Results of the Workshop on Algorithmic Affordances in Recommender Interfaces

Authors Aletta Smits, Ester Bartels, Chris Detweiler, Koen van Turnhout
Published in Design for Equality and Justice: INTERACT 2023 IFIP TC 13 Workshops, York, UK, August 28 – September 1, 2023, Revised Selected Papers, Part II
Publication date 2024
Research groups Human Experience & Media Design
Type Lecture

Summary

Algorithmic affordances are defined as user interaction mechanisms that allow users tangible control over AI algorithms, such as recommender systems. Designing such algorithmic affordances, including assessing their impact, is not straightforward and practitioners state that they lack resources to design adequately for interfaces of AI systems. This could be amended by creating a comprehensive pattern library of algorithmic affordances. This library should provide easy access to patterns, supported by live examples and research on their experiential impact and limitations of use. The Algorithmic Affordances in Recommender Interfaces workshop aimed to address key challenges related to building such a pattern library, including pattern identification features, a framework for systematic impact evaluation, and understanding the interaction between algorithmic affordances and their context of use, especially in education or with users with a low algorithmic literacy. Preliminary solutions were proposed for these challenges.

On this publication contributed

Language English
Published in Design for Equality and Justice: INTERACT 2023 IFIP TC 13 Workshops, York, UK, August 28 – September 1, 2023, Revised Selected Papers, Part II
Key words Algorithmic Affordances, Recommender Systems, Pattern Library, Interaction Qualities, Algorithmic Literacy, User Control, Human-AI Interaction
Digital Object Identifier 10.1007/978-3-031-61698-3_15
Page range 165-172

Aletta Smits