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R programming and its application to data analysis and statistical methods

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R Programming for Data Science

Vrije Universiteit Amsterdam - Artificial Intelligence - Experimental Design and Data Analysis:

  • Designing experiments and analyze the results according to the design,
  • Analyzing data using the common ANOVA designs,
  • Analyzing data using linear regression or a generalized linear regression model,
  • Performing basic nonparametric tests,
  • Performing bootstrap and permutation tests.
  • Summarizing data;
  • Basics of probability theory;
  • Estimating means and fractions;
  • Hypothesis testing for one- and two-sample problems about means and proportions;
  • Correlation and linear regression;
  • Contingency tables.

Data Science and Machine Learning:

  • Programming with R
  • Advanced R Features
  • Using R Data Frames to solve complex tasks
  • Use R to handle Excel Files
  • Web scraping with R
  • Connect R to SQL
  • Use ggplot2 for data visualizations
  • Use plotly for interactive visualizations
  • Machine Learning with R, including:
  • Linear Regression
  • K Nearest Neighbors
  • K Means Clustering
  • Decision Trees
  • Random Forests
  • Data Mining Twitter
  • Neural Nets and Deep Learning
  • Support Vectore Machines