Neuro Symbolic
Neuro-symbolic AI integrates neural networks' learning capabilities with symbolic AI's reasoning and explainability, aiming to create more robust, interpretable, and efficient AI systems. Current research focuses on developing hybrid models that combine neural networks (e.g., transformers, graph neural networks) with symbolic reasoning frameworks (e.g., logic tensor networks, logic programming), often applied to tasks like planning, question answering, and knowledge graph reasoning. This approach addresses limitations of purely neural or symbolic methods, offering potential for improved performance and trustworthiness in various applications, including robotics, natural language processing, and knowledge representation.
Papers
Neuro-symbolic partial differential equation solver
Pouria Mistani, Samira Pakravan, Rajesh Ilango, Sanjay Choudhry, Frederic Gibou
JAX-DIPS: Neural bootstrapping of finite discretization methods and application to elliptic problems with discontinuities
Pouria Mistani, Samira Pakravan, Rajesh Ilango, Frederic Gibou
Graph-based Neural Modules to Inspect Attention-based Architectures: A Position Paper
Breno W. Carvalho, Artur D'Avilla Garcez, Luis C. Lamb
Neuro-symbolic Explainable Artificial Intelligence Twin for Zero-touch IoE in Wireless Network
Md. Shirajum Munir, Ki Tae Kim, Apurba Adhikary, Walid Saad, Sachin Shetty, Seong-Bae Park, Choong Seon Hong