An exploration of error-driven learning in simple two-layer networks from a discriminative learning perspective

被引:0
|
作者
Dorothée B. Hoppe
Petra Hendriks
Michael Ramscar
Jacolien van Rij
机构
[1] University of Groningen,Center for Language and Cognition
[2] University of Tübingen,Department of Linguistics
[3] University of Groningen,Department of Artificial Intelligence
来源
Behavior Research Methods | 2022年 / 54卷
关键词
Error-driven learning; Discriminative learning; Computational simulations; Cognitive modeling; Neural network models;
D O I
暂无
中图分类号
学科分类号
摘要
Error-driven learning algorithms, which iteratively adjust expectations based on prediction error, are the basis for a vast array of computational models in the brain and cognitive sciences that often differ widely in their precise form and application: they range from simple models in psychology and cybernetics to current complex deep learning models dominating discussions in machine learning and artificial intelligence. However, despite the ubiquity of this mechanism, detailed analyses of its basic workings uninfluenced by existing theories or specific research goals are rare in the literature. To address this, we present an exposition of error-driven learning – focusing on its simplest form for clarity – and relate this to the historical development of error-driven learning models in the cognitive sciences. Although historically error-driven models have been thought of as associative, such that learning is thought to combine preexisting elemental representations, our analysis will highlight the discriminative nature of learning in these models and the implications of this for the way how learning is conceptualized. We complement our theoretical introduction to error-driven learning with a practical guide to the application of simple error-driven learning models in which we discuss a number of example simulations, that are also presented in detail in an accompanying tutorial.
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页码:2221 / 2251
页数:30
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