TopicNeuro

automated discovery

1 Seminar1 ePoster

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SeminarNeuroscienceRecording

On finding what you’re (not) looking for: prospects and challenges for AI-driven discovery

André Curtis Trudel
University of Cincinnati
Oct 10, 2024

Recent high-profile scientific achievements by machine learning (ML) and especially deep learning (DL) systems have reinvigorated interest in ML for automated scientific discovery (eg, Wang et al. 2023). Much of this work is motivated by the thought that DL methods might facilitate the efficient discovery of phenomena, hypotheses, or even models or theories more efficiently than traditional, theory-driven approaches to discovery. This talk considers some of the more specific obstacles to automated, DL-driven discovery in frontier science, focusing on gravitational-wave astrophysics (GWA) as a representative case study. In the first part of the talk, we argue that despite these efforts, prospects for DL-driven discovery in GWA remain uncertain. In the second part, we advocate a shift in focus towards the ways DL can be used to augment or enhance existing discovery methods, and the epistemic virtues and vices associated with these uses. We argue that the primary epistemic virtue of many such uses is to decrease opportunity costs associated with investigating puzzling or anomalous signals, and that the right framework for evaluating these uses comes from philosophical work on pursuitworthiness.

ePosterNeuroscience

Automated discovery of interpretable cognitive programs underlying reward-guided behavior

Pablo Samuel Castro, Nenad Tomasev, Ankit Anand, Navodita Sharma, Alexander Novikov, Kuba Perlin, Noemi Elteto, Siddhant Jain, Kyle Levin, Maria Eckstein, Will Dabney, Nathaniel Daw, Kimberly Stachenfeld, Kevin J Miller

COSYNE 2025

automated discovery coverage

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ePoster1
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