- Level Professional
- المدة 20 ساعات hours
- الطبع بواسطة CertNexus
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Offered by
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In most cases, the ultimate goal of a machine learning project is to produce a model. Models make decisions, predictions—anything that can help the business understand itself, its customers, and its environment better than a human could. Models are constructed using algorithms, and in the world of machine learning, there are many different algorithms to choose from. You need to know how to select the best algorithm for a given job, and how to use that algorithm to produce a working model that provides value to the business. This third course within the Certified Artificial Intelligence Practitioner (CAIP) professional certificate introduces you to some of the major machine learning algorithms that are used to solve the two most common supervised problems: regression and classification, and one of the most common unsupervised problems: clustering. You'll build multiple models to address each of these problems using the machine learning workflow you learned about in the previous course. Ultimately, this course begins a technical exploration of the various machine learning algorithms and how they can be used to build problem-solving models.الوحدات
Overview
2
Videos
- Course Intro: Build Regression, Classification, and Clustering Models
- Build Linear Regression Models Using Linear Algebra Module Introduction
2
Readings
- Overview
- Get help and meet other learners. Join your Community!
Linear Algebra and Linear Regression
7
Videos
- Linear Regression
- Linear Equation
- Straight Line Fit to Data Example
- Linear Regression in Machine Learning
- Matrices in Linear Regression
- Normal Equation
- Advanced Linear Models
Evaluate Linear Regression Models
1
Labs
- Building a Regression Model Using Linear Algebra
4
Videos
- Cost Function
- MSE and MAE
- Coefficient of Determination
- Normal Equation Shortcomings
1
Readings
- Guidelines for Building a Regression Model Using Linear Algebra
Evaluate What You've Learned
1
Assignment
- Building Linear Regression Models Using Linear Algebra
1
Discussions
- Reflect on What You've Learned
Overview
1
Videos
- Build Regularized and Iterative Linear Regression Models Module Introduction
1
Readings
- Overview
Build Regularized Regression Models
1
Labs
- Building a Regularized Linear Regression Model
4
Videos
- Regularization Techniques
- Ridge Regression
- Lasso Regression
- Elastic Net Regression
1
Readings
- Guidelines for Building a Regularized Linear Regression Model
Build Iterative Regression Models
1
Labs
- Building an Iterative Linear Regression Model
3
Videos
- Iterative Models
- Gradient Descent
- Gradient Descent Techniques
1
Readings
- Guidelines for Building an Iterative Linear Regression Model
Evaluate What You've Learned
1
Assignment
- Building Regularized and Iterative Linear Regression Models
1
Discussions
- Reflect on What You've Learned
Overview
1
Videos
- Train Classification Models Module Introduction
1
Readings
- Overview
Train Binary Classification Models
1
Labs
- Training Binary Classification Models
6
Videos
- Linear Regression Shortcomings
- Logistic Regression
- Decision Boundary
- Cost Function for Logistic Regression
- k-Nearest Neighbor (k-NN)
- Logistic Regression vs. k-NN
1
Readings
- Guidelines for Training Binary Classification Models
Train Multi-Class Classification Models
1
Labs
- Training a Multi-Class Classification Model
2
Videos
- Multi-Label and Multi-Class Classification
- Multinomial Logistic Regression
1
Readings
- Guidelines for Training Multi-Class Classification Models
Evaluate What You've Learned
1
Assignment
- Training Classification Models
1
Discussions
- Reflect on What You've Learned
Overview
1
Videos
- Evaluate and Tune Classification Models Module Introduction
1
Readings
- Overview
Evaluate Classification Models
1
Labs
- Evaluating a Classification Model
10
Videos
- Model Performance
- Confusion Matrix
- Classifier Performance Measurement
- Accuracy
- Precision
- Recall
- F₁ Score
- Receiver Operating Characteristic (ROC) Curve
- Thresholds and AUC
- Precision–Recall Curve (PRC)
1
Readings
- Guidelines for Evaluating Classification Models
Tune Classification Models
1
Labs
- Tuning a Classification Model
5
Videos
- Hyperparameter Optimization
- Grid Search
- Randomized Search
- Bayesian Optimization
- Genetic Algorithms
1
Readings
- Guidelines for Tuning Classification Models
Evaluate What You've Learned
1
Assignment
- Evaluating and Tuning Classification Models
1
Discussions
- Reflect on What You've Learned
Overview
1
Videos
- Build Clustering Models Module Introduction
1
Readings
- Overview
Build k-Means Clustering Models
1
Labs
- Building a k-Means Clustering Model
5
Videos
- k-Means Clustering
- Global vs. Local Optimization
- Elbow Point
- Cluster Sum of Squares
- Silhouette Analysis
2
Readings
- Additional Cluster Analysis Methods
- Guidelines for Building a k-Means Clustering Model
Build Hierarchical Clustering Models
1
Labs
- Building a Hierarchical Clustering Model
3
Videos
- k-Means Clustering Shortcomings
- Hierarchical Clustering
- Dendrogram
1
Readings
- Guidelines for Building a Hierarchical Clustering Model
Evaluate What You've Learned
1
Assignment
- Building Clustering Models
1
Discussions
- Reflect on What You've Learned
Project
1
Peer Review
- Building a Regression, Classification, or Clustering Model
1
Labs
- Course 3 Project
Auto Summary
Dive into the world of machine learning with "Build Regression, Classification, and Clustering Models," a professional course in Data Science & AI led by Coursera. Over 1200 minutes, master key algorithms for regression, classification, and clustering to create impactful models. Ideal for professionals, this course is part of the Certified Artificial Intelligence Practitioner certificate and offers flexible subscription options.

Anastas Stoyanovsky