Code for fitting a negative binomial distribution in Python
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Updated
May 1, 2019 - Python
Code for fitting a negative binomial distribution in Python
Statistical Analysis about cancer incidence in Modena hospital.
Companion repository to Lause, Berens & Kobak (2021): "Analytic Pearson residuals for normalization of single-cell RNA-seq UMI data", Genome Biology
Slides sobre modelos de regressão poisson e binomial negativa inflacionadas de zeros
Conducting a predictive data analysis to predict the future rental bike demands.
Probabilistic outlier identification for bulk RNA sequencing data
Plots of how negative binomial distribution converges to Poisson distribution
Negative binomial distributed pseudorandom numbers.
Create an iterator for generating pseudorandom numbers drawn from a negative binomial distribution.
Create an array containing pseudorandom numbers drawn from a negative binomial distribution.
The DOTNB repository is a collection of code files that implement DOTNB across several programming languages. The DOTNB is the distribution for the Difference Of Two Negative Binomial distributions, i.e., Z=X-Y ~ DOTNB (λ_1,λ_2,p_1,p_2), where X ~ NB(λ_1,p_1 ) and Y ~ NB(λ_2,p_2 ).
DEGage is a novel model-based method for gene differential expression analysis between two groups of scRNA-seq count data. It employs a novel family of discrete distributions for describing the difference of two NB distributions (named DOTNB).
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