Predicting Word Learning in Children from the Performance of Computer Vision Systems

07/07/2022
by   Sunayana Rane, et al.
0

For human children as well as machine learning systems, a key challenge in learning a word is linking the word to the visual phenomena it describes. We explore this aspect of word learning by using the performance of computer vision systems as a proxy for the difficulty of learning a word from visual cues. We show that the age at which children acquire different categories of words is predicted by the performance of visual classification and captioning systems, over and above the expected effects of word frequency. The performance of the computer vision systems is related to human judgments of the concreteness of words, supporting the idea that we are capturing the relationship between words and visual phenomena.

READ FULL TEXT
research
10/05/2021

Word Acquisition in Neural Language Models

We investigate how neural language models acquire individual words durin...
research
08/11/2014

Learning to see like children: proof of concept

In the last few years we have seen a growing interest in machine learnin...
research
06/01/2023

MEWL: Few-shot multimodal word learning with referential uncertainty

Without explicit feedback, humans can rapidly learn the meaning of words...
research
07/23/2014

Visual Word Selection without Re-Coding and Re-Pooling

The Bag-of-Words (BoW) representation is widely used in computer vision....
research
04/08/2020

Which one is the dax? Achieving mutual exclusivity with neural networks

Learning words is a challenge for children and neural networks alike. Ho...
research
11/19/2019

Shared Visual Abstractions

This paper presents abstract art created by neural networks and broadly ...
research
05/24/2021

The advent and fall of a vocabulary learning bias from communicative efficiency

It is well-known that, when sufficiently young children encounter a new ...

Please sign up or login with your details

Forgot password? Click here to reset