There are far more ordinary people (say, 80 percent) than extraordinary people (say, 20 percent); this is often characterized by the 80/20 principle, based on the observation made by the Italian economist Vilfredo Pareto in 1906 that 80% of land in Italy was owned by 20% of the population. A histogram of the data values for these phenomena would reveal a right-skewed or heavy-tailed distribution. How to map the data with the heavy-tailed distribution?
@Jiang_2013
This vignette discusses the implementation of the "Head/tail breaks" style (@Jiang_2013) in the classIntervals
function. A step-by-step example is presented in order to clarify the method. A case study using spData::afcon
is also included, as well as a test suite checking the performance and validation of the implementation.
knitr::opts_chunk$set( collapse = TRUE, comment = "#>" )
The Head/tail breaks, sometimes referred as ht-index (@Jiang2_2013), is a classification scheme introduced by @Jiang_2013 in order to find groupings or hierarchy for data with a heavy-tailed distribution.
Heavy-tailed distributions are heavily right skewed, with a minority of large values in the head and a majority of small values in the tail. This imbalance between the head and tail, or between many small values and a few large values, can be expressed as "far more small things than large things".
Heavy tailed distributions are commonly characterized by a power law, a lognormal or an exponential function. Nature, society, finance (@vasicek2012) and our daily lives are full of rare and extreme events, which are termed "black swan events" (@taleb_black_2008). This line of thinking provides a good reason to reverse our thinking by focusing on low-frequency events.
library(classInt) #1. Characterization of heavy-tail distributions---- set.seed(1234) #Pareto distribution a=1 b=1.161 n=1000 sample_par <- 1 / (1 - runif(1000)) ^ (1 / 1.161) opar <- par(no.readonly = TRUE) par(mar = c(2, 4, 3, 1), cex = 0.8) plot( sort(sample_par, decreasing = TRUE), type = "l", ylab = "F(x)", xlab = "", main = "80/20 principle" ) abline(h = quantile(sample_par, .8) , lty = 2, col = "red3") abline(v = 0.2*length(sample_par) , lty = 2, col = "darkblue") legend( "topleft", legend = c("F(x): p80", "x: Top 20%"), col = c("red3", "darkblue"), lty = 2, cex = 0.8 ) hist( sample_par, n = 100, xlab = "", main = "Histogram", col = "grey50", border = NA, probability = TRUE ) par(opar)
The method itself consists on a four-step process performed recursively until a stopping condition is satisfied. Given a vector of values var
the process can be described as follows:
mu = mean(var)
.var
into the tail
(as var < mu
) and the head
(as var > mu
).head
over var
is lower or equal than a given threshold (i.e. length(head)/length(var) <= thr
)TRUE
, repeat 1 to 3 until the condition is FALSE
or no more partitions are possible (i.e. head
has less than two elements expressed as length(head) < 2
). It is important to note that, at the beginning of a new iteration, var
is replaced by head
. The underlying hypothesis is to create partitions until the head and the tail are balanced in terms of distribution.So the stopping criteria is satisfied when the last head and the last tail are evenly balanced.
In terms of threshold, @Jiang3_2013 set 40% as a good approximation, meaning that if the head contains more than 40% of the observations the distribution is not considered heavy-tailed.
The final breaks are the vector of consecutive mu
.
We reproduce here the pseudo-code^[The method implemented in classInt
corresponds to head/tails 1.0 as named in this article.] as per @Jiang_2019:
Recursive function Head/tail Breaks: Rank the input data from the largest to the smallest Break the data into the head and the tail around the mean; // the head for those above the mean // the tail for those below the mean While (head <= 40%): Head/tail Breaks (head); End Function
A step-by-step example in R (for illustrative purposes) has been developed:
opar <- par(no.readonly = TRUE) par(mar = c(2, 2, 3, 1), cex = 0.8) var <- sample_par thr <- .4 brks <- c(min(var), max(var)) #Initialise with min and max sum_table <- data.frame( iter = 0, mu = NA, prop = NA, n_var = NA, n_head = NA ) #Pars for chart limchart <- brks #Iteration for (i in 1:10) { mu <- mean(var) brks <- sort(c(brks, mu)) head <- var[var > mu] prop <- length(head) / length(var) stopit <- prop < thr & length(head) > 1 sum_table = rbind(sum_table, c(i, mu, prop, length(var), length(head))) hist( var, main = paste0("Iter ", i), breaks = 50, col = "grey50", border = NA, xlab = "", xlim = limchart ) abline(v = mu, col = "red3", lty = 2) ylabel <- max(hist(var, breaks = 50, plot = FALSE)$counts) labelplot <- paste0("PropHead: ", round(prop * 100, 2), "%") text( x = mu, y = ylabel, labels = labelplot, cex = 0.8, pos = 4 ) legend( "right", legend = paste0("mu", i), col = c("red3"), lty = 2, cex = 0.8 ) if (isFALSE(stopit)) break var <- head } par(opar)
As it can be seen, in each iteration the resulting head gradually loses the high-tail property, until the stopping condition is met.
sum_table$mu <- round(sum_table$mu,4) sum_table$prop <- paste0(round(100*sum_table$prop,2),"%") knitr::kable(sum_table[!is.na(sum_table$mu),], row.names = FALSE)
The resulting breaks are then defined as breaks = c(min(var), mu(iter=1), ..., mu(iter), max(var))
.
classInt
packageThe implementation in the classIntervals
function should replicate the results:
ht_sample_par <- classIntervals(sample_par, style = "headtails") brks == ht_sample_par$brks print(ht_sample_par)
As stated in @Jiang_2013, the number of breaks is naturally determined, however the thr
parameter could help to adjust the final number. A lower value on thr
would provide less breaks while a larger thr
would increase the number, if the underlying distribution follows the "far more small things than large things" principle.
opar <- par(no.readonly = TRUE) par(mar = c(2, 2, 2, 1), cex = 0.8) pal1 <- c("wheat1", "wheat2", "red3") # Minimum: single break print(classIntervals(sample_par, style = "headtails", thr = 0)) plot( classIntervals(sample_par, style = "headtails", thr = 0), pal = pal1, main = "thr = 0" ) # Two breaks print(classIntervals(sample_par, style = "headtails", thr = 0.2)) plot( classIntervals(sample_par, style = "headtails", thr = 0.2), pal = pal1, main = "thr = 0.2" ) # Default breaks: 0.4 print(classIntervals(sample_par, style = "headtails")) plot(classIntervals(sample_par, style = "headtails"), pal = pal1, main = "thr = Default") # Maximum breaks print(classIntervals(sample_par, style = "headtails", thr = 1)) plot( classIntervals(sample_par, style = "headtails", thr = 1), pal = pal1, main = "thr = 1" ) par(opar)
The method always returns at least one break, corresponding to mean(var)
.
@Jiang_2013 states that "the new classification scheme is more natural than the natural breaks in finding the groupings or hierarchy for data with a heavy-tailed distribution." (p. 482), referring to Jenks' natural breaks method. In this case study we would compare "headtails" vs. "fisher", that is the alias for the Fisher-Jenks algorithm and it is always preferred to the "jenks" style (see ?classIntervals
). For this example we will use the afcon
dataset from spData
package.
library(spData) data(afcon, package = "spData")
Let's have a look to the Top 10 values and the distribution of the variable totcon
(index of total conflict 1966-78):
# Top10 knitr::kable(head(afcon[order(afcon$totcon, decreasing = TRUE),c("name","totcon")],10)) opar <- par(no.readonly = TRUE) par(mar = c(4, 4, 3, 1), cex = 0.8) hist(afcon$totcon, n = 20, main = "Histogram", xlab = "totcon", col = "grey50", border = NA, ) plot( density(afcon$totcon), main = "Distribution", xlab = "totcon", ) par(opar)
The data shows that EG and SU data present a clear hierarchy over the rest of values. As per the histogram, we can confirm a heavy-tailed distribution and therefore the "far more small things than large things" principle.
As a testing proof, on top of "headtails" and "fisher" we would use also "quantile" to have a broader view on the different breaking styles. As "quantile" is a position-based metric, it doesn't account for the magnitude of F(x) (hierarchy), so the breaks are solely defined by the position of x on the distribution.
Applying the three aforementioned methods to break the data:
brks_ht <- classIntervals(afcon$totcon, style = "headtails") print(brks_ht) #Same number of classes for "fisher" nclass <- length(brks_ht$brks) - 1 brks_fisher <- classIntervals(afcon$totcon, style = "fisher", n = nclass) print(brks_fisher) brks_quantile <- classIntervals(afcon$totcon, style = "quantile", n = nclass) print(brks_quantile) pal1 <- c("wheat1", "wheat2", "red3") opar <- par(no.readonly = TRUE) par(mar = c(2, 2, 2, 1), cex = 0.8) plot(brks_ht, pal = pal1, main = "headtails") plot(brks_fisher, pal = pal1, main = "fisher") plot(brks_quantile, pal = pal1, main = "quantile") par(opar)
It is observed that the top three classes of "headtails" enclose 5 observations, whereas "fisher" includes 13 observations. In terms of classification, "headtails" breaks focuses more on extreme values.
The next plot compares a continuous distribution of totcon
re-escalated to a range of [1,nclass]
versus the distribution across breaks for each style. The continuous distribution has been offset by -0.5 in order to align the continuous and the discrete distributions.
#Helper function to rescale values help_reescale <- function(x, min = 1, max = 10) { r <- (x - min(x)) / (max(x) - min(x)) r <- r * (max - min) + min return(r) } afcon$ecdf_class <- help_reescale(afcon$totcon, min = 1 - 0.5, max = nclass - 0.5) afcon$ht_breaks <- cut(afcon$totcon, brks_ht$brks, labels = FALSE, include.lowest = TRUE) afcon$fisher_breaks <- cut(afcon$totcon, brks_fisher$brks, labels = FALSE, include.lowest = TRUE) afcon$quantile_break <- cut(afcon$totcon, brks_quantile$brks, labels = FALSE, include.lowest = TRUE) opar <- par(no.readonly = TRUE) par(mar = c(4, 4, 1, 1), cex = 0.8) plot( density(afcon$ecdf_class), ylim = c(0, 0.8), lwd = 2, main = "", xlab = "class" ) lines(density(afcon$ht_breaks), col = "darkblue", lty = 2) lines(density(afcon$fisher_breaks), col = "limegreen", lty = 2) lines(density(afcon$quantile_break), col = "red3", lty = 2) legend("topright", legend = c("Continuous", "headtails", "fisher", "quantile"), col = c("black", "darkblue", "limegreen", "red3"), lwd = c(2, 1, 1, 1), lty = c(1, 2, 2, 2), cex = 0.8 ) par(opar)
It can be observed that the distribution of "headtails" breaks is also heavy-tailed, and closer to the original distribution. On the other extreme, "quantile" provides a quasi-uniform distribution, ignoring the totcon
hierarchy
In terms of data visualization, we compare here the final map using the techniques mentioned above. On this plotting exercise:
cex
of points are always between 1
and 5
.col
and cex
on each point is defined as per the class of that point.custompal <- c("#FE9F6D99", "#DE496899", "#8C298199", "#3B0F7099", "#00000499") afcon$cex_points <- help_reescale(afcon$totcon, min = 1, max = 5) opar <- par(no.readonly = TRUE) par(mar = c(1.5, 1.5, 2, 1.5), cex = 0.8) # Plot continuous plot( x = afcon$x, y = afcon$y, axes = FALSE, cex = afcon$cex_points, pch = 20, col = "grey50", main = "Continuous", ) mcont <- (max(afcon$totcon) - min(afcon$totcon)) / 4 legcont <- 1:5 * mcont - (mcont - min(afcon$totcon)) legend("bottomleft", xjust = 1, bty = "n", legend = paste0(" ", round(legcont, 0) ), col = "grey50", pt.cex = seq(1, 5), pch = 20, title = "totcon" ) box() plot( x = afcon$x, y = afcon$y, axes = FALSE, cex = afcon$ht_breaks, pch = 20, col = custompal[afcon$ht_breaks], main = "headtails" ) legend( "bottomleft", xjust = 1, bty = "n", legend = paste0(" ", round(brks_ht$brks[2:6],0) ), col = custompal, pt.cex = seq(1, 5), pch = 20, title = "totcon" ) box() plot( x = afcon$x, y = afcon$y, axes = FALSE, cex = afcon$fisher_breaks, pch = 20, col = custompal[afcon$fisher_breaks], main = "fisher" ) legend( "bottomleft", xjust = 1, bty = "n", legend = paste0(" ", round(brks_fisher$brks[2:6],0) ), col = custompal, pt.cex = seq(1, 5), pch = 20, title = "totcon" ) box() plot( x = afcon$x, y = afcon$y, axes = FALSE, cex = afcon$quantile_break, pch = 20, col = custompal[afcon$quantile_break], main = "quantile" ) legend( "bottomleft", xjust = 1, bty = "n", legend = paste0(" ", round(brks_quantile$brks[2:6],0) ), col = custompal, pt.cex = seq(1, 5), pch = 20, title = "totcon" ) box() par(opar)
As per the results, "headtails" seems to provide a better understanding of the most extreme values when the result is compared against the continuous plot. The "quantile" style, as expected, just provides a clustering without taking into account the real hierarchy. The "fisher" plot is in-between of these two interpretations.
It is also important to note that "headtails" and "fisher" reveal different information that can be useful depending of the context. While "headtails" highlights the outliers, it fails on providing a good clustering on the tail, while "fisher" seems to reflect better these patterns. This can be observed on the values of Western Africa and the Niger River Basin, where "headtails" doesn't highlight any special cluster of conflicts, "fisher" suggests a potential cluster. This can be confirmed on the histogram generated previously, where a concentration of totcon
around 1,000 is visible.
On this section the performance of the "headtails" implementation is tested, in terms of speed and handling of corner cases. A small benchmark with another styles is also presented.
Testing has been performed over the following distributions:
Heavy-tailed distributions
Non heavy-tailed distributions
#Init samples set.seed(2389) #Pareto distributions a=7 b=14 paretodist <- 7 / (1 - runif(5000000)) ^ (1 / 14) #Exponential dist expdist <- rexp(5000000) #Lognorm lognormdist <- rlnorm(5000000) #Weibull weibulldist <- rweibull(5000000, 1, scale = 5) #LogCauchy "super-heavy tail" logcauchdist <- exp(rcauchy(5000000, 2, 4)) #Remove Inf logcauchdist <- logcauchdist[logcauchdist < Inf] #Normal dist normdist <- rnorm(5000000) #Left-tailed distr leftnorm <- sample(rep(normdist[normdist < mean(normdist)], 3), size = 5000000) #Uniform distribution unifdist <- runif(5000000)
Let's define a helper function and proceed to run the whole test suite:
testresults <- data.frame( Title = NA, style = NA, nsample = NA, thresold = NA, nbreaks = NA, time_secs = NA ) benchmarkdist <- function(dist, style = "headtails", thr = 0.4, title = "", plot = FALSE) { init <- Sys.time() br <- classIntervals(dist, style = style, thr = thr) a <- Sys.time() - init test <- data.frame( Title = title, style = style, nsample = format(length(br$var), scientific = FALSE, big.mark = ","), thresold = thr, nbreaks = length(br$brks) - 1, time_secs = as.character(round(a,4)) ) testresults <- unique(rbind(testresults, test)) if (plot) { plot( density(br$var, from = quantile(dist,.0005), to = quantile(dist,.9995) ), col = "black", cex.main = .9, main = paste0( title, " ", style, ", thr =", thr, ", nbreaks = ", length(br$brks) - 1 ), ylab = "", xlab = "" ) abline(v = br$brks, col = "red3", lty = 2) } return(testresults) } opar <- par(no.readonly = TRUE) par(mar = c(2, 2, 2, 2), cex = 0.8) # Pareto---- testresults <- benchmarkdist(paretodist, title = "Pareto", plot = TRUE) testresults <- benchmarkdist(paretodist, title = "Pareto", thr = 0) testresults <- benchmarkdist(paretodist, title = "Pareto", thr = .75, plot = TRUE) #Sample 2,000 obs set.seed(1234) Paretosamp <- sample(paretodist, 2000) testresults <- benchmarkdist(Paretosamp, title = "Pareto sample", style = "fisher", plot = TRUE) testresults <- benchmarkdist(Paretosamp, title = "Pareto sample", style = "headtails", plot = TRUE) #Exponential---- testresults <- benchmarkdist(expdist, title = "Exponential", plot = TRUE) testresults <- benchmarkdist(expdist, title = "Exponential", thr = 0) testresults <- benchmarkdist(expdist, title = "Exponential", thr = 1) testresults <- benchmarkdist(expdist, title = "Exponential", style = "quantile", plot = TRUE) #Weibull----- testresults <- benchmarkdist(weibulldist, title = "Weibull", plot = TRUE) testresults <- benchmarkdist(weibulldist, title = "Weibull", thr = 0) testresults <- benchmarkdist(weibulldist, title = "Weibull", thr = 1) #Logcauchy testresults <- benchmarkdist(logcauchdist, title = "LogCauchy", plot = TRUE) testresults <- benchmarkdist(logcauchdist, title = "LogCauchy", thr = 0) testresults <- benchmarkdist(logcauchdist, title = "LogCauchy", thr = 1) #Normal---- testresults <- benchmarkdist(normdist, title = "Normal", plot = TRUE) testresults <- benchmarkdist(normdist, title = "Normal", thr = 0) testresults <- benchmarkdist(normdist, title = "Normal", thr = 1, plot = TRUE) #Truncated Left-tail Normal---- testresults <- benchmarkdist(leftnorm, title = "Left Normal", plot = TRUE) testresults <- benchmarkdist(leftnorm, title = "Left Normal", thr = -100) testresults <- benchmarkdist(leftnorm, title = "Left Normal", plot = TRUE, thr = 500) #Uniform---- testresults <- benchmarkdist(unifdist, title = "Uniform", plot = TRUE, thr = 0.7) testresults <- benchmarkdist(unifdist, title = "Uniform", thr = 0) testresults <- benchmarkdist(unifdist, title = "Uniform", plot = TRUE, thr = 1) par(opar) # Results knitr::kable(testresults[-1, ], row.names = FALSE)
The implementation works as expected, with a good performance given the size of the sample, and also compares well with another current implementations in classIntervals
.
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