Are you interested in predicting future outcomes using your data? This course helps you do just that! Machine learning is the process of developing, testing, and applying predictive algorithms to achieve this goal. Make sure to familiarize yourself with course 3 of this specialization before diving into these machine learning concepts. Building on Course 3, which introduces students to integral supervised machine learning concepts, this course will provide an overview of many additional concepts, techniques, and algorithms in machine learning, from basic classification to decision trees and clustering. By completing this course, you will learn how to apply, test, and interpret machine learning algorithms as alternative methods for addressing your research questions.
This course is part of the Data Analysis and Interpretation Specialization
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About this Course
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Try Coursera for BusinessSkills you will gain
- Data Analysis
- Python Programming
- Machine Learning
- Exploratory Data Analysis
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Syllabus - What you will learn from this course
Decision Trees
Random Forests
Lasso Regression
K-Means Cluster Analysis
Reviews
- 5 stars57.14%
- 4 stars25.39%
- 3 stars7.93%
- 2 stars4.12%
- 1 star5.39%
TOP REVIEWS FROM MACHINE LEARNING FOR DATA ANALYSIS
I would like to have an opportunity to contact my reviews.
Clear and explanatory approach to the object. Instructors have great teaching transmissibility.
There is some problems because of changes both in SAS and Python after creating the course
More Implementation oriented and less math
also contains distracting background videos when explaining important concepts
About the Data Analysis and Interpretation Specialization

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