The normal, or Gaussian, distribution is a symmetrical bell-shaped curve that is defined by the mean and standard deviation. Parametric statistics tests require the population to be normally distributed. A sample distribution that is normally distributed is used to assume that the population ...

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21 views

Shapiro test on replicated values

I have a distribution of frequencies (1000 data points) expressed as %. The list of data looks like this: 3.10% 1.80% 1.70% 1.70% 1.60% 1.60% 1.50% I would like ...
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69 views

Understanding Naive and Multivariate Gaussian Classifier

Thank you for checking this question out. I am trying to understand how to use the multivariate gaussian classifier. To introduce you better to my problem, I will show how currently I classify data. ...
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37 views

How can I visualise a distribution that is univariate normal but bivariate non-normal?

I used the MATLAB code written below to create the following probability density function. It creates the familiar hill-shaped distribution. I'm interested to see (whether via MATLAB code or just ...
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17 views

Estimating sparse inverse covariance matrix in high dimensional data

I am trying to estimate the graph in very high dimensional data, I mean with million nodes. Up to now all the papers that I have found, they are limited to few thousands. All of them like graphical ...
2
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0answers
42 views

When data has a gaussian distribution, how many samples will characterise it?

Gaussian data distributed in a single dimension requires two parameters to characterise it (mean, variance), and rumour has it that around 30 randomly-selected samples is usually sufficient to ...
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29 views

pdf of multivariate normal distribution

I have a question concerning some sentences in the book Structural Equations with Latent Variables (Bollen) at page 132 (bottom) and page 133 (top) regarding the pdf of the multivariate normal ...
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16 views

Confusion related to minimization of a gaussian likelihood function

I have this confusion related to minimization of gaussian likelihood function. The negative of the log likelihood of gaussian distribution is $-logdet(Q) + tr(SQ) + \lambda||Q||_{1}$ where Q is the ...
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50 views

Minimum enclosing Gaussian

Given two weighted Gaussians with arbitrary weight, mean and variance, what is the parameters of the minimum enclosing Gaussian? The mean and variance should be chosen such that the weight is minimum ...
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1answer
74 views

How to test for normality of growth disturbances in chemo treatment?

I'm a med student, conducting a retrospective analysis of weight/growth disturbances during chemo treatment. I wonder, if I should: assume, that growth is a variable normally distributed across the ...
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1answer
46 views

Calculating the std dev of a 30 team league with each team having a 50% chance of winning

I just want to preface this with the fact it is not a home work question. I am also not a stats person so I am not sure even how to start with calculating this, what it is called or where to look. ...
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47 views

This game consists of rolling two dice, one 8-sided and one 12-sided. you will roll the dice 10 times to complete the game

This game consists of rolling two dice, one 8-sided and one 12 sided. You will roll the dice 10 times to complete the game. Each roll is considered a win, if you roll a total of 6 or less. ...
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20 views

Is the t-test really robust to shape of distribution? [duplicate]

Can I use the t-test to compare means between groups (N=300) if data is not normally distributed?
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1answer
44 views

Fit of a normal distribution to a one-dimensional dataset in R

I've got a set of (continuous) values from a measurement, where each object should be either positive or negative, and I know that the values of the "negative" objects should be approximately normally ...
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38 views

Ratio of sum of Normal to sum of cubes of Normal

Please help me to find the limiting distribution (as $n \rightarrow \infty$) of the following: $$ U_n = \frac{X_1 + X_2 + \ldots + X_n}{X_1^3 + X_2^3 + \ldots X_n^3},$$ where $X_i$ are iid $N(0,1)$.
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1answer
33 views

Proof of a PD covariance matrix for conditional Gaussian

I was looking at the formula for the conditional covariance of a partitioned matrix. I understand the intuition behind the equation for the conditional covariance, but I'm not sure how to show that ...
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1answer
78 views

How to show that $E[(\hat\theta -\theta)^2]<Var(\bar X)=\dfrac{1}{n}$?

Suppose $X_1, X_2, \dots, X_n$ are i.i.d $N(\theta, 1),\theta_0 \le \theta \le \theta_1$, where $\theta_0 \lt \theta_1$ are two specified numbers. Find the MLE of $\theta$ and show that it is ...
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2answers
67 views

Are the sample range and sample variance independent when population is normally distributed?

If a population is normally distributed, the sample mean and sample variance are independent. What about the sample range and sample variance? Are they independent too? I am trying to derive ...
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0answers
66 views

Transform non-normal data to normality by rescoring columns

I have a vector with fluency of translation - (0, 0, 1, 3, 3, 3 ,3 ....) The problem is that it is made by people (for example someone gives too much 3 but only a bit of 2) and we want to normalize ...
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2answers
91 views

Function with variable having gaussian distribution

If I have a variable $X$ whose Gaussian distribution is known and let $f$ be a known function, is there a way to compute $f(X)$ i.e. the resulting Gaussian distribution from this? Is the result ...
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16 views

Evidential reasoning in Gaussian Bayesian Networks

I am working on Gaussian Bayesian Networks (GBN) i.e. the Bayesian Networks where all the random variables are continuous in nature. I am seriously trapped in the problem of evidential reasoning in ...
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1answer
56 views

Given known bivariate normal means and variances, update correlation estimate, $P(\rho)$, with new data?

I'm dealing with two correlated random variables which are modeled via a bivariate normal distribution. I have values for the means ($\mu_x, \mu_y$) and individual variances ($\sigma_x, \sigma_y$) of ...
2
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0answers
49 views

Mahalanobis distance for a multivariate normal distribution before and after uncorrelation

I have two questions: Suppose we uncorrelate variables of a multivariate normal distribution using Cholesky transformation. Then: What is the relation between Mahalanobis distances before and after ...
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36 views

Find the moment generating function

Find the moment generating function of $W$, when $W=X+2Y+4Z$. $~X,~Y,~Z$ are independent normal distributions $\mathcal N(1,4),~ \mathcal N(2,9) \text{ and }\mathcal N(3,16)$.
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37 views

How do I identify the “Long Tail” portion of my distribution?

I have a number of series that would typically be described as normal skewed or Gamma distributed. For example, say I have a group of customers and have calculated their spend over a fixed length of ...
2
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1answer
88 views

Asymptotic probability concerning the largest absolute value in an iid Gaussian sample

Let $v[n]$ be a vector $N$ $iid$ gaussian samples, of ~$N(0,\sigma^2)$ Also, let $v_{max}$ denote the maximum absolute value of all the samples given. (That is, if I took the absolute value of all the ...
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31 views

Difference of two gaussians [closed]

I got trouble understanding the following equation from a paper I'm currently studying [1]: $\pi_{ij} \equiv \int^{\infty}_0 \mathcal{N}(s|\bar{s}_i - \bar{s}_j,2\sigma_s^2) ds$ ...
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1answer
51 views

Using continuity correction for normal approximation or not?

Below is a question on a recent actuarial exam, Exam 3L of the CAS. I didn't know whether or not to use the continuity correction when using the normal approximation to do hypothesis testing ...
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1answer
68 views

How do I approximate the variance of a normal distribution?

I am approximating a 1D normal distribution by performing many samples. I can approximate its mean by simply averaging out the samples. However, how do I get the variance? This doesn't seem so ...
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2answers
62 views

Simple homework question about normally distributed variables

The question states: Consider a set of random variables $X_i$, where $i=1,...n$. Each $X_i$ is normally distributed with mean $0$ and variance $1$, i.e. $X_i$ are $\mathcal N(0,1)$. What is ...
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2answers
68 views

Pre-truncation moments for truncated multivariate normal

Suppose the random variable $Y$ has a multivariate normal (MVN) distribution, and consider truncating $Y$ in some way to create $T$. Given $T$'s mean and covariance matrix, I'd like to obtain $Y$'s ...
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0answers
25 views

marginal of the bivariate normal wrt correlation

What is the distribution that results by marginalizing the correlation coefficient of the bivariate normal distribution, assuming a uniform prior in angular space: $$\int \; p(x,y|\mu,\Sigma(\theta)) ...
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1answer
39 views

Bivariate normal expectation of the sinus cardinal

I would like to get an analytical expression for $$\mathbb{E}\left(\frac{\sin(aX)}{aX}\frac{\sin(bY)}{bY}\right)$$ or at least an analytical approximation thereof, when $a,b$ are positive reals, and ...
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1answer
62 views

Fast way to calculate difference in normal CDFs

I'm running a computationally intensive method where I have to calculate the difference in Normal CDF's millions of times, such as pnorm(y)-pnorm(x) I have not ...
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0answers
34 views

EM algorithms - confidence interval estimation

Does anybody know how to find the confidence intervals for estimated parameters of a mixture of Gaussians by using EM algorithm?
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2answers
80 views

Formula to calculate a t-distribution

I am writing an application that will be dealing with <30 observations in a normal distribution. My understanding is that this point I would need to use t-distribution. The thing is, this is easy ...
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1answer
34 views

How to correctly model noise?

Assume a linear mixing model $x = As$, where $x = (x_{0}, ..., x_{n})^T$ are linear mixtures of $s = (s_{0}, ..., s_{n})^T$, and $A$ is the mixing matrix. Now, if I introduce additive noise to this ...
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1answer
36 views

how to calculate E[vech(x x')vech(x x')']?

Supposing a vector x follows normal distribution. I want to calculate the expectation of the "fourth moment" in a vector form, meaning $\text{E}[\text{vech}(x x')\text{vech}(x x')']$, given that we ...
3
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1answer
65 views

Expected value and variance of log(a)

I have a random variable $X(a) = \log(a)$ where a is normal distributed $\mathcal N(\mu,\sigma^2)$. What can I say about $E(X)$ and $Var(X)$? An approximation would be helpful too.
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1answer
60 views

Compute sum of vectors drawn from multivariate normal, subject to a linear constraint

I want to compute $S = \sum_{i=1}^n x_i$ where $w^t x_i>-1, \; \forall i$ and $x_i \tilde{} \mathcal{N}(\mu, \Sigma)$ for known $w$, $\mu$ and $\Sigma$. I know $S$ can be approximated by sampling ...
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25 views

Probability that a given Normal Distribution is Maximum among others [duplicate]

You are given the mean and standard deviations of N normal distributions x1,x2...xn What is the probability that x1 is maximum? ie. Find P(x1>x2,x3..xn) How do I go about solving this? x1,x2,x3 etc ...
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1answer
30 views

How to get the diagonal elements of a covariance matrix from its sparse precision matrix

I have a equation to solve Ax = b, where A happes to be the precision matrix of a multivariate gaussian distribution. I can use either direct solver or iterative solvers to get the x vector. However, ...
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1answer
35 views

Reshaping a distribution

Not sure what the exact term is for what I'm trying to do. I have a data set with random variable x with values X1, X2, ..., XN that has a standard deviation sigma and a mean m. I want to perturb ...
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0answers
34 views

Is a multivariate normal restricted to an affine set normal? [duplicate]

This seems like a basic question, but I've been confused about it anyway. Let $X$ be a multivariate normal random variable in $\mathbb R^n$. Let $A$ be the affine set $\{x\in\mathbb R^n : ...
2
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2answers
31 views

Convergence of empirical distribution parameters of a sequence of generated normal variables

I am generating a sequence of normal random variables (using the routines from boost C++ library). How fast would you expect the mean and the variance of the sequence converge to the actual variance? ...
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1answer
41 views

Truncated Normal — Reproduce a randomly generated data set

help. Problem: Given a bounded Gaussian Distribution -- looking reproduce similar results i.e. same mean and standard deviation randomly. Definition: Data set exhibits properties of a Gaussian ...
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1answer
50 views

Use the Central Limit Theorem to calculate the approx probabilities of Gamma RVs?

If $X_i, i=1,...,$ are independent, identically distributed $\operatorname{N}(0,1)$ random variables, and $Y_i = X_i^2$ are independent $\operatorname{Gamma}(\frac{1}{2},\frac{1}{2})$ RVs, use the ...
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0answers
36 views

Transforming data: correlate regardless of distribution

Is there a way to correlate data regardless of distribution? I know the Choleksy transformation is used for normally distributed data, but is there a general method that applies to any case? To ...
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2answers
73 views

Is it possible to use a two sample $t$ test here?

I want to do statistical analysis to compare the results of the different specimen sizes (which I am comparing) with each other. Seeing as I have at least 12 specimens for each specimen size, I ...
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0answers
76 views

subtraction of two multivariate normal distribution

Assume that we have a $n$-dimensional vector that shows the position of a point and two multivariate normal distributions with means $\mu_1$ and $\mu_2$, and covariances $cov_1$ and $cov_2$. I’m ...
4
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3answers
214 views

How to test my data against an specific normal distribution?

I need to test my data to see if it follows a normal distribution with specific mean and std like N~(mu, std) I know that this can be done by Kolmogorov-Smirnov test which has a function in both ...

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