Recommender Systems: Evaluation and Metrics
About this Course
In this course you will learn how to evaluate recommender systems. You will gain familiarity with several families of metrics, including ones to measure prediction accuracy, rank accuracy, decision-support, and other factors such as diversity, product coverage, and serendipity. You will learn how different metrics relate to different user goals and business goals. You will also learn how to rigorously conduct offline evaluations (i.e., how to prepare and sample data, and how to aggregate results). And you will learn about online (experimental) evaluation. At the completion of this course you will have the tools you need to compare different recommender system alternatives for a wide variety of uses.Created by: University of Minnesota

Related Online Courses
This course provides an applied introduction to bivariate and multiple regression, focusing on how generative AI can be used as a partner to streamline analysis and enhance prediction accuracy.... more
In this course, you will learn about Model-Driven Programmability and its use of YANG data models to provide a standardized way to access network devices and their capabilities. You will be... more
Welcome to the Macroeconomics course! This course is designed to provide you with a deep understanding of what an economy is, how it operates, and the factors that sustain and influence economic... more
This is a self-paced lab that takes place in the Google Cloud console. In this lab, you use intelligent smart canvas features in Google Docs like smart chips and building blocks to assign tasks,... more
In this course, we dive into the topic of child development. You will learn that child development is complex and is influenced by a surprisingly rich number of factors at many different levels of... more