Comprehensive Guide to Machine Learning Models π
Learn and understand all major machine learning algorithms clearly in this detailed explanation.

AI For Beginners
360.4K views β’ Feb 2, 2025

About this video
#ml #machinelearning #ai #artificialintelligence #datascience #regression #classification
π₯ In this video, we explain every major Machine Learning algorithm.
Regression models: Linear Regression, Polynomial Regression.
Classification models: Logistic Regression, Naive Bayes.
Models used for both: Decision Tree, Random Forest, Support Vector Machines, K-Nearest Neighbors.
Ensembles: Bagging, Boosting, Voting and Stacking.
Deep Learning: Fully Connected (Dense) Neural Networks.
Unsupervised learning: K-Means clustering and Principal Component Analysis (PCA) dimensionality reduction technique.
Heads up! You can't learn Machine Learning in just 22 minutes, a day, a week or even in a month! It needs a continuous dedication, patience, and consistent effort. Iβm here to guide you every step of the way with clear explanations, tips, and resources to make your learning experience easier! Don't worry if there were concepts that were hard to understand!
Keep at it, and youβll get there. Subscribe and like the video if you found it helpful!
Starting with this video, weβll be posting a quick quiz on our Instagram page to help you review the material and test your understanding! Itβs a great way to reinforce what youβve learned and see how well youβre understanding the concepts. Be sure to follow us on Instagram, keep track of your progress and challenge yourself!
Instagram:
https://www.instagram.com/easyaiforall/
π Key points covered:
0:00 - Introduction.
0:22 - Linear Regression.
2:00 - Logistic Regression.
3:12 - Naive Bayes.
4:15 - Decision Trees.
6:25 - Random Forests.
7:55 - Support Vector Machines.
10:05 - K-Nearest Neighbors.
12:23 - Ensembles.
12:49 - Ensembles (Bagging).
13:18 - Ensembles (Boosting).
13:55 - Ensembles (Voting).
14:48 - Ensembles (Stacking).
15:55 - Neural Networks.
18:59 - K-Means.
20:58 - Principal Component Analysis.
22:05 - Subscribe to us!
π Don't forget to like, subscribe, and hit the bell icon to stay updated with our latest videos!
π€ Note that we use synthetic generations, such as AI-generated images and voices, to enhance the appeal and engagement of our content.
π If you have any questions or topics you want us to cover, leave a comment below. Additionally, share with your thoughts about the content, how do you think we can make them better? Thanks for watching!
π₯ In this video, we explain every major Machine Learning algorithm.
Regression models: Linear Regression, Polynomial Regression.
Classification models: Logistic Regression, Naive Bayes.
Models used for both: Decision Tree, Random Forest, Support Vector Machines, K-Nearest Neighbors.
Ensembles: Bagging, Boosting, Voting and Stacking.
Deep Learning: Fully Connected (Dense) Neural Networks.
Unsupervised learning: K-Means clustering and Principal Component Analysis (PCA) dimensionality reduction technique.
Heads up! You can't learn Machine Learning in just 22 minutes, a day, a week or even in a month! It needs a continuous dedication, patience, and consistent effort. Iβm here to guide you every step of the way with clear explanations, tips, and resources to make your learning experience easier! Don't worry if there were concepts that were hard to understand!
Keep at it, and youβll get there. Subscribe and like the video if you found it helpful!
Starting with this video, weβll be posting a quick quiz on our Instagram page to help you review the material and test your understanding! Itβs a great way to reinforce what youβve learned and see how well youβre understanding the concepts. Be sure to follow us on Instagram, keep track of your progress and challenge yourself!
Instagram:
https://www.instagram.com/easyaiforall/
π Key points covered:
0:00 - Introduction.
0:22 - Linear Regression.
2:00 - Logistic Regression.
3:12 - Naive Bayes.
4:15 - Decision Trees.
6:25 - Random Forests.
7:55 - Support Vector Machines.
10:05 - K-Nearest Neighbors.
12:23 - Ensembles.
12:49 - Ensembles (Bagging).
13:18 - Ensembles (Boosting).
13:55 - Ensembles (Voting).
14:48 - Ensembles (Stacking).
15:55 - Neural Networks.
18:59 - K-Means.
20:58 - Principal Component Analysis.
22:05 - Subscribe to us!
π Don't forget to like, subscribe, and hit the bell icon to stay updated with our latest videos!
π€ Note that we use synthetic generations, such as AI-generated images and voices, to enhance the appeal and engagement of our content.
π If you have any questions or topics you want us to cover, leave a comment below. Additionally, share with your thoughts about the content, how do you think we can make them better? Thanks for watching!
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Video Information
Views
360.4K
Likes
12.1K
Duration
22:23
Published
Feb 2, 2025
User Reviews
4.8
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