Logistic Regression MCQ.docx

Logistic Regression MCQ.docx

Preview unavailable

You must log in or sign up to view this lesson.

LoginSign up

Full Data Science with R Programming

Buy nowLearn more

1.1 Advanced Data Preparation

  • 2. Introduction to Data Science.mp4
  • 3. Installation of R & R Studio.mp4
  • 4. Basics of R Studio.mp4
  • 5. Data Visualization with R Studio.mp4
  • 6. Data Modelling with R Studio.mp4
  • 7. Data Joining with R Studio.mp4
  • 8. Data Visualization with ggplot2.mp4
  • 9. Data Preparation with RStudio.mp4
  • 10. Data Cleaning with RegExp.mp4
  • Company Casestudy_ Data Visualization.mp4
  • Data Visualization with Plotly.mp4
  • R MCQ.docx
  • Statistics Full.pptx
  • credit_card_default_case_study_0.docx
  • default_of_credit_card_clients_0.xlsx
  • Lending Data.xlsx
  • Problem Statement_ EX Lending company wanna implement analytical solutions into their institution.docx

1.2 MYSQL

  • 1. Introduction to MySQL.mp4
  • 2. Creating DataBases in MySQL (1).mp4
  • 3. Deep Dive into MySQL Interface (1).mp4
  • 4. Queries in MySQL.mp4
  • 5. Clauses in MYSQL.mp4
  • 6. Clauses in MySQL -2.mp4
  • 7. MY SQL Data Handling.mp4
  • 8. Data Handling Part -1.mp4
  • 9. MYSQL Clauses -2.mp4
  • 10. MYSQL Aggregate Functions.mp4
  • MySQL MCQ_v1.docx
  • Assignment -1 for MYSQL.png
  • Clause Statements in MYSQL.png
  • Clauses in MySQL.sql
  • Clauses Part-3.png
  • Queries in MySQL -1.sql
  • Queries on MYSQL -1.png
  • Queries on MySQL.png

1.3 Linear Regression

  • 1. Linear Regression Overview.mp4
  • 2. Supervised & Unsupervised Learning.mp4
  • 3. Linear Regression Deep Dive.mp4
  • 4. Linear Regression Evalution Metrics.mp4
  • 5. Hypothesis Testing.mp4
  • 5.1. Hypothesis Testing.mp4
  • 6. Project on Linear Regression.mp4
  • 7. How to Improve Model Accuracy.mp4
  • 8. Airlines Casestudy.mp4
  • 9. Sales Prediction Case Study.mp4
  • 10. Lasso & Ridge Regression.mp4
  • 11. POC on OLX.mp4
  • 4237445651984047108.mp4
  • Linear regression MCQ.docx
  • Linear Regression Material - Applied ML.pdf
  • Automobile price data _Raw_.csv
  • Business Case_ R Group of companies, they work on various projects on construction.docx
  • concrete.csv
  • Linear Regression Simple & Multiple.R
  • Linear Regression_Construction.R
  • Mindmap on Statistics.png
  • Screenshot 2019-07-18 at 10.14.18 AM.png

1.4 Logistic Regression

  • 1. Introduction to Logistic Regression.mp4
  • 2. Logistic Regression Maths.mp4
  • 3. Logistic Regression_Evaluation Metrics.mp4
  • 4. ROC & AUC Curve.mp4
  • 5. Diabetes Case Study on Logistic Regression.mp4
  • 6. Cancer Prediction Logistic Regression.mp4
  • 7. Different Families in Logistic Model.mp4
  • Logistic Regression MCQ.docx
  • Logistic Regression Material - Applied ML.pdf

1.5 Fundamentals of Machine Learning

  • Fundamentals of Machine Learning Part-2.mp4
  • Fundamentals of ML Part-1.mp4
  • Insight's from Train & Test Accuracy.mp4
  • K-NN Material.pptx
  • Data Mining.pptx

1.6 Machine Learning & Advanced Machine Learning

  • 1. Decision Tree Maths Deep Dive.mp4
  • 2. Decision Tree Coding on RStudio.mp4
  • 3. Airlines Case study Explanation.mp4
  • 4. Airlines Case Study Coding.mp4
  • 5. Predicting Cricket Performance.mp4
  • Decision-Tree Learning . (1).pptx
  • 1.Introduction to Gradient Boosting.mp4
  • Ensembling.pptx
  • 1. Introduction to Neural Networks.mp4
  • 2. Neural Network Architecture.mp4
  • Neural Networks.pptx
  • Problem_Statement.docx
  • Data Dictionary.xls
  • sampleEntry.csv
  • test.csv
  • training.csv
  • 1. Random Forest Maths.mp4
  • 2. Random Forest Coding Deep Dive.mp4
  • Cancer Casestudy_Logistic Regression.R
  • Company Case Study_DV.R
  • Decision Tree_Credit with Factor Conversion.R
  • Decision Tree_Item classification.R
  • DecisionTreeRegressor.R
  • Encoder's Script.R
  • Hiring challenges_Random Forest Script.R
  • Kmeans clustering R code.R
  • SVM and NN.R
  • 1. SVM Deep Dive.mp4
  • 2. SVM Script using R .mp4
  • Support Vector Machines.pptx

1.7 Time Series

  • 1. Introduction to Time Series Modelling.mp4
  • 2. Time Series Modelling - 2.mp4
  • 3. Characteristics of Time Series Modelling.mp4
  • 4. Time Series Modelling Techniques.mp4
  • 5. Coding Time Series Modelling using R.mp4
  • 6. Time Series Modelling using RNN.mp4
  • Time-Series Modelling.pdf
  • Time Series Modelling using R.R

1.8 Deep Learning Foundation

  • 1. Introduction to Neural Networks.mp4
  • 2. Neural Network Architecture.mp4
  • 3. Different Optimizers.mp4
  • 4. Different Activation Functions.mp4
  • 5. Different Loss Functions.mp4
  • 6. Coding Feed Forward NN in R.mp4
  • Activation Functions.pdf
  • Deep Learning Introduction .pdf
  • Gradient Descent .pdf
  • Loss Functions.pdf
  • concrete.csv
  • Neural Network for Classification.R
  • SVM and NN.R
  • University (1).xlsx

1.9 Text Mining

  • 1. Introduction to Text Mining.mp4
  • 2. NLP Processing Deep Dive.mp4
  • 3. NLP Classification R Coding Case Study.mp4
  • 4. Language Identification using R.mp4
  • 5. Phrase Extraction .mp4
  • NLP Complete .pdf
  • BUSINESS CASE ON COMPLIANCES .pdf
  • sn_compliance_control.xlsx
  • Language Identification.R
  • letterdata.csv
  • Naive Bayes.R
  • NB.csv
  • negative-words.txt
  • POS Tagging.R
  • positive-words.txt
  • Text Mining_Reviews.R

Files used in Videos

  • Basics of R Studio.R
  • Cancer Casestudy_Logistic Regression.R
  • Data Cleaning with Regexp.R
  • Data Joining with DPLYR.R
  • Data Manipulation 2-1.R
  • Data Preparation with R.R
  • Data Visualization with ggplot2.R
  • Decision Tree_Credit with Factor Conversion.R
  • Decision Tree_Item classification.R
  • DecisionTreeRegressor.R
  • Diabetes Case Study_Logistic Regression.R
  • Encoder's Script.R
  • Hiring challenges_Random Forest Script.R
  • KNN - Train Accuracy & Test Accuracy.R
  • KNN_CaseStudy on Credit.R
  • KNN_Normalization Script.R
  • Linear Regression Simple & Multiple.R
  • Linear Regression_Construction.R
  • Linear Regression_Sales Prediction.R
  • Logistic Regression Script_Claims.R
  • Modeling with Dplyr.R