Learning Path R Data Analysis And Machine Learning With R Free Download
Last updated 9/2017MP4 | Video: h264, 1280×720 | Audio: AAC, 44.1 KHzLanguage: English | Size: 1.15 GB | Duration: 8h 15m
Conquer the wider world of data science with R
What you’ll learn
Understand how to organize and set up data
Learn to label and scale data
Use the caret package to apply and score a model
Handle missing values and duplicates
Apply classification and regression techniques
Conduct independent data analysis
Knowthe essentials of ROC curves
Explore multinomial logistic regression with categorical response variables at three levels
Requirements
Working knowledge of R is expected
Basic knowledge of math and statistics is needed
Description
With its popularity as a statistical programming language rapidly increasing with each passing day, R is becoming the preferred tool of choice for data analysts and data scientists who want to make sense of large amounts of data as quickly as possible. R has a rich set of libraries that can be used for basic as well as advanced data analysis and machine learning tasks.
So, if you’re looking to understand how the R programming environment and packages can be used to for data analysis and machine learning, then you should surely go for this Learning Path.
Packt’s Video Learning Path is a series of individual video products put together in a logical and stepwise manner such that each video builds on the skills learned in the video before it.
This Learning Path starts by organizing the data and then predicting it. You will work through various examples wherein you will explore RStudio and libraries, how to apply linear regression, how to score test sets, and plotting test results on a Cartesian plane. You will also see how to use logistic regression to predict for a classification problem on automobile data. Further, you will learn different ways to use R to generate professional analysis reports. Moving ahead, you will learn various important analysis and machine learning tasks that you can try out with associated and readily available data with the help of examples. Finally, you will learn advanced data analysis concepts such as cluster analysis, -series analysis, PCA (Principal Component Analysis), sennt analysis, and spatial data analysis.
By the end of this Learning Path, you will have a solid understanding of how to efficiently perform data analysis and machine learning tasks using R.
About the Author
For this course, we have combined the best works of these esteemed authors
Tim Hoolihan currently works at DialogTech, a marketing analytics company focused on conversations. He is the senior director of data science there. Prior to that, he was CTO at Level Seven, a regional consulting company in the US Midwest. He is the organizer of the Cleveland R User Group.In his job, he uses deep neural networks to help automate of lot of conversation classification problems. In addition, he works on some side-projects researching other areas of artificial intelligence and machine learning.ViswaViswanathan is an associate professor of computing and decision sciences at the Stillman School of Business in Seton Hall University. After completing his PhD in Artificial Intelligence,Viswa has taught extensively in diverse fields, including operations research, computer science, software eeering, management information systems, and enterprise systems. In addition to teaching at the university, hehas conducted training programs for industry professionals. He has written several peer-reviewed research publications in journals such as Operations Research, IEEE Software, Computers and Industrial Eeering, and International Journal of Artificial Intelligence in Education.ShanthiViswanathan is an experienced technologist who has delivered technology management and enterprise architecture consultations to many enterprise customers. She has worked for Infosys Technologies, Oracle Corporation, and Accenture. As a consultant, Shanthi has helped several large organizations, such as Canon, Cisco, Celgene, Amway, Warner Cable, and GE, among others, in areas such as data architecture and analytics, master data management, service-oriented architecture, business process management, and modeling.Dr. Bharatendra Rai is a professor of business statistics and operations management in the Charlton College of Business at UMass Dartmouth. He received his Ph.D. in Industrial Eeering from Wayne State University, Detroit. His two master’s degrees include specializations in quality, reliability, and OR from Indian Statistical Institute and another in statistics from Meerut University, India. He teaches courses on topics such as analyzing big data, business analytics,and data mining, Twitter and text analytics, applied decision techniques, operations management, and data science for business. Dr. Rai has won awards for excellence and exemplary teamwork at Ford for his contributions in the area of applied statistics.
Overview
Section 1: Getting Started with Machine Learning with R
Lecture 1 The Course Overview
Lecture 2 Your R Environment
Lecture 3 Exploring the US Arrests Dataset
Lecture 4 Creating Test and Train Datasets
Lecture 5 Creating a Linear Regression Model
Lecture 6 Scoring on the Test Set
Lecture 7 Plotting the Test Results
Lecture 8 EDA: mtcars
Lecture 9 Working with Factors
Lecture 10 Scaling Data
Lecture 11 Creating a Classification Model
Lecture 12 Advanced Formulas
Lecture 13 Precision, Recall, and F-Score
Lecture 14 Introduction to Caret
Lecture 15 EDA and Preprocessing
Lecture 16 Preparing Test and Train Datasets
Lecture 17 Creating a Model
Lecture 18 Cross Validation
Lecture 19 F-Score
Section 2: R Data Analysis Solutions – Machine Learning Techniques
Lecture 20 The Course Overview
Lecture 21 Reading Data from CSV Files
Lecture 22 Reading XML and JSON Data
Lecture 23 Reading Data from Fixed-Width Formatted Files, R Files, and R Libraries
Lecture 24 Removing and Replacing Missing Values
Lecture 25 Removing Duplicate Cases
Lecture 26 Rescaling a Variable
Lecture 27 Normalizing or Standardizing Data in a Data Frame
Lecture 28 Binning Numerical Data
Lecture 29 Creating Dummies for Categorical Variables
Lecture 30 Creating Standard Data Summaries
Lecture 31 Extracting Subset of a Dataset
Lecture 32 Splitting a Dataset
Lecture 33 Creating Random Data Partitions
Lecture 34 Generating Standard Plots
Lecture 35 Generating Multiple Plots
Lecture 36 Selecting a Graphics Device
Lecture 37 Creating Plots with the Lattice and ggplot2package
Lecture 38 Creating Charts that Facilitate Comparisons
Lecture 39 Creating Charts that Visualize Possible Causality
Lecture 40 Creating Multivariate Plots
Lecture 41 Generating Error/Classification-Confusion Matrices
Lecture 42 Generating ROC Charts
Lecture 43 Building, Plotting, and Evaluating – Classification Trees
Lecture 44 Using random Forest Models for Classification
Lecture 45 Classifying Using the Support Vector Machine Approach
Lecture 46 Classifying Using the Naive Bayes Approach
Lecture 47 Classifying Using the KNN Approach
Lecture 48 Using Neural Networks for Classification
Lecture 49 Classifying Using Linear Discriminant Function Analysis
Lecture 50 Classifying Using Logistic Regression
Lecture 51 Using AdaBoost to Combine Classification Tree Models
Lecture 52 Computing the Root Mean Squared Error
Lecture 53 Building KNN Models for Regression
Lecture 54 Perfog Linear Regression
Lecture 55 Perfog Variable Selection in Linear Regression
Lecture 56 Building Regression Trees
Lecture 57 Building Random Forest Models for Regression
Lecture 58 Using Neural Networks for Regression
Lecture 59 Perfog k-Fold Cross-Validation and Leave-One-Out-Cross-Validation
Lecture 60 Perfog Cluster Analysis Using K-Means Clustering
Lecture 61 Perfog Cluster Analysis Using Hierarchical Clustering
Lecture 62 Reducing Dimensionality with Principal Component Analysis
Section 3: Mastering Data Analysis with R
Lecture 63 The Course Overview
Lecture 64 Getting Started and Data Exploration with R/RStudio
Lecture 65 Introduction to Visualization
Lecture 66 Interactive Visualization
Lecture 67 Geographic Plots
Lecture 68 Advanced Visualization
Lecture 69 Getting Introductory Concepts
Lecture 70 Data Partitioning with R
Lecture 71 Multiple Linear Regression with R
Lecture 72 Multicollinearity Issues
Lecture 73 Logistic Regression with Categorical Response Variables at two Levels
Lecture 74 Logistic Regression Model and Interpretation
Lecture 75 Misclassification Error and Confusion Matrix
Lecture 76 ROC Curves
Lecture 77 Prediction and Model Assessment
Lecture 78 Multinomial Logistic Regression with Categorical Response Variables at 3Levels
Lecture 79 Multinomial Logistic Regression Model and Its Interpretation
Lecture 80 Misclassification Error and Confusion Matrix
Lecture 81 Prediction and Model Assessment
Lecture 82 Ordinal Logistic Regression with R
Lecture 83 Ordinal Logistic Regression Model and Interpretation
Lecture 84 The Misclassification Error and Confusion Matrix
Lecture 85 Prediction and Model Assessment
This Learning Path is for data scientists and data analysts who want to perform advanced data analysis and machine learning tasksusing R.
GU1GnFxm__Learning_P.part1.rar – 1.0 GB
GU1GnFxm__Learning_P.part2.rar – 156.5 MB