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Penrose method

The Penrose method (or square-root method) is a method devised in 1946 by Professor Lionel Penrose[1] for allocating the voting weights of delegations (possibly a single representative) in decision-making bodies proportional to the square root of the population represented by this delegation. This is justified by the fact that, due to the square root law of Penrose, the a priori voting power (as defined by the Penrose–Banzhaf index) of a member of a voting body is inversely proportional to the square root of its size. Under certain conditions, this allocation achieves equal voting powers for all people represented, independent of the size of their constituency. Proportional allocation would result in excessive voting powers for the electorates of larger constituencies.

A precondition for the appropriateness of the method is en bloc voting of the delegations in the decision-making body: a delegation cannot split its votes; rather, each delegation has just a single vote to which weights are applied proportional to the square root of the population they represent. Another precondition is that the opinions of the people represented are statistically independent. The representativity of each delegation results from statistical fluctuations within the country, and then, according to Penrose, "small electorate are likely to obtain more representative governments than large electorates." A mathematical formulation of this idea results in the square root rule.

The Penrose method is not currently being used for any notable decision-making body, but it has been proposed for apportioning representation in a United Nations Parliamentary Assembly,[1][2] and for voting in the Council of the European Union.[3][4]

The EU proposal edit

Comparison of voting weights
Population in millions as of 1 January 2003 [5]
Member state Population Nice Penrose[3]
  Germany 82.54m 16.5% 29 8.4% 9.55%
  France 59.64m 12.9% 29 8.4% 8.11%
  UK 59.33m 12.4% 29 8.4% 8.09%
  Italy 57.32m 12.0% 29 8.4% 7.95%
  Spain 41.55m 9.0% 27 7.8% 6.78%
  Poland 38.22m 7.6% 27 7.8% 6.49%
  Romania 21.77m 4.3% 14 4.1% 4.91%
  Netherlands 16.19m 3.3% 13 3.8% 4.22%
  Greece 11.01m 2.2% 12 3.5% 3.49%
  Portugal 10.41m 2.1% 12 3.5% 3.39%
  Belgium 10.36m 2.1% 12 3.5% 3.38%
  Czech Rep. 10.20m 2.1% 12 3.5% 3.35%
  Hungary 10.14m 2.0% 12 3.5% 3.34%
  Sweden 8.94m 1.9% 10 2.9% 3.14%
  Austria 8.08m 1.7% 10 2.9% 2.98%
  Bulgaria 7.85m 1.5% 10 2.9% 2.94%
  Denmark 5.38m 1.1% 7 2.0% 2.44%
  Slovakia 5.38m 1.1% 7 2.0% 2.44%
  Finland 5.21m 1.1% 7 2.0% 2.39%
  Ireland 3.96m 0.9% 7 2.0% 2.09%
  Lithuania 3.46m 0.7% 7 2.0% 1.95%
  Latvia 2.33m 0.5% 4 1.2% 1.61%
  Slovenia 2.00m 0.4% 4 1.2% 1.48%
  Estonia 1.36m 0.3% 4 1.2% 1.23%
  Cyprus 0.72m 0.2% 4 1.2% 0.89%
  Luxembourg 0.45m 0.1% 4 1.2% 0.70%
  Malta 0.40m 0.1% 3 0.9% 0.66%
  EU 484.20m 100% 345 100% 100%

The Penrose method became revitalised within the European Union when it was proposed by Sweden in 2003 amid negotiations on the Amsterdam Treaty and by Poland June 2007 during summit on the Treaty of Lisbon. In this context, the method was proposed to compute voting weights of member states in the Council of the European Union.

Currently, the voting in the Council of the EU does not follow the Penrose method. Instead, the rules of the Nice Treaty are effective between 2004 and 2014, under certain conditions until 2017. The associated voting weights are compared in the adjacent table along with the population data of the member states.

Besides the voting weight, the voting power (i.e., the Penrose–Banzhaf index) of a member state also depends on the threshold percentage needed to make a decision. Smaller percentages work in favor of larger states. For example, if one state has 30% of the total voting weights while the threshold for decision making is at 29%, this state will have 100% voting power (i.e., an index of 1). For the EU-27, an optimal threshold, at which the voting powers of all citizens in any member state are almost equal, has been computed at about 61.6%.[3] After the university of the authors of this paper, this system is referred to as the "Jagiellonian Compromise". Optimal threshold decreases with the number   of the member states as  .[6]

The UN proposal edit

According to INFUSA, "The square-root method is more than a pragmatic compromise between the extreme methods of world representation unrelated to population size and allocation of national quotas in direct proportion to population size; Penrose showed that in terms of statistical theory the square-root method gives to each voter in the world an equal influence on decision-making in a world assembly".[2]

Under the Penrose method, the relative voting weights of the most populous countries are lower than their proportion of the world population. In the table below, the countries' voting weights are computed as the square root of their year-2005 population in millions. This procedure was originally published by Penrose in 1946 based on pre-World War II population figures.[1]

Population
as of 2005
Percent of
world population
Voting weight Percent of
total weight
World 6,434,577,575 100.00% 721.32 100.00%
Rank Country
1 People's Republic of China 1,306,313,812 20.30% 36.14 5.01%
2 India 1,080,264,388 16.79% 32.87 4.56%
3 United States of America 297,200,000 4.62% 17.24 2.39%
4 Indonesia 241,973,879 3.76% 15.56 2.16%
5 Brazil 186,112,794 2.89% 13.64 1.89%
6 Pakistan 162,419,946 2.52% 12.74 1.77%
7 Bangladesh 144,319,628 2.24% 12.01 1.67%
8 Russia 143,420,309 2.23% 11.98 1.66%
9 Nigeria 128,771,988 2.00% 11.35 1.57%
10 Japan 127,417,244 1.98% 11.29 1.56%
11 Mexico 106,202,903 1.65% 10.31 1.43%
12 Philippines 87,857,473 1.37% 9.37 1.30%
13 Vietnam 83,535,576 1.30% 9.14 1.27%
14 Germany 82,468,000 1.28% 9.08 1.26%
15 Egypt 77,505,756 1.20% 8.80 1.22%
16 Ethiopia 73,053,286 1.14% 8.55 1.18%
17 Turkey 69,660,559 1.08% 8.35 1.16%
18 Iran 68,017,860 1.06% 8.25 1.14%
19 Thailand 65,444,371 1.02% 8.09 1.12%
20 France 60,656,178 0.94% 7.79 1.08%
21 United Kingdom 60,441,457 0.94% 7.77 1.08%
22 Democratic Republic of the Congo 60,085,804 0.93% 7.75 1.07%
23 Italy 58,103,033 0.90% 7.62 1.06%
24 South Korea 48,422,644 0.75% 6.96 0.96%
25 Ukraine 47,425,336 0.74% 6.89 0.95%
26 South Africa 44,344,136 0.69% 6.66 0.92%
27 Spain 43,209,511 0.67% 6.57 0.91%
28 Colombia 42,954,279 0.67% 6.55 0.91%
29 Myanmar 42,909,464 0.67% 6.55 0.91%
30 Sudan 40,187,486 0.62% 6.34 0.88%
31 Argentina 39,537,943 0.61% 6.29 0.87%
32 Poland 38,635,144 0.60% 6.22 0.86%
33 Tanzania 36,766,356 0.57% 6.06 0.84%
34 Kenya 33,829,590 0.53% 5.82 0.81%
35 Canada 32,400,000 0.50% 5.69 0.79%
36 Morocco 32,725,847 0.51% 5.72 0.79%
37 Algeria 32,531,853 0.51% 5.70 0.79%
38 Afghanistan 29,928,987 0.47% 5.47 0.76%
39 Peru 27,925,628 0.43% 5.28 0.73%
40 Nepal 27,676,547 0.43% 5.26 0.73%
41 Uganda 27,269,482 0.42% 5.22 0.72%
42 Uzbekistan 26,851,195 0.42% 5.18 0.72%
43 Saudi Arabia 26,417,599 0.41% 5.14 0.71%
44 Malaysia 26,207,102 0.41% 5.12 0.71%
45 Iraq 26,074,906 0.41% 5.11 0.71%
46 Venezuela 25,375,281 0.39% 5.04 0.70%
47 North Korea 22,912,177 0.36% 4.79 0.66%
48 Republic of China 22,894,384 0.36% 4.78 0.66%
49 Romania 22,329,977 0.35% 4.73 0.66%
50 Ghana 21,029,853 0.33% 4.59 0.64%
51 Yemen 20,727,063 0.32% 4.55 0.63%
52 Australia 20,229,800 0.31% 4.50 0.62%
53 Sri Lanka 20,064,776 0.31% 4.48 0.62%
54 Mozambique 19,406,703 0.30% 4.41 0.61%
55 Syria 18,448,752 0.29% 4.30 0.60%
56 Madagascar 18,040,341 0.28% 4.25 0.59%
57 Côte d'Ivoire 17,298,040 0.27% 4.16 0.58%
58 Netherlands 16,407,491 0.25% 4.05 0.56%
59 Cameroon 16,380,005 0.25% 4.05 0.56%
60 Chile 16,267,278 0.25% 4.03 0.56%
61 Kazakhstan 15,185,844 0.24% 3.90 0.54%
62 Guatemala 14,655,189 0.23% 3.83 0.53%
63 Burkina Faso 13,925,313 0.22% 3.73 0.52%
64 Cambodia 13,607,069 0.21% 3.69 0.51%
65 Ecuador 13,363,593 0.21% 3.66 0.51%
66 Zimbabwe 12,746,990 0.20% 3.57 0.49%
67 Mali 12,291,529 0.19% 3.51 0.49%
68 Malawi 12,158,924 0.19% 3.49 0.48%
69 Niger 11,665,937 0.18% 3.42 0.47%
70 Cuba 11,346,670 0.18% 3.37 0.47%
71 Zambia 11,261,795 0.18% 3.36 0.47%
72 Angola 11,190,786 0.17% 3.35 0.46%
73 Senegal 11,126,832 0.17% 3.34 0.46%
74 Serbia and Montenegro 10,829,175 0.17% 3.29 0.46%
75 Greece 10,668,354 0.17% 3.27 0.45%
76 Portugal 10,566,212 0.16% 3.25 0.45%
77 Belgium 10,364,388 0.16% 3.22 0.45%
78 Belarus 10,300,483 0.16% 3.21 0.44%
79 Czech Republic 10,241,138 0.16% 3.20 0.44%
80 Hungary 10,081,000 0.16% 3.18 0.44%
81 Tunisia 10,074,951 0.16% 3.17 0.44%
82 Chad 9,826,419 0.15% 3.13 0.43%
83 Guinea 9,467,866 0.15% 3.08 0.43%
84 Sweden 9,001,774 0.14% 3.00 0.42%
85 Dominican Republic 8,950,034 0.14% 2.99 0.41%
86 Bolivia 8,857,870 0.14% 2.98 0.41%
87 Somalia 8,591,629 0.13% 2.93 0.41%
88 Rwanda 8,440,820 0.13% 2.91 0.40%
89 Austria 8,184,691 0.13% 2.86 0.40%
90 Haiti 8,121,622 0.13% 2.85 0.40%
91 Azerbaijan 7,911,974 0.12% 2.81 0.39%
92 Switzerland 7,489,370 0.12% 2.74 0.38%
93 Benin 7,460,025 0.12% 2.73 0.38%
94 Bulgaria 7,450,349 0.12% 2.73 0.38%
95 Tajikistan 7,163,506 0.11% 2.68 0.37%
96 Honduras 6,975,204 0.11% 2.64 0.37%
97 Israel 6,955,000 0.11% 2.64 0.37%
98 El Salvador 6,704,932 0.10% 2.59 0.36%
99 Burundi 6,370,609 0.10% 2.52 0.35%
100 Paraguay 6,347,884 0.10% 2.52 0.35%
101 Laos 6,217,141 0.10% 2.49 0.35%
102 Sierra Leone 6,017,643 0.09% 2.45 0.34%
103 Libya 5,765,563 0.09% 2.40 0.33%
104 Jordan 5,759,732 0.09% 2.40 0.33%
105 Togo 5,681,519 0.09% 2.38 0.33%
106 Papua New Guinea 5,545,268 0.09% 2.35 0.33%
107 Nicaragua 5,465,100 0.08% 2.34 0.32%
108 Denmark 5,432,335 0.08% 2.33 0.32%
109 Slovakia 5,431,363 0.08% 2.33 0.32%
110 Finland 5,223,442 0.08% 2.29 0.32%
111 Kyrgyzstan 5,146,281 0.08% 2.27 0.31%
112 Turkmenistan 4,952,081 0.08% 2.23 0.31%
113 Georgia 4,677,401 0.07% 2.16 0.30%
114 Norway 4,593,041 0.07% 2.14 0.30%
115 Eritrea 4,561,599 0.07% 2.14 0.30%
116 Croatia 4,495,904 0.07% 2.12 0.29%
117 Moldova 4,455,421 0.07% 2.11 0.29%
118 Singapore 4,425,720 0.07% 2.10 0.29%
119 Ireland 4,130,700 0.06% 2.03 0.28%
120 New Zealand 4,098,200 0.06% 2.02 0.28%
121 Bosnia and Herzegovina 4,025,476 0.06% 2.01 0.28%
122 Costa Rica 4,016,173 0.06% 2.00 0.28%
123 Lebanon 3,826,018 0.06% 1.96 0.27%
124 Central African Republic 3,799,897 0.06% 1.95 0.27%
125 Lithuania 3,596,617 0.06% 1.90 0.26%
126 Albania 3,563,112 0.06% 1.89 0.26%
127 Liberia 3,482,211 0.05% 1.87 0.26%
128 Uruguay 3,415,920 0.05% 1.85 0.26%
129 Mauritania 3,086,859 0.05% 1.76 0.24%
130 Panama 3,039,150 0.05% 1.74 0.24%
131 Republic of the Congo 3,039,126 0.05% 1.74 0.24%
132 Oman 3,001,583 0.05% 1.73 0.24%
133 Armenia 2,982,904 0.05% 1.73 0.24%
134 Mongolia 2,791,272 0.04% 1.67 0.23%
135 Jamaica 2,731,832 0.04% 1.65 0.23%
136 United Arab Emirates 2,563,212 0.04% 1.60 0.22%
137 Kuwait 2,335,648 0.04% 1.53 0.21%
138 Latvia 2,290,237 0.04% 1.51 0.21%
139 Bhutan 2,232,291 0.03% 1.49 0.21%
140 Macedonia 2,045,262 0.03% 1.43 0.20%
141 Namibia 2,030,692 0.03% 1.43 0.20%
142 Slovenia 2,011,070 0.03% 1.42 0.20%
143 Lesotho 1,867,035 0.03% 1.37 0.19%
144 Botswana 1,640,115 0.03% 1.28 0.18%
145 The Gambia 1,593,256 0.02% 1.26 0.17%
146 Guinea-Bissau 1,416,027 0.02% 1.19 0.16%
147 Gabon 1,389,201 0.02% 1.18 0.16%
148 Estonia 1,332,893 0.02% 1.15 0.16%
149 Mauritius 1,230,602 0.02% 1.11 0.15%
150 Swaziland 1,173,900 0.02% 1.08 0.15%
151 Trinidad and Tobago 1,088,644 0.02% 1.04 0.14%
152 East Timor 1,040,880 0.02% 1.02 0.14%
153 Fiji 893,354 0.01% 0.95 0.13%
154 Qatar 863,051 0.01% 0.93 0.13%
155 Cyprus 780,133 0.01% 0.88 0.12%
156 Guyana 765,283 0.01% 0.87 0.12%
157 Bahrain 688,345 0.01% 0.83 0.12%
158 Comoros 671,247 0.01% 0.82 0.11%
159 Solomon Islands 538,032 0.01% 0.73 0.10%
160 Equatorial Guinea 535,881 0.01% 0.73 0.10%
161 Djibouti 476,703 0.01% 0.69 0.10%
162 Luxembourg 468,571 0.01% 0.68 0.09%
163 Suriname 438,144 0.01% 0.66 0.09%
164 Cape Verde 418,224 0.01% 0.65 0.09%
165 Malta 398,534 0.01% 0.63 0.09%
166 Brunei 372,361 0.01% 0.61 0.08%
167 Maldives 349,106 0.01% 0.59 0.08%
168 The Bahamas 301,790 0.005% 0.55 0.08%
169 Iceland 296,737 0.005% 0.54 0.08%
170 Belize 279,457 0.004% 0.53 0.07%
171 Barbados 279,254 0.004% 0.53 0.07%
172 Vanuatu 205,754 0.003% 0.45 0.06%
173 São Tomé and Príncipe 187,410 0.003% 0.43 0.06%
174 Samoa 177,287 0.003% 0.42 0.06%
175 Saint Lucia 166,312 0.003% 0.41 0.06%
176 Saint Vincent and the Grenadines 117,534 0.002% 0.34 0.05%
177 Tonga 112,422 0.002% 0.34 0.05%
178 Federated States of Micronesia 108,105 0.002% 0.33 0.05%
179 Kiribati 103,092 0.002% 0.32 0.04%
180 Grenada 89,502 0.001% 0.30 0.04%
181 Seychelles 81,188 0.001% 0.28 0.04%
182 Andorra 70,549 0.001% 0.27 0.04%
183 Dominica 69,029 0.001% 0.26 0.04%
184 Antigua and Barbuda 68,722 0.001% 0.26 0.04%
185 Marshall Islands 59,071 0.001% 0.24 0.03%
186 Saint Kitts and Nevis 38,958 0.001% 0.20 0.03%
187 Liechtenstein 33,717 0.001% 0.18 0.03%
188 Monaco 32,409 0.001% 0.18 0.02%
189 San Marino 28,880 0.0004% 0.17 0.02%
190 Palau 20,303 0.0003% 0.14 0.02%
191 Nauru 13,048 0.0002% 0.11 0.02%
192 Tuvalu 11,636 0.0002% 0.11 0.01%
193 Vatican City 921 0.00001% 0.03 0.004%

Criticisms edit

It has been claimed that the Penrose square root law is limited to votes for which public opinion is equally divided for and against.[7][8][9] A study of various elections has shown that this equally-divided scenario is not typical; these elections suggested that voting weights should be distributed according to the 0.9 power of the number of voters represented (in contrast to the 0.5 power used in the Penrose method).[8]

In practice, the theoretical possibility of the decisiveness of a single vote is questionable. Elections results that come close to a tie are likely to be legally challenged, as was the case in the US presidential election in Florida in 2000, which suggests that no single vote is pivotal.[8]

In addition, a minor technical issue is that the theoretical argument for allocation of voting weight is based on the possibility that an individual has a deciding vote in each representative's area. This scenario is only possible when each representative has an odd number of voters in their area.[9]

See also edit

References edit

  1. ^ a b c L.S. Penrose (1946). "The elementary statistics of majority voting" (PDF). Journal of the Royal Statistical Society. 109 (1): 53–57. doi:10.2307/2981392. JSTOR 2981392.
  2. ^ a b "Proposal for a United Nations Second Assembly". International Network for a UN Second Assembly. 1987. Retrieved 27 April 2010.
  3. ^ a b c W. Slomczynski, K. Zyczkowski (2006). "Penrose Voting System and Optimal Quota" (PDF). Acta Physica Polonica B. 37 (11): 3133–3143. arXiv:physics/0610271. Bibcode:2006AcPPB..37.3133S.
  4. ^ "Maths tweak required for EU voting". BBC News. 7 July 2004. Retrieved 27 April 2011.
  5. ^ François-Carlos Bovagnet (2004). "First results of the demographic data collection for 2003 in Europe" (PDF). Statistics in Focus: Population and Social Conditions: 13/2004. Joint demographic data collection the Council of Europe and Eurostat. Retrieved 28 April 2011.
  6. ^ K. Zyczkowski, W. Slomczynski (2013). "Square Root Voting System, Optimal Threshold and $$ \uppi $$ π". Power, Voting, and Voting Power: 30 Years After. pp. 573–592. arXiv:1104.5213. doi:10.1007/978-3-642-35929-3_30. ISBN 978-3-642-35928-6. S2CID 118756505.
  7. ^ Gelman, Andrew (9 October 2007). "Why the square-root rule for vote allocation is a bad idea". Statistical Modeling, Causal Inference, and Social Science. Columbia University website. Retrieved 30 April 2011.
  8. ^ a b c Gelman, Katz and Bafumi (2004). "Standard Voting Power Indexes Do Not Work: An Empirical Analysis" (PDF). British Journal of Political Science. 34 (4): 657–674. doi:10.1017/s0007123404000237. S2CID 14287710.
  9. ^ a b On the "Jagiellonian compromise"

External links edit

  • The Double Majority Voting Rule of the EU Reform Treaty as a Democratic Ideal for an Enlarging Union : an Appraisal Using Voting Power Analysis, D. Leech and H. Aziz, University of Warwick (2007).
  • Many more references at the web page of American Mathematical Society here.

penrose, method, square, root, method, method, devised, 1946, professor, lionel, penrose, allocating, voting, weights, delegations, possibly, single, representative, decision, making, bodies, proportional, square, root, population, represented, this, delegatio. The Penrose method or square root method is a method devised in 1946 by Professor Lionel Penrose 1 for allocating the voting weights of delegations possibly a single representative in decision making bodies proportional to the square root of the population represented by this delegation This is justified by the fact that due to the square root law of Penrose the a priori voting power as defined by the Penrose Banzhaf index of a member of a voting body is inversely proportional to the square root of its size Under certain conditions this allocation achieves equal voting powers for all people represented independent of the size of their constituency Proportional allocation would result in excessive voting powers for the electorates of larger constituencies A precondition for the appropriateness of the method is en bloc voting of the delegations in the decision making body a delegation cannot split its votes rather each delegation has just a single vote to which weights are applied proportional to the square root of the population they represent Another precondition is that the opinions of the people represented are statistically independent The representativity of each delegation results from statistical fluctuations within the country and then according to Penrose small electorate are likely to obtain more representative governments than large electorates A mathematical formulation of this idea results in the square root rule The Penrose method is not currently being used for any notable decision making body but it has been proposed for apportioning representation in a United Nations Parliamentary Assembly 1 2 and for voting in the Council of the European Union 3 4 Contents 1 The EU proposal 2 The UN proposal 3 Criticisms 4 See also 5 References 6 External linksThe EU proposal editSee also Voting in the Council of the European Union Comparison of voting weights Population in millions as of 1 January 2003 5 Member state Population Nice Penrose 3 nbsp Germany 82 54m 16 5 29 8 4 9 55 nbsp France 59 64m 12 9 29 8 4 8 11 nbsp UK 59 33m 12 4 29 8 4 8 09 nbsp Italy 57 32m 12 0 29 8 4 7 95 nbsp Spain 41 55m 9 0 27 7 8 6 78 nbsp Poland 38 22m 7 6 27 7 8 6 49 nbsp Romania 21 77m 4 3 14 4 1 4 91 nbsp Netherlands 16 19m 3 3 13 3 8 4 22 nbsp Greece 11 01m 2 2 12 3 5 3 49 nbsp Portugal 10 41m 2 1 12 3 5 3 39 nbsp Belgium 10 36m 2 1 12 3 5 3 38 nbsp Czech Rep 10 20m 2 1 12 3 5 3 35 nbsp Hungary 10 14m 2 0 12 3 5 3 34 nbsp Sweden 8 94m 1 9 10 2 9 3 14 nbsp Austria 8 08m 1 7 10 2 9 2 98 nbsp Bulgaria 7 85m 1 5 10 2 9 2 94 nbsp Denmark 5 38m 1 1 7 2 0 2 44 nbsp Slovakia 5 38m 1 1 7 2 0 2 44 nbsp Finland 5 21m 1 1 7 2 0 2 39 nbsp Ireland 3 96m 0 9 7 2 0 2 09 nbsp Lithuania 3 46m 0 7 7 2 0 1 95 nbsp Latvia 2 33m 0 5 4 1 2 1 61 nbsp Slovenia 2 00m 0 4 4 1 2 1 48 nbsp Estonia 1 36m 0 3 4 1 2 1 23 nbsp Cyprus 0 72m 0 2 4 1 2 0 89 nbsp Luxembourg 0 45m 0 1 4 1 2 0 70 nbsp Malta 0 40m 0 1 3 0 9 0 66 nbsp EU 484 20m 100 345 100 100 The Penrose method became revitalised within the European Union when it was proposed by Sweden in 2003 amid negotiations on the Amsterdam Treaty and by Poland June 2007 during summit on the Treaty of Lisbon In this context the method was proposed to compute voting weights of member states in the Council of the European Union Currently the voting in the Council of the EU does not follow the Penrose method Instead the rules of the Nice Treaty are effective between 2004 and 2014 under certain conditions until 2017 The associated voting weights are compared in the adjacent table along with the population data of the member states Besides the voting weight the voting power i e the Penrose Banzhaf index of a member state also depends on the threshold percentage needed to make a decision Smaller percentages work in favor of larger states For example if one state has 30 of the total voting weights while the threshold for decision making is at 29 this state will have 100 voting power i e an index of 1 For the EU 27 an optimal threshold at which the voting powers of all citizens in any member state are almost equal has been computed at about 61 6 3 After the university of the authors of this paper this system is referred to as the Jagiellonian Compromise Optimal threshold decreases with the number M displaystyle M nbsp of the member states as 1 2 1 p M displaystyle 1 2 1 sqrt pi M nbsp 6 The UN proposal editAccording to INFUSA The square root method is more than a pragmatic compromise between the extreme methods of world representation unrelated to population size and allocation of national quotas in direct proportion to population size Penrose showed that in terms of statistical theory the square root method gives to each voter in the world an equal influence on decision making in a world assembly 2 Under the Penrose method the relative voting weights of the most populous countries are lower than their proportion of the world population In the table below the countries voting weights are computed as the square root of their year 2005 population in millions This procedure was originally published by Penrose in 1946 based on pre World War II population figures 1 Populationas of 2005 Percent ofworld population Voting weight Percent oftotal weight World 6 434 577 575 100 00 721 32 100 00 Rank Country 1 People s Republic of China 1 306 313 812 20 30 36 14 5 01 2 India 1 080 264 388 16 79 32 87 4 56 3 United States of America 297 200 000 4 62 17 24 2 39 4 Indonesia 241 973 879 3 76 15 56 2 16 5 Brazil 186 112 794 2 89 13 64 1 89 6 Pakistan 162 419 946 2 52 12 74 1 77 7 Bangladesh 144 319 628 2 24 12 01 1 67 8 Russia 143 420 309 2 23 11 98 1 66 9 Nigeria 128 771 988 2 00 11 35 1 57 10 Japan 127 417 244 1 98 11 29 1 56 11 Mexico 106 202 903 1 65 10 31 1 43 12 Philippines 87 857 473 1 37 9 37 1 30 13 Vietnam 83 535 576 1 30 9 14 1 27 14 Germany 82 468 000 1 28 9 08 1 26 15 Egypt 77 505 756 1 20 8 80 1 22 16 Ethiopia 73 053 286 1 14 8 55 1 18 17 Turkey 69 660 559 1 08 8 35 1 16 18 Iran 68 017 860 1 06 8 25 1 14 19 Thailand 65 444 371 1 02 8 09 1 12 20 France 60 656 178 0 94 7 79 1 08 21 United Kingdom 60 441 457 0 94 7 77 1 08 22 Democratic Republic of the Congo 60 085 804 0 93 7 75 1 07 23 Italy 58 103 033 0 90 7 62 1 06 24 South Korea 48 422 644 0 75 6 96 0 96 25 Ukraine 47 425 336 0 74 6 89 0 95 26 South Africa 44 344 136 0 69 6 66 0 92 27 Spain 43 209 511 0 67 6 57 0 91 28 Colombia 42 954 279 0 67 6 55 0 91 29 Myanmar 42 909 464 0 67 6 55 0 91 30 Sudan 40 187 486 0 62 6 34 0 88 31 Argentina 39 537 943 0 61 6 29 0 87 32 Poland 38 635 144 0 60 6 22 0 86 33 Tanzania 36 766 356 0 57 6 06 0 84 34 Kenya 33 829 590 0 53 5 82 0 81 35 Canada 32 400 000 0 50 5 69 0 79 36 Morocco 32 725 847 0 51 5 72 0 79 37 Algeria 32 531 853 0 51 5 70 0 79 38 Afghanistan 29 928 987 0 47 5 47 0 76 39 Peru 27 925 628 0 43 5 28 0 73 40 Nepal 27 676 547 0 43 5 26 0 73 41 Uganda 27 269 482 0 42 5 22 0 72 42 Uzbekistan 26 851 195 0 42 5 18 0 72 43 Saudi Arabia 26 417 599 0 41 5 14 0 71 44 Malaysia 26 207 102 0 41 5 12 0 71 45 Iraq 26 074 906 0 41 5 11 0 71 46 Venezuela 25 375 281 0 39 5 04 0 70 47 North Korea 22 912 177 0 36 4 79 0 66 48 Republic of China 22 894 384 0 36 4 78 0 66 49 Romania 22 329 977 0 35 4 73 0 66 50 Ghana 21 029 853 0 33 4 59 0 64 51 Yemen 20 727 063 0 32 4 55 0 63 52 Australia 20 229 800 0 31 4 50 0 62 53 Sri Lanka 20 064 776 0 31 4 48 0 62 54 Mozambique 19 406 703 0 30 4 41 0 61 55 Syria 18 448 752 0 29 4 30 0 60 56 Madagascar 18 040 341 0 28 4 25 0 59 57 Cote d Ivoire 17 298 040 0 27 4 16 0 58 58 Netherlands 16 407 491 0 25 4 05 0 56 59 Cameroon 16 380 005 0 25 4 05 0 56 60 Chile 16 267 278 0 25 4 03 0 56 61 Kazakhstan 15 185 844 0 24 3 90 0 54 62 Guatemala 14 655 189 0 23 3 83 0 53 63 Burkina Faso 13 925 313 0 22 3 73 0 52 64 Cambodia 13 607 069 0 21 3 69 0 51 65 Ecuador 13 363 593 0 21 3 66 0 51 66 Zimbabwe 12 746 990 0 20 3 57 0 49 67 Mali 12 291 529 0 19 3 51 0 49 68 Malawi 12 158 924 0 19 3 49 0 48 69 Niger 11 665 937 0 18 3 42 0 47 70 Cuba 11 346 670 0 18 3 37 0 47 71 Zambia 11 261 795 0 18 3 36 0 47 72 Angola 11 190 786 0 17 3 35 0 46 73 Senegal 11 126 832 0 17 3 34 0 46 74 Serbia and Montenegro 10 829 175 0 17 3 29 0 46 75 Greece 10 668 354 0 17 3 27 0 45 76 Portugal 10 566 212 0 16 3 25 0 45 77 Belgium 10 364 388 0 16 3 22 0 45 78 Belarus 10 300 483 0 16 3 21 0 44 79 Czech Republic 10 241 138 0 16 3 20 0 44 80 Hungary 10 081 000 0 16 3 18 0 44 81 Tunisia 10 074 951 0 16 3 17 0 44 82 Chad 9 826 419 0 15 3 13 0 43 83 Guinea 9 467 866 0 15 3 08 0 43 84 Sweden 9 001 774 0 14 3 00 0 42 85 Dominican Republic 8 950 034 0 14 2 99 0 41 86 Bolivia 8 857 870 0 14 2 98 0 41 87 Somalia 8 591 629 0 13 2 93 0 41 88 Rwanda 8 440 820 0 13 2 91 0 40 89 Austria 8 184 691 0 13 2 86 0 40 90 Haiti 8 121 622 0 13 2 85 0 40 91 Azerbaijan 7 911 974 0 12 2 81 0 39 92 Switzerland 7 489 370 0 12 2 74 0 38 93 Benin 7 460 025 0 12 2 73 0 38 94 Bulgaria 7 450 349 0 12 2 73 0 38 95 Tajikistan 7 163 506 0 11 2 68 0 37 96 Honduras 6 975 204 0 11 2 64 0 37 97 Israel 6 955 000 0 11 2 64 0 37 98 El Salvador 6 704 932 0 10 2 59 0 36 99 Burundi 6 370 609 0 10 2 52 0 35 100 Paraguay 6 347 884 0 10 2 52 0 35 101 Laos 6 217 141 0 10 2 49 0 35 102 Sierra Leone 6 017 643 0 09 2 45 0 34 103 Libya 5 765 563 0 09 2 40 0 33 104 Jordan 5 759 732 0 09 2 40 0 33 105 Togo 5 681 519 0 09 2 38 0 33 106 Papua New Guinea 5 545 268 0 09 2 35 0 33 107 Nicaragua 5 465 100 0 08 2 34 0 32 108 Denmark 5 432 335 0 08 2 33 0 32 109 Slovakia 5 431 363 0 08 2 33 0 32 110 Finland 5 223 442 0 08 2 29 0 32 111 Kyrgyzstan 5 146 281 0 08 2 27 0 31 112 Turkmenistan 4 952 081 0 08 2 23 0 31 113 Georgia 4 677 401 0 07 2 16 0 30 114 Norway 4 593 041 0 07 2 14 0 30 115 Eritrea 4 561 599 0 07 2 14 0 30 116 Croatia 4 495 904 0 07 2 12 0 29 117 Moldova 4 455 421 0 07 2 11 0 29 118 Singapore 4 425 720 0 07 2 10 0 29 119 Ireland 4 130 700 0 06 2 03 0 28 120 New Zealand 4 098 200 0 06 2 02 0 28 121 Bosnia and Herzegovina 4 025 476 0 06 2 01 0 28 122 Costa Rica 4 016 173 0 06 2 00 0 28 123 Lebanon 3 826 018 0 06 1 96 0 27 124 Central African Republic 3 799 897 0 06 1 95 0 27 125 Lithuania 3 596 617 0 06 1 90 0 26 126 Albania 3 563 112 0 06 1 89 0 26 127 Liberia 3 482 211 0 05 1 87 0 26 128 Uruguay 3 415 920 0 05 1 85 0 26 129 Mauritania 3 086 859 0 05 1 76 0 24 130 Panama 3 039 150 0 05 1 74 0 24 131 Republic of the Congo 3 039 126 0 05 1 74 0 24 132 Oman 3 001 583 0 05 1 73 0 24 133 Armenia 2 982 904 0 05 1 73 0 24 134 Mongolia 2 791 272 0 04 1 67 0 23 135 Jamaica 2 731 832 0 04 1 65 0 23 136 United Arab Emirates 2 563 212 0 04 1 60 0 22 137 Kuwait 2 335 648 0 04 1 53 0 21 138 Latvia 2 290 237 0 04 1 51 0 21 139 Bhutan 2 232 291 0 03 1 49 0 21 140 Macedonia 2 045 262 0 03 1 43 0 20 141 Namibia 2 030 692 0 03 1 43 0 20 142 Slovenia 2 011 070 0 03 1 42 0 20 143 Lesotho 1 867 035 0 03 1 37 0 19 144 Botswana 1 640 115 0 03 1 28 0 18 145 The Gambia 1 593 256 0 02 1 26 0 17 146 Guinea Bissau 1 416 027 0 02 1 19 0 16 147 Gabon 1 389 201 0 02 1 18 0 16 148 Estonia 1 332 893 0 02 1 15 0 16 149 Mauritius 1 230 602 0 02 1 11 0 15 150 Swaziland 1 173 900 0 02 1 08 0 15 151 Trinidad and Tobago 1 088 644 0 02 1 04 0 14 152 East Timor 1 040 880 0 02 1 02 0 14 153 Fiji 893 354 0 01 0 95 0 13 154 Qatar 863 051 0 01 0 93 0 13 155 Cyprus 780 133 0 01 0 88 0 12 156 Guyana 765 283 0 01 0 87 0 12 157 Bahrain 688 345 0 01 0 83 0 12 158 Comoros 671 247 0 01 0 82 0 11 159 Solomon Islands 538 032 0 01 0 73 0 10 160 Equatorial Guinea 535 881 0 01 0 73 0 10 161 Djibouti 476 703 0 01 0 69 0 10 162 Luxembourg 468 571 0 01 0 68 0 09 163 Suriname 438 144 0 01 0 66 0 09 164 Cape Verde 418 224 0 01 0 65 0 09 165 Malta 398 534 0 01 0 63 0 09 166 Brunei 372 361 0 01 0 61 0 08 167 Maldives 349 106 0 01 0 59 0 08 168 The Bahamas 301 790 0 005 0 55 0 08 169 Iceland 296 737 0 005 0 54 0 08 170 Belize 279 457 0 004 0 53 0 07 171 Barbados 279 254 0 004 0 53 0 07 172 Vanuatu 205 754 0 003 0 45 0 06 173 Sao Tome and Principe 187 410 0 003 0 43 0 06 174 Samoa 177 287 0 003 0 42 0 06 175 Saint Lucia 166 312 0 003 0 41 0 06 176 Saint Vincent and the Grenadines 117 534 0 002 0 34 0 05 177 Tonga 112 422 0 002 0 34 0 05 178 Federated States of Micronesia 108 105 0 002 0 33 0 05 179 Kiribati 103 092 0 002 0 32 0 04 180 Grenada 89 502 0 001 0 30 0 04 181 Seychelles 81 188 0 001 0 28 0 04 182 Andorra 70 549 0 001 0 27 0 04 183 Dominica 69 029 0 001 0 26 0 04 184 Antigua and Barbuda 68 722 0 001 0 26 0 04 185 Marshall Islands 59 071 0 001 0 24 0 03 186 Saint Kitts and Nevis 38 958 0 001 0 20 0 03 187 Liechtenstein 33 717 0 001 0 18 0 03 188 Monaco 32 409 0 001 0 18 0 02 189 San Marino 28 880 0 0004 0 17 0 02 190 Palau 20 303 0 0003 0 14 0 02 191 Nauru 13 048 0 0002 0 11 0 02 192 Tuvalu 11 636 0 0002 0 11 0 01 193 Vatican City 921 0 00001 0 03 0 004 Criticisms editIt has been claimed that the Penrose square root law is limited to votes for which public opinion is equally divided for and against 7 8 9 A study of various elections has shown that this equally divided scenario is not typical these elections suggested that voting weights should be distributed according to the 0 9 power of the number of voters represented in contrast to the 0 5 power used in the Penrose method 8 In practice the theoretical possibility of the decisiveness of a single vote is questionable Elections results that come close to a tie are likely to be legally challenged as was the case in the US presidential election in Florida in 2000 which suggests that no single vote is pivotal 8 In addition a minor technical issue is that the theoretical argument for allocation of voting weight is based on the possibility that an individual has a deciding vote in each representative s area This scenario is only possible when each representative has an odd number of voters in their area 9 See also edit nbsp Politics portal List of countries by populationReferences edit a b c L S Penrose 1946 The elementary statistics of majority voting PDF Journal of the Royal Statistical Society 109 1 53 57 doi 10 2307 2981392 JSTOR 2981392 a b Proposal for a United Nations Second Assembly International Network for a UN Second Assembly 1987 Retrieved 27 April 2010 a b c W Slomczynski K Zyczkowski 2006 Penrose Voting System and Optimal Quota PDF Acta Physica Polonica B 37 11 3133 3143 arXiv physics 0610271 Bibcode 2006AcPPB 37 3133S Maths tweak required for EU voting BBC News 7 July 2004 Retrieved 27 April 2011 Francois Carlos Bovagnet 2004 First results of the demographic data collection for 2003 in Europe PDF Statistics in Focus Population and Social Conditions 13 2004 Joint demographic data collection the Council of Europe and Eurostat Retrieved 28 April 2011 K Zyczkowski W Slomczynski 2013 Square Root Voting System Optimal Threshold and uppi p Power Voting and Voting Power 30 Years After pp 573 592 arXiv 1104 5213 doi 10 1007 978 3 642 35929 3 30 ISBN 978 3 642 35928 6 S2CID 118756505 Gelman Andrew 9 October 2007 Why the square root rule for vote allocation is a bad idea Statistical Modeling Causal Inference and Social Science Columbia University website Retrieved 30 April 2011 a b c Gelman Katz and Bafumi 2004 Standard Voting Power Indexes Do Not Work An Empirical Analysis PDF British Journal of Political Science 34 4 657 674 doi 10 1017 s0007123404000237 S2CID 14287710 a b On the Jagiellonian compromise External links editThe Double Majority Voting Rule of the EU Reform Treaty as a Democratic Ideal for an Enlarging Union an Appraisal Using Voting Power Analysis D Leech and H Aziz University of Warwick 2007 Many more references at the web page of American Mathematical Society here Retrieved from https en wikipedia org w index php title Penrose method amp oldid 1149030603, wikipedia, wiki, book, books, library,

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