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Causality: Dialogues between Machine Learning and Psychology
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Room: El Veril
The past decades have seen a series of cross-disciplinary advances in causal discovery and causal inference. In particular, recently a number of long-standing problems, such as how to learn causal information from observations and how causal modeling and transfer learning benefit each other, have received much attention in philosophy, machine learning, and psychology. However, researchers may not be aware of the methodologies used and developments achieved in other fields. This workshop aims to provide a platform for people who study causality in machine learning, psychology, and neuroscience to share the state-of-the-art and perspectives in their respective disciplines, get inspiration from others, and foster interdisciplinary collaboration in the study of fundamental problems in causality.Speakers:
- Bernhard Schölkopf
- David Danks
- Tom Claassen
- Michel Besserve
- Fei Sha
- Chris Lucas
- Moritz Grosse-Wentrup
- Björn Meder
09:30-10:00 The principle of independent mechanisms
10:00-10:30 Causal discovery in psychometric data sets: the search for aggression and conduct disorders
10:30-11:00 Human causal learning via local inferences
11:30-12:00 Discovering and exploiting structure in the face of changing tasks
12:00-12:30 Do we really have a shot at solving zero-shot learning for object recognition?
12:30-13:00 Distinguishing between the neural correlates and the neural basis of cognition
18:00-18:30 Diagnostic causal reasoning with verbal uncertainty terms
18:30-19:00 Causal inference from a group invariance perspective