Stanford EE104 Introduction to Machine Learning | 2020 | Lecture 15 multiclass classification
Hide All Ads - Subscribe Premium Service Now
Share your inquiries now with community members
Click Here
Sign up Now
Lessons List | 19
Lesson
Comments
Related Courses in Computer Science
Course Description
Even though there are many different skills to learn in machine learning it is possible for you to self-teach yourself machine learning. There are many courses available now that will take you from having no knowledge of machine learning to being able to understand and implement the ml algorithms yourself.What are the types of machine learning?
First, we will take a closer look at three main types of learning problems in machine learning: supervised, unsupervised, and reinforcement learning.
Supervised Learning. ...
Unsupervised Learning. ...
Reinforcement Learning.What is the purpose of machine learning?
Machine learning is an application of artificial intelligence (AI) that provides systems the ability to automatically learn and improve from experience without being explicitly programmed. Machine learning focuses on the development of computer programs that can access data and use it to learn for themselves.Is machine learning hard to learn?
There is no doubt the science of advancing machine learning algorithms through research is difficult. It requires creativity, experimentation and tenacity. Machine learning remains a hard problem when implementing existing algorithms and models to work well for your new application.How long will it take to learn machine learning?
Machine Learning is very vast and comprises of a lot of things. Hence, it will take approximately 6 months in total to learn ML If you spend at least 5-6 hours each day. If you have good mathematical and analytical skills 6 months will be sufficient for you.What is the syllabus of machine learning?
Computational learning theory, mistake bound analysis, sample complexity analysis, VC dimension, Occam learning, accuracy and confidence boosting. Dimensionality reduction, feature selection and visualization. Clustering, mixture models, k-means clustering, hierarchical clustering, distributional clustering.
Trends
Graphic design tools for beginners
Microsoft Excel
Bioinformatics basics
Artificial intelligence essentials
Cyber Security for Beginners | Edureka
Computer science careers
Build a profitable trading
Essential english phrasal verbs
Python for beginners
Excel skills for math and science
Learning English Speaking
Making money with apps
Build a tic tac Toe app in Xcode
YouTube channel setup
Marketing basics for beginners
Content marketing for beginners
Python programming language
Human Resources Management
Ubuntu linux
Microsoft Word
Recent
Bioinformatics basics
Bioinformatics databases
Vitamin A to Z tablets
Best zoology books
Best cream for piles pain
Laser surgery for piles
Best cream for piles
Anal fissure treatment
Best antibiotics for diseases
Antibodies structure
Macrophage structure
Drosophila genetics
Diagnostic tests
Bioinformatics
Genetics
Gene therapy
Kidney structure
DNA replication and types
Bacterial cell structure
Parasite structure
You must have an account within the platform in order to participate in the discussion and comment. Register now for freeClick here