Where Does the Understanding Come From When Explaining Automated Decision-making Systems?

Published on ● Video Link: https://www.youtube.com/watch?v=9z-9yngCcTA



Duration: 16:45
286 views
7


Kacper Sokol (RMIT University)
https://simons.berkeley.edu/talks/tbd-453
AI and Humanity

A myriad of approaches exists to help us peer inside automated decision-making systems based on artificial intelligence and machine learning algorithms. These tools and their insights, however, are socio-technological constructs themselves, hence subject to human biases and preferences as well as technical limitations. Under these conditions, how can we ensure that explanations are meaningful and fulfil their role by leading to understanding? In this talk I will demonstrate how different configurations of an explainability algorithm may impact the resulting insights and show the importance of the strategy employed to present them to the user, arguing in favour of a clear separation between the technical and social aspects of such tools.




Other Videos By Simons Institute for the Theory of Computing


2022-07-22Breaking the Winner's Curse in Mendelian Randomization: Rerandomized Inverse Variance...
2022-07-22Computational Challenges in a Densely Sequenced Tree of Life
2022-07-16On the Concept of History (in Foundation Models)
2022-07-16Race Beyond Perception: Analysing Race in Post-visual Regimes
2022-07-15Designing Human-Aware Learning Agents: Understanding the Relationship between Interactions...
2022-07-15Reimagining the machine learning life cycle in education
2022-07-15Aligning Robot Representations with Humans
2022-07-15The Future of Good Decisions’: a research paradigm for quality in automated decision-making
2022-07-15The Flaws of Policies Requiring Human Oversight of Government Algorithms
2022-07-15Assistive Teaching of Motor Control Tasks to Humans
2022-07-15Where Does the Understanding Come From When Explaining Automated Decision-making Systems?
2022-07-14From Optimizing Engagement to Measuring Value
2022-07-14Intelligent Technology and the Attention Economy: A Buddhist Perspective on the Risks of...
2022-07-14Design and Governance of Human-Facing Algorithms
2022-07-14The Unintended Consequences of Repurposed AI
2022-07-14Large Language Models as a Cultural Technology
2022-07-14Ironies of Anachronism: On the Afterwardsness and the Necessity of the Human-in-the-Loop
2022-07-14Large Language Models: Speculating on Second Order Effects
2022-07-14Integrated Information Theory (IIT) and Nuclear Command and Control: Whither Sovereignty?
2022-07-14Authorship, Technicity, and Contingency
2022-07-13AI & Humanity on the Ground: Embedding AI into Critical Clinical Decision Making



Tags:
Simons Institute
theoretical computer science
UC Berkeley
Computer Science
Theory of Computation
Theory of Computing
AI and Humanity
Kacper Sokol