Scientific Discovery
Scientific discovery is increasingly being automated through the development of AI agents capable of performing the entire scientific workflow, from hypothesis generation to experimental design and analysis. Current research focuses on developing and evaluating these agents using benchmarks and novel algorithms, including large language models (LLMs), neural networks (e.g., recurrent convolutional neural networks, variational autoencoders), and evolutionary computation methods, often applied to specific scientific domains like materials science and biological research. This automation promises to accelerate the pace of scientific discovery across various fields by handling large datasets, complex simulations, and the synthesis of information from diverse sources, ultimately leading to more efficient and impactful research.
Papers
A Transformer Model for Symbolic Regression towards Scientific Discovery
Florian Lalande, Yoshitomo Matsubara, Naoya Chiba, Tatsunori Taniai, Ryo Igarashi, Yoshitaka Ushiku
DiscoBAX: Discovery of Optimal Intervention Sets in Genomic Experiment Design
Clare Lyle, Arash Mehrjou, Pascal Notin, Andrew Jesson, Stefan Bauer, Yarin Gal, Patrick Schwab
Controllable Generation of Artificial Speaker Embeddings through Discovery of Principal Directions
Florian Lux, Pascal Tilli, Sarina Meyer, Ngoc Thang Vu
Fast Scalable and Accurate Discovery of DAGs Using the Best Order Score Search and Grow-Shrink Trees
Bryan Andrews, Joseph Ramsey, Ruben Sanchez-Romero, Jazmin Camchong, Erich Kummerfeld