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Condorcet's jury theorem

Condorcet's jury theorem is a political science theorem about the relative probability of a given group of individuals arriving at a correct decision. The theorem was first expressed by the Marquis de Condorcet in his 1785 work Essay on the Application of Analysis to the Probability of Majority Decisions.[1]

Graph of cumulative probabilities of success (y axis) for a few binomial distributions with given individual chance of success (x axis) and number of “jurors” (color).

The assumptions of the theorem are that a group wishes to reach a decision by majority vote. One of the two outcomes of the vote is correct, and each voter has an independent probability p of voting for the correct decision. The theorem asks how many voters we should include in the group. The result depends on whether p is greater than or less than 1/2:

  • If p is greater than 1/2 (each voter is more likely to vote correctly), then adding more voters increases the probability that the majority decision is correct. In the limit, the probability that the majority votes correctly approaches 1 as the number of voters increases.
  • On the other hand, if p is less than 1/2 (each voter is more likely to vote incorrectly), then adding more voters makes things worse: the optimal jury consists of a single voter.

Since Condorcet, many other researchers have proved various other jury theorems, relaxing some or all of Condorcet's assumptions.

Proofs[2] Edit

Proof 1: Calculating the probability that two additional voters change the outcome Edit

To avoid the need for a tie-breaking rule, we assume n is odd. Essentially the same argument works for even n if ties are broken by adding a single voter.

Now suppose we start with n voters, and let m of these voters vote correctly.

Consider what happens when we add two more voters (to keep the total number odd). The majority vote changes in only two cases:

  • m was one vote too small to get a majority of the n votes, but both new voters voted correctly.
  • m was just equal to a majority of the n votes, but both new voters voted incorrectly.

The rest of the time, either the new votes cancel out, only increase the gap, or don't make enough of a difference. So we only care what happens when a single vote (among the first n) separates a correct from an incorrect majority.

Restricting our attention to this case, we can imagine that the first n-1 votes cancel out and that the deciding vote is cast by the n-th voter. In this case the probability of getting a correct majority is just p. Now suppose we send in the two extra voters. The probability that they change an incorrect majority to a correct majority is (1-p)p2, while the probability that they change a correct majority to an incorrect majority is p(1-p)(1-p). The first of these probabilities is greater than the second if and only if p > 1/2, proving the theorem.

Proof 2: Calculating the probability that the decision is correct Edit

This proof is direct; it just sums up the probabilities of the majorities. Each term of the sum multiplies the number of combinations of a majority by the probability of that majority. Each majority is counted using a combination, n items taken k at a time, where n is the jury size, and k is the size of the majority. Probabilities range from 0 (= the vote is always wrong) to 1 (= always right). Each person decides independently, so the probabilities of their decisions multiply. The probability of each correct decision is p. The probability of an incorrect decision, q, is the opposite of p, i.e. 1 − p. The power notation, i.e.   is a shorthand for x multiplications of p.

Committee or jury accuracies can be easily estimated by using this approach in computer spreadsheets or programs.

As an example, let us take the simplest case of n = 3, p = 0.8. We need to show that 3 people have higher than 0.8 chance of being right. Indeed:

0.8 × 0.8 × 0.8 + 0.8 × 0.8 × 0.2 + 0.8 × 0.2 × 0.8 + 0.2 × 0.8 × 0.8 = 0.896.

Asymptotics Edit

The probability of a correct majority decision P(n, p), when the individual probability p is close to 1/2 grows linearly in terms of p − 1/2. For n voters each one having probability p of deciding correctly and for odd n (where there are no possible ties):

 

where

 

and the asymptotic approximation in terms of n is very accurate. The expansion is only in odd powers and  . In simple terms, this says that when the decision is difficult (p close to 1/2), the gain by having n voters grows proportionally to  .

The theorem in other disciplines Edit

The Condorcet jury theorem has recently been used to conceptualize score integration when several physician readers (radiologists, endoscopists, etc.) independently evaluate images for disease activity. This task arises in central reading performed during clinical trials and has similarities to voting. According to the authors, the application of the theorem can translate individual reader scores into a final score in a fashion that is both mathematically sound (by avoiding averaging of ordinal data), mathematically tractable for further analysis, and in a manner that is consistent with the scoring task at hand (based on decisions about the presence or absence of features, a subjective classification task)[3]

The Condorcet jury theorem is also used in ensemble learning in the field of machine learning.[4] An ensemble method combines the predictions of many individual classifiers by majority voting. Assuming that each of the individual classifiers predict with slightly greater than 50% accuracy and their predictions are independent, then the ensemble of their predictions will be far greater than their individual predictive scores.

Applicability to democratic processes Edit

Many political theorists and philosophers use the Condorcet’s Jury Theorem (CJT) to defend democracy, see Brennan[5] and references therein. Nevertheless, it is an empirical question whether the theorem holds in real life or not. Note that the CJT is a double-edged sword: it can either prove that majority rule is an (almost) perfect mechanism to aggregate information, when  , or an (almost) perfect disaster, when  . A disaster would mean that the wrong option is chosen systematically. Some authors have argued that we are in the latter scenario. For instance, Bryan Caplan has extensively argued that voters' knowledge is systematically biased toward (probably) wrong options. In the CJT setup, this could be interpreted as evidence for  .

Recently, another approach to study the applicability of the CJT was taken.[6] Instead of considering the homogeneous case, each voter is allowed to have a probability  , possibly different from other voters. This case was previously studied by Daniel Berend and Jacob Paroush[7] and includes the classical theorem of Condorcet (when  ) and other results, like the Miracle of Aggregation (when   for most voters and   for a small proportion of them). Then, following a Bayesian approach, the prior probability (in this case, a priori) of the thesis predicted by the theorem is estimated. That is, if we choose an arbitrary sequence of voters (i.e., a sequence   ), will the thesis of the CJT hold? The answer is no. More precisely, if a random sequence of   is taken following an unbiased distribution that does not favor competence,  , or incompetence,  , then the thesis predicted by the theorem will not hold almost surely. With this new approach, proponents of the CJT should present strong evidence of competence, to overcome the low prior probability. That is, it is not only the case that there is evidence against competence (posterior probability), but also that we cannot expect the CJT to hold in the absence of any evidence (prior probability).

Further reading Edit

Notes Edit

  1. ^ Marquis de Condorcet (1785). Essai sur l'application de l'analyse à la probabilité des décisions rendues à la pluralité des voix (PNG) (in French). Retrieved 2008-03-10.
  2. ^ Tangian, Andranik (2020). Analytical theory of democracy. Vols. 1 and 2. Cham, Switzerland: Springer. pp. 149–162. ISBN 978-3-030-39690-9.
  3. ^ Gottlieb, Klaus; Hussain, Fez (2015-02-19). "Voting for Image Scoring and Assessment (VISA) - theory and application of a 2 + 1 reader algorithm to improve accuracy of imaging endpoints in clinical trials". BMC Medical Imaging. 15: 6. doi:10.1186/s12880-015-0049-0. ISSN 1471-2342. PMC 4349725. PMID 25880066.
  4. ^ "Random Forest". mlu-explain.github.io. Retrieved 2022-05-24.
  5. ^ Brennan, Jason (2011). "Condorcet's Jury Theorem and the Optimum Number of Voters". Politics. 31 (2): 55–62. doi:10.1111/j.1467-9256.2011.01403.x. ISSN 0263-3957. S2CID 152938266.
  6. ^ Romaniega Sancho, Álvaro (2022). "On the probability of the Condorcet Jury Theorem or the Miracle of Aggregation". Mathematical Social Sciences. 119: 41–55. arXiv:2108.00733. doi:10.1016/j.mathsocsci.2022.06.002. S2CID 249921504.
  7. ^ Berend, Daniel; Paroush, Jacob (1998). "When is Condorcet's Jury Theorem valid?". Social Choice and Welfare. 15 (4): 481–488. doi:10.1007/s003550050118. ISSN 0176-1714. JSTOR 41106274. S2CID 120012958.

condorcet, jury, theorem, political, science, theorem, about, relative, probability, given, group, individuals, arriving, correct, decision, theorem, first, expressed, marquis, condorcet, 1785, work, essay, application, analysis, probability, majority, decisio. Condorcet s jury theorem is a political science theorem about the relative probability of a given group of individuals arriving at a correct decision The theorem was first expressed by the Marquis de Condorcet in his 1785 work Essay on the Application of Analysis to the Probability of Majority Decisions 1 Graph of cumulative probabilities of success y axis for a few binomial distributions with given individual chance of success x axis and number of jurors color The assumptions of the theorem are that a group wishes to reach a decision by majority vote One of the two outcomes of the vote is correct and each voter has an independent probability p of voting for the correct decision The theorem asks how many voters we should include in the group The result depends on whether p is greater than or less than 1 2 If p is greater than 1 2 each voter is more likely to vote correctly then adding more voters increases the probability that the majority decision is correct In the limit the probability that the majority votes correctly approaches 1 as the number of voters increases On the other hand if p is less than 1 2 each voter is more likely to vote incorrectly then adding more voters makes things worse the optimal jury consists of a single voter Since Condorcet many other researchers have proved various other jury theorems relaxing some or all of Condorcet s assumptions Contents 1 Proofs 2 1 1 Proof 1 Calculating the probability that two additional voters change the outcome 1 2 Proof 2 Calculating the probability that the decision is correct 2 Asymptotics 3 The theorem in other disciplines 4 Applicability to democratic processes 5 Further reading 6 NotesProofs 2 EditProof 1 Calculating the probability that two additional voters change the outcome Edit To avoid the need for a tie breaking rule we assume n is odd Essentially the same argument works for even n if ties are broken by adding a single voter Now suppose we start with n voters and let m of these voters vote correctly Consider what happens when we add two more voters to keep the total number odd The majority vote changes in only two cases m was one vote too small to get a majority of the n votes but both new voters voted correctly m was just equal to a majority of the n votes but both new voters voted incorrectly The rest of the time either the new votes cancel out only increase the gap or don t make enough of a difference So we only care what happens when a single vote among the first n separates a correct from an incorrect majority Restricting our attention to this case we can imagine that the first n 1 votes cancel out and that the deciding vote is cast by the n th voter In this case the probability of getting a correct majority is just p Now suppose we send in the two extra voters The probability that they change an incorrect majority to a correct majority is 1 p p2 while the probability that they change a correct majority to an incorrect majority is p 1 p 1 p The first of these probabilities is greater than the second if and only if p gt 1 2 proving the theorem Proof 2 Calculating the probability that the decision is correct Edit This proof is direct it just sums up the probabilities of the majorities Each term of the sum multiplies the number of combinations of a majority by the probability of that majority Each majority is counted using a combination n items taken k at a time where n is the jury size and k is the size of the majority Probabilities range from 0 the vote is always wrong to 1 always right Each person decides independently so the probabilities of their decisions multiply The probability of each correct decision is p The probability of an incorrect decision q is the opposite of p i e 1 p The power notation i e p x displaystyle p x nbsp is a shorthand for x multiplications of p Committee or jury accuracies can be easily estimated by using this approach in computer spreadsheets or programs As an example let us take the simplest case of n 3 p 0 8 We need to show that 3 people have higher than 0 8 chance of being right Indeed 0 8 0 8 0 8 0 8 0 8 0 2 0 8 0 2 0 8 0 2 0 8 0 8 0 896 Asymptotics EditThis section does not cite any sources Please help improve this section by adding citations to reliable sources Unsourced material may be challenged and removed March 2020 Learn how and when to remove this template message The probability of a correct majority decision P n p when the individual probability p is close to 1 2 grows linearly in terms of p 1 2 For n voters each one having probability p of deciding correctly and for odd n where there are no possible ties P n p 1 2 c 1 p 1 2 c 3 p 1 2 3 O p 1 2 5 displaystyle P n p 1 2 c 1 p 1 2 c 3 p 1 2 3 O left p 1 2 5 right nbsp where c 1 n n 2 n 2 1 4 n 2 2 n 1 p 1 1 16 n 2 O n 3 displaystyle c 1 n choose lfloor n 2 rfloor frac lfloor n 2 rfloor 1 4 lfloor n 2 rfloor sqrt frac 2n 1 pi left 1 frac 1 16n 2 O n 3 right nbsp and the asymptotic approximation in terms of n is very accurate The expansion is only in odd powers and c 3 lt 0 displaystyle c 3 lt 0 nbsp In simple terms this says that when the decision is difficult p close to 1 2 the gain by having n voters grows proportionally to n displaystyle sqrt n nbsp The theorem in other disciplines EditThe Condorcet jury theorem has recently been used to conceptualize score integration when several physician readers radiologists endoscopists etc independently evaluate images for disease activity This task arises in central reading performed during clinical trials and has similarities to voting According to the authors the application of the theorem can translate individual reader scores into a final score in a fashion that is both mathematically sound by avoiding averaging of ordinal data mathematically tractable for further analysis and in a manner that is consistent with the scoring task at hand based on decisions about the presence or absence of features a subjective classification task 3 The Condorcet jury theorem is also used in ensemble learning in the field of machine learning 4 An ensemble method combines the predictions of many individual classifiers by majority voting Assuming that each of the individual classifiers predict with slightly greater than 50 accuracy and their predictions are independent then the ensemble of their predictions will be far greater than their individual predictive scores Applicability to democratic processes EditMany political theorists and philosophers use the Condorcet s Jury Theorem CJT to defend democracy see Brennan 5 and references therein Nevertheless it is an empirical question whether the theorem holds in real life or not Note that the CJT is a double edged sword it can either prove that majority rule is an almost perfect mechanism to aggregate information when p gt 1 2 displaystyle p gt 1 2 nbsp or an almost perfect disaster when p lt 1 2 displaystyle p lt 1 2 nbsp A disaster would mean that the wrong option is chosen systematically Some authors have argued that we are in the latter scenario For instance Bryan Caplan has extensively argued that voters knowledge is systematically biased toward probably wrong options In the CJT setup this could be interpreted as evidence for p lt 1 2 displaystyle p lt 1 2 nbsp Recently another approach to study the applicability of the CJT was taken 6 Instead of considering the homogeneous case each voter is allowed to have a probability p i 0 1 displaystyle p i in 0 1 nbsp possibly different from other voters This case was previously studied by Daniel Berend and Jacob Paroush 7 and includes the classical theorem of Condorcet when p i p i N displaystyle p i p forall i in mathbb N nbsp and other results like the Miracle of Aggregation when p i 1 2 displaystyle p i 1 2 nbsp for most voters and p i 1 displaystyle p i 1 nbsp for a small proportion of them Then following a Bayesian approach the prior probability in this case a priori of the thesis predicted by the theorem is estimated That is if we choose an arbitrary sequence of voters i e a sequence p i i N displaystyle p i i in mathbb N nbsp will the thesis of the CJT hold The answer is no More precisely if a random sequence of p i displaystyle p i nbsp is taken following an unbiased distribution that does not favor competence p i gt 1 2 displaystyle p i gt 1 2 nbsp or incompetence p i lt 1 2 displaystyle p i lt 1 2 nbsp then the thesis predicted by the theorem will not hold almost surely With this new approach proponents of the CJT should present strong evidence of competence to overcome the low prior probability That is it is not only the case that there is evidence against competence posterior probability but also that we cannot expect the CJT to hold in the absence of any evidence prior probability Further reading EditCondorcet method Condorcet paradox Jury theorem Wisdom of the crowdNotes Edit Marquis de Condorcet 1785 Essai sur l application de l analyse a la probabilite des decisions rendues a la pluralite des voix PNG in French Retrieved 2008 03 10 Tangian Andranik 2020 Analytical theory of democracy Vols 1 and 2 Cham Switzerland Springer pp 149 162 ISBN 978 3 030 39690 9 Gottlieb Klaus Hussain Fez 2015 02 19 Voting for Image Scoring and Assessment VISA theory and application of a 2 1 reader algorithm to improve accuracy of imaging endpoints in clinical trials BMC Medical Imaging 15 6 doi 10 1186 s12880 015 0049 0 ISSN 1471 2342 PMC 4349725 PMID 25880066 Random Forest mlu explain github io Retrieved 2022 05 24 Brennan Jason 2011 Condorcet s Jury Theorem and the Optimum Number of Voters Politics 31 2 55 62 doi 10 1111 j 1467 9256 2011 01403 x ISSN 0263 3957 S2CID 152938266 Romaniega Sancho Alvaro 2022 On the probability of the Condorcet Jury Theorem or the Miracle of Aggregation Mathematical Social Sciences 119 41 55 arXiv 2108 00733 doi 10 1016 j mathsocsci 2022 06 002 S2CID 249921504 Berend Daniel Paroush Jacob 1998 When is Condorcet s Jury Theorem valid Social Choice and Welfare 15 4 481 488 doi 10 1007 s003550050118 ISSN 0176 1714 JSTOR 41106274 S2CID 120012958 Retrieved from https en wikipedia org w index php title Condorcet 27s jury theorem amp oldid 1176095170, wikipedia, wiki, book, books, library,

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