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Extreme value theory

Extreme value theory or extreme value analysis (EVA) is a branch of statistics dealing with the extreme deviations from the median of probability distributions. It seeks to assess, from a given ordered sample of a given random variable, the probability of events that are more extreme than any previously observed. Extreme value analysis is widely used in many disciplines, such as structural engineering, finance, economics, earth sciences, traffic prediction, and geological engineering. For example, EVA might be used in the field of hydrology to estimate the probability of an unusually large flooding event, such as the 100-year flood. Similarly, for the design of a breakwater, a coastal engineer would seek to estimate the 50 year wave and design the structure accordingly.

Extreme value theory is used to model the risk of extreme, rare events, such as the 1755 Lisbon earthquake.

Data analysis edit

Two main approaches exist for practical extreme value analysis.

The first method relies on deriving block maxima (minima) series as a preliminary step. In many situations it is customary and convenient to extract the annual maxima (minima), generating an annual maxima series (AMS).

The second method relies on extracting, from a continuous record, the peak values reached for any period during which values exceed a certain threshold (falls below a certain threshold). This method is generally referred to as the peak over threshold method (POT).[1]

For AMS data, the analysis may partly rely on the results of the Fisher–Tippett–Gnedenko theorem, leading to the generalized extreme value distribution being selected for fitting.[2][3] However, in practice, various procedures are applied to select between a wider range of distributions. The theorem here relates to the limiting distributions for the minimum or the maximum of a very large collection of independent random variables from the same distribution. Given that the number of relevant random events within a year may be rather limited, it is unsurprising that analyses of observed AMS data often lead to distributions other than the generalized extreme value distribution (GEVD) being selected.[4]

For POT data, the analysis may involve fitting two distributions: One for the number of events in a time period considered and a second for the size of the exceedances.

A common assumption for the first is the Poisson distribution, with the generalized Pareto distribution being used for the exceedances. A tail-fitting can be based on the Pickands–Balkema–de Haan theorem.[5][6]

Novak (2011) reserves the term "POT method" to the case where the threshold is non-random, and distinguishes it from the case where one deals with exceedances of a random threshold.[7]

Applications edit

Applications of extreme value theory include predicting the probability distribution of:

History edit

The field of extreme value theory was pioneered by L. Tippett (1902–1985). Tippett was employed by the British Cotton Industry Research Association, where he worked to make cotton thread stronger. In his studies, he realized that the strength of a thread was controlled by the strength of its weakest fibres. With the help of R.A. Fisher, Tippet obtained three asymptotic limits describing the distributions of extremes assuming independent variables. E.J. Gumbel (1958)[22] codified this theory. These results can be extended to allow for slight correlations between variables, but the classical theory does not extend to strong correlations of the order of the variance. One universality class of particular interest is that of log-correlated fields, where the correlations decay logarithmically with the distance.

Univariate theory edit

The theory for extreme values of a single variable is governed by the extreme value theorem, also called the Fisher–Tippett–Gnedenko theorem, which describes which of the three possible distributions for extreme values applies for a particular statistical variable   which is summarized in this section.

Let   be a sample of independent and identically distributed random variables with cumulative distribution function   and let   denote the sample maximum.

In theory, the exact distribution of the maximum can be derived:

 

The value of the associated indicator function   is a Bernoulli process with a success probability   that depends on the magnitude   of the extreme event. The number of extreme events within   trials thus follows a binomial distribution and the number of trials until an event occurs follows a geometric distribution with expected value and standard deviation of the same order  

In practice, we might not have the distribution function   but the Fisher–Tippett–Gnedenko theorem provides an asymptotic result. If there exist sequences of paired constants   with   and   such that

 

as   then

 

where the parameter   depends on how steeply of the distribution's tail(s) diminish (called "ordinary" tail(s), "thin" tail(s), and "fat" tail(s), with the normal distribution put in the "thin" tailed group instead of "ordinary" for this context, at least). When normalized,   belongs to one of the following non-degenerate distribution families:

Type 1: Gumbel distribution, for  
 
when the distribution of   has an "ordinary" exponentially diminishing tail.


Type 2: Fréchet distribution, for  
 
when the distribution of   has a heavy tail (including polynomial decay).


Type 3: Weibull distribution,  
  for  
when the distribution of   has a thin tail with finite upper bound.

Multivariate theory edit

Extreme value theory in more than one variable introduces additional issues that have to be addressed. One problem that arises is that one must specify what constitutes an extreme event.[23] Although this is straightforward in the univariate case, there is no unambiguous way to do this in the multivariate case. The fundamental problem is that although it is possible to order a set of real-valued numbers, there is no natural way to order a set of vectors.

As an example, in the univariate case, given a set of observations   it is straightforward to find the most extreme event simply by taking the maximum (or minimum) of the observations. However, in the bivariate case, given a set of observations  , it is not immediately clear how to find the most extreme event. Suppose that one has measured the values   at a specific time and the values   at a later time. Which of these events would be considered more extreme? There is no universal answer to this question.

Another issue in the multivariate case is that the limiting model is not as fully prescribed as in the univariate case. In the univariate case, the model (GEV distribution) contains three parameters whose values are not predicted by the theory and must be obtained by fitting the distribution to the data. In the multivariate case, the model not only contains unknown parameters, but also a function whose exact form is not prescribed by the theory. However, this function must obey certain constraints.[24][25] It is not straightforward to devise estimators that obey such constraints though some have been recently constructed.[26][27][28]

As an example of an application, bivariate extreme value theory has been applied to ocean research.[23][29]

Non-stationary extremes edit

Statistical modeling for nonstationary time series was developed in the 1990s.[30] Methods for nonstationary multivariate extremes have been introduced more recently.[31] The latter can be used for tracking how the dependence between extreme values changes over time, or over another covariate.[32][33][34]

See also edit


References edit

  1. ^ Leadbetter, M.R. (1991). "On a basis for 'peaks over threshold' modeling". Statistics and Probability Letters. 12 (4): 357–362. doi:10.1016/0167-7152(91)90107-3.
  2. ^ Fisher & Tippett (1928)
  3. ^ Gnedenko (1943)
  4. ^ Embrechts, Klüppelberg & Mikosch (1997)
  5. ^ Pickands (1975)
  6. ^ Balkema & de Haan (1974)
  7. ^ Novak (2011)
  8. ^ Tippett, Lepore & Cohen (2016)
  9. ^ Batt, Ryan D.; Carpenter, Stephen R.; Ives, Anthony R. (March 2017). "Extreme events in lake ecosystem time series". Limnology and Oceanography Letters. 2 (3): 63. Bibcode:2017LimOL...2...63B. doi:10.1002/lol2.10037.
  10. ^ Alvarado, Sandberg & Pickford (1998), p. 68
  11. ^ Makkonen (2008)
  12. ^ Einmahl, J.H.J.; Smeets, S.G.W.R. (2009). (PDF) (Report). CentER Discussion Paper. Vol. 57. Tilburg University. Archived from the original (PDF) on 2016-03-12. Retrieved 2009-08-12.
  13. ^ Gembris, D.; Taylor, J.; Suter, D. (2002). "Trends and random fluctuations in athletics". Nature. 417 (6888): 506. Bibcode:2002Natur.417..506G. doi:10.1038/417506a. hdl:2003/25362. PMID 12037557. S2CID 13469470.
  14. ^ Gembris, D.; Taylor, J.; Suter, D. (2007). "Evolution of athletic records: Statistical effects versus real improvements". Journal of Applied Statistics. 34 (5): 529–545. Bibcode:2007JApSt..34..529G. doi:10.1080/02664760701234850. hdl:2003/25404. S2CID 55378036.
  15. ^ Spearing, H.; Tawn, J.; Irons, D.; Paulden, T.; Bennett, G. (2021). "Ranking, and other properties, of elite swimmers using extreme value theory". Journal of the Royal Statistical Society. Series A (Statistics in Society). 184 (1): 368–395. arXiv:1910.10070. doi:10.1111/rssa.12628. S2CID 204823947.
  16. ^ Songchitruksa, P.; Tarko, A.P. (2006). "The extreme value theory approach to safety estimation". Accident Analysis and Prevention. 38 (4): 811–822. doi:10.1016/j.aap.2006.02.003. PMID 16546103.
  17. ^ Orsini, F.; Gecchele, G.; Gastaldi, M.; Rossi, R. (2019). "Collision prediction in roundabouts: A comparative study of extreme value theory approaches". Transportmetrica. Series A: Transport Science. 15 (2): 556–572. doi:10.1080/23249935.2018.1515271. S2CID 158343873.
  18. ^ Tsinos, C.G.; Foukalas, F.; Khattab, T.; Lai, L. (February 2018). "On channel selection for carrier aggregation systems". IEEE Transactions on Communications. 66 (2): 808–818. doi:10.1109/TCOMM.2017.2757478. S2CID 3405114.
  19. ^ Wong, Felix; Collins, James J. (2 November 2020). "Evidence that coronavirus superspreading is fat-tailed". Proceedings of the National Academy of Sciences of the U.S. 117 (47): 29416–29418. Bibcode:2020PNAS..11729416W. doi:10.1073/pnas.2018490117. ISSN 0027-8424. PMC 7703634. PMID 33139561.
  20. ^ Basnayake, Kanishka; Mazaud, David; Bemelmans, Alexis; Rouach, Nathalie; Korkotian, Eduard; Holcman, David (4 June 2019). "Fast calcium transients in dendritic spines driven by extreme statistics". PLOS Biology. 17 (6): e2006202. doi:10.1371/journal.pbio.2006202. ISSN 1545-7885. PMC 6548358. PMID 31163024.
  21. ^ Younis, Abubaker; Abdeljalil, Anwar; Omer, Ali (1 January 2023). "Determination of panel generation factor using peaks over threshold method and short-term data for an off-grid photovoltaic system in Sudan: A case of Khartoum city". Solar Energy. 249: 242–249. Bibcode:2023SoEn..249..242Y. doi:10.1016/j.solener.2022.11.039. ISSN 0038-092X. S2CID 254207549.
  22. ^ Gumbel (2004)
  23. ^ a b Morton, I.D.; Bowers, J. (December 1996). "Extreme value analysis in a multivariate offshore environment". Applied Ocean Research. 18 (6): 303–317. Bibcode:1996AppOR..18..303M. doi:10.1016/s0141-1187(97)00007-2. ISSN 0141-1187.
  24. ^ Beirlant, Jan; Goegebeur, Yuri; Teugels, Jozef; Segers, Johan (27 August 2004). Statistics of Extremes: Theory and applications. Wiley Series in Probability and Statistics. Chichester, UK: John Wiley & Sons, Ltd. doi:10.1002/0470012382. ISBN 978-0-470-01238-3.
  25. ^ Coles, Stuart (2001). An Introduction to Statistical Modeling of Extreme Values. Springer Series in Statistics. doi:10.1007/978-1-4471-3675-0. ISBN 978-1-84996-874-4. ISSN 0172-7397.
  26. ^ de Carvalho, M.; Davison, A.C. (2014). "Spectral density ratio models for multivariate extremes" (PDF). Journal of the American Statistical Association. 109: 764‒776. doi:10.1016/j.spl.2017.03.030. hdl:20.500.11820/9e2f7cff-d052-452a-b6a2-dc8095c44e0c. S2CID 53338058.
  27. ^ Hanson, T.; de Carvalho, M.; Chen, Yuhui (2017). "Bernstein polynomial angular densities of multivariate extreme value distributions" (PDF). Statistics and Probability Letters. 128: 60–66. doi:10.1016/j.spl.2017.03.030. hdl:20.500.11820/9e2f7cff-d052-452a-b6a2-dc8095c44e0c. S2CID 53338058.
  28. ^ de Carvalho, M. (2013). "A Euclidean likelihood estimator for bivariate tail dependence" (PDF). Communications in Statistics – Theory and Methods. 42 (7): 1176–1192. arXiv:1204.3524. doi:10.1080/03610926.2012.709905. S2CID 42652601.
  29. ^ Zachary, S.; Feld, G.; Ward, G.; Wolfram, J. (October 1998). "Multivariate extrapolation in the offshore environment". Applied Ocean Research. 20 (5): 273–295. Bibcode:1998AppOR..20..273Z. doi:10.1016/s0141-1187(98)00027-3. ISSN 0141-1187.
  30. ^ Davison, A.C.; Smith, Richard (1990). "Models for exceedances over high thresholds". Journal of the Royal Statistical Society. Series B (Methodological). 52 (3): 393–425. doi:10.1111/j.2517-6161.1990.tb01796.x.
  31. ^ de Carvalho, M. (2016). "Statistics of extremes: Challenges and opportunities". Handbook of EVT and its Applications to Finance and Insurance (PDF). Hoboken, NJ: John Wiley's Sons. pp. 195–214. ISBN 978-1-118-65019-6.
  32. ^ Castro, D.; de Carvalho, M.; Wadsworth, J. (2018). "Time-Varying Extreme Value Dependence with Application to Leading European Stock Markets" (PDF). Annals of Applied Statistics. 12: 283–309. doi:10.1214/17-AOAS1089. S2CID 33350408.
  33. ^ Mhalla, L.; de Carvalho, M.; Chavez-Demoulin, V. (2019). "Regression type models for extremal dependence" (PDF). Scandinavian Journal of Statistics. 46 (4): 1141–1167. doi:10.1111/sjos.12388. S2CID 53570822.
  34. ^ Mhalla, L.; de Carvalho, M.; Chavez-Demoulin, V. (2018). "Local robust estimation of the Pickands dependence function". Annals of Statistics. 46 (6A): 2806–2843. doi:10.1214/17-AOS1640. S2CID 59467614.

Sources edit

  • Abarbanel, H.; Koonin, S.; Levine, H.; MacDonald, G.; Rothaus, O. (January 1992). "Statistics of extreme events with application to climate" (PDF). JASON. JSR-90-30S. Retrieved 2015-03-03.
  • Alvarado, Ernesto; Sandberg, David V.; Pickford, Stewart G. (1998). (PDF). Northwest Science. 72: 66–75. Archived from the original (PDF) on 2009-02-26. Retrieved 2009-02-06.
  • Balkema, A.; de Haan, Laurens (1974). "Residual life time at great age". Annals of Probability. 2 (5): 792–804. doi:10.1214/aop/1176996548. JSTOR 2959306.
  • Burry, K.V. (1975). Statistical Methods in Applied Science. Hoboken, NJ: John Wiley & Sons.
  • Castillo, E. (1988). Extreme Value Theory in Engineering. New York, NY: Academic Press. ISBN 0-12-163475-2.
  • Castillo, E.; Hadi, A.S.; Balakrishnan, N.; Sarabia, J.M. (2005). Extreme Value and Related Models with Applications in Engineering and Science. Wiley Series in Probability and Statistics. Hoboken, NJ: John Wiley's Sons. ISBN 0-471-67172-X.
  • Coles, S. (2001). An Introduction to Statistical Modeling of Extreme Values. London, UK: Springer.
  • Embrechts, P.; Klüppelberg, C.; Mikosch, T. (1997). Modelling extremal events for insurance and finance. Berlin, DE: Springer Verlag.
  • Fisher, R.A.; Tippett, L.H.C. (1928). "Limiting forms of the frequency distribution of the largest and smallest member of a sample". Proceedings of the Cambridge Philosophical Society. 24 (2): 180–190. Bibcode:1928PCPS...24..180F. doi:10.1017/s0305004100015681. S2CID 123125823.
  • Gnedenko, B.V. (1943). "Sur la distribution limite du terme maximum d'une serie aleatoire" [On the limiting distribution(s) of the maximum value of a series ...]. Annals of Mathematics (in French). 44 (3): 423–453. doi:10.2307/1968974. JSTOR 1968974.
  • Gumbel, E.J., ed. (1935) [1933–1934]. "Les valeurs extrêmes des distributions statistiques" [The statistical distributions of extreme values] (pdf). Annales de l'institut Henri Poincaré (conference papers) (in French). 5 (2). France: 115–158. Retrieved 2009-04-01 – via numdam.org.
  • Gumbel, E.J. (2004) [1958]. Statistics of Extremes (reprint ed.). Mineola, NY: Dover. ISBN 978-0-486-43604-3.
  • Makkonen, L. (2008). "Problems in the extreme value analysis". Structural Safety. 30 (5): 405–419. doi:10.1016/j.strusafe.2006.12.001.
  • Leadbetter, M.R. (1991). "On a basis for 'peaks over threshold' modeling". Statistics & Probability Letters. 12 (4): 357–362. doi:10.1016/0167-7152(91)90107-3.
  • Leadbetter, M.R.; Lindgren, G.; Rootzen, H. (1982). Extremes and Related Properties of Random Sequences and Processes. New York, NY: Springer-Verlag.
  • Lindgren, G.; Rootzen, H. (1987). "Extreme values: Theory and technical applications". Scandinavian Journal of Statistics, Theory and Applications. 14: 241–279.
  • Novak, S.Y. (2011). Extreme Value Methods with Applications to Finance. London, UK / Boca Raton, FL: Chapman & Hall / CRC Press. ISBN 978-1-4398-3574-6.
  • Pickands, J. (1975). "Statistical inference using extreme order statistics". Annals of Statistics. 3: 119–131. doi:10.1214/aos/1176343003.
  • Tippett, Michael K.; Lepore, Chiara; Cohen, Joel E. (16 December 2016). "More tornadoes in the most extreme U.S. tornado outbreaks". Science. 354 (6318): 1419–1423. Bibcode:2016Sci...354.1419T. doi:10.1126/science.aah7393. PMID 27934705.

Software edit

  • "Extreme Value Statistics in R". cran.r-project.org (software). 4 November 2023. — Package for extreme value statistics in R.
  • "Extremes.jl". github.com (software). — Package for extreme value statistics in Julia.
  • "Source code for stationary and non-stationary extreme value analysis". amir.eng.uci.edu (software). Irvine, CA: University of California, Irvine.

External links edit

  • Chavez-Demoulin, Valérie; Roehrl, Armin (8 January 2004). Extreme value theory can save your neck (PDF). risknet.de (Report). Germany. — Easy non-mathematical introduction.
  • Steps in applying extreme value theory to finance: A review (PDF). bankofcanada.ca (Report). Bank of Canada (published January 2010). c. 2010.
  • Gumbel, E.J., ed. (1935) [1933–1934]. "Les valeurs extrêmes des distributions statistiques" [The statistical distributions of extreme values] (pdf). Annales de l'institut Henri Poincaré (conference papers) (in French). 5 (2). France: 115–158. Retrieved 2009-04-01 – via numdam.org. — Full-text access to conferences held by E.J. Gumbel in 1933–1934.

extreme, value, theory, this, article, about, statistical, theory, result, calculus, extreme, value, theorem, extreme, value, analysis, branch, statistics, dealing, with, extreme, deviations, from, median, probability, distributions, seeks, assess, from, given. This article is about the statistical theory For the result in calculus see extreme value theorem Extreme value theory or extreme value analysis EVA is a branch of statistics dealing with the extreme deviations from the median of probability distributions It seeks to assess from a given ordered sample of a given random variable the probability of events that are more extreme than any previously observed Extreme value analysis is widely used in many disciplines such as structural engineering finance economics earth sciences traffic prediction and geological engineering For example EVA might be used in the field of hydrology to estimate the probability of an unusually large flooding event such as the 100 year flood Similarly for the design of a breakwater a coastal engineer would seek to estimate the 50 year wave and design the structure accordingly Extreme value theory is used to model the risk of extreme rare events such as the 1755 Lisbon earthquake Contents 1 Data analysis 2 Applications 3 History 4 Univariate theory 5 Multivariate theory 6 Non stationary extremes 7 See also 8 References 9 Sources 10 Software 11 External linksData analysis editTwo main approaches exist for practical extreme value analysis The first method relies on deriving block maxima minima series as a preliminary step In many situations it is customary and convenient to extract the annual maxima minima generating an annual maxima series AMS The second method relies on extracting from a continuous record the peak values reached for any period during which values exceed a certain threshold falls below a certain threshold This method is generally referred to as the peak over threshold method POT 1 For AMS data the analysis may partly rely on the results of the Fisher Tippett Gnedenko theorem leading to the generalized extreme value distribution being selected for fitting 2 3 However in practice various procedures are applied to select between a wider range of distributions The theorem here relates to the limiting distributions for the minimum or the maximum of a very large collection of independent random variables from the same distribution Given that the number of relevant random events within a year may be rather limited it is unsurprising that analyses of observed AMS data often lead to distributions other than the generalized extreme value distribution GEVD being selected 4 For POT data the analysis may involve fitting two distributions One for the number of events in a time period considered and a second for the size of the exceedances A common assumption for the first is the Poisson distribution with the generalized Pareto distribution being used for the exceedances A tail fitting can be based on the Pickands Balkema de Haan theorem 5 6 Novak 2011 reserves the term POT method to the case where the threshold is non random and distinguishes it from the case where one deals with exceedances of a random threshold 7 Applications editApplications of extreme value theory include predicting the probability distribution of Extreme floods the size of freak waves Tornado outbreaks 8 Maximum sizes of ecological populations 9 Side effects of drugs e g ximelagatran The magnitudes of large insurance losses Equity risks day to day market risk Mutation events during evolution Large wildfires 10 Environmental loads on structures 11 Time the fastest humans could ever run the 100 metres sprint 12 and performances in other athletic disciplines 13 14 15 Pipeline failures due to pitting corrosion Anomalous IT network traffic prevent attackers from reaching important data Road safety analysis 16 17 Wireless communications 18 Epidemics 19 Neurobiology 20 Solar energy 21 History editThe field of extreme value theory was pioneered by L Tippett 1902 1985 Tippett was employed by the British Cotton Industry Research Association where he worked to make cotton thread stronger In his studies he realized that the strength of a thread was controlled by the strength of its weakest fibres With the help of R A Fisher Tippet obtained three asymptotic limits describing the distributions of extremes assuming independent variables E J Gumbel 1958 22 codified this theory These results can be extended to allow for slight correlations between variables but the classical theory does not extend to strong correlations of the order of the variance One universality class of particular interest is that of log correlated fields where the correlations decay logarithmically with the distance Univariate theory editMain article extreme value theorem The theory for extreme values of a single variable is governed by the extreme value theorem also called the Fisher Tippett Gnedenko theorem which describes which of the three possible distributions for extreme values applies for a particular statistical variable X displaystyle X nbsp which is summarized in this section Let X 1 X n displaystyle X 1 dots X n nbsp be a sample of independent and identically distributed random variables with cumulative distribution function F displaystyle F nbsp and let M n max X 1 X n displaystyle M n max X 1 dots X n nbsp denote the sample maximum In theory the exact distribution of the maximum can be derived P M n z P X 1 z X n z P X 1 z P X n z F z n displaystyle begin aligned boldsymbol operatorname mathcal P left M n leq z right amp boldsymbol operatorname mathcal P left X 1 leq z dots X n leq z right amp boldsymbol operatorname mathcal P left X 1 leq z right times cdots times boldsymbol operatorname mathcal P left X n leq z right bigl F z bigr n end aligned nbsp The value of the associated indicator function I n I M n gt z displaystyle I n boldsymbol operatorname mathcal I left M n gt z right nbsp is a Bernoulli process with a success probability p z 1 F z n displaystyle p z 1 bigl F z bigr n nbsp that depends on the magnitude z displaystyle z nbsp of the extreme event The number of extreme events within n displaystyle n nbsp trials thus follows a binomial distribution and the number of trials until an event occurs follows a geometric distribution with expected value and standard deviation of the same order O 1 p z displaystyle boldsymbol operatorname mathcal O left tfrac 1 p z right nbsp In practice we might not have the distribution function F displaystyle F nbsp but the Fisher Tippett Gnedenko theorem provides an asymptotic result If there exist sequences of paired constants a n b n displaystyle a n b n nbsp with a n gt 0 displaystyle a n gt 0 nbsp and b n R displaystyle b n in mathbb R nbsp such that P M n b n a n z G z displaystyle boldsymbol operatorname mathcal P left frac M n b n a n leq z right rightarrow G z nbsp as n displaystyle n rightarrow infty nbsp then G z exp 1 g z 1 g displaystyle G z propto exp left bigl 1 gamma cdot z bigr frac 1 gamma right nbsp where the parameter g displaystyle gamma nbsp depends on how steeply of the distribution s tail s diminish called ordinary tail s thin tail s and fat tail s with the normal distribution put in the thin tailed group instead of ordinary for this context at least When normalized G displaystyle G nbsp belongs to one of the following non degenerate distribution families Type 1 Gumbel distribution for g 0 displaystyle gamma 0 nbsp G z exp exp z b a displaystyle G z exp left exp left tfrac z b a right right nbsp dd when the distribution of M n displaystyle M n nbsp has an ordinary exponentially diminishing tail Type 2 Frechet distribution for g lt 0 displaystyle gamma lt 0 nbsp G z 0 z b exp z b a g z gt b displaystyle G z begin cases 0 quad amp z leq b exp left left tfrac z b a right left gamma right right amp z gt b end cases nbsp dd when the distribution of M n displaystyle M n nbsp has a heavy tail including polynomial decay Type 3 Weibull distribution g gt 0 displaystyle gamma gt 0 nbsp G z exp z b a g z lt b 1 z b displaystyle G z begin cases exp left left tfrac z b a right gamma right amp z lt b 1 amp z geq b end cases nbsp for z R displaystyle z in mathbb R nbsp dd when the distribution of M n displaystyle M n nbsp has a thin tail with finite upper bound Multivariate theory editExtreme value theory in more than one variable introduces additional issues that have to be addressed One problem that arises is that one must specify what constitutes an extreme event 23 Although this is straightforward in the univariate case there is no unambiguous way to do this in the multivariate case The fundamental problem is that although it is possible to order a set of real valued numbers there is no natural way to order a set of vectors As an example in the univariate case given a set of observations x i displaystyle x i nbsp it is straightforward to find the most extreme event simply by taking the maximum or minimum of the observations However in the bivariate case given a set of observations x i y i displaystyle x i y i nbsp it is not immediately clear how to find the most extreme event Suppose that one has measured the values 3 4 displaystyle 3 4 nbsp at a specific time and the values 5 2 displaystyle 5 2 nbsp at a later time Which of these events would be considered more extreme There is no universal answer to this question Another issue in the multivariate case is that the limiting model is not as fully prescribed as in the univariate case In the univariate case the model GEV distribution contains three parameters whose values are not predicted by the theory and must be obtained by fitting the distribution to the data In the multivariate case the model not only contains unknown parameters but also a function whose exact form is not prescribed by the theory However this function must obey certain constraints 24 25 It is not straightforward to devise estimators that obey such constraints though some have been recently constructed 26 27 28 As an example of an application bivariate extreme value theory has been applied to ocean research 23 29 Non stationary extremes editStatistical modeling for nonstationary time series was developed in the 1990s 30 Methods for nonstationary multivariate extremes have been introduced more recently 31 The latter can be used for tracking how the dependence between extreme values changes over time or over another covariate 32 33 34 See also editExtreme risk Extreme weather Fisher Tippett Gnedenko theorem Generalized extreme value distribution Large deviation theory Outlier Pareto distribution Pickands Balkema de Haan theorem Rare events Redundancy principle Extreme value distributions Frechet distribution Gumbel distribution Weibull distributionReferences edit Leadbetter M R 1991 On a basis for peaks over threshold modeling Statistics and Probability Letters 12 4 357 362 doi 10 1016 0167 7152 91 90107 3 Fisher amp Tippett 1928 Gnedenko 1943 Embrechts Kluppelberg amp Mikosch 1997 Pickands 1975 Balkema amp de Haan 1974 Novak 2011 Tippett Lepore amp Cohen 2016 Batt Ryan D Carpenter Stephen R Ives Anthony R March 2017 Extreme events in lake ecosystem time series Limnology and Oceanography Letters 2 3 63 Bibcode 2017LimOL 2 63B doi 10 1002 lol2 10037 Alvarado Sandberg amp Pickford 1998 p 68 Makkonen 2008 Einmahl J H J Smeets S G W R 2009 Ultimate 100m world records through extreme value theory PDF Report CentER Discussion Paper Vol 57 Tilburg University Archived from the original PDF on 2016 03 12 Retrieved 2009 08 12 Gembris D Taylor J Suter D 2002 Trends and random fluctuations in athletics Nature 417 6888 506 Bibcode 2002Natur 417 506G doi 10 1038 417506a hdl 2003 25362 PMID 12037557 S2CID 13469470 Gembris D Taylor J Suter D 2007 Evolution of athletic records Statistical effects versus real improvements Journal of Applied Statistics 34 5 529 545 Bibcode 2007JApSt 34 529G doi 10 1080 02664760701234850 hdl 2003 25404 S2CID 55378036 Spearing H Tawn J Irons D Paulden T Bennett G 2021 Ranking and other properties of elite swimmers using extreme value theory Journal of the Royal Statistical Society Series A Statistics in Society 184 1 368 395 arXiv 1910 10070 doi 10 1111 rssa 12628 S2CID 204823947 Songchitruksa P Tarko A P 2006 The extreme value theory approach to safety estimation Accident Analysis and Prevention 38 4 811 822 doi 10 1016 j aap 2006 02 003 PMID 16546103 Orsini F Gecchele G Gastaldi M Rossi R 2019 Collision prediction in roundabouts A comparative study of extreme value theory approaches Transportmetrica Series A Transport Science 15 2 556 572 doi 10 1080 23249935 2018 1515271 S2CID 158343873 Tsinos C G Foukalas F Khattab T Lai L February 2018 On channel selection for carrier aggregation systems IEEE Transactions on Communications 66 2 808 818 doi 10 1109 TCOMM 2017 2757478 S2CID 3405114 Wong Felix Collins James J 2 November 2020 Evidence that coronavirus superspreading is fat tailed Proceedings of the National Academy of Sciences of the U S 117 47 29416 29418 Bibcode 2020PNAS 11729416W doi 10 1073 pnas 2018490117 ISSN 0027 8424 PMC 7703634 PMID 33139561 Basnayake Kanishka Mazaud David Bemelmans Alexis Rouach Nathalie Korkotian Eduard Holcman David 4 June 2019 Fast calcium transients in dendritic spines driven by extreme statistics PLOS Biology 17 6 e2006202 doi 10 1371 journal pbio 2006202 ISSN 1545 7885 PMC 6548358 PMID 31163024 Younis Abubaker Abdeljalil Anwar Omer Ali 1 January 2023 Determination of panel generation factor using peaks over threshold method and short term data for an off grid photovoltaic system in Sudan A case of Khartoum city Solar Energy 249 242 249 Bibcode 2023SoEn 249 242Y doi 10 1016 j solener 2022 11 039 ISSN 0038 092X S2CID 254207549 Gumbel 2004 a b Morton I D Bowers J December 1996 Extreme value analysis in a multivariate offshore environment Applied Ocean Research 18 6 303 317 Bibcode 1996AppOR 18 303M doi 10 1016 s0141 1187 97 00007 2 ISSN 0141 1187 Beirlant Jan Goegebeur Yuri Teugels Jozef Segers Johan 27 August 2004 Statistics of Extremes Theory and applications Wiley Series in Probability and Statistics Chichester UK John Wiley amp Sons Ltd doi 10 1002 0470012382 ISBN 978 0 470 01238 3 Coles Stuart 2001 An Introduction to Statistical Modeling of Extreme Values Springer Series in Statistics doi 10 1007 978 1 4471 3675 0 ISBN 978 1 84996 874 4 ISSN 0172 7397 de Carvalho M Davison A C 2014 Spectral density ratio models for multivariate extremes PDF Journal of the American Statistical Association 109 764 776 doi 10 1016 j spl 2017 03 030 hdl 20 500 11820 9e2f7cff d052 452a b6a2 dc8095c44e0c S2CID 53338058 Hanson T de Carvalho M Chen Yuhui 2017 Bernstein polynomial angular densities of multivariate extreme value distributions PDF Statistics and Probability Letters 128 60 66 doi 10 1016 j spl 2017 03 030 hdl 20 500 11820 9e2f7cff d052 452a b6a2 dc8095c44e0c S2CID 53338058 de Carvalho M 2013 A Euclidean likelihood estimator for bivariate tail dependence PDF Communications in Statistics Theory and Methods 42 7 1176 1192 arXiv 1204 3524 doi 10 1080 03610926 2012 709905 S2CID 42652601 Zachary S Feld G Ward G Wolfram J October 1998 Multivariate extrapolation in the offshore environment Applied Ocean Research 20 5 273 295 Bibcode 1998AppOR 20 273Z doi 10 1016 s0141 1187 98 00027 3 ISSN 0141 1187 Davison A C Smith Richard 1990 Models for exceedances over high thresholds Journal of the Royal Statistical Society Series B Methodological 52 3 393 425 doi 10 1111 j 2517 6161 1990 tb01796 x de Carvalho M 2016 Statistics of extremes Challenges and opportunities Handbook of EVT and its Applications to Finance and Insurance PDF Hoboken NJ John Wiley s Sons pp 195 214 ISBN 978 1 118 65019 6 Castro D de Carvalho M Wadsworth J 2018 Time Varying Extreme Value Dependence with Application to Leading European Stock Markets PDF Annals of Applied Statistics 12 283 309 doi 10 1214 17 AOAS1089 S2CID 33350408 Mhalla L de Carvalho M Chavez Demoulin V 2019 Regression type models for extremal dependence PDF Scandinavian Journal of Statistics 46 4 1141 1167 doi 10 1111 sjos 12388 S2CID 53570822 Mhalla L de Carvalho M Chavez Demoulin V 2018 Local robust estimation of the Pickands dependence function Annals of Statistics 46 6A 2806 2843 doi 10 1214 17 AOS1640 S2CID 59467614 Sources editAbarbanel H Koonin S Levine H MacDonald G Rothaus O January 1992 Statistics of extreme events with application to climate PDF JASON JSR 90 30S Retrieved 2015 03 03 Alvarado Ernesto Sandberg David V Pickford Stewart G 1998 Modeling Large Forest Fires as Extreme Events PDF Northwest Science 72 66 75 Archived from the original PDF on 2009 02 26 Retrieved 2009 02 06 Balkema A de Haan Laurens 1974 Residual life time at great age Annals of Probability 2 5 792 804 doi 10 1214 aop 1176996548 JSTOR 2959306 Burry K V 1975 Statistical Methods in Applied Science Hoboken NJ John Wiley amp Sons Castillo E 1988 Extreme Value Theory in Engineering New York NY Academic Press ISBN 0 12 163475 2 Castillo E Hadi A S Balakrishnan N Sarabia J M 2005 Extreme Value and Related Models with Applications in Engineering and Science Wiley Series in Probability and Statistics Hoboken NJ John Wiley s Sons ISBN 0 471 67172 X Coles S 2001 An Introduction to Statistical Modeling of Extreme Values London UK Springer Embrechts P Kluppelberg C Mikosch T 1997 Modelling extremal events for insurance and finance Berlin DE Springer Verlag Fisher R A Tippett L H C 1928 Limiting forms of the frequency distribution of the largest and smallest member of a sample Proceedings of the Cambridge Philosophical Society 24 2 180 190 Bibcode 1928PCPS 24 180F doi 10 1017 s0305004100015681 S2CID 123125823 Gnedenko B V 1943 Sur la distribution limite du terme maximum d une serie aleatoire On the limiting distribution s of the maximum value of a series Annals of Mathematics in French 44 3 423 453 doi 10 2307 1968974 JSTOR 1968974 Gumbel E J ed 1935 1933 1934 Les valeurs extremes des distributions statistiques The statistical distributions of extreme values pdf Annales de l institut Henri Poincare conference papers in French 5 2 France 115 158 Retrieved 2009 04 01 via numdam org Gumbel E J 2004 1958 Statistics of Extremes reprint ed Mineola NY Dover ISBN 978 0 486 43604 3 Makkonen L 2008 Problems in the extreme value analysis Structural Safety 30 5 405 419 doi 10 1016 j strusafe 2006 12 001 Leadbetter M R 1991 On a basis for peaks over threshold modeling Statistics amp Probability Letters 12 4 357 362 doi 10 1016 0167 7152 91 90107 3 Leadbetter M R Lindgren G Rootzen H 1982 Extremes and Related Properties of Random Sequences and Processes New York NY Springer Verlag Lindgren G Rootzen H 1987 Extreme values Theory and technical applications Scandinavian Journal of Statistics Theory and Applications 14 241 279 Novak S Y 2011 Extreme Value Methods with Applications to Finance London UK Boca Raton FL Chapman amp Hall CRC Press ISBN 978 1 4398 3574 6 Pickands J 1975 Statistical inference using extreme order statistics Annals of Statistics 3 119 131 doi 10 1214 aos 1176343003 Tippett Michael K Lepore Chiara Cohen Joel E 16 December 2016 More tornadoes in the most extreme U S tornado outbreaks Science 354 6318 1419 1423 Bibcode 2016Sci 354 1419T doi 10 1126 science aah7393 PMID 27934705 Software edit Extreme Value Statistics in R cran r project org software 4 November 2023 Package for extreme value statistics in R Extremes jl github com software Package for extreme value statistics in Julia Source code for stationary and non stationary extreme value analysis amir eng uci edu software Irvine CA University of California Irvine External links editChavez Demoulin Valerie Roehrl Armin 8 January 2004 Extreme value theory can save your neck PDF risknet de Report Germany Easy non mathematical introduction Steps in applying extreme value theory to finance A review PDF bankofcanada ca Report Bank of Canada published January 2010 c 2010 Gumbel E J ed 1935 1933 1934 Les valeurs extremes des distributions statistiques The statistical distributions of extreme values pdf Annales de l institut Henri Poincare conference papers in French 5 2 France 115 158 Retrieved 2009 04 01 via numdam org Full text access to conferences held by E J Gumbel in 1933 1934 Retrieved from https en wikipedia org w index php title Extreme value theory amp oldid 1202645121, wikipedia, wiki, book, books, library,

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