A Brief History of Learning Symbolic Higher-Level Representations from Data (And a Curious Look Forward)

A Brief History of Learning Symbolic Higher-Level Representations from Data (And a Curious Look Forward)

Stefan Kramer

Proceedings of the Twenty-Ninth International Joint Conference on Artificial Intelligence
Survey track. Pages 4868-4876. https://doi.org/10.24963/ijcai.2020/678

Learning higher-level representations from data has been on the agenda of AI research for several decades. In the paper, I will give a survey of various approaches to learning symbolic higher-level representations: feature construction and constructive induction, predicate invention, propositionalization, pattern mining, and mining time series patterns. Finally, I will give an outlook on how approaches to learning higher-level representations, symbolic and neural, can benefit from each other to solve current issues in machine learning.
Keywords:
Machine Learning: general
Knowledge Representation and Reasoning: general