| Key info |
| Offered by | Johns Hopkins University |
| Description | One of the most common tasks performed by data scientists and data analysts are prediction and machine learning. This course will cover the basic components of building and applying prediction functions with an emphasis on practical applications. The course will provide basic grounding in concepts such as training and tests sets, overfitting, and error rates. The course will also introduce a range of model based and algorithmic machine learning methods including regression, classification trees, Naive Bayes, and random forests. The course will cover the complete process of building prediction functions including data collection, feature creation, algorithms, and evaluation.
Learning objectives
- Perform regression analysis, least squares and inference using regression models.
- Build and apply prediction functions
- Develop public data products
- Understand the process of drawing conclusions about populations or scientific truths from data
Software: R
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| Accredited by | Coursera |
| URL |
https://www.coursera.org/specializations/data-science-statistics-machine-learning
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