Learning to Read through Machine Teaching

06/30/2020
by   Ayon Sen, et al.
0

Learning to read words aloud is a major step towards becoming a reader. Many children struggle with the task because of the inconsistencies of English spelling-sound correspondences. Curricula vary enormously in how these patterns are taught. Children are nonetheless expected to master the system in limited time (by grade 4). We used a cognitively interesting neural network architecture to examine whether the sequence of learning trials could be structured to facilitate learning. This is a hard combinatorial optimization problem even for a modest number of learning trials (e.g., 10K). We show how this sequence optimization problem can be posed as optimizing over a time varying distribution i.e., defining probability distributions over words at different steps in training. We then use stochastic gradient descent to find an optimal time-varying distribution and a corresponding optimal training sequence. We observed significant improvement on generalization accuracy compared to baseline conditions (random sequences; sequences biased by word frequency). These findings suggest an approach to improving learning outcomes in domains where performance depends on ability to generalize beyond limited training experience.

READ FULL TEXT
research
06/20/2014

Predicting the Future Behavior of a Time-Varying Probability Distribution

We study the problem of predicting the future, though only in the probab...
research
02/28/2023

Maximum Likelihood With a Time Varying Parameter

We consider the problem of tracking an unknown time varying parameter th...
research
09/25/2022

Stochastic Gradient Descent Captures How Children Learn About Physics

As children grow older, they develop an intuitive understanding of the p...
research
11/05/2018

An Efficient Network for Predicting Time-Varying Distributions

While deep neural networks have achieved groundbreaking prediction resul...
research
04/03/2020

Sequential Learning for Domain Generalization

In this paper we propose a sequential learning framework for Domain Gene...

Please sign up or login with your details

Forgot password? Click here to reset