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Jurimetrics

From Wikipedia, the free encyclopedia
Quantitative analysis of law
Not to be confused withJurimetrics (journal).
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Jurimetrics is the application of quantitative methods, especiallyprobability andstatistics, tolaw.[1] In the United States, the journalJurimetrics is published by theAmerican Bar Association andArizona State University.[2] TheJournal of Empirical Legal Studies is another publication that emphasizes the statistical analysis of law.

The term was coined in 1949 byLee Loevinger in his article "Jurimetrics: The Next Step Forward".[1][3] Showing the influence ofOliver Wendell Holmes Jr., Loevinger quoted[4] Holmes' celebrated phrase that:

"For the rational study of the law theblackletter man may be the man of the present, but the man of the future is the man of statistics and the master ofeconomics."[5]

The first work on this topic is attributed toNicolaus I Bernoulli in his doctoral dissertationDe Usu Artis Conjectandi in Jure, written in 1709.

Relation to law and economics

[edit]

The difference between jurimetrics andlaw and economics is that jurimetrics investigates legal questions from a probabilistic/statistical point of view, whilelaw and economics addresses legal questions using standardmicroeconomic analysis. Specifically, jurimetrics uncover patterns in decision-making and use them to identify potential biases in judgements that are passed. A synthesis of these fields is possible through the use ofeconometrics (statistics for economic analysis) and otherquantitative methods to answer relevant legal matters. As an example, the Columbia University scholarEdgardo Buscaglia published several peer-reviewed articles by using a joint jurimetrics andlaw and economics approach.[6][7]

List of Applications

[edit]

Applications

[edit]

Gender quotas on corporate boards

[edit]

In 2018, California'slegislature passed Senate Bill 826, which requires all publicly held corporations based in the state to have aminimum number of women on theirboard of directors.[37][38] Boards with five or fewer members must have at least two women, while boards with six or more members must have at least three women.

Using thebinomial distribution, we may compute what the probability is of violating the rule laid out in Senate Bill 826 by the number of board members. Theprobability mass function for the binomial distribution is:P(X=k)=(nk)pk(1p)nk{\displaystyle \mathbb {P} (X=k)={n \choose {k}}p^{k}(1-p)^{n-k}}wherep{\displaystyle p} is the probability of gettingk{\displaystyle k} successes inn{\displaystyle n} trials, and(nk){\textstyle {n \choose {k}}} is thebinomial coefficient. For this computation,p{\displaystyle p} is the probability that a person qualified for board service is female,k{\displaystyle k} is the number of female board members, andn{\displaystyle n} is the number of board seats. We will assume thatp=0.5{\displaystyle p=0.5}.

Depending on the number of board members, we are trying compute thecumulative distribution function:{P(X1)=(1p)n+np(1p)n1,n5P(X2)=P(X1)+n(n1)2p2(1p)n2,n>5{\displaystyle {\begin{cases}\mathbb {P} (X\leq 1)=(1-p)^{n}+np(1-p)^{n-1},\quad &n\leq 5\\\mathbb {P} (X\leq 2)=\mathbb {P} (X\leq 1)+{n(n-1) \over {2}}p^{2}(1-p)^{n-2},\quad &n>5\end{cases}}}With these formulas, we are able to compute the probability of violating Senate Bill 826 by chance:

Probability of Violation by Chance (# of board members)
3456789101112
0.500.310.190.340.230.140.090.050.030.02

AsIlya Somin points out,[37] a significant percentage of firms - without any history ofsex discrimination - could be in violation of the law.

In more male-dominated industries, such astechnology, there could be an even greater imbalance. Suppose that instead of parity in general, the probability that a person who is qualified for board service is female is 40%; this is likely to be a high estimate, given the predominance of males in the technology industry. Then the probability of violating Senate Bill 826 by chance may be recomputed as:

Probability of Violation by Chance (# of board members)
3456789101112
0.650.480.340.540.420.320.230.170.120.08

Screening of drug users, mass shooters, and terrorists

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In recent years, there has been a growing interest in the use ofscreening tests to identifydrug users on welfare, potentialmass shooters,[39] andterrorists.[40] The efficacy of screening tests can be analyzed using Bayes' theorem.

Suppose that there is some binary screening procedure for an actionV{\displaystyle V} that identifies a person as testing positive+{\displaystyle +} or negative{\displaystyle -} for the action. Bayes' theorem tells us that the conditional probability of taking actionV{\displaystyle V}, given a positive test result, is:P(V|+)=P(+|V)P(V)P(+|V)P(V)+P(+|V)[1P(V)]{\displaystyle \mathbb {P} (V|+)={\mathbb {P} (+|V)\mathbb {P} (V) \over {\mathbb {P} (+|V)\mathbb {P} (V)+\mathbb {P} (+|\sim V)\left[1-\mathbb {P} (V)\right]}}}For any screening test, we must be cognizant of itssensitivity and specificity. The screening test has sensitivityP(+|V){\displaystyle \mathbb {P} (+|V)} and specificityP(|V)=1P(+|V){\textstyle \mathbb {P} (-|\sim V)=1-\mathbb {P} (+|\sim V)}. The sensitivity and specificity can be analyzed using concepts from the standard theory ofstatistical hypothesis testing:

Therefore, the form of Bayes' theorem that is pertinent to us is:P(V|+)=(1β)P(V)(1β)P(V)+α[1P(V)]{\displaystyle \mathbb {P} (V|+)={(1-\beta )\mathbb {P} (V) \over {(1-\beta )\mathbb {P} (V)+\alpha \left[1-\mathbb {P} (V)\right]}}}Suppose that we have developed a test with sensitivity and specificity of 99%, which is likely to be higher than most real-world tests. We can examine several scenarios to see how well this hypothetical test works:

  • We screen welfare recipients for cocaine use. Thebase rate in the population is approximately 1.5%,[41] assuming no differences in use between welfare recipients and the general population.
  • We screen men for the possibility of committing mass shootings or terrorist attacks. The base rate is assumed to be 0.01%.

With these base rates and the hypothetical values of sensitivity and specificity, we may calculate the posterior probability that a positive result indicates the individual will actually engage in each of the actions:

Posterior Probabilities
Drug UseMass Shooting
0.60120.0098

Even with very high sensitivity and specificity, the screening tests only return posterior probabilities of 60.1% and 0.98% respectively for each action. Under more realistic circumstances, it is likely that screening would prove even less useful than under these hypothetical conditions. The problem with any screening procedure forrare events is that it is very likely to be too imprecise, which willidentify too many people of being at risk of engaging in some undesirable action.

Historical applications

[edit]

Jurimetrics utilizes many statistical methods to analyze judicial behavior, and this occurs through uncovering patterns in decision-making and using them to identify potential biases in judgements that are passed. For instance, statistical analysis can forecast the outcomes of cases, providing insights into expected resolutions based on historical data. Jurimetrics is also used to evaluate litigation trends, optimize legal strategies, and improve the efficiency of legal proceedings.[42]

One example of an application of jurimetrics is through resource allocation within court systems, where data analytics are used to identify potential difficulties and suggests improvements. Another example is the analysis of disparities within sentencing. This allows policymakers to address the inequities within legal practices. These emphasize the role of jurimetrics in the legal system, as a way to bridge quantitative analysis, and equitable judicial processes.[42]

List of methods

[edit]

Bayesian analysis of evidence

[edit]
Main article:Evidence under Bayes theorem

Bayes' theorem states that, for eventsA{\displaystyle A} andB{\displaystyle B}, theconditional probability ofA{\displaystyle A} occurring, given thatB{\displaystyle B} has occurred, is:P(A|B)=P(B|A)P(A)P(B){\displaystyle \mathbb {P} (A|B)={\mathbb {P} (B|A)\mathbb {P} (A) \over {\mathbb {P} (B)}}}Using thelaw of total probability, we may expand the denominator as:P(B)=P(B|A)P(A)+P(B|A)[1P(A)]{\displaystyle \mathbb {P} (B)=\mathbb {P} (B|A)\mathbb {P} (A)+\mathbb {P} (B|\sim A)[1-\mathbb {P} (A)]}Then Bayes' theorem may be rewritten as:P(A|B)=P(B|A)P(A)P(B|A)P(A)+P(B|A)[1P(A)]=11+1P(A)P(A)P(B|A)P(B|A){\displaystyle {\begin{aligned}\mathbb {P} (A|B)&={\mathbb {P} (B|A)\mathbb {P} (A) \over {\mathbb {P} (B|A)\mathbb {P} (A)+\mathbb {P} (B|\sim A)[1-\mathbb {P} (A)]}}\\&={1 \over {1+{1-\mathbb {P} (A) \over {\mathbb {P} (A)}}{\mathbb {P} (B|\sim A) \over {\mathbb {P} (B|A)}}}}\end{aligned}}}This may be simplified further by defining thepriorodds of eventA{\displaystyle A} occurringη{\displaystyle \eta } and thelikelihood ratioL{\displaystyle {\mathcal {L}}} as:η=P(A)1P(A),L=P(B|A)P(B|A){\displaystyle \eta ={\mathbb {P} (A) \over {1-\mathbb {P} (A)}},\quad {\mathcal {L}}={\mathbb {P} (B|A) \over {\mathbb {P} (B|\sim A)}}}Then the compact form of Bayes' theorem is:P(A|B)=11+(ηL)1{\displaystyle \mathbb {P} (A|B)={1 \over {1+(\eta {\mathcal {L}})^{-1}}}}Different values of theposterior probability, based on the prior odds and likelihood ratio, are computed in the following table:

P(A|B){\displaystyle \mathbb {P} (A|B)} with Prior Odds and Likelihood Ratio
Likelihood Ratio
Prior Odds123451015202550
0.010.010.020.030.040.050.090.130.170.200.33
0.020.020.040.060.070.090.170.230.290.330.50
0.030.030.060.080.110.130.230.310.380.430.60
0.040.040.070.110.140.170.290.380.440.500.67
0.050.050.090.130.170.200.330.430.500.560.71
0.100.090.170.230.290.330.500.600.670.710.83
0.150.130.230.310.380.430.600.690.750.790.88
0.200.170.290.380.440.500.670.750.800.830.91
0.250.200.330.430.500.560.710.790.830.860.93
0.300.230.380.470.550.600.750.820.860.880.94

If we takeA{\displaystyle A} to be some criminal behavior andB{\displaystyle B} a criminal complaint or accusation, Bayes' theorem allows us to determine the conditional probability of a crime being committed. More sophisticated analyses of evidence can be undertaken with the use ofBayesian networks.

Emerging Trends in Jurimetrics

[edit]

As many other fields, the changes to jurimetrics have been dynamic due to technological advancements. The integration of artificial intelligence(AI) into legal processes has been an emerging trend. Machine learning algorithms, an AI powered tool, have been used frequently to analyze legal texts, predict case outcomes, and provide data-focused insights to legal employees.

Technological advancements such as AI have been used in creating legal analytics platforms. They can review large amounts of case law, and identify patterns that assist in crafting legal arguments. These innovations improve decision-making processes by reducing the likelihood of human error, but also increase the efficiency of legal research.[43]

For example, recent studies highlight the efficiency of ML in analyzing complex datasets, such as those found in healthcare or legal domains, with high accuracy. One application discussed by Christian Garbin, Nicholas Marques, and Oge Marques (2023) involves the use of ML models to identify specific patterns in datasets characterized by class imbalances. The article discusses datasets related toopioid use disorder (OUD), and how judgements passed in legal environments have been dependent on these datasets that are connected closely to class imbalances.[44]

Despite many advancements, the integration of AI into jurimetrics presents challenges. Garbin, Marques, and Marques emphasize that many studies that use machine learning algorithms fail to transparently document essential steps, such asdata preprocessing,hyperparameter tuning, or the criteria used for splitting training and test sets.[44]

Garbin, Marques, and Marques recommend prioritizing interpretable models unless the performance gap justifies the use of less transparent algorithms. Since legal decisions have high-stakes, interpretable models(logistic regression or decision trees) are often preferred over more complex "black-box" models. Often, these "black-box" models have higher predictive accuracy, but the interpretability is a central and ethical concern.[44]

History of Jurimetrics

[edit]

The term "jurimetrics" was created in 1949 byLee Loevinger.[45] It was defined as the use of quantitative methods to the study of law. Initially, jurimetrics was specifically focused on the theoretical exploration of statistical techniques on legal systems.[43]

Over time, the field evolved. In the mid-20th century, jurimetrics began to gain traction as researchers continued to explore the field and its potential for improving legal analysis. Early foundational studies created a roadmap for actually integrating the practice into the legal field. By the late 20th century, jurimetrics expanded to include applications such as evaluating the reliability of forensic evidence and modeling litigation outcomes.

In today's world, jurimetrics is recognized as a tool for the modern day legal system. It bridges the gaps between economics, data science, and the law.

Ethics of Jurimetrics

[edit]

In 2021, Abigail Z. Jacobs and Hanna Wallach released a study regarding "computational systems, and how they often involve unobservable theoretical constructs, such as socioeconomic status, teacher effectiveness, and risk ofrecidivism".[46] "Computational systems have long been touted as having the potential to counter societal biases and structural inequalities, yet recent work has demonstrated that they often end up encoding and exacerbating them instead".[46]

An example of the ethical concerns in jurimetrics comes from risk assessment models used in the U.S. justice system, particularly seen in theCorrectional Offender Management Profiling for Alternative Sanctions (COMPAS) tool. COMPAS is developed by Northpointe(now Equivant), and was built to evaluate a defendant's likelihood of recidivism through the analysis of various factors derived from official records and interviews. The factors are grouped into four dimensions: prior criminal history, associations with criminals, drug involvement, and indicators of juvenile delinquency.

The risk assessment model then uses the factors in a regression model to generate a recidivism risk score, scaled from one to ten, with ten indicating the highest risk. According to the model, recidivism is defined as a new misdemeanor or felony arrest within two years. However, the specific mathematical methodology that COMPAS uses remains private, which has raised concerns regarding transparency. Subsequent investigations, such as those by Angwin[47] et al., have critiqued the model for potential biases and their ethical implications.[48]

See also

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References

[edit]
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  33. ^Perry, Walter L.; McInnis, Brian; Price, Carter C.; Smith, Susan; Hollywood, John S. (2013)."Predictive Policing: The Role of Crime Forecasting in Law Enforcement Operations".RAND Corporation. Retrieved2019-08-16.
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  35. ^Localio, A. Russell; Lawthers, Ann G.; Bengtson, Joan M.; Hebert, Liesi E.; Weaver, Susan L.; Brennan, Troyen A.; Landis, J. Richard (1993). "Relationship Between Malpractice Claims and Cesarean Delivery".JAMA.269 (3):366–373.doi:10.1001/jama.1993.03500030064034.PMID 8418343.
  36. ^Unger, Adriana Jacoto; Neto, José Francisco dos Santos; Fantinato, Marcelo; Peres, Sarajane Marques; Trecenti, Julio; Hirota, Renata (21 June 2021).Process mining-enabled jurimetrics: analysis of a Brazilian court's judicial performance in the business law processing. ACM. pp. 240–244.doi:10.1145/3462757.3466137.ISBN 978-1-4503-8526-8.
  37. ^abSomin, Ilya (2018-10-04)."California's Unconstitutional Gender Quotas for Corporate Boards".Reason.com. The Volokh Conspiracy. Retrieved2019-08-13.
  38. ^Stewart, Emily (2018-10-03)."California just passed a law requiring more women on boards. It matters, even if it fails".Vox. Retrieved2019-08-13.
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  42. ^ab"Jurimetrics Spring 2024".www.americanbar.org. Retrieved2024-12-10.
  43. ^ab"Jurimetrics Spring 2024".www.americanbar.org. Retrieved2024-12-10.
  44. ^abcGarbin, Christian; Marques, Nicholas; Marques, Oge (2023-06-01)."Machine learning for predicting opioid use disorder from healthcare data: A systematic review".Computer Methods and Programs in Biomedicine.236 107573.doi:10.1016/j.cmpb.2023.107573.ISSN 0169-2607.PMID 37148670.
  45. ^Gutierrez, Richard E.; Scurich, Nicholas; Garrett, Brandon L. (2024)."The Impact Of Defense Experts On Juror Perceptions Of Firearms Examination Testimony".doi.org.doi:10.2139/ssrn.4966326. Retrieved2024-12-10.
  46. ^abJacobs, Abigail Z.; Wallach, Hanna (2021-03-12), "Measurement and Fairness",Proceedings of the 2021 ACM Conference on Fairness, Accountability, and Transparency, pp. 375–385,arXiv:1912.05511,doi:10.1145/3442188.3445901,ISBN 978-1-4503-8309-7
  47. ^Mattu, Jeff Larson,Julia Angwin,Lauren Kirchner,Surya (23 May 2016)."How We Analyzed the COMPAS Recidivism Algorithm".ProPublica. Retrieved2024-12-10.{{cite web}}: CS1 maint: multiple names: authors list (link)
  48. ^Mattu, Jeff Larson,Julia Angwin,Lauren Kirchner,Surya (23 May 2016)."How We Analyzed the COMPAS Recidivism Algorithm".ProPublica. Retrieved2024-12-10.{{cite web}}: CS1 maint: multiple names: authors list (link)

Further reading

[edit]
  • Angrist, Joshua D.; Pischke, Jörn-Steffen (2009).Mostly Harmless Econometrics: An Empiricist's Companion. Princeton, NJ: Princeton University Press.ISBN 978-0-691-12035-5.
  • Borenstein, Michael; Hedges, Larry V.; Higgins, Julian P.T.; Rothstein, Hannah R. (2009).Introduction to Meta-Analysis. Hoboken, NJ: John Wiley & Sons.ISBN 978-0-470-05724-7.
  • Finkelstein, Michael O.; Levin, Bruce (2015).Statistics for Lawyers. Statistics for Social and Behavioral Sciences (3rd ed.). New York, NY: Springer.ISBN 978-1-4419-5984-3.
  • Hosmer, David W.; Lemeshow, Stanley; May, Susanne (2008).Applied Survival Analysis: Regression Modeling of Time-to-Event Data. Wiley-Interscience (2nd ed.). Hoboken, NJ: John Wiley & Sons.ISBN 978-0-471-75499-2.
  • McCullagh, Peter; Nelder, John A. (1989).Generalized Linear Models. Monographs on Statistics and Applied Probability (2nd ed.). Boca Raton, FL: Chapman & Hall/CRC.ISBN 978-0-412-31760-6.

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