kernel density estimation is a non-parametric way to estimate the probability density function of a random variable.

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How to find Local Maxima in KDE using MeanShift?

I'm trying to make a filter (to remove outlier and noise) using kernel density estimators(KDE). I applied KDE in my 3D (d=3) data points and that gives me the probability density function (PDF) f(x). ...
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16 views

How to show the Bandwidth Matrix in Kernel Density Estimation?

I am using the scipy implementation of KDE to find the density estimation for 3-Dimensional data kde source. I was wondering how to get the bandwidth matrix for kde in scipy.kde . For 1D its just a ...
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1answer
27 views

How to find Local maxima in Kernel Density Estimation?

I'm trying to make a filter (to remove outlier and noise) using kernel density estimators(KDE). I applied KDE in my 3D (d=3) data points and that gives me the probability density function (PDF) f(x). ...
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25 views

How to plot multivariate density in python?

I am calculating kernel density estimation (KDE) for 3-Dimensional data. I want to remove noise from this... But I dont know how to visualize this as contour or mesh plot. here is the code... import ...
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12 views

uniform kernel knn clustering algorithm(pseudocode)

I am trying to implement uniform kernel knn clustering in python, but it is too hard without any pseudocode available. Wiki doesnt have solution since this is a very rare algorithm used in clustering ...
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21 views

How to make a (simple) density plot over a basemap instance

I am making some plots in Python 2.7 using basemap and am having some trouble doing some density plots. I am looking at some economic data over Israel and I have the following background map: m = ...
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44 views

Why does R density function return nonzero values outside the interval [from, to]?

I have entered into the R code of the density function, and I have noticed the following strange lines: lo <- from - 4 * bw up <- to + 4 * bw To my understanding, they mean that the density ...
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1answer
15 views

Kernel density scatter plot in R

I saw a beautiful plot and I'd like to recreate it. Here's an example showing what I've got so far: # kernel density scatterplot library(RColorBrewer) library(MASS) greyscale <- rev(brewer.pal(4, ...
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1answer
15 views

Inconsistency between gaussian_kde and density integral sum

Can one explain why after estimation of kernel density d = gaussian_kde(g[:,1]) And calculation of integral sum of it: x = np.linspace(0, g[:,1].max(), 1500) integral = np.trapz(d(x), x) I got ...
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1answer
32 views

Plot 2D-kernel density from a dataframe: set number of grid positions, bandwith and lims

I have a dataframe of two columuns, rappresenting, respectively my "x" and "y" coordinates. I want plot them in a 2D-kernel density plot. I have 91 points. Therefore I have used this script: ...
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19 views

kernel density function in r [duplicate]

I wanted to estimate kernel density of an univariate dataset in R. I know of the density function which obtains the kernel density and can be plotted. However, the output of the density function is a ...
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241 views

Calculate how a value differs from the average of values using the Gaussian Kernel Density (Python)

I use this code to calculate a Gaussian Kernel Density on this values from random import randint x_grid=[] for i in range(1000): x_grid.append(randint(0,4)) print (x_grid) This is the code to ...
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14 views

Selecting kernel bandwidth in practice [migrated]

I am writing a blogpost on mapping in R, and a topic I incidentally touch on is optimal selection of bandwidth in kernel density estimation. Below is a map of Charlotte (NC, USA), the colors indicate ...
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1answer
62 views

How to compare the distributions of two vectors in R?

Here is a screenshot of my dataset: Here's what it's about: Imagine that you work in a delivery company and, for some reason, the package fails to be delivered to the client. The distribution of ...
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1answer
51 views

What is the equation for multivariate kernel density estimation techniques?

I was reading about non-parametric kernel density estimation. http://en.wikipedia.org/wiki/Kernel_density_estimation For uni-variate where D = 1, we can write like For Multivariate Kernel density ...
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1answer
122 views

How to implement Kernel density estimation in multivariate/3D

I have dataset like the following fromat and im trying to find out the Kernel density estimation with optimal bandwidth. data = np.array([[1, 4, 3], [2, .6, 1.2], [2, 1, 1.2], [2, 0.5, ...
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1answer
71 views

Difference in 2D KDE produced using kde2d (R) and ksdensity2d (Matlab)

While trying to port some code from Matlab to R I have run into a problem. The gist of the code is to produce a 2D kernel density estimate and then do some simple calculations using the estimate. In ...
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1answer
40 views

CDF depending on the bandwidth used in kernel density estimation?

I do not know exactly why the cdf has different values when I change the bandwidth in the kernel density estimation. In the code below, I generate random numbers from a gaussian distribution and ...
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1answer
23 views

Efficiently find empirical density() for many arbitrary sample values (like dnorm(), but for empirical distribution)

Say you've defined an empirical density (sample.density) for a sample of x.sample as in the following: set.seed(1) x.sample <- rnorm(100) sample.density <- density(x.sample) Now say that we ...
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1answer
41 views

Overlay density plot excludes histogram values

I want to overlay a density curve to a frequency histogram I have constructed. For the frequency histogram I used aes(y=..counts../40) because 40 is my total sample number. I used ...
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1answer
17 views

Why does KernelDensity.score_samples compute the distance on each node?

I'm using a KD-estimation with a custom metric. The metric is obviously slower than the builtin euclidean distance, but works fine. When doing kde=KernelDensity(...) kde.fit(X) I get results in a ...
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1answer
32 views

find unknown amount of density, cluster, groups of values (timestamps)

I currently have this: Data = [2003, 8, 4, 12, 30, 45, 2003, 8, 4, 12, 32, 55, ... 2003, 12, 9, 08, 30, 45] (The amount of datetime items is about 50.000 up to a million or sometimes more.) I ...
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12 views

How to calculate number of habitat patches in R

Please could someone recommend a package to use? I have calculated individual animals kernel density's at home range 100% and core area% levels using adehabitatHR. I would now like to measure how many ...
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35 views

rCharts histogram with density plots

I have a continuous numeric variable and a discrete categoric variable. I would like to draw a histogram overlaid with density plots like using the geom_density() in ggplot2. I know how to do it in ...
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62 views

How to calculate the integral of product of three kernel density functions in R?

I want to calculate the integral of product of three kernel density functions. In order to do that, after finding the kernel densities, I should find an approximate function for the product of them ...
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49 views

Mean Square Error (MSE) function argument “poly”

I'm trying to estimate an initial bandwidth value for kernel smoothing my data, calculating the Mean Square Errors (function "mse2d"), but got stuck with an error in a polygon implementation code in ...
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1answer
63 views

Univariate adaptive kernel density estimation in R

Is there an R function which can calculate an adaptive kernel density function for univariate observations. What about akj (package quantreg)? Thanks.
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1answer
53 views

GridSearchCV with KernelDensity and custom scorer yields same result as without scorer

I'm using scikit-slearn 0.14 and trying to implement a user defined scoring function for GridSearchCV to evaluate. def someScore(gtruth, pred): pred = np.clip(pred, 0, np.inf) logdif = ...
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1answer
36 views

How to use user defined metric in KernelDensity from scikit-learn (python)

I'm using scikit-learn (0.14) and trying to implement a user defined metric for my KernelDensity estimation. Following code is an example how my code is structured: def myDistance(x,y): return ...
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1answer
68 views

Kernel Addition and one Surprisingly facts?

if k1 and k2 be a kernel in space R^n*R^n we know k(x,z)=ak1(x,z) + bk2(x,z) (kernel addition) is still a kernel (valid kernel) if a,b >= 0 (a,b is real numbers, scalar) . That this is valid can be ...
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72 views

For a given location, identify minimum kernel density isopleth

I am undertaking research looking at the interactions of individual rats with a grid of traps distributed across the landscape (I have x, y coordinates for all trap locations). For each rat, I have ...
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35 views

Calculating convolution of two kernel density estimators in Java

I need to calcualte kernel density estimators of two variables X and Y (both 1 dimensional), as well as the convolution of the two (the kernel density estimator for X+Y). I have been looking for any ...
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1answer
129 views

Python: Overlap between two functions (PDF of kde and normal)

Short summary: Im trying to figure out how to calculate overlap between two functions. One is a gaussian, the other is a kernel density, based on data. Then, I would like to make a small algorithm ...
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1answer
127 views

Seaborn distplot: y axis problems with multiple kdeplots

I am currently plotting 3 kernel density estimations together on the same graph. I assume that kdeplots use relative frequency as the y value, however for some of my data the kdeplot has frequencies ...
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2answers
59 views

geom_density doesn't fill correctly with scale_y_log10

Code: require(ggplot2) set.seed(0) xvar <- rnorm(100) ggplot(data.frame(xvar), aes(xvar)) + geom_density(fill="lightblue") + scale_y_log10() The graph is something like this: How can I make ...
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2answers
83 views

Python/Scipy kde fit, scaling

I have a Series in Python and I'd like to fit a density to its histogram. Question: is there a slick way to use the values from np.histogram() to achieve this result? (see Update below) My current ...
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2answers
77 views

Overlay ggplot2 stat_density2d plots with alpha channels constant across groups

I would like to plot multiple groups in a stat_density2 plot with alpha values related to the counts of observations in each group. However, the levels formed by stat_density2d seem to be normalized ...
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29 views

Kernel Density Estimator on multivariate data

I work on multivariate data (5 dimensions). Using scipy.stats.gaussian_kde I'm trying to use scipy gaussian_kde function to estimate the density of my multivariate data. But, when I evaluate the ...
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1answer
50 views

scipy gaussian_kde and circular data

I am using scipys gaussian_kde to get probability density of some bimodal data. However, as my data is angular (it's directions in degrees) I have a problem when values occur near the limits. The code ...
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2answers
48 views

Custom histogram density evaluation in MatLab

Does MatLab have any built in function to evaluate the density of a random variable from a custom histogram? (I suspect there are probably lots of ways to do this, I am just looking to see if there is ...
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1answer
36 views

How to fit a smooth line to some points but preserve monotonicity

I have the following data points example<-structure(list(y = c(1, 0.961538461538462, 0.923076923076923, 0.884615384615385, 0.846153846153846, 0.807692307692308, 0.769230769230769, ...
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16 views

How to specify the points where density is evaluated

I would like to estimate two-dimensional density for some data. 'kde2d' function in 'MASS' package of R provides this feature, but this evaluates densities for the points specified by this function. ...
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1answer
52 views

Optimize computation time for PDF approximation based on Kernel Density Estimation

I have a code to find the pdf's approximation of a vector based on the formula for kernel estimation: I implemented this formula in the code below (see previous question). However, that code takes ...
4
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1answer
110 views

Estimate pdf of a vector using Gaussian Kernel

I am using Gaussian kernel to estimate a pdf of a data based on the equation where K(.) is Gaussian kernel, data is a given vector. z is bin from 1 to 256. size of bin is 1. I implemented by matlab ...
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72 views

adehabitatHR KD ID and XY assignement

I am fairly new to R. I would like to use the adehabitatHR package to create kernel density and isopleths from my sea turtle GPS data. I’m running into some issues… Basically I am having trouble ...
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62 views

How to calculate the integral of the sum of two kernel density functions in R?

I want to calculate the integral (0 to t) of the sum of two kernel density functions in R. I wrote the code as follows, but it gives me error. I am sure about the kernel density estimation part, but ...
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62 views

KDE is very slow with large data

When I try to make a scatter plot, colored by density, it takes forever. Probably because the length of the data is quite big. This is basically how I do it: xy = ...
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1answer
80 views

KDE in python with different mu, sigma / mapping a function to an array

I have a 2-dimensional array of values that I would like to perform a Gaussian KDE on, with a catch: the points are assumed to have different variances. For that, I have a second 2-dimensional array ...
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1answer
32 views

Calculate Bias of Parzen WIndows analytically

I'm still having some trouble understanding what Bias and Variance for a specific estimator actually are. I'm working with the definition of Bias as it is found on Wikipedia: If we define ...
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62 views

Control contour line transparency plot.kde

I'm using plot.kde in library(ks) to extract contour levels of kernel density plots. I'd like to overlay multiple plots so I'm making the contour fills semi-transparent. However, there is a ...