue effect at zero tax rates. The linear term () and quadratic term () are significant, confirming a robust Laffer Curve effect. The F-statistic () and 751 observations reinforce reliability, with tight standard errors ( for , for , for ). The improved fit in Model 2, likely due to SUR’s ability to model cross-equation dependencies, highlights the importance of considering inter-tax interactions when optimizing fiscal effort.
Table 4.
Laffer Curve estimation results for Bird Index.
Table 4.
Laffer Curve estimation results for Bird Index.
| | Dependent Variable: log(Bird INDEX Revenue) |
|---|
| | Independent Variables | | | |
|---|
| Model | | | | Adjusted | -Statistic | No. of Obs. |
|---|
| 1 | *** | *** | | | *** | 724 |
| | | | | | | |
| 2 | | ** | *** | | *** | 751 |
| | | | | | | |
Table 5 focuses on PIT, with
as the dependent variable, using a random effects specification (Hausman test
). Model 3, estimated with random effects and first differencing, shows a highly significant intercept (
) and linear term (
), indicating a strong positive relationship between PIT rates and revenue. The quadratic term (
) confirms a significant Laffer Curve effect. The adjusted
of
indicates an excellent fit, capturing most revenue variation, likely due to PIT’s direct link to individual income. The
F-statistic (
) and 724 observations confirm robustness, with small standard errors (
for
,
for
,
for
) indicating high precision.
Model 4, estimated using SUR, has a lower adjusted of , still indicating a good fit. The SUR approach accounts for correlations between PIT and other tax regressions, improving efficiency. The intercept () is insignificant, while the linear term () and quadratic term () are highly significant. The F-statistic () and 751 observations ensure reliability, with standard errors ( for , for ) reflecting precision.
Table 5.
Laffer Curve estimation results for personal income tax.
Table 5.
Laffer Curve estimation results for personal income tax.
| | Dependent Variable: |
|---|
| | Independent Variables | | | |
|---|
| Model | | | | Adjusted | -Statistic | No. of Obs. |
|---|
| 3 | *** | *** | *** | | *** | 724 |
| | | | | | | |
| 4 | | *** | *** | | *** | 751 |
| | | | | | | |
Table 6 analyzes CIT, with
as the dependent variable, using a random effects specification (Hausman test
). Model 5, estimated with random effects and first differencing, shows a significant intercept (
) and linear term (
), indicating that higher CIT rates increase revenue initially. The quadratic term (
) confirms a strong Laffer Curve effect. The adjusted
of
indicates a strong fit, with the
F-statistic (
) and 724 observations confirming robustness. Small standard errors (
for
,
for
,
for
) ensure precision.
Model 6, estimated using SUR with first differencing, has a similar adjusted of , with a significant intercept () and linear term (). The quadratic term () reinforces the Laffer Curve effect. The SUR method enhances efficiency by modeling correlations with other tax regressions. The F-statistic () and 751 observations support reliability, with standard errors ( for , for ) indicating the precision.
Table 6.
Laffer Curve estimation results for corporate income tax.
Table 6.
Laffer Curve estimation results for corporate income tax.
| | Dependent Variable: |
|---|
| | Independent Variables | | | |
|---|
| Model | | | | Adjusted | -Statistic | No. of Obs. |
|---|
| 5 | *** | *** | *** | | *** | 724 |
| | | | | | | |
| 6 | * | *** | *** | | *** | 751 |
| | | | | | | |
Table 7 examines VAT, with
as the dependent variable, using a random effects specification (Hausman test
). Model 7, estimated with random effects and first differencing, shows a significant intercept (
) and linear term (
), indicating a strong revenue response to VAT rate increases. The quadratic term (
) confirms a pronounced Laffer Curve effect. The adjusted
of
indicates a strong fit, with the
F-statistic (
) and 717 observations ensuring robustness. Small standard errors (
for
,
for
,
for
) reflect high precision.
Model 8, estimated using SUR, has a higher adjusted of , indicating an excellent fit. The SUR method accounts for correlations with other tax regressions, enhancing efficiency. The intercept () is insignificant, while the linear term () and quadratic term () are significant. The F-statistic () and 744 observations confirm robustness, with standard errors ( for , for ) ensuring precision.
Table 7.
Laffer Curve estimation results for value-added tax.
Table 7.
Laffer Curve estimation results for value-added tax.
| | Dependent Variable: |
|---|
| | Independent Variables | | | |
|---|
| Model | | | | Adjusted | -Statistic | No. of Obs. |
|---|
| 7 | *** | *** | *** | | *** | 717 |
| | | | | | | |
| 8 | | *** | *** | | *** | 744 |
| | | | | | | |
4.2. Tax Efficiency in EU States
To determine which countries exhibit the Laffer Curve, it is essential to analyze the quadratic and the linear coefficients in each independent regression model estimated for a specific country-tax pair using its time-series data. A significant result is characterized by a negative quadratic coefficient and a positive linear coefficient, combined with
p-values of at most
.
Table 8,
Table 9,
Table 10 and
Table 11 present the countries where these conditions are met, providing evidence of the Laffer Curve effect across different tax types in the EU member states.
This analysis is grounded in the table presenting the quadratic coefficient results for the Bird Index per country (
Table 8), which provides a foundational analysis of fiscal efficiency across a subset of EU member states. The dependent variable, the logarithm of Bird Index revenue, reflects a composite measure of tax efficiency, capturing the balance between tax burden and revenue generation. The quadratic specification, with coefficients
(intercept),
(linear term), and
(quadratic term), models the non-linear relationship between tax rates and revenue, consistent with the Laffer Curve hypothesis. The negative
coefficients across all listed countries (e.g.,
for Austria,
for Belgium,
for Italy) indicate the presence of a Laffer Curve effect, where revenue increases with tax rates up to a certain point before declining. The statistical significance of these coefficients underscores the robustness of the findings for most countries. For instance, Belgium and Bulgaria exhibit highly significant results with
F-statistics of
and
, respectively, suggesting strong model fit and reliable evidence of the Laffer Curve effect. However, countries like Austria, Denmark, and Italy show lower
F-statistics (
,
7, and
, respectively), indicating weaker model explanatory power, possibly due to country-specific factors such as tax compliance or economic structure not fully captured in the model. The number of observations (ranging from 23 for Malta to 28 for several countries) reflects the panel data’s temporal coverage, though variations (e.g., 23 for Malta) may stem from data availability constraints for newer EU members. The negative
coefficients, particularly large in magnitude for countries like Italy
and Belgium
, suggest that these economies may be operating on the downward-sloping portion of the Laffer Curve, where high tax rates lead to revenue losses due to behavioral responses such as tax evasion or reduced economic activity. This finding aligns with the study’s broader argument that larger economies may face revenue inefficiencies due to excessively high tax rates, as noted in the policy implications section.
Table 8.
Quadratic coefficient results for Bird Index per country.
Table 8.
Quadratic coefficient results for Bird Index per country.
| | Dependent Variable: |
|---|
| | Independent Variables | | |
|---|
| Country | | | | -Statistic | No. of Obs. |
|---|
| Austria | *** | *** | *** | | 28 |
| Belgium | *** | *** | *** | *** | 28 |
| Bulgaria | *** | *** | *** | *** | 27 |
| Cyprus | *** | *** | *** | *** | 28 |
| Denmark | *** | *** | *** | | 28 |
| Greece | *** | *** | *** | ** | 28 |
| Hungary | *** | *** | *** | *** | 27 |
| Italy | *** | *** | *** | | 27 |
| Malta | *** | *** | *** | *** | 23 |
| Portugal | *** | *** | *** | | 27 |
| Romania | | *** | *** | | 27 |
| Slovenia | *** | *** | *** | *** | 28 |
| Spain | *** | *** | *** | | 27 |
The turning point, where revenue maximizes, is calculated as , where and are the coefficients from the log-quadratic model, derived from setting the partial derivative with respect to to zero. The resulting value is expressed in percentage points (e.g., a turning point of 0.92 corresponds to a 92% tax rate). This point represents the tax burden (as measured by the Bird Index) at which further rate increases begin to reduce revenue. For example, in Belgium (, ), the turning point is , implying maximum revenue near a Bird Index of approximately 0.98 (close to the sample maximum, indicating operation near or beyond the peak). In contrast, Cyprus (, ) yields a turning point of , well above observed Bird Index values, suggesting room for rate increases without revenue loss. Bulgaria (, ) shows a turning point at , again indicating potential for higher rates. These examples, selected for their statistical robustness and contrasting positions, highlight heterogeneity in fiscal space across EU states.
Table 9 presents the quadratic coefficient results for personal income tax (PIT) revenue, offering a detailed examination of how PIT rates influence revenue across selected EU countries. The dependent variable, the logarithm of PIT revenue, is regressed against a quadratic function of tax rates, with
,
, and
capturing the intercept, linear, and quadratic effects, respectively. The consistently negative
coefficients (e.g.,
for Finland,
for Italy,
for France) confirm the Laffer Curve’s inverted U-shape, where increasing PIT rates initially boost revenue but eventually lead to declines due to disincentives such as reduced labor supply or tax avoidance. The high statistical significance of these coefficients, particularly for France (
) and Croatia (
), indicates strong evidence of the Laffer Curve effect in these countries. Notably, Italy’s large
and
suggest a pronounced sensitivity of PIT revenue to tax rate changes, potentially reflecting a complex tax system or high tax evasion rates, as discussed in the literature review section on tax burden and evasion. In contrast, Slovakia’s
coefficient
is only marginally significant
, suggesting a weaker Laffer Curve effect, possibly due to its relatively flat tax structure, which may limit behavioral responses to tax rate changes. The high
F-statistics across most countries (e.g.,
for Croatia,
for Poland) indicate robust model fit, reinforcing the reliability of the quadratic specification in capturing the non-linear dynamics of PIT revenue.
Table 9.
Quadratic coefficient results for personal income tax per country.
Table 9.
Quadratic coefficient results for personal income tax per country.
| | Dependent Variable: |
|---|
| | Independent Variables | | |
|---|
| Country | | | | -Statistic | No. of Obs. |
|---|
| Croatia | *** | *** | ** | *** | 27 |
| Finland | *** | *** | *** | *** | 28 |
| France | *** | *** | *** | *** | 28 |
| Italy | *** | *** | ** | *** | 28 |
| Poland | *** | *** | ** | *** | 28 |
| Slovakia | ** | *** | | *** | 27 |
| Slovenia | *** | *** | | *** | 27 |
The turning point represents the PIT rate at which revenue is maximized. For France (, ), it occurs at (or 92% effective rate), a level far exceeding typical top marginal rates, indicating substantial fiscal space before reaching the revenue peak. In contrast, Italy (, ) has a turning point at (99%), suggesting operation near or beyond the peak, consistent with high progressive taxation and potential overtaxation. Croatia (, ) yields a turning point of (132%), well above observed rates, implying room for rate increases without revenue loss. These examples—chosen for strong statistical fit and policy relevance—illustrate diverse positions on the Laffer Curve, with larger, high-tax economies like Italy closer to the downward slope, while others retain upward potential. These results support the study’s policy implications, particularly the suggestion that larger economies like France may be overtaxing, leading to revenue losses, and highlight the need for tailored tax policies that account for country-specific economic conditions and taxpayer behavior.
Table 10 focuses on the quadratic coefficient results for corporate income tax (CIT) revenue, providing insights into how CIT rates affect revenue generation in selected EU countries. The negative
coefficients (e.g.,
for Bulgaria,
for Czechia,
for Finland) confirm the Laffer Curve effect for CIT, where excessively high corporate tax rates reduce revenue by discouraging investment or encouraging profit shifting. The statistical significance of these coefficients varies, with Czechia and Latvia showing strong significance
and high
F-statistics (
and
, respectively), indicating robust evidence of the Laffer Curve effect. Finland’s
coefficient
is significant at the
level, but its lower
F-statistic
suggests weaker explanatory power, possibly due to Finland’s unique economic structure or tax incentives that mitigate the impact of high CIT rates. Countries like Croatia, Cyprus, and Germany have marginally significant
coefficients
, suggesting that the Laffer Curve effect may be less pronounced, potentially due to lower baseline CIT rates or effective tax enforcement mechanisms. The high
F-statistic for Latvia
stands out, indicating an exceptionally strong model fit, possibly driven by Latvia’s economic reforms and sensitivity to tax rate changes during the study period.
The turning point represents the CIT rate at which revenue is maximized. For Latvia (, ), it occurs at (113%), far above typical statutory rates, implying substantial room for rate increases before revenue declines. In contrast, Finland (, ) yields a turning point of (64%), suggesting that current rates may already exceed the revenue-maximizing level, consistent with potential overreliance on corporate taxation. Czechia (, ) has a turning point at (137%), indicating significant fiscal space. These examples, selected for statistical strength and contrasting implications, highlight varied positions on the CIT Laffer Curve, with high-tax environments like Finland potentially on the prohibitive side, while reform-oriented economies like Latvia retain upward potential. These findings align with the study’s discussion of fiscal effort, which emphasizes the importance of aligning tax rates with economic potential to maximize revenue without stifling corporate activity. The results suggest that countries like Hungary and Lithuania, with significant coefficients ( and , respectively), may benefit from reducing CIT rates to move closer to the revenue-maximizing point on the Laffer Curve.
Table 10.
Quadratic coefficient results for corporate income tax per country.
Table 10.
Quadratic coefficient results for corporate income tax per country.
| | Dependent Variable: |
|---|
| | Independent Variables | | |
|---|
| Country | | | | -Statistic | No. of Obs. |
|---|
| Bulgaria | *** | *** | | *** | 28 |
| Croatia | | *** | | *** | 27 |
| Cyprus | | *** | | *** | 27 |
| Czechia | | *** | *** | *** | 27 |
| Finland | *** | ** | ** | | 28 |
| Germany | | *** | | *** | 27 |
| Hungary | | *** | ** | *** | 27 |
| Latvia | | *** | *** | *** | 27 |
| Lithuania | | *** | *** | *** | 27 |
| Slovenia | | *** | ** | *** | 27 |
Table 11 examines the quadratic coefficient results for value-added tax (VAT) revenue, offering a comprehensive analysis of how VAT rates influence revenue across a broader set of EU countries. The negative
coefficients (e.g.,
for Belgium,
for Slovenia,
for Sweden) confirm the Laffer Curve effect for VAT, where high VAT rates may reduce revenue by decreasing consumption or increasing tax evasion. The statistical significance of these coefficients is generally strong, with countries like Bulgaria
) and Malta
showing exceptionally high
F-statistics, indicating robust model fit and strong evidence of the Laffer Curve effect. The large negative
for Sweden
suggests a pronounced sensitivity of VAT revenue to rate increases, consistent with the high tax burden in Nordic countries noted in the literature review. In contrast, countries like the Netherlands and Sweden have lower
F-statistics (
and
, respectively,
), indicating weaker model explanatory power, possibly due to stable consumption patterns or effective VAT enforcement mechanisms that mitigate revenue losses at higher rates. The variation in the number of observations (e.g., 24 for Croatia and Slovenia, 23 for Malta) reflects data availability differences, particularly for newer EU members, but does not appear to compromise the overall robustness of the findings.
The turning point represents the VAT rate at which revenue is maximized. For Malta (, ), it occurs at (148%), far above standard rates, indicating substantial fiscal space for rate increases without revenue loss. In contrast, Belgium (, ) yields a turning point of (90%), suggesting operation near or slightly beyond the revenue peak, especially when considering effective rates across multiple VAT bands. Slovenia (, ) has a turning point at (100%), implying proximity to the maximum, consistent with its high standard rate and compliance challenges. These examples, selected for strong statistical support and policy contrast, illustrate heterogeneity in VAT efficiency: smaller, high-enforcement economies like Malta retain upward potential, while mature high-tax systems like Belgium and Slovenia may already face diminishing returns. These results reinforce the study’s policy implications, suggesting that countries with high VAT rates, such as Belgium and Slovenia, may be operating beyond the revenue-maximizing point, necessitating rate adjustments to enhance fiscal efficiency.
Table 11.
Quadratic coefficient results for value-added tax per country.
Table 11.
Quadratic coefficient results for value-added tax per country.
| | Dependent Variable: |
|---|
| | Independent Variables | | |
|---|
| Country | | | | -Statistic | No. of Obs. |
|---|
| Belgium | *** | *** | ** | ** | 28 |
| Bulgaria | *** | *** | *** | *** | 28 |
| Croatia | * | *** | ** | *** | 24 |
| Cyprus | | *** | ** | *** | 27 |
| Czechia | | *** | ** | *** | 27 |
| Estonia | | *** | ** | *** | 27 |
| Finland | *** | *** | *** | *** | 28 |
| Ireland | ** | *** | | *** | 27 |
| Latvia | | *** | | *** | 27 |
| Lithuania | | *** | ** | *** | 27 |
| Malta | *** | *** | ** | *** | 23 |
| Netherlands | | ** | | | 27 |
| Romania | *** | *** | | *** | 28 |
| Slovakia | | *** | *** | *** | 27 |
| Slovenia | *** | *** | *** | *** | 24 |
| Spain | ** | *** | *** | *** | 27 |
| Sweden | | ** | ** | | 27 |
Integrating these findings with the broader context of the study, the tables collectively provide compelling evidence of the Laffer Curve effect across different tax types in the EU member states. The negative quadratic coefficients across all tables confirm that excessively high tax rates lead to revenue losses, supporting the study’s argument that larger economies may face inefficiencies due to overtaxation. The use of the Bird Index in
Table 8 adds a novel dimension by assessing overall tax efficiency, revealing that countries like Italy and Belgium may be particularly vulnerable to revenue losses due to high tax burdens. The advanced econometric methodology, including the Hausman Test and log-quadratic regression, ensures that the results are robust and account for country-specific factors, as emphasized in the methodology section. The policy implications are clear: EU member states must carefully calibrate tax rates to balance revenue generation with economic incentives, with smaller economies like Latvia and Malta potentially benefiting from lower rates to stimulate growth, while larger economies may need to reduce rates to avoid revenue losses. The literature review’s discussion of tax evasion and fiscal effort further contextualizes these findings, highlighting the role of compliance and economic potential in shaping revenue outcomes. Overall, these tables provide a critical empirical foundation for evidence-based tax policy recommendations, advancing the understanding of tax optimization in the European Union.