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Machine Learning Statistics for Beginners

Track :

Computer Science

Lessons no : 7

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What will you learn in this course?
  • Understand fundamental statistical concepts like probability, hypothesis testing, and regression analysis for machine learning applications
  • Apply statistical methods to evaluate and improve machine learning models in real-world scenarios
  • Interpret statistical data to make informed decisions in machine learning model development and deployment
  • Utilize probability theory to assess uncertainty and risk in machine learning predictions
  • Perform hypothesis testing to validate model assumptions and enhance model accuracy
  • Analyze data using statistical techniques to optimize machine learning algorithms and improve predictive performance

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Lessons | 7


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Noor Khan_04

Excellent
2025-04-14

Mohammed Muharis

It's very useful for me
2025-04-10

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Machine Learning Statistics course, in this course we will learn about the essential statistical concepts underpinning machine learning algorithms. Explore probability theory, hypothesis testing, regression analysis, and more. Gain practical insights into how statistical methods drive the development and evaluation of machine learning models, enabling informed decision-making and robust predictions in diverse applications.