# Advanced Predictive Modeling in R

edureka
Online

Rs 14,967
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Original amount in USD:
\$ 233
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## Important information

 Typology Course Methodology Online
• Course
• Online
Description

Edureka's Advanced Predictive Modeling in R course will cover the Advanced Statistical and Analytical techniques. This course focuses on case study approach for learning various Analytical techniques and there will be a project to be done at the end of the course.

## Course programme

1. Basic Statistics in R

Learning Objectives - In this module, you will get an introduction to statistics and conduct best test and exploratory analysis.

Topics - Basic Statistics, Hypothesis Analysis, Correlation, Covariance, Matrix, Basic Charts.

2. Ordinary Least Square Regression 1

Learning Objectives - In this module, you will be introduced to basic regression and multiple regression, and will learn how to present the same graphically.

Topics - Exporting Data and Connecting Sheets, Making Basic Visualization in Tableau, Making Sense out of the Visuals and Interpreting the same.

3. Ordinary Least Square Regression 2

Learning Objectives - In this module, you will dive into linear regression and make the model a better fit, make necessary transformation check for over fitting and under fitting and outliers identification and treatment.

Topics - Residual Plots, AV plots, deletion diagnostics, partial correlation, subset selection, influential observations, transformations, Hetroscadasticity, VIFs, Multi co-linearity, auto-correlations, tests, dummy variables, seasonality, DW tests, Box-Cox transformation, interaction variables

4. Logistic Regression

Learning Objectives - In this module, you will be introduced to logistic regression and various uses of the same and also its industry usage.

Topics - Basic Logistic Regression, Uses, Drawbacks of OLS, Tests.

Learning Objectives - In this module, you will dive into logistic regression, learn about more varied usage of logistic regression on various dataset.

Topics - Poisson Regression, Multinomial, ordinal Regression: Business Case & Zero-inflated regression, Negative binomial, Panel data.

6. Imputation

Learning Objectives - In this module, you will learn about addressing missing values and how to impute it using various process.

Topics - Imputations using various methods like regression, mode/mean substitutions.

7. Forecasting 1

Learning Objectives - In this module, you will get an introduction to forecasting and time series data.

Topics - Techniques, Time series data, Decomposition, ARIMA/ ARMA, ACF and PACF plots, Seasonality and Smoothing (exponential).

8. Forecasting 2

Learning Objectives - In this module, you will learn about Seasonality, Trend Analysis and decaying the factors over the time.

Topics - Holt_winter smoothing, Growth Models, binary data, Neural Networks, ARCH / GARCH, trend lines (exponential trend lines).

9. Survival Analysis

Learning Objectives - In this module you will learn about Churn analysis and Regression on time series data with time component.

Topics - Survival Analysis, CoxPH analysis, Plots, tests.

10. Project

Learning Objectives - In this module, you will work on a dataset of your choice after approval from the trainer. The project needs to cover all concepts discussed in the class. The scope of project should enable you to perform various regressions (including logistic regression), forecasting and survival analysis. You are encouraged to take up a dataset that has missing value and logically impute the same before performing any predictive modeling. You can further develop various models under each section (logistic, forecasting and survival) and then suggest the best one using any technique of his choice. You also need to perform EDA and various aggregation and transformation before jumping into model making and implementing the entire concept on a free dataset

Topics - Project Discussion.

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