Paper ID: 2112.11805
Neural-Symbolic Integration for Interactive Learning and Conceptual Grounding
Benedikt Wagner, Artur d'Avila Garcez
We propose neural-symbolic integration for abstract concept explanation and interactive learning. Neural-symbolic integration and explanation allow users and domain-experts to learn about the data-driven decision making process of large neural models. The models are queried using a symbolic logic language. Interaction with the user then confirms or rejects a revision of the neural model using logic-based constraints that can be distilled into the model architecture. The approach is illustrated using the Logic Tensor Network framework alongside Concept Activation Vectors and applied to a Convolutional Neural Network.
Submitted: Dec 22, 2021