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R- Complete Machine Learning Solutions

  • Development
  • Mar 18, 2025
SynopsisR: Complete Machine Learning Solutions, available at $19.99,...
R- Complete Machine Learning Solutions  No.1

R: Complete Machine Learning Solutions, available at $19.99, has an average rating of 3.05, with 125 lectures, 12 quizzes, based on 55 reviews, and has 583 subscribers.

You will learn about Create and inspect the transaction dataset and perform association analysis with the Apriori algorithm Predict possible churn users with the classification approach Implement the clustering method to segment customer data Compress images with the dimension reduction method Build a product recommendation system This course is ideal for individuals who are If you are interested in understanding machine learning concepts and building real-time projects with R, then this is the perfect course for you! It is particularly useful for If you are interested in understanding machine learning concepts and building real-time projects with R, then this is the perfect course for you! .

Enroll now: R: Complete Machine Learning Solutions

Summary

Title: R: Complete Machine Learning Solutions

Price: $19.99

Average Rating: 3.05

Number of Lectures: 125

Number of Quizzes: 12

Number of Published Lectures: 125

Number of Published Quizzes: 12

Number of Curriculum Items: 137

Number of Published Curriculum Objects: 137

Original Price: $199.99

Quality Status: approved

Status: Live

What You Will Learn

  • Create and inspect the transaction dataset and perform association analysis with the Apriori algorithm
  • Predict possible churn users with the classification approach
  • Implement the clustering method to segment customer data
  • Compress images with the dimension reduction method
  • Build a product recommendation system
  • Who Should Attend

  • If you are interested in understanding machine learning concepts and building real-time projects with R, then this is the perfect course for you!
  • Target Audiences

  • If you are interested in understanding machine learning concepts and building real-time projects with R, then this is the perfect course for you!
  • Are you interested in understanding machine learning concepts and building real-time?projects with R, but don’t know where to start? Then, this is the perfect course for you!

    The aim of machine learning is to uncover hidden patterns, unknown correlations, and find useful information from data. In addition to this, through incorporation with data analysis, machine learning can be used to perform predictive analysis. With machine learning, the analysis of business operations and processes is not limited to human scale thinking; machine scale analysis enables businesses to capture hidden values in big data.

    Machine learning has similarities to the human reasoning process. Unlike traditional analysis, the generated model cannot evolve as data is accumulated. Machine learning can learn from the data that is processed and analyzed. In other words, the more data that is processed, the more it can learn.

    R, as a?dialect of GNU-S, is a powerful statistical language that can be used to manipulate and analyze data. Additionally, R provides many machine learning packages and visualization functions, which enable users to analyze data on the fly. Most importantly, R is open source and free.

    Using R greatly simplifies machine learning. All you need to know is how each algorithm can solve?your problem, and then you can simply use a written?package to quickly generate prediction models on data with a few command lines.

    By taking this course, you will gain a detailed and practical knowledge of R and machine learning concepts to build complex machine learning models. ?

    What details do you cover in this course?

    We start off with basic R operations, reading data into R, manipulating data, forming simple statistics for visualizing data. We will then walk through the processes of transforming, analyzing, and visualizing the RMS Titanic data. You will also learn how to perform descriptive statistics.

    This course will teach you to use regression models. We will then see how to fit data in tree-based classifier, Naive Bayes classifier, and so on.

    We then move on to introducing powerful classification networks, neural networks, and support vector machines. During this journey, we will introduce the power of ensemble learners to produce better classification and regression results.

    We will see how to apply the clustering technique to segment customers and further compare differences between each clustering method.

    We will discover associated terms and underline frequent patterns from transaction data.

    We will go through the process of compressing and restoring images, using the dimension reduction approach and R Hadoop, starting from setting up the environment to actual big data processing and machine learning on big data.

    By the end of this course, we will build our own project in the e-commerce domain.?

    This course will take you from the very basics of R to creating insightful machine learning models with R.

    We have combined the best?of the following Packt products:

  • R Machine Learning Solutions by Yu-Wei, Chiu (David Chiu)
  • Machine Learning with R Cookbook by Yu-Wei, Chiu (David Chiu)
  • R Machine Learning By Example ?by Raghav Bali and Dipanjan Sarkar
  • Testimonials:

    The source content have been received well by the audience. Here is a one of the?reviews:

    “good product, I enjoyed it

    – Ertugrul Bayindir

    Meet your?expert instructors:

    Yu-Wei, Chiu (David Chiu) is the founder of LargitData a startup company that mainly focuses on providing big data and machine learning products. He has previously worked for Trend Micro as a software engineer, where he was responsible for building big data platforms for business intelligence and customer relationship management systems.?

    Dipanjan Sarkaris an IT engineer at Intel, the world’s largest silicon company, where he works on analytics, business intelligence, and application development. His areas of specialization includes software engineering, data science, machine learning, and text analytics.

    Raghav Balihas a master’s degree (gold medalist) in IT from the International Institute of Information Technology, Bangalore. He is an IT engineer at Intel, the world’s largest silicon company, where he works on analytics, business intelligence, and application development.?


    Meet your managing?editor:

    This course has been planned and designed for you by me,?Tanmayee Patil. I’m?here to help you be successful every step of the way,?and get maximum value out of your course purchase. If you have any questions along the way, you can reach out to me and our author group via the instructor contact feature on Udemy.

    Course Curriculum

    Chapter 1: Getting Started with R

    Lecture 1: Introduction

    Lecture 2: Downloading and Installing R

    Lecture 3: Downloading and Installing RStudio

    Lecture 4: Installing and Loading Packages

    Lecture 5: Reading and Writing Data

    Lecture 6: Using R to Manipulate Data

    Lecture 7: Applying Basic Statistics

    Lecture 8: Visualizing Data

    Lecture 9: Getting a Dataset for Machine Learning

    Chapter 2: Data Exploration with RMS Titanic

    Lecture 1: Reading a Titanic Dataset from a CSV File

    Lecture 2: Converting Types on Character Variables

    Lecture 3: Detecting Missing Values

    Lecture 4: Imputing Missing Values

    Lecture 5: Exploring and Visualizing Datac

    Lecture 6: Predicting Passenger Survival with a Decision Tree

    Lecture 7: Validating the Power of Prediction with a Confusion Matrix

    Lecture 8: Assessing Performance with the ROC Curve

    Chapter 3: R and Statistics

    Lecture 1: Understanding Data Sampling in R

    Lecture 2: Operating a probability distribution in R

    Lecture 3: Working with univariate descriptive statistics in R

    Lecture 4: Performing Correlations and Multivariate Analysis

    Lecture 5: Operating Linear Regression and Multivariate Analysis

    Lecture 6: Conducting an Exact Binomial Test

    Lecture 7: Performing Students t-test

    Lecture 8: Performing the Kolmogorov-Smirnov Test

    Lecture 9: Understanding the Wilcoxon Rank Sum and Signed Rank Test

    Lecture 10: Working with Pearsons Chi-Squared Test

    Lecture 11: Conducting a One-Way ANOVA

    Lecture 12: Performing a Two-Way ANOVA

    Chapter 4: Understanding Regression Analysis

    Lecture 1: Fitting a Linear Regression Model with lm

    Lecture 2: Summarizing Linear Model Fits

    Lecture 3: Using Linear Regression to Predict Unknown Values

    Lecture 4: Generating a Diagnostic Plot of a Fitted Model

    Lecture 5: Fitting a Polynomial Regression Model with lm

    Lecture 6: Fitting a Robust Linear Regression Model with rlm

    Lecture 7: Studying a case of linear regression on SLID data

    Lecture 8: Applying the Gaussian Model for Generalized Linear Regression

    Lecture 9: Applying the Poisson model for Generalized Linear Regression

    Lecture 10: Applying the Binomial Model for Generalized Linear Regression

    Lecture 11: Fitting a Generalized Additive Model to Data

    Lecture 12: Visualizing a Generalized Additive Model

    Lecture 13: Diagnosing a Generalized Additive Model

    Chapter 5: Classification (I) – Tree, Lazy, and Probabilistic

    Lecture 1: Preparing the Training and Testing Datasets

    Lecture 2: Building a Classification Model with Recursive Partitioning Trees

    Lecture 3: Visualizing a Recursive Partitioning Tree

    Lecture 4: Measuring the Prediction Performance of a Recursive Partitioning Tree

    Lecture 5: Pruning a Recursive Partitioning Tree

    Lecture 6: Building a Classification Model with a Conditional Inference Tree

    Lecture 7: Visualizing a Conditional Inference Tree

    Lecture 8: Measuring the Prediction Performance of a Conditional Inference Tree

    Lecture 9: Classifying Data with the K-Nearest Neighbor Classifier

    Lecture 10: Classifying Data with Logistic Regression

    Lecture 11: Classifying data with the Na?ve Bayes Classifier

    Chapter 6: Classification (II) – Neural Network and SVM

    Lecture 1: Classifying Data with a Support Vector Machine

    Lecture 2: Choosing the Cost of an SVM

    Lecture 3: Visualizing an SVM Fit

    Lecture 4: Predicting Labels Based on a Model Trained by an SVM

    Lecture 5: Tuning an SVM

    Lecture 6: Training a Neural Network with neuralnet

    Lecture 7: Visualizing a Neural Network Trained by neuralnet

    Lecture 8: Predicting Labels based on a Model Trained by neuralnet

    Lecture 9: Training a Neural Network with nnet

    Lecture 10: Predicting labels based on a model trained by nnet

    Chapter 7: Model Evaluation

    Lecture 1: Estimating Model Performance with k-fold Cross Validation

    Lecture 2: Performing Cross Validation with the e1071 Package

    Lecture 3: Performing Cross Validation with the caret Package

    Lecture 4: Ranking the Variable Importance with the caret Package

    Lecture 5: Ranking the Variable Importance with the rminer Package

    Lecture 6: Finding Highly Correlated Features with the caret Package

    Lecture 7: Selecting Features Using the caret Package

    Lecture 8: Measuring the Performance of the Regression Model

    Lecture 9: Measuring Prediction Performance with a Confusion Matrix

    Lecture 10: Measuring Prediction Performance Using ROCR

    Lecture 11: Comparing an ROC Curve Using the caret Package

    Lecture 12: Measuring Performance Differences between Models with the caret Package

    Chapter 8: Ensemble Learning

    Lecture 1: Classifying Data with the Bagging Method

    Lecture 2: Performing Cross Validation with the Bagging Method

    Lecture 3: Classifying Data with the Boosting Method

    Lecture 4: Performing Cross Validation with the Boosting Method

    Lecture 5: Classifying Data with Gradient Boosting

    Lecture 6: Calculating the Margins of a Classifier

    Lecture 7: Calculating the Error Evolution of the Ensemble Method

    Lecture 8: Classifying Data with Random Forest

    Lecture 9: Estimating the Prediction Errors of Different Classifiers

    Instructors

  • R- Complete Machine Learning Solutions  No.2
    Packt Publishing
    Tech Knowledge in Motion
  • Rating Distribution

  • 1 stars: 5 votes
  • 2 stars: 3 votes
  • 3 stars: 10 votes
  • 4 stars: 21 votes
  • 5 stars: 16 votes
  • Frequently Asked Questions

    How long do I have access to the course materials?

    You can view and review the lecture materials indefinitely, like an on-demand channel.

    Can I take my courses with me wherever I go?

    Definitely! If you have an internet connection, courses on Udemy are available on any device at any time. If you don’t have an internet connection, some instructors also let their students download course lectures. That’s up to the instructor though, so make sure you get on their good side!