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  4. Statistical Classification with Python

At the end of this BOOST program, you will be able to:

  • Describe a dataset through principal component analysis.
  • Select the appropriate classification algorithm.
  • Perform a classification with the k-means algorithm.
  • Perform a hierarchical classification.

Prerequisites

To enroll in this program, you need to meet the following conditions:

  • Language level: a good level of English (for non-native speakers, a CEFR level of B2, an IELTS band score of 6.5, or a TOEFL score of 80 is recommended).
  • Equipment: access to a computer (PC or Mac), equipped with a microphone, a webcam and a good internet connection.
  • Education level: a high school diploma, GCSE or equivalent.
  • Technical prerequisites: fundamentals of probability, statistics, and linear algebra (i.e. matrices multiplication).

Recommended Skills

To ensure success in your BOOST program, we recommend having already mastered the following skills:

  • Clean a dataset.
  • Describe a dataset using a univariate analysis.
  • Describe a dataset using a bivariate analysis.

If you need to get these skills, they can be acquired by taking the BOOST program Exploratory Data Analysis with Python.

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