AI & Society: Fixing Algorithmic Decision Making

Vrije Universiteit Amsterdam

Course Description

  • Course Name

    AI & Society: Fixing Algorithmic Decision Making

  • Host University

    Vrije Universiteit Amsterdam

  • Location

    Amsterdam, The Netherlands

  • Area of Study

    Computer Science

  • Language Level

    Taught In English

  • Prerequisites

    ISA offers course level recommendations in an effort to facilitate the determination of course levels by credential evaluators. We advise each institution to have their own credentials evaluator make the final decision regarding course levels.

    Hours & Credits

  • ECTS Credits

    6
  • Recommended U.S. Semester Credits
    3
  • Recommended U.S. Quarter Units
    4
  • Overview

    Course Objective
    Upon completion of this course, the student is able to ...
    • understand the basics of how algorithmic and AI decision making works;
    • recognise, from many theoretical perspectives (e.g. political, sociological, ethical), the advantages and the problems solved by algorithmic/AI solutions;
    • critically think, from many theoretical perspectives, about the downsides of algorithmic/AI solutions;
    • creatively think about ways of addressing existing downsides;
    • design and implement a solution to a societal problem emerged from an algorithmic/AI solution;
    • work and cooperate with people from other disciplines;
    • present academic work in English.

    Course Content
    Algorithms are playing an increasingly important role in our society and the relationships between people, organisations, and governments and politics. The explosion of information and ease of digital transactions means that consumers, marketeers, and politicians rely on algorithms to find the most relevant product, customer, or voter. It also means that citizens more often interact with digital platforms when talking to their peers, consuming the news, and taking part in politics. These developments have given a great boost to our economy and made everyday life vastly easier, but they also come with downsides. Our privacy is being eroded by data mining, decisions about limiting freedom of speech online are becoming less transparent, inequality and stereotypes are exacerbated by algorithmic biases and political discourse is increasingly polarised by trolls, fake news, and selective exposure. This course aims to help students understand algorithms and their biases and impact on society from a multidisciplinary perspective.

    Teaching Methods
    The course has a theoretical and an applied component. A set of lectures spread throughout the period will help students build a theoretical understanding of algorithms, from a technical, organisational, societal, and individual perspective; focusing on the promises but also the pitfalls of algorithmic decision making. In addition, in small group projects, students will work on addressing one of the discussed pitfalls and fixing the AI. For this active learning component, we will partner with organisations that use AI and algorithmic decision making, such as media organisations using news recommender systems, large social media companies, and a consultancy firm specialised in online marketing. We'll meet three times a week. During the first meeting we will have lectures that will follow the flipped-classroom model. Students will be assigned to read required literature and post questions on Canvas about the literature ahead of the meeting. Then, during the meeting the students and the instructor/s will discuss the key takeaways form the readings in more detail. In this way, more teaching time is available for answering questions, deepening the knowledge and testing the learning outcomes. A different team/s will present one of the assigned readings, and the remaining groups will post questions about the readings on Canvas ahead of time. During the second meeting of the week we will use "Applied learning". "Applied learning" is based on the idea that students can learn from connecting what they read and discuss in the classroom, with the outside world. These meetings are organised around a series of guest lectures with outside speakers who are practitioners that use AI technologies in their day-to-day life in order to solve problems in different industries. Then, students use the insights they learn from these real-world experiences to identify a problem generated by the application of an AI solution and then design a solution that could be implemented in the real world. They get to ask questions to these practitioners. The goal of these lectures is to inform the kinds of AI-emerged challenges out there, and potential solutions to these challenges, and so to better prepare students for their final assignment.

    Finally, during the last meeting of the week you will work in groups on your final assignment. The instructor will help the groups clarifying questions and providing feedback on their progress. You will work in a randomly formed team of about five students in the final assignment, as well as during the work group meetings. To enhance cooperation, by the end of the course the students are asked to evaluate their team members. Low evaluations by your team members can lead to lower grades for the assignment.

    Type of Assessment
    1. Class participation, group grade (20%)
    • 10% literature presentation: at the beginning of the first lecture of each week, each group presents once throughout the course.
    • 10% questions posted on Canvas
    2. Mid-term Exam, individual grade (40%)
    3. Final Assignment, group grade (40%)
    • 20% Assignment Part I: Problem definition: Students work on identifying a specific problem that emerges in a specific setting from implementing an algorithmic/AI solution.
    • 20% Assignment Part II: Designing a solution: Students work on designing a solution and implementation plan to tackle the defined problem.
    The grades from each part (Participation, Mid-term Exam, and Final Assignment) need to be sufficient (55% or above) in order to pass the course.

Course Disclaimer

Courses and course hours of instruction are subject to change.

Some courses may require additional fees.

X

This site uses cookies to store information on your computer. Some are essential to make our site work; others help us improve the user experience. By using the site, you consent to the placement of these cookies.

Read our Privacy Policy to learn more.

Confirm