Support Vector Machine Algorithm (In Depth Explanation) | SVM Machine Learning Tutorial| Intellipaat
Автор: Intellipaat
Загружено: 2025-03-06
Просмотров: 6853
🔥Enroll for Intellipaat's Data Science Course: https://intellipaat.com/data-scientis...
#SupportVectorMachine #SVM #MachineLearning #SVMTutorial #SupportVectorMachineAlgorithm #WhatIsSVM #HowSVMWorks #SVMExample #SVMPython #MachineLearningAlgorithms #DataScience #AI #ML #Intellipaat
Are you looking to understand the Support Vector Machine algorithm in depth? In this SVM Machine Learning tutorial, we break down SVM in machine learning with simple explanations, practical examples, and Python implementation. Whether you are a beginner in data science or an experienced professional, this tutorial will help you grasp how Support Vector Machine works and why it is widely used in real-world applications.
What is a Support Vector Machine?
A Support Vector Machine (SVM) is a powerful machine learning algorithm used for classification and regression tasks. It finds an optimal hyperplane that separates different classes in a dataset, making it one of the most effective algorithms for high-dimensional data. In this video, we explain what is SVM in machine learning, how it works, and its practical applications with hands-on coding in SVM Python.
📖 Below are the topics covered in this video on 'Support Vector Machine Algorithm (In Depth Explanation)':
00:00:00 - Introduction to SVM
00:02:01 - Logic Behind SVM
00:23:28 - Non-Linear Separable Dataset
00:33:23 - Prepare a Real-World Dataset
01:00:00 - Apply SVM on the Dataset
📌 FAQs for Support Vector Machine Algorithm (In Depth Explanation)
🔹 What is Support Vector Machine in Machine Learning?
Support Vector Machine (SVM) is a supervised learning algorithm used for classification and regression. It works by finding the optimal hyperplane that best separates data points in different classes.
🔹 How does Support Vector Machine Algorithm work?
The Support Vector Machine Algorithm works by mapping data points into a high-dimensional space and finding a decision boundary that maximizes the margin between different classes. This makes it highly effective for complex classification problems.
🔹 What are the advantages of using SVM in Machine Learning?
The SVM Algorithm is highly effective for small to medium-sized datasets and works well with both linear and non-linear data. It is widely used in applications like text classification, face recognition, and bioinformatics.
🔹 How to implement Support Vector Machine in Python?
Implementing SVM in Python is simple using libraries like Scikit-Learn. You can use the SVC class to train and test the Support Vector Machine Algorithm on real-world datasets.
➡️ About the Course
This online Data Science course, in collaboration with iHUB, IIT Roorkee & Microsoft, will help you to elevate your Data Science career. In this course you will master skills like Python, SQL, Statistics, Machine Learning, AI, Power BI & Generative AI, along with real-time industry-oriented projects.
➡️ Key Features - (Course Features)
✅ 50+ Live interactive sessions across 7 months
✅ 218 Hrs Self-paced Videos
✅ 50+ Industry-relevant Projects & Quizzes
✅ Live Classes from IIT Faculty & Industry Experts
✅ Certification from iHub IIT Roorkee & Microsoft
✅ Career Services by Intellipaat
✅ 2 Days Campus Immersion at iHub IIT Roorkee
✅ 24/7 Support
➡️ What’s Covered in This Program? -
✅ Linux and Python Fundamentals
✅ Data Wrangling with SQL
✅ Python with Data Science
✅ Linear Algebra and Advanced Statistics
✅ Machine Learning and Prediction Algorithms
✅ Supervised and Unsupervised Learning in ML
✅ Deep Learning with TensorFlow
✅ Generative AI & Prompt Engineering
✅ Deploying Machine Learning Models on Cloud
✅ Data Visualization Tool Power BI
📌 Do subscribe to Intellipaat channel & come across more relevant Tech content: https://goo.gl/hhsGWb
▶️ Intellipaat Achievers Channel: / @intellipaatachievers
📚For more information, please write back to us at [email protected] or call us at IND: +91-7022374614 / US : 1-800-216-8930
Доступные форматы для скачивания:
Скачать видео mp4
-
Информация по загрузке: