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Main Authors: Heitmeier, Maria, Schmidt, Valeria, Lensch, Hendrik P. A., Baayen, R. Harald
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2410.04259
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author Heitmeier, Maria
Schmidt, Valeria
Lensch, Hendrik P. A.
Baayen, R. Harald
author_facet Heitmeier, Maria
Schmidt, Valeria
Lensch, Hendrik P. A.
Baayen, R. Harald
contents Recently, deep learning models have increasingly been used in cognitive modelling of language. This study asks whether deep learning can help us to better understand the learning problem that needs to be solved by speakers, above and beyond linear methods. We utilise the Discriminative Lexicon Model introduced by Baayen and colleagues, which models comprehension and production with mappings between numeric form and meaning vectors. While so far, these mappings have been linear (Linear Discriminative Learning, LDL), in the present study we replace them with deep dense neural networks (Deep Discriminative Learning, DDL). We find that DDL affords more accurate mappings for large and diverse datasets from English and Dutch, but not necessarily for Estonian and Taiwan Mandarin. DDL outperforms LDL in particular for words with pseudo-morphological structure such as chol+er. Applied to average reaction times, we find that DDL is outperformed by frequency-informed linear mappings (FIL). However, DDL trained in a frequency-informed way ('frequency-informed' deep learning, FIDDL) substantially outperforms FIL. Finally, while linear mappings can very effectively be updated from trial-to-trial to model incremental lexical learning, deep mappings cannot do so as effectively. At present, both linear and deep mappings are informative for understanding language.
format Preprint
id arxiv_https___arxiv_org_abs_2410_04259
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Is deeper always better? Replacing linear mappings with deep learning networks in the Discriminative Lexicon Model
Heitmeier, Maria
Schmidt, Valeria
Lensch, Hendrik P. A.
Baayen, R. Harald
Computation and Language
Recently, deep learning models have increasingly been used in cognitive modelling of language. This study asks whether deep learning can help us to better understand the learning problem that needs to be solved by speakers, above and beyond linear methods. We utilise the Discriminative Lexicon Model introduced by Baayen and colleagues, which models comprehension and production with mappings between numeric form and meaning vectors. While so far, these mappings have been linear (Linear Discriminative Learning, LDL), in the present study we replace them with deep dense neural networks (Deep Discriminative Learning, DDL). We find that DDL affords more accurate mappings for large and diverse datasets from English and Dutch, but not necessarily for Estonian and Taiwan Mandarin. DDL outperforms LDL in particular for words with pseudo-morphological structure such as chol+er. Applied to average reaction times, we find that DDL is outperformed by frequency-informed linear mappings (FIL). However, DDL trained in a frequency-informed way ('frequency-informed' deep learning, FIDDL) substantially outperforms FIL. Finally, while linear mappings can very effectively be updated from trial-to-trial to model incremental lexical learning, deep mappings cannot do so as effectively. At present, both linear and deep mappings are informative for understanding language.
title Is deeper always better? Replacing linear mappings with deep learning networks in the Discriminative Lexicon Model
topic Computation and Language
url https://arxiv.org/abs/2410.04259