Multivariate time series Vector Autoregression Model (VAR) on real world GDP and DPI (and some other indexes). Bayesian Structured Time Series (BSTS).
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Updated
Aug 16, 2022 - Jupyter Notebook
Multivariate time series Vector Autoregression Model (VAR) on real world GDP and DPI (and some other indexes). Bayesian Structured Time Series (BSTS).
Crop yield Forecasting on the basis of meteorological predictions using some Time series & ML models
This repo contains files for the blog post about conjoint analysis
Using Python to work up a Design of Experiments
Tutorials for BSE classes.
Forecast the Airlines Passengers and CocaCola Prices data set. Prepare a document for model explaining. How many dummy variables you have created and RMSE value for model. Finally which model you will use for Forecasting.
My this project repository focused on hypothesis testing involving T-test, Chi-square test, Binomial Test, ANOVA, Sample Size Determination with scipy, statmodels modules.
Udacity Data Analyst Nanodegree - Project III
ExcelR Data Science Assignment No 3
Анализ соответствия размера выборки и плановых значений метрик A/B-теста
Used libraries and functions as follows:
Predict delivery time using sorting time and Build a prediction model for salary hike.
Multiple Linear Regression Study to predict King County House Sale Prices
Apprentissage supervisé : Création de modèles prédictifs
Influence of 17-AAG a Hsp90 inhibitor on signaling pathway in Atopic Dermatitis
Building a classification model for reducing the churn rate for a telecom company.
Model created using Logistic Regression to identify potential leads
Time Series forecasting using Seasonal ARIMA. Applied statistical tests like Augmented Dickey–Fuller test to check stationary of series. Checked ACF ,PACF plots. Transformed series to make it stationary
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