Time Series Analysis And Forecasting Using R
Published 10/2023
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 2.79 GB | Duration: 4h 24m
Published 10/2023
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 2.79 GB | Duration: 4h 24m
learn Time series analysis, forecasting and business analytics with the perspective of a data scientist
What you'll learn
Methods of Forecasting and Steps in Forecasting
Problems in Forecasting and Simple Forecasting Methods
Simple and Multiple Regression and Time Series Decomposition
Exponential Smoothing and ARIMA models
Requirements
Basic knowledge in statistics, mathematics, programming
Basic knowledge of using R and Excel
Description
Learn how to effectively work around business analytics to find out answers to key questions related to business. We are using sophisticated statistical tools like R and excel to analyze data. This training is a practical and a quantitative course which will help you learn business analytics with the perspective of a data scientist. The learner of this course will learn the most relevant techniques used in the real world by data analysts of companies around the world.The training includes the following;Introduction to ForecastingModels/Methods of ForecastingSteps in ForecastingProblems in ForecastingSimple Forecasting MethodsSimple and Multiple RegressionTime Series DecompositionExponential SmoothingARIMA modelsConclusionTime series in R is defined as a series of values, each associated with the timestamp also measured over regular intervals (monthly, daily) like weather forecasting and sales analysis. The R stores the time series data in the time-series object and is created using the ts() function as a base distribution. How Time-series works in R?R has a powerful inbuilt package to analyze the time series or forecasting. Here it builds a function to take different elements in the process. At last, we should find a better fit for the data. The input data we use here are integer values. Not all data has time values, but their values could be made as time-series data. The data consists of observations over a regular interval of time. It needs several transformations before it is modeled up.
Overview
Section 1: Introduction
Lecture 1 Introduction to Business Analytics Forecasting
Section 2: Getting Started
Lecture 2 What is Forecasting
Lecture 3 What is Forecasting Continues
Lecture 4 Methods of Forecasting
Lecture 5 Steps of Forecasting
Lecture 6 Problems with Forecasting
Section 3: Simple Forecasting Methods
Lecture 7 Simple Forecasting Methods
Lecture 8 Methods in Simple Forecasting Methods
Lecture 9 Example of Simple Forecasting Methods
Section 4: Transformations and Adjustments
Lecture 10 Transformations and Adjustments
Lecture 11 Transformations and Adjustments Example
Lecture 12 Forecasting Accuracy
Lecture 13 Simple Regression in Forecasting
Lecture 14 Simple Regression in Forecasting Continues
Section 5: Simple Regression and Multiple Linear Regression
Lecture 15 Example of Simple Regression in Forecasting
Lecture 16 Non Linear Regression
Lecture 17 Forecasting with Regression
Lecture 18 Time Series Regression
Lecture 19 Time Series Regression Continues
Lecture 20 Multiple Linear Regression
Lecture 21 Predictors Forecasting for Formula
Section 6: Time Series Decomposition
Lecture 22 Time Series Decomposition
Lecture 23 Time Series Decomposition Continues
Lecture 24 Forecasting with Decomposition
Lecture 25 Exponential Smoothing in Forecasting
Lecture 26 ARIMA Modelling
Section 7: Model
Lecture 27 Auto Regressive Model
Lecture 28 Moving Average Model
Lecture 29 Non Seasonal ARIMA
Lecture 30 ACF and PACF plot in Forecasting
Lecture 31 More on ARIMA Modelling
Lecture 32 Seasonal ARIMA Modelling
Students, Marketing professionals, Market Researchers, Product Managers, Any person running a business