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A kernel distribution is a nonparametric representation of the probability density function (pdf) of a random variable. You can use a kernel distribution when a parametric distribution cannot properly describe the data, or when you want to avoid making assumptions about the distribution of the data. A kernel distribution is defined by a smoothing function and a bandwidth value, which control the smoothness of the resulting density curve.

The kernel density
estimator is the estimated pdf of a random variable. For any real values of
*x*, the kernel density estimator's formula is given by

$${\widehat{f}}_{h}\left(x\right)=\frac{1}{nh}{\displaystyle \sum _{i=1}^{n}K\left(\frac{x-{x}_{i}}{h}\right)}\text{\hspace{0.17em}},$$

The kernel smoothing function defines the shape of the curve used to generate the pdf. Similar to a histogram, the kernel distribution builds a function to represent the probability distribution using the sample data. But unlike a histogram, which places the values into discrete bins, a kernel distribution sums the component smoothing functions for each data value to produce a smooth, continuous probability curve. The following plots show a visual comparison of a histogram and a kernel distribution generated from the same sample data.

A histogram represents the probability distribution by establishing bins and placing each data value in the appropriate bin.

SixMPG = [13;15;23;29;32;34]; figure histogram(SixMPG)

Because of this bin count approach, the histogram produces a discrete probability density function. This might be unsuitable for certain applications, such as generating random numbers from a fitted distribution.

Alternatively, the kernel distribution builds the pdf by creating an individual probability density curve for each data value, then summing the smooth curves. This approach creates one smooth, continuous probability density function for the data set.

figure pdSix = fitdist(SixMPG,'Kernel','BandWidth',4); x = 0:.1:45; ySix = pdf(pdSix,x); plot(x,ySix,'k-','LineWidth',2) % Plot each individual pdf and scale its appearance on the plot hold on for i=1:6 pd = makedist('Normal','mu',SixMPG(i),'sigma',4); y = pdf(pd,x); y = y/6; plot(x,y,'b:') end hold off

The smaller dashed curves are the probability distributions
for each value in the sample data, scaled to fit the plot. The larger
solid curve is the overall kernel distribution of the `SixMPG`

data.
The kernel smoothing function refers to the shape of those smaller
component curves, which have a normal distribution in this example.

You can choose one of several options for the kernel smoothing function. This plot shows the shapes of the available smoothing functions.

Set plot specifications

hname = {'normal' 'epanechnikov' 'box' 'triangle'}; colors = {'r' 'b' 'g' 'm'}; lines = {'-','-.','--',':'}; % Generate a sample of each kernel smoothing function and plot data = [0]; figure for j=1:4 pd = fitdist(data,'kernel','Kernel',hname{j}); x = -3:.1:3; y = pdf(pd,x); plot(x,y,'Color',colors{j},'LineStyle',lines{j}) hold on; end legend(hname{:}) hold off

To understand the effect of different kernel smoothing functions
on the shape of the resulting pdf estimate, compare plots of the mileage
data (`MPG`

) from `carbig.mat`

using
each available kernel function.

load carbig % Set plot specifications hname = {'normal' 'epanechnikov' 'box' 'triangle'}; colors = {'r' 'b' 'g' 'm'}; lines = {'-','-.','--',':'}; % Generate kernel distribution objects and plot figure for j=1:4 pd = fitdist(MPG,'kernel','Kernel',hname{j}); x = -10:1:60; y = pdf(pd,x); plot(x,y,'Color',colors{j},'LineStyle',lines{j}) hold on end legend(hname{:}) hold off

Each density curve uses the same input data, but applies a different kernel smoothing function to generate the pdf. The density estimates are roughly comparable, but the shape of each curve varies slightly. For example, the box kernel produces a density curve that is less smooth than the others.

The choice of bandwidth value controls the smoothness of the
resulting probability density curve. This plot shows the density estimate
for the same `MPG`

data, using a normal kernel smoothing
function with three different bandwidths.

Create kernel distribution objects

pd1 = fitdist(MPG,'kernel'); pd2 = fitdist(MPG,'kernel','BandWidth',1); pd3 = fitdist(MPG,'kernel','BandWidth',5); % Compute each pdf x = -10:1:60; y1 = pdf(pd1,x); y2 = pdf(pd2,x); y3 = pdf(pd3,x); % Plot each pdf plot(x,y1,'Color','r','LineStyle','-') hold on plot(x,y2,'Color','k','LineStyle',':') plot(x,y3,'Color','b','LineStyle','--') legend({'BandWidth = Default','BandWidth = 1','BandWidth = 5'}) hold off

The default bandwidth, which is theoretically optimal for estimating densities for the normal distribution, produces a reasonably smooth curve. Specifying a smaller bandwidth produces a very rough curve, but reveals that there might be two major peaks in the data. Specifying a larger bandwidth produces a curve nearly identical to the kernel function, and is so smooth that it obscures potentially important features of the data.

`KernelDistribution`

| `ksdensity`

- Fit Kernel Distribution Object to Data
- Fit Kernel Distribution Using ksdensity
- Fit Distributions to Grouped Data Using ksdensity

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