Statistical experiment design and analytics are at the heart of data science. In this course you will design statistical experiments and analyze the results using modern methods. You will also explore the common pitfalls in interpreting statistical arguments, especially those associated with big data. Collectively, this course will help you internalize a core set of practical and effective machine learning methods and concepts, and apply them to solve some real world problems.
Practical Predictive Analytics: Models and Methods
This course is part of Data Science at Scale Specialization
Instructor: Bill Howe
Sponsored by Pontificia Universidad Católica del Perú
37,876 already enrolled
(320 reviews)
Skills you'll gain
- Statistical Modeling
- Data Science
- Advanced Analytics
- Applied Machine Learning
- Statistical Methods
- Data Analysis
- Analytics
- Machine Learning Methods
- Machine Learning
- Statistical Machine Learning
- Supervised Learning
- Predictive Analytics
- Machine Learning Algorithms
- Statistics
- Predictive Modeling
- Applied Mathematics
- Business Analytics
- Statistical Inference
- Statistical Analysis
- Unsupervised Learning
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There are 4 modules in this course
Learn the basics of statistical inference, comparing classical methods with resampling methods that allow you to use a simple program to make a rigorous statistical argument. Motivate your study with current topics at the foundations of science: publication bias and reproducibility.
What's included
28 videos
Follow a tour through the important methods, algorithms, and techniques in machine learning. You will learn how these methods build upon each other and can be combined into practical algorithms that perform well on a variety of tasks. Learn how to evaluate machine learning methods and the pitfalls to avoid.
What's included
26 videos1 reading1 assignment
You will learn how to optimize a cost function using gradient descent, including popular variants that use randomization and parallelization to improve performance. You will gain an intuition for popular methods used in practice and see how similar they are fundamentally.
What's included
11 videos
A brief tour of selected unsupervised learning methods and an opportunity to apply techniques in practice on a real world problem.
What's included
4 videos1 peer review
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320 reviews
- 5 stars
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- 4 stars
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- 3 stars
9.68%
- 2 stars
5.31%
- 1 star
5.62%
Showing 3 of 320
Reviewed on Aug 6, 2019
Too little people participated and long peer review time.
Reviewed on Jun 7, 2017
I think the amount of course work to lectures was more appropriate than the first segment. I enjoyed the exercises and felt that they mixed the correct amount of theory and applicaiton.
Reviewed on Jun 5, 2017
Excellent Lectures. Since the course is several years old the organization of some of the assignments needs updating. That's the only reason I gave it 4 instead of 5 stars.
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