Support Vector Machines in Python from Start to Finish
Offered By: StatQuest with Josh Starmer via YouTube
Course Description
Overview
Learn to implement Support Vector Machines (SVMs) in Python from start to finish in this comprehensive 45-minute webinar. Explore essential steps including importing modules and data, handling missing data, downsampling, formatting data with one-hot encoding and scaling, building a preliminary SVM, optimizing parameters using cross-validation, and constructing the final SVM. Gain practical insights into machine learning techniques and enhance your data science skills with hands-on examples and explanations.
Syllabus
This webinar was recorded 20200609 at am New York Time
Awesome song and introduction
Import Modules
Import Data
Missing Data Part 1: Identifying
Missing Data Part 2: Dealing with it
Downsampling the data
Format Data Part 1: X and y
Format Data Part 2: One-Hot Encoding
Format Data Part 3: Centering and Scaling
Build a Preliminary SVM
Optimize Parameters with Cross Validation GridSearchCV
Build and Draw Final SVM
Taught by
StatQuest with Josh Starmer
Related Courses
Genomic Data Science and Clustering (Bioinformatics V)University of California, San Diego via Coursera 用Python玩转数据 Data Processing Using Python
Nanjing University via Coursera Data Mining Project
University of Illinois at Urbana-Champaign via Coursera Advanced Business Analytics Capstone
University of Colorado Boulder via Coursera Data Mining: Theories and Algorithms for Tackling Big Data | 数据挖掘:理论与算法
Tsinghua University via edX