Automated Reasoning with Neuro-Symbolic Learning

Decanato - Facoltà di scienze informatiche

Data: 24 Maggio 2022 / 09:30 - 10:30

USI Campus EST, room D1.15, Sector D

Speaker: Prof. Xujie Si, McGill University

Abstract:
Reasoning structured data like programs or unstructured data like images has been a grand challenge. Existing approaches either heavily rely on specialized heuristics designed by human experts or simply exploit large deep neural networks which suffer from many issues like data efficiency, interpretability, lack of formal guarantees, etc. In this talk, I will show how to equip discrete logical reasoning with learning capability through a neuro-symbolic design. 
I will first present a differentiable learning and reasoning framework that combines probabilistic reasoning with logical reasoning. This general framework enables learning logical rules for various applications including program analysis and also makes it feasible to reason images jointly with symbolic knowledge base. Then, I will demonstrate a non-differentiable neuro-symbolic framework, based on deep reinforcement learning, for non-trivial reasoning tasks like program verification and synthesis. I will conclude with ongoing work on improving industrial-strength reasoning engines by designing and embedding learnable components, and on improving deep learning through reasoning with proper abstractions. 

Biography:
Xujie Si is an Assistant Professor in the School of Computer Science at McGill University. He is also a core academic member at Mila, the Quebec AI Institute, and holds a Canada CIFAR AI Chair. He received his PhD from the University of Pennsylvania in 2020. His research lies in the intersection of programming languages and artificial intelligence. He is broadly interested in developing learning-based techniques to help programmers build better software with less effort, integrating logic programming with differentiable learning systems for interpretable and scalable reasoning, and leveraging programming abstractions for data-efficient learning. His work has been recognized with ACM SIGPLAN distinguished paper award and several spotlights in top programming languages and machine learning venues.

Host: Prof. Patrick Eugster

Facoltà

Eventi
30
Luglio
2024
30.
07.
2024
01
Agosto
2024
01.
08.
2024
08
Agosto
2024
08.
08.
2024

Summer School in Social Sciences Methods

Facoltà di comunicazione, cultura e società
13
Agosto
2024
13.
08.
2024

Cinema and Audiovisual Futures Conference 2024

Facoltà di comunicazione, cultura e società

The Future of Survival Public Event: AI and Generative humanity

Facoltà di comunicazione, cultura e società
14
Agosto
2024
14.
08.
2024

The Future of Survival Public Event: Digital Migrations

Facoltà di comunicazione, cultura e società
15
Agosto
2024
15.
08.
2024

The Future of Survival Public Event: "Listening to Ice"

Facoltà di comunicazione, cultura e società