Download Machine Learning: Kneighborsclassifier And Math Behind It. Are you looking for this valuable stuff to download? If so then you are in the correct place. On our website, we share resources for, Graphics designers, Motion designers, Game developers, cinematographers, Forex Traders, Programmers, Web developers, 3D artists, photographers, Music Producers and etc.
With one single click, On our website, you will find many premium assets like All kinds of Courses, Photoshop Stuff, Lightroom Preset, Photoshop Actions, Brushes & Gradient, Videohive After Effect Templates, Fonts, Luts, Sounds, 3D models, Plugins, and much more. FreshersGold.com is a free graphics and all kinds of courses content provider website that helps beginner grow their careers as well as freelancers, Motion designers, cinematographers, Forex Traders, photographers, who can’t afford high-cost courses, and other resources.
File Name: | Machine Learning: Kneighborsclassifier And Math Behind It |
Content Source: | N/A |
Genre / Category: | Other Tutorials |
File Size : | 496 MB |
Publisher: | N/A |
Updated and Published: | February 01, 2024 |
In this comprehensive Udemy course, you will dive into the fascinating world of machine learning and master the K Nearest Neighbors (KNN) classifier algorithm. Machine learning has revolutionized numerous industries, from healthcare to finance, by enabling computers to learn patterns and make intelligent predictions. KNN, one of the fundamental algorithms in the field, is widely used for classification tasks. This course is designed to provide you with a solid foundation in both the practical implementation of KNN using Python and the underlying mathematical concepts behind it. Whether you’re a beginner or an experienced programmer looking to expand your machine learning skills, this course will equip you with the knowledge and tools needed to excel.Throughout the course, you will:1. Understand the principles and theory behind the KNN algorithm, including its assumptions and limitations.2. Learn how to preprocess and explore datasets, preparing them for KNN classification.3. Master the implementation of KNN using Python’s scikit-learn library, leveraging its powerful tools for data manipulation, model training, and evaluation.4. Discover the importance of hyperparameter tuning and how to optimize KNN models using GridSearchCV and cross-validation techniques.5. Gain hands-on experience by working on a real-world project: classifying the famous Iris flower dataset.6. Visualize and interpret the results of your KNN models using classification reports and other insightful graphical representations.7. Explore the math behind KNN, including distance metrics, decision boundaries, and the concept of k-nearest neighbors.8. Grasp the intuition behind feature importance and why it is crucial for certain machine learning algorithms (excluding KNN).By the end of this course, you will have a deep understanding of the K Nearest Neighbors algorithm, its application in classification tasks, and the mathematical principles that underpin its computations. Armed with this knowledge, you will be ready to tackle real-world machine learning problems and make informed decisions about when and how to use KNN effectively.Enroll now and embark on your journey into the world of machine learning with KNeighborsClassifier and the math behind it. Let’s unlock the potential of data and make accurate predictions together!