|  

[UDEMY] Machine Learning Basics Building a Regression model in R [FTU] GloDLS



Size :2.87 GB
Peers : Seeders : 0      Leechers : 0
Added : 5 years ago » by SaM » in Tutorials
Language : English
Last Updated :7 months ago
Info_Hash :84CEDA92360756D7CF4299E7E1E202929216F1E1

Torrent File Contents

[UDEMY] Machine Learning Basics Building a Regression model in R [FTU] GloDLS
  1. Introduction/1. Welcome to the course!.mp4
  -  19.54 MB

  1. Introduction/1. Welcome to the course!.vtt
  -  3.16 KB

  1. Introduction/2.1 00_Introduction_01.pdf.pdf
  -  791.49 KB

  1. Introduction/2. Course contents.mp4
  -  63.53 MB

  1. Introduction/2. Course contents.vtt
  -  9.39 KB

  2. Basics of Statistics/1.1 01_01_Lecture_TypesOfData.pdf.pdf
  -  177.74 KB

  2. Basics of Statistics/1. Types of Data.mp4
  -  41.25 MB

  2. Basics of Statistics/1. Types of Data.vtt
  -  4.32 KB

  2. Basics of Statistics/2.1 01_02_Lecture_TypesOfStatistics.pdf.pdf
  -  171.73 KB

  2. Basics of Statistics/2. Types of Statistics.mp4
  -  13.24 MB

  2. Basics of Statistics/2. Types of Statistics.vtt
  -  2.68 KB

  2. Basics of Statistics/3.1 01_03_Lecture_DataSummaryandGraph.pdf.pdf
  -  317.85 KB

  2. Basics of Statistics/3. Describing the data graphically.mp4
  -  82.16 MB

  2. Basics of Statistics/3. Describing the data graphically.vtt
  -  11.3 KB

  2. Basics of Statistics/4.1 01_04_Lecture_Centers.pdf.pdf
  -  312.98 KB

  2. Basics of Statistics/4. Measures of Centers.mp4
  -  45.69 MB

  2. Basics of Statistics/4. Measures of Centers.vtt
  -  6.42 KB

  2. Basics of Statistics/5.1 Exercise 1.pdf.pdf
  -  553.83 KB

  2. Basics of Statistics/5. Practice Exercise 1.html
  -  354 Bytes

  2. Basics of Statistics/6.1 01_05_Lecture_Dispersion.pdf.pdf
  -  210.55 KB

  2. Basics of Statistics/6. Measures of Dispersion.mp4
  -  28.37 MB

  2. Basics of Statistics/6. Measures of Dispersion.vtt
  -  4.72 KB

  2. Basics of Statistics/7.1 Exercise 2.pdf.pdf
  -  469.93 KB

  2. Basics of Statistics/7. Practice Exercise 2.html
  -  295 Bytes

  3. Getting started with R and R studio/1. Installing R and R studio.mp4
  -  40.83 MB

  3. Getting started with R and R studio/1. Installing R and R studio.vtt
  -  6.63 KB

  3. Getting started with R and R studio/2. Basics of R and R studio.mp4
  -  48.2 MB

  3. Getting started with R and R studio/2. Basics of R and R studio.vtt
  -  12.76 KB

  3. Getting started with R and R studio/3. Packages in R.mp4
  -  98.67 MB

  3. Getting started with R and R studio/3. Packages in R.vtt
  -  12.91 KB

  3. Getting started with R and R studio/4. Inputting data part 1 Inbuilt datasets of R.mp4
  -  46.16 MB

  3. Getting started with R and R studio/4. Inputting data part 1 Inbuilt datasets of R.vtt
  -  4.94 KB

  3. Getting started with R and R studio/5. Inputting data part 2 Manual data entry.mp4
  -  30.88 MB

  3. Getting started with R and R studio/5. Inputting data part 2 Manual data entry.vtt
  -  3.27 KB

  3. Getting started with R and R studio/6. Inputting data part 3 Importing from CSV or Text files.mp4
  -  69.14 MB

  3. Getting started with R and R studio/6. Inputting data part 3 Importing from CSV or Text files.vtt
  -  7.5 KB

  3. Getting started with R and R studio/7. Creating Barplots in R.mp4
  -  117.54 MB

  3. Getting started with R and R studio/7. Creating Barplots in R.vtt
  -  16.27 KB

  3. Getting started with R and R studio/8. Creating Histograms in R.mp4
  -  51.51 MB

  3. Getting started with R and R studio/8. Creating Histograms in R.vtt
  -  6.77 KB

  4. Introduction to Machine Learning/1.1 Lecture_machineLearning.pdf.pdf
  -  991.61 KB

  4. Introduction to Machine Learning/1. Introduction to Machine Learning.mp4
  -  123.89 MB

  4. Introduction to Machine Learning/1. Introduction to Machine Learning.vtt
  -  21.01 KB

  4. Introduction to Machine Learning/2.1 Lecture_machineLearning.pdf.pdf
  -  991.61 KB

  4. Introduction to Machine Learning/2. Building a Machine Learning model.mp4
  -  45.28 MB

  4. Introduction to Machine Learning/2. Building a Machine Learning model.vtt
  -  11.51 KB

  4. Introduction to Machine Learning/3. Introduction to Machine learning quiz.html
  -  163 Bytes

  5. Data Preprocessing/10. Outlier Treatment in R.mp4
  -  37.98 MB

  5. Data Preprocessing/10. Outlier Treatment in R.vtt
  -  3.81 KB

  5. Data Preprocessing/1.1 03_01_PDE_Business_knowledge.pdf.pdf
  -  153.94 KB

  5. Data Preprocessing/11. Project Exercise 3.html
  -  233 Bytes

  5. Data Preprocessing/12.1 04_05_PDE_Missing_value.pdf.pdf
  -  315.68 KB

  5. Data Preprocessing/12. Missing Value imputation.mp4
  -  27.57 MB

  5. Data Preprocessing/12. Missing Value imputation.vtt
  -  3.61 KB

  5. Data Preprocessing/13. Missing Value imputation in R.mp4
  -  31.76 MB

  5. Data Preprocessing/13. Missing Value imputation in R.vtt
  -  3.07 KB

  5. Data Preprocessing/14. Project Exercise 4.html
  -  238 Bytes

  5. Data Preprocessing/15.1 04_07_PDE_Seasonality.pdf.pdf
  -  364.09 KB

  5. Data Preprocessing/15. Seasonality in Data.mp4
  -  20.89 MB

  5. Data Preprocessing/15. Seasonality in Data.vtt
  -  3.3 KB

  5. Data Preprocessing/16.1 04_07_Variable_Transformation.pdf.pdf
  -  422.8 KB

  5. Data Preprocessing/16. Bi-variate Analysis and Variable Transformation.mp4
  -  113.76 MB

  5. Data Preprocessing/16. Bi-variate Analysis and Variable Transformation.vtt
  -  16.09 KB

  5. Data Preprocessing/17. Variable transformation in R.mp4
  -  67.86 MB

  5. Data Preprocessing/17. Variable transformation in R.vtt
  -  7.98 KB

  5. Data Preprocessing/18. Project Exercise 5.html
  -  286 Bytes

  5. Data Preprocessing/19.1 04_08_PDE_Non_Usable_var.pdf.pdf
  -  138.35 KB

  5. Data Preprocessing/19. Non Usable Variables.mp4
  -  23.96 MB

  5. Data Preprocessing/19. Non Usable Variables.vtt
  -  2.03 MB

  5. Data Preprocessing/1. Gathering Business Knowledge.mp4
  -  25.12 MB

  5. Data Preprocessing/1. Gathering Business Knowledge.vtt
  -  3.45 KB

  5. Data Preprocessing/20.1 04_11_Dummy_Var.pdf.pdf
  -  162.97 KB

  5. Data Preprocessing/20. Dummy variable creation Handling qualitative data.mp4
  -  40.62 MB

  5. Data Preprocessing/20. Dummy variable creation Handling qualitative data.vtt
  -  4.31 KB

  5. Data Preprocessing/2.1 03_02_PDE_Data_exploration.pdf.pdf
  -  322.91 KB

  5. Data Preprocessing/21. Dummy variable creation in R.mp4
  -  52.27 MB

  5. Data Preprocessing/21. Dummy variable creation in R.vtt
  -  4.54 KB

  5. Data Preprocessing/22. Project Exercise 6.html
  -  202 Bytes

  5. Data Preprocessing/23.1 04_10_Correlation.pdf.pdf
  -  256.91 KB

  5. Data Preprocessing/23. Correlation Matrix and cause-effect relationship.mp4
  -  81.29 MB

  5. Data Preprocessing/23. Correlation Matrix and cause-effect relationship.vtt
  -  9.75 KB

  5. Data Preprocessing/24. Correlation Matrix in R.mp4
  -  95.05 MB

  5. Data Preprocessing/24. Correlation Matrix in R.vtt
  -  8.06 KB

  5. Data Preprocessing/25. Project Exercise 7.html
  -  288 Bytes

  5. Data Preprocessing/2. Data Exploration.mp4
  -  23.42 MB

  5. Data Preprocessing/2. Data Exploration.vtt
  -  3.21 KB

  5. Data Preprocessing/3.1 House_Price.csv.csv
  -  53.49 KB

  5. Data Preprocessing/3.2 03_03_PDE_Raw_Data_Analysis_Uni.pdf.pdf
  -  331.98 KB

  5. Data Preprocessing/3. The Data and the Data Dictionary.mp4
  -  78.58 MB

  5. Data Preprocessing/3. The Data and the Data Dictionary.vtt
  -  6.89 KB

  5. Data Preprocessing/4.1 House_Price.csv.csv
  -  53.49 KB

  5. Data Preprocessing/4. Importing the dataset into R.mp4
  -  15.99 MB

  5. Data Preprocessing/4. Importing the dataset into R.vtt
  -  2.29 KB

  5. Data Preprocessing/5.1 Movie_collection_train.csv.csv
  -  43.31 KB

  5. Data Preprocessing/5. Project Exercise 1.html
  -  431 Bytes

  5. Data Preprocessing/6.1 03_04_PDE_Univariate_Analysis_Uni.pdf.pdf
  -  333.39 KB

  5. Data Preprocessing/6. Univariate Analysis and EDD.mp4
  -  27.3 MB

  5. Data Preprocessing/6. Univariate Analysis and EDD.vtt
  -  3.1 KB

  5. Data Preprocessing/7. EDD in R.mp4
  -  112.26 MB

  5. Data Preprocessing/7. EDD in R.vtt
  -  10.07 KB

  5. Data Preprocessing/8. Project Exercise 2.html
  -  177 Bytes

  5. Data Preprocessing/9.1 04_06_PDE_Outlier_Treatment.pdf.pdf
  -  355.14 KB

  5. Data Preprocessing/9. Outlier Treatment.mp4
  -  27.76 MB

  5. Data Preprocessing/9. Outlier Treatment.vtt
  -  3.99 KB

  6. Linear Regression Model/10. Multiple Linear Regression in R.mp4
  -  73.1 MB

  6. Linear Regression Model/10. Multiple Linear Regression in R.vtt
  -  7.13 KB

  6. Linear Regression Model/1.1 05_01_Intro.pdf.pdf
  -  239.32 KB

  6. Linear Regression Model/11. Project Exercise 9.html
  -  327 Bytes

  6. Linear Regression Model/12.1 05_12_Test_Train.pdf.pdf
  -  238.78 KB

  6. Linear Regression Model/12. Test-Train split.mp4
  -  49.15 MB

  6. Linear Regression Model/12. Test-Train split.vtt
  -  8.95 KB

  6. Linear Regression Model/13.1 05_13_Bias_Var_tradeoff.pdf.pdf
  -  202.38 KB

  6. Linear Regression Model/13. Bias Variance trade-off.mp4
  -  29.59 MB

  6. Linear Regression Model/13. Bias Variance trade-off.vtt
  -  5.69 KB

  6. Linear Regression Model/14. Test-Train Split in R.mp4
  -  91.05 MB

  6. Linear Regression Model/14. Test-Train Split in R.vtt
  -  7.33 KB

  6. Linear Regression Model/15.1 05_09_Other_lin_model.pdf.pdf
  -  156.51 KB

  6. Linear Regression Model/15. Linear models other than OLS.mp4
  -  19.18 MB

  6. Linear Regression Model/15. Linear models other than OLS.vtt
  -  3.87 KB

  6. Linear Regression Model/16.1 05_10_Subset_Selection.pdf.pdf
  -  198.52 KB

  6. Linear Regression Model/16. Subset Selection techniques.mp4
  -  87.11 MB

  6. Linear Regression Model/16. Subset Selection techniques.vtt
  -  11.24 KB

  6. Linear Regression Model/17. Subset selection in R.mp4
  -  76.61 MB

  6. Linear Regression Model/17. Subset selection in R.vtt
  -  6.69 KB

  6. Linear Regression Model/18. Project Exercise 10.html
  -  199 Bytes

  6. Linear Regression Model/19.1 05_11_Shrinkage_methods.pdf.pdf
  -  188.11 KB

  6. Linear Regression Model/19. Shrinkage methods - Ridge Regression and The Lasso.mp4
  -  52.97 MB

  6. Linear Regression Model/19. Shrinkage methods - Ridge Regression and The Lasso.vtt
  -  7.18 KB

  6. Linear Regression Model/1. The problem statement.mp4
  -  10.68 MB

  6. Linear Regression Model/1. The problem statement.vtt
  -  1.44 KB

  6. Linear Regression Model/20. Ridge regression and Lasso in R.mp4
  -  181.06 MB

  6. Linear Regression Model/20. Ridge regression and Lasso in R.vtt
  -  9.86 KB

  6. Linear Regression Model/2.1 05_02_Simple_lin_reg.pdf.pdf
  -  284.77 KB

  6. Linear Regression Model/21. Project Exercise 11.html
  -  398 Bytes

  6. Linear Regression Model/22.1 Movie_collection_test.csv.csv
  -  11.72 KB

  6. Linear Regression Model/22. Final Project Exercise.html
  -  329 Bytes

  6. Linear Regression Model/23. Course Conclusion.html
  -  1.67 KB

  6. Linear Regression Model/2. Basic equations and Ordinary Least Squared (OLS) method.mp4
  -  50.23 MB

  6. Linear Regression Model/2. Basic equations and Ordinary Least Squared (OLS) method.vtt
  -  8.74 KB

  6. Linear Regression Model/3.1 05_03_Simple_lin_reg_Accuracy.pdf.pdf
  -  332.72 KB

  6. Linear Regression Model/3. Assessing Accuracy of predicted coefficients.mp4
  -  104.43 MB

  6. Linear Regression Model/3. Assessing Accuracy of predicted coefficients.vtt
  -  13.99 KB

  6. Linear Regression Model/4.1 05_03_Simple_lin_reg_Accuracy.pdf.pdf
  -  332.72 KB

  6. Linear Regression Model/4. Assessing Model Accuracy - RSE and R squared.mp4
  -  49.74 MB

  6. Linear Regression Model/4. Assessing Model Accuracy - RSE and R squared.vtt
  -  7.06 KB

  6. Linear Regression Model/5. Simple Linear Regression in R.mp4
  -  50.6 MB

  6. Linear Regression Model/5. Simple Linear Regression in R.vtt
  -  7.1 KB

  6. Linear Regression Model/6. Project Exercise 8.html
  -  322 Bytes

  6. Linear Regression Model/7.1 05_04_Multiple_lin_reg.pdf.pdf
  -  219.79 KB

  6. Linear Regression Model/7. Multiple Linear Regression.mp4
  -  38.92 MB

  6. Linear Regression Model/7. Multiple Linear Regression.vtt
  -  5.08 KB

  6. Linear Regression Model/8.1 05_05_F_stat.pdf.pdf
  -  328.48 KB

  6. Linear Regression Model/8. The F - statistic.mp4
  -  64.17 MB

  6. Linear Regression Model/8. The F - statistic.vtt
  -  7.98 KB

  6. Linear Regression Model/9.1 05_06_Cat_var.pdf.pdf
  -  155.49 KB

  6. Linear Regression Model/9. Interpreting result for categorical Variable.mp4
  -  27.16 MB

  6. Linear Regression Model/9. Interpreting result for categorical Variable.vtt
  -  4.68 KB

  Discuss.FTUForum.com.html
  -  31.89 KB

  FreeCoursesOnline.Me.html
  -  108.3 KB

  FTUForum.com.html
  -  100.44 KB

  How you can help Team-FTU.txt
  -  235 Bytes

  [TGx]Downloaded from torrentgalaxy.org.txt
  -  524 Bytes

  Torrent Downloaded From GloDls.buzz.txt
  -  84 Bytes



Torrent Description

Description:


Use Linear Regression to solve business problems and master the basics of Machine Learning Linear Regression in R

Created by: Start-Tech Academy
Last updated: 3/2019
Language: English
Caption (CC): Included
Torrent Contains: 163 Files, 6 Folders
Course Source: https://www.udemy.com/machine-learning-basics-building-a-regression-model-in-r/

What you'll learn

• Learn how to solve real life problem using the Linear Regression technique
• Preliminary analysis of data using Univariate and Bivariate analysis before running Linear regression
• Predict future outcomes basis past data by implementing Simplest Machine Learning algorithm
• Understand how to interpret the result of Linear Regression model and translate them into actionable insight
• Understanding of basics of statistics and concepts of Machine Learning
• Indepth knowledge of data collection and data preprocessing for Machine Learning Linear Regression problem
• Learn advanced variations of OLS method of Linear Regression
• Course contains a end-to-end DIY project to implement your learnings from the lectures
• How to convert business problem into a Machine learning Linear Regression problem
• How to do basic statistical operations in R
• Advanced Linear regression techniques using GLMNET package of R
• Graphically representing data in R before and after analysis

Requirements

• Students will need to install R and R studio software but we have a separate lecture to help you install the same

Description

The course "Machine Learning Basics: Building a Regression model in R" teaches you all the steps of creating a Linear Regression model, which is the most popular Machine Learning model, to solve business problems.

Below is a list of popular FAQs of students who want to start their Machine learning journey-

What is Machine Learning?

Machine Learning is a field of computer science which gives the computer the ability to learn without being explicitly programmed. It is a branch of artificial intelligence based on the idea that systems can learn from data, identify patterns and make decisions with minimal human intervention.

What is the Linear regression technique of Machine learning?

Linear Regression is a simple machine learning model for regression problems, i.e., when the target variable is a real value.

Linear regression is a linear model, e.g. a model that assumes a linear relationship between the input variables (x) and the single output variable (y). More specifically, that y can be calculated from a linear combination of the input variables (x).

When there is a single input variable (x), the method is referred to as simple linear regression.

When there are multiple input variables, the method is known as multiple linear regression.

Why learn Linear regression technique of Machine learning?

There are four reasons to learn Linear regression technique of Machine learning:

1. Linear Regression is the most popular machine learning technique
2. Linear Regression has fairly good prediction accuracy
3. Linear Regression is simple to implement and easy to interpret
4. It gives you a firm base to start learning other advanced techniques of Machine Learning

How much time does it take to learn Linear regression technique of machine learning?

Linear Regression is easy but no one can determine the learning time it takes. It totally depends on you. The method we adopted to help you learn Linear regression starts from the basics and takes you to advanced level within hours. You can follow the same, but remember you can learn nothing without practicing it. Practice is the only way to remember whatever you have learnt. Therefore, we have also provided you with another data set to work on as a separate project of Linear regression.

What are the steps I should follow to be able to build a Machine Learning model?

You can divide your learning process into 4 parts:

Statistics and Probability - Implementing Machine learning techniques require basic knowledge of Statistics and probability concepts. Second section of the course covers this part.

Understanding of Machine learning - Fourth section helps you understand the terms and concepts associated with Machine learning and gives you the steps to be followed to build a machine learning model

Programming Experience - A significant part of machine learning is programming. Python and R clearly stand out to be the leaders in the recent days. Third section will help you set up the R environment and teach you some basic operations. In later sections there is a video on how to implement each concept taught in theory lecture in R

Understanding of Linear Regression modelling - Having a good knowledge of Linear Regression gives you a solid understanding of how machine learning works. Even though Linear regression is the simplest technique of Machine learning, it is still the most popular one with fairly good prediction ability. Fifth and sixth section cover Linear regression topic end-to-end and with each theory lecture comes a corresponding practical lecture in R where we actually run each query with you.

Why use R for data Machine Learning?

Understanding R is one of the valuable skills needed for a career in Machine Learning. Below are some reasons why you should learn Machine learning in R

1. It’s a popular language for Machine Learning at top tech firms. Almost all of them hire data scientists who use R. Facebook, for example, uses R to do behavioral analysis with user post data. Google uses R to assess ad effectiveness and make economic forecasts. And by the way, it’s not just tech firms: R is in use at analysis and consulting firms, banks and other financial institutions, academic institutions and research labs, and pretty much everywhere else data needs analyzing and visualizing.
2. Learning the data science basics is arguably easier in R. R has a big advantage: it was designed specifically with data manipulation and analysis in mind.
3. Amazing packages that make your life easier. Because R was designed with statistical analysis in mind, it has a fantastic ecosystem of packages and other resources that are great for data science.
4. Robust, growing community of data scientists and statisticians. As the field of data science has exploded, R has exploded with it, becoming one of the fastest-growing languages in the world (as measured by StackOverflow). That means it’s easy to find answers to questions and community guidance as you work your way through projects in R.
5. Put another tool in your toolkit. No one language is going to be the right tool for every job. Adding R to your repertoire will make some projects easier – and of course, it’ll also make you a more flexible and marketable employee when you’re looking for jobs in data science.

What is the difference between Data Mining, Machine Learning, and Deep Learning?

Put simply, machine learning and data mining use the same algorithms and techniques as data mining, except the kinds of predictions vary. While data mining discovers previously unknown patterns and knowledge, machine learning reproduces known patterns and knowledge—and further automatically applies that information to data, decision-making, and actions.

Deep learning, on the other hand, uses advanced computing power and special types of neural networks and applies them to large amounts of data to learn, understand, and identify complicated patterns. Automatic language translation and medical diagnoses are examples of deep learning.

What's special about this course?

The course is created on the basis of three pillars of learning:

1. Know (Study)
2. Do (Practice)
3. Review (Self feedback)

Know

We have created a set of concise and comprehensive videos to teach you all the Regression related skills you will need in your professional career.

Do

We also provide Exercises to complement the learning from the lecture video. These exercises are carefully designed to further clarify the concepts and help you with implementing the concepts on practical problems faced on-the-job.

Review

Check if you have learnt the concepts by executing your code and analyzing the result set. Ask questions in the discussion board if you face any difficulty.

The Authors of this course have several years of corporate experience and hence have curated the course material keeping in mind the requirement of Regression analysis in today's corporate world.

Who this course is for:

• People pursuing a career in data science
• Working Professionals beginning their Data journey
• Statisticians needing more practical experience
• Anyone curious to master Linear Regression from beginner to advanced in short span of time.