Corruption Perceptions Index

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The Corruption Perceptions Index (CPI) is an index that scores and ranks countries by their perceived levels of public sector[1] corruption, as assessed by experts and business executives.[2] The CPI generally defines corruption as an "abuse of entrusted power for private gain".[3]Template:Rp The index is published annually by the non-governmental organisation Transparency International since 1995.[4]

Since 2012, the Corruption Perceptions Index has been ranked on a scale from 100 (very clean) to 0 (highly corrupt). Previously, the index was scored on a scale of 10 to 0; it was originally rounded to two decimal spaces from 1995-1997 and to a single decimal space from 1998.

The 2024 CPI, published in February 2025, currently ranks 180 countries "on a scale from 100 (very clean) to 0 (highly corrupt)" based on the situation between 1 May 2023 and 30 April 2024.

Denmark, Finland, Singapore, New Zealand, Luxembourg, Norway, Switzerland and Sweden, (almost all scoring above 80 over the last thirteen years), are perceived as the least corrupt nations in the world — ranking consistently high among international financial transparency — while the most apparently corrupt is South Sudan (scoring 8), along with Somalia (9) and Venezuela (10).[5]

Although the CPI is currently the most widely used indicator of corruption globally, it is worth emphasizing that there are some limitations. First, the CPI does not distinguish between individual types of corruption (some are not even included in the index), and people's perceptions do not necessarily correspond to the actual level of corruption. To get a more comprehensive picture, the CPI should be used alongside other assessments. Furthermore, the CPI is better suited for analyzing long-term trends, as perceptions tend to change slowly.[6]

Methods

The following paragraph describes the methodology for calculating the index, which has been used to calculate the index since 2012, when the methodology was modified to allow comparison over time. The index is calculated in four steps: selection of source data, rescaling source data, aggregating the rescaled data and then reporting a measure for uncertainty.[3]Template:Rp

Selection of source data

The goal of the data selection is to capture expert and business leader assessments of various public sector corruption practices. This includes bribery, misuse of public funds, abuse of public office for personal gain, nepotism in civil service, and state capture. Since 2012 CPI has taken into account 13 different surveys and assessments[7] from 12 different institutions.[3]Template:Rp The institutions are:

Countries need to be evaluated by at least three sources to appear in the CPI.[3]Template:Rp The CPI measures perception of corruption due to the difficulty of measuring absolute levels of corruption.[8] Transparency International commissioned the University of Passau's Johann Graf Lambsdorff to produce the CPI.[9] Early CPIs used public opinion surveys.[3]Template:Rp

Rescaling source data

In order for all data to be aggregated into the CPI index, it is first necessary to carry out standardization during which all data points are converted to a scale of 0-100. Here, 0 represents the most corruption and 100 signifies the least. Indices originally measuring corruption inversely (higher values for higher corruption) are multiplied by -1 to align with the 0-100 scale.

In the next step, the mean and standard deviation for each data source based on data from the baseline year are calculated (the "impute" command of the STATA statistical software package is used to replace missing values). Subsequently, a standardized z score is calculated with an average centered around 0 and a standard deviation of 1 for each source from each country. Finally, these scores are converted back to a 0-100 scale with a mean of approximately 45 and a standard deviation of 20. Scores below 0 are set to 0, and scores exceeding 100 are capped at 100. This ensures consistent comparability across years since 2012.

Aggregating the rescaled data

The resulting CPI index for each country is calculated as a simple average of all its rescaled scores that are available for the given country, while at least three data sources must be available in order to calculate the index. The imputed data is used only for standardization and is not used as a score to calculate the index.

Reporting a measure for uncertainty

The CPI score is accompanied by a standard error and confidence interval. This reflects the variation present within the data sources used for a particular country or territory.

Validity

A study published in 2002 found a "very strong significant correlation" between the Corruption Perceptions Index and two other proxies for corruption: black market activity and an overabundance of regulation.[10]

All three metrics also had a highly significant correlation with the real gross domestic product per capita (RGDP/Cap); the Corruption Perceptions Index correlation with RGDP/Cap was the strongest, explaining over three-quarters of the variance.[10] (Note that a lower rating on this scale reflects greater corruption so that countries with higher RGDPs generally had less corruption.)

Alex Cobham of the Center for Global Development reported in 2013 that "many of the staff and chapters" at Transparency International, the publisher of the Corruption Perceptions Index, "protest internally" over concerns about the index. The original creator of the index, Johann Graf Lambsdorff, withdrew from work on the index in 2009, stating "In 1995 I invented the Corruption Perceptions Index and have orchestrated it ever since, putting TI on the spotlight of international attention. In August 2009 I have informed Cobus de Swardt, managing director of TI, that I am no longer available for doing the Corruption Perceptions Index."[11]

Related phenomena and indices

CPI and economic growth

Research papers published in 2007 and 2008 examined the economic consequences of corruption perception, as defined by the CPI. The researchers found a correlation between a higher CPI and higher long-term economic growth,[12] as well as an increase in GDP growth of 1.7% for every unit increase in a country's CPI score.[13] Also shown was a power-law dependence linking higher CPI score to higher rates of foreign investment in a country.

The research article "The Investigation of the Relationship between Corruption Perception Index and GDP in the Case of the Balkans"[14] from 2020 confirms the positive co-integration relationship in Balkan countries between CPI and GDP and calculates the affecting rate of CPI GDP as 0.34. Moreover, the direction of causality between CPI and GDP was identified from CPI to GDP and, according to this, the hypothesis that CPI is the cause of GDP was accepted.

The working paper Corruption and Economic Growth: New Empirical Evidence[15] from 2019 emphasizes that many previous studies used the CPI for their analysis before 2012 (when the index was difficult to compare over time) and therefore may be biased. At the same time, it presents new empirical evidence based on data for 175 over the period 2012-2018. The results show that corruption is negatively associated with economic growth (Real per capita GDP decreased by around 17% in the long-run when the reversed CPI increased by one standard deviation).

CPI and justice

As reported by Transparency International, there is a correlation between the absence of discrimination and a better CPI score. That indicates that in countries with high corruption, equal treatment before the law is not guaranteed and there is more space for discrimination against specific groups.[16]

It seems that the country's justice system is an important protector of the country against corruption, and conversely, a high level of corruption can undermine the effectiveness of the justice system. Furthermore, as noted by the United Nations Office on Drugs and Crime (UNODC), justice systems around the world are overburdened with large caseloads, chronically underfunded, and in need of more financial and human resources to properly fulfill their mandates. This, in combination with increasing outside interference, pressures and efforts to undermine judicial independence, results in the inability of justice systems to control corruption. The latest edition of the World Justice Project's Rule of Law Index, which shows that in the past year, justice systems in most countries exhibited signs of deterioration, including increasing delays and lower levels of accessibility and affordability, also serves as evidence of the urgency of the situation. Conversely, because corruption implies disproportionate favoring of some groups or individuals over others, it prevents people from accessing justice. For example, a person may rely on personal contacts to change a statutory process.

As shown in the Corruption Perception Index 2023, there is also a positive relationship between corruption and impunity. Countries with higher levels of corruption are less likely to sanction public officials for failing to adhere to existing rules and fulfill their responsibilities. A positive relationship was also shown between corruption and access to justice.[17]

Other phenomena and indices

Thesis The Relationship Between Corruption And Income Inequality: A Crossnational Study,[18] published in 2013, investigates the connection between corruption and income inequality on a global scale. The study's key finding is a robust positive association between income inequality (measured by the Gini coefficient) and corruption (measured by the CPI).

A study from 2001[19] shows that the more affected by corruption, the worse a country's environmental performance. Measuring national environmental performance according to 67 variables, the closest match is with the 2000 TI Corruption Perceptions Index, which revealed a 0.75 correlation with the ranking of environmental performance.

A 2022 study titled "Statistical Analyses on the Correlation of Corruption Perception Index and Some Other Indices in Nigeria"[20] investigated the relationship between the Corruption Perception Index in Nigeria and other relevant indices. These other indices included the Human Development Index (HDI), Global Peace Index (GPI), and Global Hunger Index (GHI). The result from the analysis carried out on the standardized data set shows that a positive linear relationship exists among all the variable considered except for CPI and GPI holding HDI and GHI constant which indicates a negative linear relationship between them.

A study investigating the relationship between public governance and the Corruption Perception Index[21] found that aspects of public administration like voice and accountability, political stability, and rule of law significantly influence how corrupt a country is perceived to be. This suggests that strong governance practices can be effective in reducing corruption.

Assessments

According to political scientist Dan Hough, three flaws in the Index include:[22]

  • Corruption is too complex a concept to be captured by a single score. For instance, the nature of corruption in rural Kansas will be different from that in the city administration of New York, yet the Index measures them in the same way.
  • By measuring perceptions of corruption, as opposed to corruption itself, the Index may simply be reinforcing existing stereotypes and cliches.
  • The Index only measures public sector corruption, ignoring the private sector. This, for instance, means the well-publicized Libor scandal, Odebrecht case and the VW emissions scandal are not counted as corrupt actions.

Media outlets frequently use the raw numbers as a yardstick for government performance, without clarifying what the numbers mean. The local Transparency International chapter in Bangladesh disowned the index results after a change in methodology caused the country's scores to increase; media reported it as an "improvement".[23]

In a 2013 article in Foreign Policy, Alex Cobham suggested that CPI should be dropped for the good of Transparency International. It argues that the CPI embeds a powerful and misleading elite bias in popular perceptions of corruption, potentially contributing to a vicious cycle and at the same time incentivizing inappropriate policy responses. Cobham writes, "the index corrupts perceptions to the extent that it's hard to see a justification for its continuing publication."[24]

Recent econometric analyses that have exploited the existence of natural experiments on the level of corruption and compared the CPI with other subjective indicators have found that, while not perfect, the CPI is argued to be broadly consistent with one-dimensional measures of corruption.[25]

In the United States, many lawyers advise international businesses to consult the CPI when attempting to measure the risk of Foreign Corrupt Practices Act violations in different nations. This practice has been criticized by the Minnesota Journal of International Law, which wrote that since the CPI may be subject to perceptual biases it therefore should not be considered by lawyers to be a measure of actual national corruption risk.[26]

Transparency International also publishes the Global Corruption Barometer, which ranks countries by corruption levels using direct surveys instead of perceived expert opinions, which has been under criticism for substantial bias from the powerful elite.[24]

Transparency International has warned that a country with a clean CPI score may still be linked to corruption internationally. For example, while Sweden had the 3rd best CPI score in 2015, one of its state-owned companies, TeliaSonera, was facing allegations of bribery in Uzbekistan.[27]

Scoring

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As stated by Transparency International in 2024,[28] the level of corruption stagnates at the global level. Only 28 of the 180 countries measured by the CPI index have improved their corruption levels over the last twelve years, and 34 countries have significantly worsened. No significant change was recorded for 118 countries. Moreover, according to Transparency International, over 80 percent of the population lives in countries whose CPI index is lower than the global average of 43, and thus corruption remains a problem that affects the majority of people globally.

Among the states with the most significant decline in the CPI are authoritarian states such as Venezuela, as well as established democracies that have been rated high for a long time, such as Sweden (decrease of 7, the current score 82) or Great Britain (decrease 3, current score 71). Other countries experiencing sharp declines include Sri Lanka, Mongolia, Gabon, Guatemala, and Turkey. In contrast, the most significant improvements in the CPI score over the last twelve years were recorded by Uzbekistan, Tanzania, Ukraine, Ivory Coast, the Dominican Republic and Kuwait.

2024 scores

Below are the scores for each country in the Corruption Perceptions Index. The scores reflect a country's transparency (i.e., the opposite of corruption), while the bar length demonstrates corruption.[29]

Legend

Scores Perceived as less corrupt Perceived as more corrupt
since 2012 100–90 89–80 79–70 69–60 59–50 49–40 39–30 29–20 19–10 9–0
# Nation or Territory Score  Rank
Change
1 Template:Country data Denmark Template:Percentage bar Steady
2 Template:Country data Finland Template:Percentage bar Steady
3 Template:Country data Singapore Template:Percentage bar Increase 2
4 Template:Country data New Zealand Template:Percentage bar Decrease 1
5 Template:Country data Luxembourg Template:Percentage bar Increase 5
5 Template:Country data Norway Template:Percentage bar Decrease 1
5 Template:Country data Switzerland Template:Percentage bar Increase 1
8 Template:Country data Sweden Template:Percentage bar Decrease 2
9 Template:Country data Netherlands Template:Percentage bar Decrease 1
10 Template:Country data Australia Template:Percentage bar Increase 4
10 Template:Country data Iceland Template:Percentage bar Increase 9
10 Template:Country data Ireland Template:Percentage bar Increase 1
13 Template:Country data Estonia Template:Percentage bar Steady
13 Template:Country data Uruguay Template:Percentage bar Increase 5
15 Template:Country data Canada Template:Percentage bar Decrease 3
15 Template:Country data Germany Template:Percentage bar Decrease 6
17 Template:Country data Hong Kong Template:Percentage bar Decrease 2
18 Template:Country data Bhutan Template:Percentage bar Increase 8
18 Template:Country data Seychelles Template:Percentage bar Increase 4
20 Template:Country data Japan Template:Percentage bar Decrease 3
20 Template:Country data United Kingdom Template:Percentage bar Increase 3
22 Template:Country data Belgium Template:Percentage bar Decrease 6
23 Template:Country data Barbados Template:Percentage bar Increase 1
23 Template:Country data United Arab Emirates Template:Percentage bar Increase 4
25 Template:Country data Austria Template:Percentage bar Decrease 5
25 Template:Country data France Template:Percentage bar Decrease 4
25 Template:Country data Taiwan Template:Percentage bar Increase 3
28 Template:Country data Bahamas Template:Percentage bar Increase 2
28 Template:Country data United States Template:Percentage bar Decrease 3
30 Template:Country data Israel Template:Percentage bar Increase 3
30 Template:Country data South Korea Template:Percentage bar Increase 2
32 Template:Country data Chile Template:Percentage bar Decrease 3
32 Template:Country data Lithuania Template:Percentage bar Increase 2
32 Template:Country data Saint Vincent and the Grenadines Template:Percentage bar Increase 4
35 Template:Country data Cape Verde Template:Percentage bar Decrease 5
36 Template:Country data Dominica Template:Percentage bar Increase 6
36 Template:Country data Slovenia Template:Percentage bar Increase 6
38 Template:Country data Latvia Template:Percentage bar Decrease 2
38 Template:Country data Qatar Template:Percentage bar Increase 2
38 Template:Country data Saint Lucia Template:Percentage bar Increase 7
38 Template:Country data Saudi Arabia Template:Percentage bar Increase 15
42 Template:Country data Costa Rica Template:Percentage bar Increase 3
43 Template:Country data Botswana Template:Percentage bar Decrease 4
43 Template:Country data Portugal Template:Percentage bar Decrease 9
43 Template:Country data Rwanda Template:Percentage bar Increase 6
46 Template:Country data Cyprus Template:Percentage bar Increase 3
46 Template:Country data Czech Republic Template:Percentage bar Decrease 5
46 Template:Country data Grenada Template:Percentage bar Increase 3
46 Template:Country data Spain Template:Percentage bar Decrease 10
50 Template:Country data Fiji Template:Percentage bar Increase 3
50 Template:Country data Oman Template:Percentage bar Increase 20
52 Template:Country data Italy Template:Percentage bar Decrease 10
53 Template:Country data Bahrain Template:Percentage bar Increase 23
53 Template:Country data Georgia Template:Percentage bar Decrease 4
53 Template:Country data Poland Template:Percentage bar Decrease 6
56 Template:Country data Mauritius Template:Percentage bar Decrease 1
57 Template:Country data Malaysia Template:Percentage bar Steady
57 Template:Country data Vanuatu Template:Percentage bar Decrease 4
59 Template:Country data Greece Template:Percentage bar Steady
59 Template:Country data Jordan Template:Percentage bar Increase 4
59 Template:Country data Namibia Template:Percentage bar Steady
59 Template:Country data Slovakia Template:Percentage bar Decrease 12
63 Template:Country data Armenia Template:Percentage bar Decrease 1
63 Template:Country data Croatia Template:Percentage bar Decrease 6
65 Template:Country data Kuwait Template:Percentage bar Decrease 2
65 Template:Country data Malta Template:Percentage bar Decrease 10
65 Template:Country data Montenegro Template:Percentage bar Decrease 2
65 Template:Country data Romania Template:Percentage bar Decrease 2
69 Template:Country data Benin Template:Percentage bar Increase 1
69 Template:Country data Ivory Coast Template:Percentage bar Increase 18
69 Template:Country data São Tomé and Príncipe Template:Percentage bar Decrease 2
69 Template:Country data Senegal Template:Percentage bar Increase 1
73 Template:Country data Jamaica Template:Percentage bar Decrease 4
73 Template:Country data Kosovo Template:Percentage bar Increase 10
73 Template:Country data Timor-Leste Template:Percentage bar Decrease 3
76 Template:Country data Bulgaria Template:Percentage bar Decrease 9
76 Template:Country data China Template:Percentage bar Steady
76 Template:Country data Moldova Template:Percentage bar Steady
76 Template:Country data Solomon Islands Template:Percentage bar Decrease 6
80 Template:Country data Albania Template:Percentage bar Increase 18
80 Template:Country data Ghana Template:Percentage bar Increase 10
82 Template:Country data Burkina Faso Template:Percentage bar Increase 1
82 Template:Country data Cuba Template:Percentage bar Decrease 6
82 Template:Country data Hungary Template:Percentage bar Decrease 6
82 Template:Country data South Africa Template:Percentage bar Increase 1
82 Template:Country data Tanzania Template:Percentage bar Increase 5
82 Template:Country data Trinidad and Tobago Template:Percentage bar Decrease 6
88 Template:Country data Kazakhstan Template:Percentage bar Increase 5
88 Template:Country data North Macedonia Template:Percentage bar Decrease 12
88 Template:Country data Suriname Template:Percentage bar Decrease 1
88 Template:Country data Vietnam Template:Percentage bar Decrease 5
92 Template:Country data Colombia Template:Percentage bar Decrease 5
92 Template:Country data Guyana Template:Percentage bar Decrease 5
92 Template:Country data Tunisia Template:Percentage bar Decrease 5
92 Template:Country data Zambia Template:Percentage bar Increase 2
96 Template:Country data Gambia Template:Percentage bar Increase 2
96 Template:Country data India Template:Percentage bar Decrease 3
96 Template:Country data Maldives Template:Percentage bar Decrease 3
99 Template:Country data Argentina Template:Percentage bar Decrease 1
99 Template:Country data Ethiopia Template:Percentage bar Decrease 1
99 Template:Country data Indonesia Template:Percentage bar Increase 16
99 Template:Country data Lesotho Template:Percentage bar Decrease 6
99 Template:Country data Morocco Template:Percentage bar Decrease 2
104 Template:Country data Dominican Republic Template:Percentage bar Increase 4
105 Template:Country data Serbia Template:Percentage bar Decrease 1
105 Template:Country data Ukraine Template:Percentage bar Decrease 1
107 Template:Country data Algeria Template:Percentage bar Decrease 3
107 Template:Country data Brazil Template:Percentage bar Decrease 3
107 Template:Country data Malawi Template:Percentage bar Increase 8
107 Template:Country data Nepal Template:Percentage bar Increase 1
107 Template:Country data Niger Template:Percentage bar Increase 17
107 Template:Country data Thailand Template:Percentage bar Increase 1
107 Template:Country data Turkey Template:Percentage bar Increase 8
114 Template:Country data Belarus Template:Percentage bar Decrease 16
114 Template:Country data Bosnia and Herzegovina Template:Percentage bar Decrease 6
114 Template:Country data Laos Template:Percentage bar Increase 22
114 Template:Country data Mongolia Template:Percentage bar Increase 7
114 Template:Country data Panama Template:Percentage bar Decrease 6
114 Template:Country data Philippines Template:Percentage bar Increase 1
114 Template:Country data Sierra Leone Template:Percentage bar Decrease 6
121 Template:Country data Angola Template:Percentage bar Steady
121 Template:Country data Ecuador Template:Percentage bar Decrease 6
121 Template:Country data Kenya Template:Percentage bar Increase 5
121 Template:Country data Sri Lanka Template:Percentage bar Decrease 6
121 Template:Country data Togo Template:Percentage bar Increase 5
121 Template:Country data Uzbekistan Template:Percentage bar Steady
127 Template:Country data Djibouti Template:Percentage bar Increase 3
127 Template:Country data Papua New Guinea Template:Percentage bar Increase 6
127 Template:Country data Peru Template:Percentage bar Decrease 6
130 Template:Country data Egypt Template:Percentage bar Decrease 22
130 Template:Country data El Salvador Template:Percentage bar Decrease 4
130 Template:Country data Mauritania Template:Percentage bar Steady
133 Template:Country data Bolivia Template:Percentage bar Steady
133 Template:Country data Guinea Template:Percentage bar Increase 8
135 Template:Country data Eswatini Template:Percentage bar Decrease 5
135 Template:Country data Gabon Template:Percentage bar Increase 1
135 Template:Country data Liberia Template:Percentage bar Increase 10
135 Template:Country data Mali Template:Percentage bar Increase 1
135 Template:Country data Pakistan Template:Percentage bar Decrease 2
140 Template:Country data Cameroon Template:Percentage bar Steady
140 Template:Country data Iraq Template:Percentage bar Increase 14
140 Template:Country data Madagascar Template:Percentage bar Increase 5
140 Template:Country data Mexico Template:Percentage bar Decrease 14
140 Template:Country data Nigeria Template:Percentage bar Increase 5
140 Template:Country data Uganda Template:Percentage bar Increase 1
146 Template:Country data Guatemala Template:Percentage bar Increase 8
146 Template:Country data Kyrgyzstan Template:Percentage bar Decrease 5
146 Template:Country data Mozambique Template:Percentage bar Decrease 1
149 Template:Country data Central African Republic Template:Percentage bar Steady
149 Template:Country data Paraguay Template:Percentage bar Decrease 13
151 Template:Country data Bangladesh Template:Percentage bar Decrease 2
151 Template:Country data Congo Template:Percentage bar Increase 7
151 Template:Country data Iran Template:Percentage bar Increase 2
154 Template:Country data Azerbaijan Template:Percentage bar Steady
154 Template:Country data Honduras Template:Percentage bar Steady
154 Template:Country data Lebanon Template:Percentage bar Decrease 4
154 Template:Country data Russia Template:Percentage bar Decrease 13
158 Template:Country data Cambodia Template:Percentage bar Steady
158 Template:Country data Chad Template:Percentage bar Increase 4
158 Template:Country data Comoros Template:Percentage bar Increase 4
158 Template:Country data Guinea-Bissau Template:Percentage bar Steady
158 Template:Country data Zimbabwe Template:Percentage bar Decrease 9
163 Template:Country data Democratic Republic of the Congo Template:Percentage bar Decrease 1
164 Template:Country data Tajikistan Template:Percentage bar Decrease 2
165 Template:Country data Afghanistan Template:Percentage bar Decrease 3
165 Template:Country data Burundi Template:Percentage bar Decrease 3
165 Template:Country data Turkmenistan Template:Percentage bar Increase 5
168 Template:Country data Haiti Template:Percentage bar Increase 4
168 Template:Country data Myanmar Template:Percentage bar Decrease 6
170 Template:Country data North Korea Template:Percentage bar Increase 2
170 Template:Country data Sudan Template:Percentage bar Decrease 8
172 Template:Country data Nicaragua Template:Percentage bar Steady
173 Template:Country data Equatorial Guinea Template:Percentage bar Decrease 1
173 Template:Country data Eritrea Template:Percentage bar Decrease 12
173 Template:Country data Libya Template:Percentage bar Decrease 3
173 Template:Country data Yemen Template:Percentage bar Increase 3
177 Template:Flagicon image Syria Template:Percentage bar Steady
178 Template:Country data Venezuela Template:Percentage bar Decrease 1
179 Template:Country data Somalia Template:Percentage bar Increase 1
180 Template:Country data South Sudan Template:Percentage bar Decrease 3

List by region

The following table lists the average CPI score for each region since 2012. Template:Static row numbersTemplate:Sticky-headerTemplate:Sort-underTemplate:Table alignment

Transnational corruption in states with high CPI scores

The advanced economies of Northern and Western Europe, North America, and Asia and the Pacific tend to top the rankings over the long term. This means that these countries are perceived as having a low level of corruption in the public sector. These nations also generally have well-functioning judicial systems, a strong rule of law, and political stability – all factors that contribute to perceptions of clean governance. However, while these top-ranked countries have strong domestic institutions, their commitment to fighting corruption appears to be weak when it comes to their own financial systems and regulations affecting the international environment.[31] The CPI doesn't capture transnational corruption, so corrupt foreign business practices by companies from these countries don't affect their CPI scores. The example of the Netherlands highlights this issue. Despite a high CPI score, the Netherlands has a poor record of prosecuting companies that bribe foreign officials to win contracts, as seen in the Nigerian oil bribery case.[32]

The report Exporting Corruption 2022,[33] which assesses foreign bribery enforcement in 43 of the 44 signatories to the OECD Anti-Bribery Convention, as well as China, ZAO Hong Kong, India and Singapore, reinforces this concern. It found a significant decline in foreign bribery enforcement. Only two out of 47 countries are now in active enforcement category. Other key findings were that no country is exempt from bribery by its nationals and related money laundering. Moreover, according to the report, weaknesses remain in legal frameworks and enforcement systems are not adequately disclosed by most countries information on enforcement, victim compensation is rare and international cooperation is increasing still faces significant obstacles. This calls for a more comprehensive approach to tackling corruption, addressing both domestic and international aspects.

See also

References

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External links

Template:Sister project

Template:Politics country lists Template:Corruption

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