TopicNeuro

relational learning

5 Seminars3 ePosters

Latest

SeminarNeuroscienceRecording

Abstraction doesn't happen all at once (despite what some models of concept learning suggest)

Micah Goldwater
University of Sydney
Nov 18, 2021

In the past few years, there has been growing evidence that the basic ability for relational generalization starts in early infancy, with 3-month-olds seeming to learn relational abstractions with little training. Further, work with toddlers seem to suggest that relational generalizations are no more difficult than those based on objects, and they can readily consider both simultaneously. Likewise, causal learning research with adults suggests that people infer causal relationships at multiple levels of abstraction simultaneously as they learn about novel causal systems. These findings all appear counter to theories of concept learning that posit when concepts are first learned they tend to be concrete (tied to specific contexts and features) and abstraction proceeds incrementally as learners encounter more examples. The current talk will not question the veracity of any of these findings but will present several others from my and others’ research on relational learning that suggests that when the perceptual or conceptual content becomes more complex, patterns of incremental abstraction re-emerge. Further, the specific contexts and task parameters that support or hinder abstraction reveal the underlying cognitive processes. I will then consider whether the models that posit simultaneous, immediate learning at multiple levels of abstraction can accommodate these more complex patterns.

SeminarNeuroscienceRecording

Infant Relational Learning - Interactions with Visual and Linguistic Factors

Erin Anderson
Indiana University, Bloomington
Dec 3, 2020

Humans are incredible learners, a talent supported by our ability to detect and transfer relational similarities between items and events. Spotting these common relations despite perceptual differences is challenging, yet there’s evidence that this ability begins early, with infants as young as 3 months discriminating same and different (Anderson et al., 2018; Ferry et al., 2015). How? To understand the underlying mechanisms, I examine how learning outcomes in the first year correspond with changes in input and in infant age. I discuss the commonalities in this process with that seen in older children and adults, as well as differences due to interactions with other maturing processes like language and visual attention.

SeminarNeuroscienceRecording

Abstract Semantic Relations in Mind, Brain, and Machines

Keith Holyoak
UCLA
Oct 1, 2020

Abstract semantic relations (e.g., category membership, part-whole, antonymy, cause-effect) are central to human intelligence, underlying the distinctively human ability to reason by analogy. I will describe a computational project (Bayesian Analogy with Relational Transformations) that aims to extract explicit representations of abstract semantic relations from non-relational inputs automatically generated by machine learning. BART’s representations predict patterns of typicality and similarity for semantic relations, as well as similarity of neural signals triggered by semantic relations during analogical reasoning. In this approach, analogy emerges from the ability to learn and compare relations; mapping emerges later from the ability to compare patterns of relations.

ePosterNeuroscience

The role of hippocampal CA1 in relational learning in mice

Svenja Nierwetberg,David Orme,Karel Kieslich,Andrew MacAskill

COSYNE 2022

ePosterNeuroscience

The role of hippocampal CA1 in relational learning in mice

Svenja Nierwetberg,David Orme,Karel Kieslich,Andrew MacAskill

COSYNE 2022

ePosterNeuroscience

Neural mechanisms of relational learning and fast knowledge reassembly

Thomas Miconi, Kenneth Kay

COSYNE 2025

relational learning coverage

8 items

Seminar5
ePoster3
Domain spotlight

Explore how relational learning research is advancing inside Neuro.

Visit domain