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Imbalanced Learning (Unbalanced Data) The Complete Guide

  • Development
  • Apr 23, 2025
SynopsisImbalanced Learning (Unbalanced Data – The Complete Gu...
Imbalanced Learning (Unbalanced Data) The Complete Guide  No.1

Imbalanced Learning (Unbalanced Data) – The Complete Guide, available at $24.99, has an average rating of 4.65, with 67 lectures, based on 78 reviews, and has 878 subscribers.

You will learn about Understand the underline causes of the Class Imbalance problem Why it is a major challenge in machine learning and data mining fields Learn the different characteristics of imbalanced datasets Learn the state-of-the-art techniques and algorithms Understand variety of data based methods such as SMOTE, ADASYN, B-SMOTE and many more! Apply Data-Based Techniques in practice Understand different algorithmic approaches such as: One Class Learning, Cost Sensitive Learning and more! Apply Algorithmic-Based methods in practice Learn how to correctly evaluate a prediction model built using imbalanced data Learn strategies and recommendations to help you avoid pitfalls when working with imbalanced dataset This course is ideal for individuals who are This course is for students and professionals who are working in the machine learning / data science area and want to increase their knowledge and skills. It is also for students who are currently taking a course in these areas. It is not for students with no background knowledge in Machine Learning. It is particularly useful for This course is for students and professionals who are working in the machine learning / data science area and want to increase their knowledge and skills. It is also for students who are currently taking a course in these areas. It is not for students with no background knowledge in Machine Learning.

Enroll now: Imbalanced Learning (Unbalanced Data) – The Complete Guide

Summary

Title: Imbalanced Learning (Unbalanced Data) – The Complete Guide

Price: $24.99

Average Rating: 4.65

Number of Lectures: 67

Number of Published Lectures: 61

Number of Curriculum Items: 67

Number of Published Curriculum Objects: 61

Original Price: $24.99

Quality Status: approved

Status: Live

What You Will Learn

  • Understand the underline causes of the Class Imbalance problem
  • Why it is a major challenge in machine learning and data mining fields
  • Learn the different characteristics of imbalanced datasets
  • Learn the state-of-the-art techniques and algorithms
  • Understand variety of data based methods such as SMOTE, ADASYN, B-SMOTE and many more!
  • Apply Data-Based Techniques in practice
  • Understand different algorithmic approaches such as: One Class Learning, Cost Sensitive Learning and more!
  • Apply Algorithmic-Based methods in practice
  • Learn how to correctly evaluate a prediction model built using imbalanced data
  • Learn strategies and recommendations to help you avoid pitfalls when working with imbalanced dataset
  • Who Should Attend

  • This course is for students and professionals who are working in the machine learning / data science area and want to increase their knowledge and skills. It is also for students who are currently taking a course in these areas. It is not for students with no background knowledge in Machine Learning.
  • Target Audiences

  • This course is for students and professionals who are working in the machine learning / data science area and want to increase their knowledge and skills. It is also for students who are currently taking a course in these areas. It is not for students with no background knowledge in Machine Learning.
  • This is a niche topic for students interested in data science and machine learning fields. The classical data imbalance problem is recognized as one of the major problems in the field of data mining and machine learning. Imbalanced learning focuses on how an intelligent system can learn when it is provided with unbalanced data.

    There is an unprecedented amount of data available. This has caused knowledge discovery to garner attention in recent years. However, many real-world datasets are imbalanced. Learning from unbalanced data poses major challenges and is recognized as needing significant attention.

    The problem with unbalanced data is the performance of learning algorithms in the presence of underrepresented data and severely skewed class distributions. Models trained on imbalanced datasets strongly favor the majority class and largely ignore the minority class. Several approaches introduced to date present both data-based and algorithmic solutions.

    The specific goals of this course are:

  • Help the students understand the underline causes of unbalanced data problem.

  • Go over the major state-of-the-art methods and techniques that you can use to deal with imbalanced learning.

  • Explain the advantages and drawback of different approaches and methods .

  • Discuss the major assessment metrics for imbalanced learning to help you correctly evaluate the effectiveness of your solution.

  • Course Curriculum

    Chapter 1: Introduction

    Lecture 1: Introduction

    Lecture 2: Problem Definition

    Lecture 3: How Common is this problem?

    Lecture 4: Prerequisites & Course Outcomes

    Lecture 5: The Four Different Characteristics

    Lecture 6: How Hard is my Unbalanced Dataset?

    Lecture 7: Datasets – Quick Guide

    Lecture 8: Languages & Source Code

    Lecture 9: Installing Anaconda for Mac

    Lecture 10: Installing Anaconda for Windows

    Chapter 2: Data-based Approaches – Under-Sampling

    Lecture 1: Data-based Approaches Introduction

    Lecture 2: Undersampling Methods Introduction

    Lecture 3: Undersampling: Random Undersampling

    Lecture 4: Example – Random Undersampling

    Lecture 5: Tomek Link

    Lecture 6: Practical Example – Tomek Link

    Lecture 7: UnderSampling: One Sided Selection

    Lecture 8: Practical Example – OSS

    Lecture 9: CPM: Class Purity Maximization

    Lecture 10: SBC: Sampling Based on Clustering

    Lecture 11: Practical Example – Clustering

    Lecture 12: ENN Edited Nearest Neighbor

    Lecture 13: Practical Example – ENN

    Lecture 14: NearMiss-2

    Lecture 15: Practical Example – NearMiss

    Chapter 3: Data-based Approaches: Over-Sampling

    Lecture 1: Oversampling

    Lecture 2: Random Oversampling

    Lecture 3: Practical Example – Random Oversampling

    Lecture 4: SMOTE: Synthetic Minority Over-sampling Technique

    Lecture 5: Practical Example – SMOTE

    Lecture 6: B-SMOTE

    Lecture 7: Practical Example – Borderline-SMOTE

    Lecture 8: SMOTE-SL

    Lecture 9: ADASYN – Adaptive Synthetic

    Lecture 10: Practical Example – Adaptive Synthetic

    Chapter 4: Data-based Approaches: Hybrid Techniques

    Lecture 1: Hybrid Techniques

    Lecture 2: Practical Example – SMOTE-ENN

    Lecture 3: Practical Example – SMOTE-Tomek Link

    Chapter 5: Algorithmic approach

    Lecture 1: Algorithmic approach Introduction

    Lecture 2: Cost Sensitive Learning

    Lecture 3: Practical Example – Cost Sensitive Learning

    Lecture 4: One-class Learning

    Lecture 5: Active Learning

    Chapter 6: Evaluation: Performance Measurements & Statistical Test

    Lecture 1: Introduction

    Lecture 2: Confusion Matrix

    Lecture 3: Confusion Matrix Example

    Lecture 4: Accuracy & Error Rate

    Lecture 5: Accuracy & Error Rate Example

    Lecture 6: Precision & Recall

    Lecture 7: Precision & Recall Example

    Lecture 8: F-measure, Adjusted F-measure & Geometric mean

    Lecture 9: F1 Score Example

    Lecture 10: Geometric Mean Score Example

    Lecture 11: ROC (AUC)

    Lecture 12: ROC AUC Score Example

    Lecture 13: Iman-Davenport & Wilcoxon Paired Signed-Rank Tests

    Chapter 7: Extra – General Topics Unbalanced Data Prospective

    Lecture 1: Overfitting & Underfitting

    Lecture 2: Train/Test Split (Unbalanced Data)

    Lecture 3: Validation Set

    Lecture 4: Cross Validation

    Chapter 8: Recommendations & Strategies

    Lecture 1: Final Remarks & Recommended Strategies

    Instructors

  • Imbalanced Learning (Unbalanced Data) The Complete Guide  No.2
    Bassam Almogahed
    Machine Learning Specialist
  • Rating Distribution

  • 1 stars: 3 votes
  • 2 stars: 2 votes
  • 3 stars: 10 votes
  • 4 stars: 19 votes
  • 5 stars: 44 votes
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