This course provides an introduction to statistical predictive modelling and its applications. You will learn linear and logistic regression, as well as naive Bayes, and how to apply them to real-world scenarios. Through online learning and skill training, you will gain the knowledge and skills to use these techniques to predict outcomes and make decisions.
Introduction To R Software
1.5
Swayam42 learners
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This course introduces students to the R software, a free software used for mathematical and statistical manipulations. It covers the basics of the R programming language and its built-in functions. Lectures and online learning will help students gain the skills needed to use the software for data analysis, simulations, and programming. The course is intended for UG students of Science and Engineering, students of humanities with basic mathematical background, and working professionals in analytics. A mathematics background up to class 12 is recommended. All industries involved in mathematical and statistical computations, programming, and simulations will benefit from this course.
ANOVA and Experimental Design
1.5
Coursera0 learners
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This course introduces students to the analysis of variance (ANOVA) and experimental design. Students will learn about linear regression models, randomization, blocking, factorial design, and causality. The course is part of the Master of Science in Data Science (MS-DS) degree offered on the Coursera platform. This interdisciplinary degree is ideal for individuals with a broad range of undergraduate education and/or professional experience in computer science, information science, mathematics, and statistics.
Data Science: Inference and Modeling
4.0
Edx1,009 learners
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This course will teach you the fundamentals of data science, including statistical inference and modeling, through a motivating case study on election forecasting. You will learn how to use R to define estimates and margins of errors, understand confidence intervals and p-values, and apply Bayesian modeling. At the end of the course, you will be able to recreate a simplified version of an election forecast model and apply it to the 2016 election.
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