Retroactive interference in neural networks and in humans: the effect of pattern-based learning

Authors: Mirman D.; Spivey M.

Source: Connection Science, Volume 13, Number 3, 1 September 2001 , pp. 257-275(19)

Publisher: Taylor and Francis Ltd

Buy & download fulltext article:

OR

Price: $56.94 plus tax (Refund Policy)

Abstract:

Catastrophic interference is addressed as a problem that arises from pattern-based learning algorithms. As such, it is not limited to artificial neural networks but can be demonstrated in human subjects in so far as they use a pattern-based learning strategy. The experiment tests retroactive interference in humans learning lists of consonant-vowel-consonant nonsense syllable pairs. Results show significantly more interference for subjects learning patterned lists than subjects learning arbitrarily paired lists. To examine how different learning strategies depend on the structure of the learning task, a mixture-of-experts neural network model is presented. The results show how these strategies may interact to give rise to the results seen in the human data.

Keywords: CATASTROPHIC INTERFERENCE; NEURAL NETWORKS; MIXTURE OF EXPERTS; MEMORY

Document Type: Research article

Publication date: 2001-09-01

More about this publication?
Related content

Key

Free Content
Free content
New Content
New content
Open Access Content
Open access content
Subscribed Content
Subscribed content
Free Trial Content
Free trial content

Text size:

A | A | A | A
Share this item with others: These icons link to social bookmarking sites where readers can share and discover new web pages. print icon Print this page