Bayesian methods give us an alternative way to think about probability, with applications in business decision-making.
While traditional statistics requires us to observe a meaningful sample to inform decisions, Bayesian methods allow a “best guess” approach based on available information. These approaches also allow us to include other information such as beliefs and outside knowledge.
This course will take you on a step-by-step journey, from traditional statistical approaches, through conditional probability and Bayes Theorem. These concepts will form a foundation to help you understand two basic Machine-Learning examples introduced in the course. In the end, you’ll produce a real-world classification model using Python.

Upon completing this course, you will be able to:

 
         
         
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                  Level 5
1h 27min
100% online and self-paced
Field of Study: Finance
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