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

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43 views

Probability of number belonging to a distribution

I have a distribution of numbers. I want to compute how likely a certain number is to belong to that distribution. I am thinking of calculating kde of the distribution and then "plugging in" the ...
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1answer
35 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 ...
0
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1answer
24 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 ...
0
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2answers
22 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 ...
1
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2answers
49 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 ...
3
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2answers
32 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 ...
0
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0answers
11 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
19 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
32 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 ...
0
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1answer
32 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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12 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. ...
0
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1answer
38 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
55 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 ...
0
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1answer
24 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 ...
0
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0answers
39 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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0answers
46 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 = ...
1
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1answer
65 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 ...
0
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1answer
16 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 ...
2
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45 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 ...
0
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1answer
18 views

Density Estimation of a stream of Data

What statistical methods out there that will estimate the probability density of data as it arrives temporally? I need to estimate the pdf of a multivariate dataset; however, new data arrives over ...
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0answers
27 views

add a key to contour plot using ks package

I've been tinkering around with the ks package and I'm trying to add a key to a contour plot. I have been able to produce a contour plot + key using display="filled.contour" fhat <- kde(x,w) ...
0
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0answers
24 views

KDE estimation varies drastically by evaluation points

I am evaluating a KDE estimate at 2 series of points which differ very marginally from each other. I was trying to integrate PDF using trapezoid rule to obtain 1.0 (or close to) number to understand ...
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34 views

An efficient way to build bivariate density model from large data set?

I am currently trying to build a bivariate density model with a large data set. (matrix size - 400000+ rows 2 columns, there are a lot of repeats in the matrix) Sample Data X Y ...
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1answer
180 views

Weighted Gaussian kernel density estimation in `python`

It is currently not possible to use scipy.stats.gaussian_kde to estimate the density of a random variable based on weighted samples. What methods are available to estimate densities of continuous ...
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2answers
109 views

PDF estimation in Scikit-Learn KDE

I am trying to compute PDF estimate from KDE computed using scikit-learn module. I have seen 2 variants of scoring and I am trying both: Statement A and B below. Statement A results in following ...
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1answer
36 views

PDF at custom points in KDE

I am using 'density' function in base R to generate KDE for given data vector (1-D). Argument 'n' to 'density' function gives probability density estimate at n uniformly spaced points. Is there a way ...
0
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40 views

Python Kerndel Density Estimation - What is mean and std dev

I have fitted a Kernel Density Estimation using statsmodels to some data with a code snippet like this. Basically just using the example code from the website. I import statsmodels, set the ...
2
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1answer
73 views

Does the MATLAB ksdensity function perform the boundary correction?

One who is familiar with kernel density estimation should know that there exist some methods for boundary correction. The ksdensity function has the capacity for the [L U] bounded support. Then, my ...
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0answers
18 views

Determining Primary Market Area based on customer location using R package

I would like to determine a PMA based on the location of a store and the addresses of its customers. The PMA would be calculated based on a best fit shape that encloses 80% of the customers. I am ...
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44 views

Efficient point density for large number of coordinates

Hello everyon and sorry for the long post i have an array of 3-dimensional coordinates (x,y,z) in a 2D array with size (13720,3). i would like to make a point density map of the coordinates so i can ...
0
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1answer
132 views

Gaussian kernel density smoothing for pandas.DataFrame.resample?

I am using pandas.DataFrame.resample to resample random events to 1 hour intervals and am seeing very stochastic results that don't seem to go away if I increase the interval to 2 or 4 hours. It ...
2
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1answer
52 views

Calculation of density estimate in density2d?

I have a more general question regarding the principle behind density2d. I'm using ggplot and the density2d function to visualize animal movements. My idea was calculating heat maps showing where the ...
0
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1answer
35 views

how much data can sklearn handle with kernel density estimation

I have a data set with 40 million line (about 8Mb) while each line is of float type. I want to use sklearn kernel density estimation to fit this data set with gaussian kernel. But it's too slow on my ...
0
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1answer
102 views

Plot high-dimensional kernel density in R

I have a question regarding kernel density estimation in R. I have a 5-dimensional data, which consists of (x,y,z) locations, time of happening and size of some events (for example earthquake) (I've ...
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1answer
431 views

ggplot2: line up x limits on two density plots

I've got a series of density estimates that I would like to plot to compare in ggplot2. I'm not attached to any of the particulars I have chosen so far (e.g. should these be all on one plot, should I ...
1
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1answer
59 views

Python - Get the coordinates of densest point

I'm using numpy and scipy to generate a density plot from 3D coordinate information. I can generate a density plot of the data successfully by generating a KDE with the following code xyz = ...
0
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1answer
45 views

Different results when generating random samples from kernel density

library(ks) x<-rnorm(1000) hist(x, col="red") y <- rkde(kde(x), n=1000) hist(y, col="green") y <- rkde(density(x), n=1000) hist(y, col="blue") The last histogram is way wrong. I've used ...
0
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1answer
257 views

Graphing two cumulative distributions in Stata

I'm trying this code (just below), Stata seems to read it -- it does not show any errors --, but it does not generate any variables. Here it is: cumul price if dummy==1, gen(cprice1) cumul price if ...
6
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1answer
238 views

Relation between sigma and bandwidth in gaussian_filter and gaussian_kde

Applying the functions scipy.ndimage.filters.gaussian_filter and scipy.stats.gaussian_kde over a given set of data can give very similar results if the sigma and bw_method parameters in each function ...
0
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0answers
81 views

combining density plots in ggplot2

I am trying to improve a figure containing multiple density plots. I generate the figure like so: library(ggplot2) m <- matrix(data=cbind(rnorm(50, 0, 1), rnorm(50, 0, 1.2), rnorm(50, 0, 1.4), ...
0
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1answer
76 views

Why does scikit learn return log-density?

The function score_samples from sklearn.neighbors.kde.KernelDensity returns the log of the density. What is the advantage of that over returning the density it self? I know that the logarithm makes ...
2
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1answer
1k views

How to plot a 3D density map in python with matplotlib

I have a large dataset of (x,y,z) protein positions and would like to plot areas of high occupancy as a heatmap. Ideally the output should look similiar to the volumetric visualisation below, but I'm ...
1
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1answer
271 views

Find local minimum in bimodal distribution with r

My data are pre-processed image data and I want to seperate two classes. In therory (and hopefully in practice) the best threshold is the local minimum between the two peaks in the bimodal distributed ...
0
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0answers
25 views

Mutiple sums in r for a kernel based test

I wish to implement a test for a fixed-effect panel data models, which involves four sums. More specifically the part of the teststatistic I struggle with looks like this: sum_(i = 1)^n sum(j = ...
0
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1answer
67 views

Finding the function of the most likely distribution when using sm.density.compare

I am using the "sm" package for studying distributions in my datasets. For those curious I am looking at recruitment practices as a function of age and trying to identify if the age distribution ...
0
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2answers
200 views

How to extract values from a 3D kernel density plot built in R using 'ks' and 'rgl'

I've been using the 'ks' package along with the 'rgl' package to produce 3D kernel density estimates and 3D plots of these. This first part has worked out fine (brief example below). What I can't ...
0
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1answer
355 views

Saving a plot in 'R' in 'eps' or 'pdf' format via 'rgl.postscript' (why color is changed?)

I am trying to run this code in "R" in order to plot a density function kernel smoothing and then save the plot as an "eps" file: library(ks) library(rgl) kern <- read.table(file.choose(), ...
0
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1answer
67 views

ggplot2 density plots - how can I get it to smooth to baseline?

I am trying to plot a density with the following function. However It doesn't achieve the look I'm going for... I was wondering if there was a way to make the left and right edges of the plot smooth ...
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1answer
686 views

Specifying the scale for the density in ggplot2's stat_density2d

I'm looking to create multiple density graphs, to make an "animated heat map." Since each frame of the animation should be comparable, I'd like the density -> color mapping on each graph to be the ...
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1answer
105 views

kernel density score VS score_samples python scikit

I am using scikit learn and python for a few days now and more specially KernelDensity. Once the model is fitted I would like to evaluate the probability of new points. The method score() is made for ...