Complementary Structure-Learning Neural Networks for Relational Reasoning

05/19/2021
by   Jacob Russin, et al.
0

The neural mechanisms supporting flexible relational inferences, especially in novel situations, are a major focus of current research. In the complementary learning systems framework, pattern separation in the hippocampus allows rapid learning in novel environments, while slower learning in neocortex accumulates small weight changes to extract systematic structure from well-learned environments. In this work, we adapt this framework to a task from a recent fMRI experiment where novel transitive inferences must be made according to implicit relational structure. We show that computational models capturing the basic cognitive properties of these two systems can explain relational transitive inferences in both familiar and novel environments, and reproduce key phenomena observed in the fMRI experiment.

READ FULL TEXT
research
08/14/2019

The lexical and grammatical sources of neg-raising inferences

We investigate neg(ation)-raising inferences, wherein negation on a pred...
research
04/08/2020

Bayesian Interpolants as Explanations for Neural Inferences

The notion of Craig interpolant, used as a form of explanation in automa...
research
04/01/2023

Abstractors: Transformer Modules for Symbolic Message Passing and Relational Reasoning

A framework is proposed that casts relational learning in terms of trans...
research
02/22/2022

Relational Causal Models with Cycles:Representation and Reasoning

Causal reasoning in relational domains is fundamental to studying real-w...
research
06/15/2012

Identifying Independence in Relational Models

The rules of d-separation provide a framework for deriving conditional i...
research
06/07/2020

Analogy as Nonparametric Bayesian Inference over Relational Systems

Much of human learning and inference can be framed within the computatio...
research
03/15/2018

PAC-Reasoning in Relational Domains

We consider the problem of predicting plausible missing facts in relatio...

Please sign up or login with your details

Forgot password? Click here to reset