# Tagged Questions

Probability theory is the branch of mathematics concerned with distributions, expected values, maximum likelihoods, the description of variation. The simplest examples are coin flips, dice rolls. Other common distributions are uniform, binomial, geometric, poisson, weibull, and a menagerie of ...

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### how to implement non uniform probability distribution?

I am trying to implement non-uniform probability distribution in genetic algorithm. In the implementation of genetic program, I have an experiment which has 3 outcomes, where each outcome has ...
6k views

### Distributed probability random number generator

I want to generate a number based on a distributed probability. For example, just say there are the following occurences of each numbers: Number| Count 1 | 150 2 | ...
3k views

### Calculating Probability of a Random Variable in a Distribution in Python

Given a mean and standard-deviation defining a normal distribution, how would you calculate the following probabilities in pure-Python (i.e. no Numpy/Scipy or other packages not in the standard ...
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### Probability of Outcomes Algorithm

I have a probability problem, which I need to simulate in a reasonable amount of time. In simplified form, I have 30 unfair coins each with a different known probability. I then want to ask things ...
5k views

### Expected collisions for perfect 32bit crc

I'm trying to determine how my crc compares to an "ideal" 32bit crc. So I ran my crc over 1 million completely random samples of data and collected the amount of collisions, I want to compare this ...
840 views

### How to get random number with each number has its own probability [duplicate]

For example, I want to get random number from set S = {0, 1, 2, 3}. But instead of each number has same probability to shown (which is 25%), now I have different probability for each number, let say ...
407 views

### outlier detection based on gaussian mixture model

I have a set of data. I want to build a one class distribution from that data. Based on the learned distribution I want to get a probability value for each of the data instance. Based on this ...