Handling Imbalanced Data Classification Problems

4.8
25 個評分
提供方
Coursera Project Network
在此指導項目中,您將:

Understand the business problem and the dataset to choose best evaluation metric for the problem

Create imbalanced data classification model using SMOTE data resampling technique

Compute to ROC curve and use to adjust probability threshold

Clock2 hours
Intermediate中級
Cloud無需下載
Video分屏視頻
Comment Dots英語(English)
Laptop僅限桌面

In this 2-hour long project-based course on handling imbalanced data classification problems, you will learn to understand the business problem related we are trying to solve and and understand the dataset. You will also learn how to select best evaluation metric for imbalanced datasets and data resampling techniques like undersampling, oversampling and SMOTE before we use them for model building process. At the end of the course you will understand and learn how to implement ROC curve and adjust probability threshold to improve selected evaluation metric of the model. Note: This course works best for learners who are based in the North America region. We’re currently working on providing the same experience in other regions.

您要培養的技能

Predictive ModellingSMOTEData ResamplingImbalanced DataReceiver Operating Characteristic (ROC)

分步進行學習

在與您的工作區一起在分屏中播放的視頻中,您的授課教師將指導您完成每個步驟:

  1. Loading and understanding the dataset

  2. Exploring the dataset

  3. Evaluation metric selection

  4. Creating a baseline model

  5. Resampling techniques for imbalanced datasets

  6. Implementing ROC curve

  7. Adjusting probability threshold

指導項目工作原理

您的工作空間就是瀏覽器中的雲桌面,無需下載

在分屏視頻中,您的授課教師會為您提供分步指導

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