Original paper
A relational tsetlin machine with applications to natural language understanding
Volume: 59, Issue: 1, Pages: 121 - 148
Published: Jan 1, 2022
Abstract
Tsetlin machines (TMs) are a pattern recognition approach that uses finite state machines for learning and propositional logic to represent patterns. In addition to being natively interpretable, they have provided competitive accuracy for various tasks. In this paper, we increase the computing power of TMs by proposing a first-order logic-based framework with Herbrand semantics. The resulting TM is relational and can take advantage of logical...
Paper Details
Title
A relational tsetlin machine with applications to natural language understanding
Published Date
Jan 1, 2022
Volume
59
Issue
1
Pages
121 - 148