Modern Probability Modeling
Marginal effects
Learn how to interpret statistical and machine learning models using the marginaleffects package for R and Python. Compute marginal effects, marginal means, contrasts, odds ratios, hypothesis tests, equivalence tests, slopes, and more. Free software, book, tutorials, and documentation available.
Gaussians
The **Gaussian distribution**, or **normal distribution** is a key subject in statistics, machine learning, physics, and pretty much any other field that deals with data and probability.
Bayes Rules! An Introduction to Applied Bayesian Modeling
An introduction to applied Bayesian modeling.
Seasonality, Holiday Effects, And Regressors
Prophet is a forecasting procedure implemented in R and Python. It is fast and provides completely automated forecasts that can be tuned by hand by data scientists and analysts.
How I solved a multivariable time series traffic problem using Facebook Prophet
Whilst I am embarking upon my data science studies, I am endeavouring to learn as much as I can about time series analysis. I have…
Multivariate Time Series Forecasting using FBProphet
Hello Everyone, Hope you all are doing good. Today I have come up with a post which would help us to do multivariate variable time series…
Time Series Forecasting with Prophet
Time series forecasting is used in multiple business domains, such as pricing, capacity planning, inventory management, etc. Forecasting with techniques such as ARIMA requires the user to correctly determine and validate the model parameters (p,q,d). This is a multistep process that requires the user to interpret the Autocorrelation Function (ACF) and Partial Autocorrelation (PACF) plots correctly. Using the wrong model can easily lead to erroneous results.
Time Series Analysis — A quick tour of fbProphet
The series of data points plotted against time is known as time series. It is a de-facto analysis technique used in market evaluation and…
Regression with Count Data: Poisson and Negative Binomial
Poisson, quasi-Poisson, and negative binomial regression - when to do them and how you should choose the method. What are overdispersion and underdispersion,...
6 Multigroup Analysis | Composite Variables
How percentile approximation works (and why it's more useful than averages)
Get a primer on percentile approximations, why they're useful for analyzing large time-series data sets, and how we created the percentile approximation hyperfunctions to be efficient to compute, parallelizable, and useful with continuous aggregates and other advanced TimescaleDB features.
Interpreting Regression Output
Learn how to interpret the output from a regression analysis including p-values, confidence intervals prediction intervals and the RSquare statistic.
3.5 - The Analysis of Variance (ANOVA) table and the F-test | STAT 462
How to read a Regression Table
by Sharad Vijalapuram How to read a Regression TablePhoto by Isaac Smith on UnsplashWhat is regression?Regression is one of the most important and commonly used data analysis processes. Simply put, it is a statistical method that explains the strength of the relationship between a dependent variable and one or
Time Series From Scratch — Exponential Smoothing Theory and Implementation
Single, double, or triple exponential smoothing — this article has you covered.
Quality Control Charts with Python
Creating Quality Control Charts using matplotlib library
Welcome | Handbook of Regression Modeling in People Analytics: With Examples in R, Python and Julia
A technical manual of inferential statistics and regression modeling in the people and social sciences
categorical data and proportion
Statistical Testing of the Net Promoter Score
How to do statistical testing of the Net Promoter Score. An informative article by Displayr's Justin Yap, including practical examples and code.
S.4 Chi-Square Tests | STAT ONLINE
Enroll today at Penn State World Campus to earn an accredited degree or certificate in Statistics.
9.4 - Comparing Two Proportions | STAT 415
Enroll today at Penn State World Campus to earn an accredited degree or certificate in Statistics.
6.1 - Chi-Square Test for Independence | STAT 800
Enroll today at Penn State World Campus to earn an accredited degree or certificate in Statistics.
How to analyze a staged rollout experiment
Recently we argued that confidence intervals are a poor choice for analyzing staged rollout experiments. In this article, we show a better way: a Bayesian approach that gives decision-makers the answers they really need. Check out our interactive Streamlit app first, then the article for the details.
Review: Statistical Rethinking, by Richard McElreath
This is an absolute gem of a book. McElreath has found an elusive combination: Statistical Rethinking is not only one of the best intro textbooks for both causal and Bayesian modeling, it's also highly readable, even entertaining.
Applications of survival analysis (that aren't clinical research)
Survival analysis has been a standard tool for decades in clinical research, but data scientists in other domains have mostly ignored it. Here are some applications for which you might use survival analysis, to jump-start your creative data science engine.
IBM Docs
IBM Documentation.
Essential Math for Data Science: The Poisson Distribution
The Poisson Regression Model
A guide to building the Poisson Regression Model for counts based data sets and a tutorial on Poisson regression using Python
Vose Software
Vose Software specializes in providing software systems for assessing and managing risks using the most precise information possible.