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إنشاء حساب
Computer Science
/
Supervised Learning
Supervised Learning Essential Training
بواسطة:
LinkedIn Learning
Overview
This mid-level course takes you through how to create one of the most common types of machine learning: supervised learning models.
Syllabus
Introduction
Supervised machine learning and the technology boom
Using the exercise files
What you should know
1. Supervised Learning with Python
What is supervised learning?
Python supervised learning packages
Predicting with supervised learning
2. Regression Modeling
Defining logistic and linear regression
Steps to prepare data for modeling
Checking your dataset for assumptions
Creating a linear regression model
Creating a logistic regression model
Evaluating regression model predictions
3. Decision Trees
Identify common decision trees
Splitting data and limiting decision tree depth
How to build a decision tree
Creating your first decision trees
Analyzing decision tree performance
Exploring how ensemble methods create strong learners
4. K-Nearest Neighbors
Discovering your k-nearest neighbors
What's the big deal about k
How to assemble a KNN model
Building your own KNN
Deciphering KNN model metrics
Searching for the best model
5. Neural Networks
Biological vs. artificial neural networks
Preprocessing data for modeling
How neural networks find patterns in data
Assembling your neural networks
Comparing networks and selecting final models
Conclusion
Ethical overview
How can I keep developing my skills in supervised learning?
Read more
Taught by
Ayodele Odubela
أظهر المزيد
Computer Science
/
Supervised Learning
الذهاب الي الدورة
Supervised Learning Essential Training
بواسطة:
LinkedIn Learning
LinkedIn Learning
مدفوعة
الإنجليزية
متاح شهادة
متاح في أي وقت
الجميع
N/A