In probability theory, a log-Cauchy distribution is a probability distribution of a random variable whose logarithm is distributed in accordance with a Cauchy distribution. If X is a random variable with a Cauchy distribution, then Y = exp(X) has a log-Cauchy distribution; likewise, if Y has a log-Cauchy distribution, then X = log(Y) has a Cauchy distribution.[1]
The hazard rate decreases at the beginning and at the end of the distribution, but there may be an interval over which the hazard rate increases.[5]
Properties
The log-Cauchy distribution is an example of a heavy-tailed distribution.[6] Some authors regard it as a "super-heavy tailed" distribution, because it has a heavier tail than a Pareto distribution-type heavy tail, i.e., it has a logarithmically decaying tail.[6][7] As with the Cauchy distribution, none of the non-trivial moments of the log-Cauchy distribution are finite.[5] The mean is a moment so the log-Cauchy distribution does not have a defined mean or standard deviation.[8][9]
Since the Cauchy distribution is a stable distribution, the log-Cauchy distribution is a logstable distribution.[15] Logstable distributions have poles at x=0.[14]
In Bayesian statistics, the log-Cauchy distribution can be used to approximate the improperJeffreys-Haldane density, 1/k, which is sometimes suggested as the prior distribution for k where k is a positive parameter being estimated.[16][17] The log-Cauchy distribution can be used to model certain survival processes where significant outliers or extreme results may occur.[3][4][18] An example of a process where a log-Cauchy distribution may be an appropriate model is the time between someone becoming infected with HIV and showing symptoms of the disease, which may be very long for some people.[4] It has also been proposed as a model for species abundance patterns.[19]
References
^ abcdefOlive, D.J. (June 23, 2008). "Applied Robust Statistics"(PDF). Southern Illinois University. p. 86. Archived from the original(PDF) on September 28, 2011. Retrieved 2011-10-18.
^Wang, Y. "Trade, Human Capital and Technology Spillovers: An Industry Level Analysis". Carleton University: 14. {{cite journal}}: Cite journal requires |journal= (help)
^Kemp, M. (2009). Market consistency: model calibration in imperfect markets. Wiley. ISBN978-0-470-77088-7.
^MacDonald, J.B. (1981). "Measuring Income Inequality". In Taillie, C.; Patil, G.P.; Baldessari, B. (eds.). Statistical distributions in scientific work: proceedings of the NATO Advanced Study Institute. Springer. p. 169. ISBN978-90-277-1334-6.
^Good, I.J. (1983). Good thinking: the foundations of probability and its applications. University of Minnesota Press. p. 102. ISBN978-0-8166-1142-3.
^Chen, M. (2010). Frontiers of Statistical Decision Making and Bayesian Analysis. Springer. p. 12. ISBN978-1-4419-6943-9.
^Lindsey, J.K.; Jones, B. & Jarvis, P. (September 2001). "Some statistical issues in modelling pharmacokinetic data". Statistics in Medicine. 20 (17–18): 2775–278. doi:10.1002/sim.742. PMID11523082. S2CID41887351.
^Zuo-Yun, Y.; et al. (June 2005). "LogCauchy, log-sech and lognormal distributions of species abundances in forest communities". Ecological Modelling. 184 (2–4): 329–340. doi:10.1016/j.ecolmodel.2004.10.011.