Companion repository to Lause, Berens & Kobak (2021): "Analytic Pearson residuals for normalization of single-cell RNA-seq UMI data", Genome Biology
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Updated
May 6, 2022 - Jupyter Notebook
Companion repository to Lause, Berens & Kobak (2021): "Analytic Pearson residuals for normalization of single-cell RNA-seq UMI data", Genome Biology
Probabilistic outlier identification for bulk RNA sequencing data
Code for fitting a negative binomial distribution in Python
Negative binomial distributed pseudorandom numbers.
Various Fortran codes
Create an array containing pseudorandom numbers drawn from a negative binomial distribution.
Statistical Analysis about cancer incidence in Modena hospital.
Create an iterator for generating pseudorandom numbers drawn from a negative binomial distribution.
Slides sobre modelos de regressão poisson e binomial negativa inflacionadas de zeros
Optional presentation for the "Sistemi Complessi" course.
Methods to estimate Negative Binomial Distribution
Conducting a predictive data analysis to predict the future rental bike demands.
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).
Plots of how negative binomial distribution converges to Poisson distribution
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