@book{57ef61e2063c414bae3e606837373538,
title = "Computational Construction Grammar: A Usage-Based Approach",
abstract = "This Element introduces a usage-based computational approach to Construction Grammar that draws on techniques from natural language processing and unsupervised machine learning. This work explores how to represent constructions, how to learn constructions from a corpus, and how to arrange the constructions in a grammar as a network. From a theoretical perspective, this Element examines how construction grammars emerge from usage alone as complex systems, with slot-constraints learned at the same time that constructions are learned. From a practical perspective, this work is accompanied by a Python package which enables linguists to incorporate construction grammars into their own corpus-based work. The computational experiments in this Element are important for testing the learnability, variability, and confirmability of Construction Grammar as a theory of language. All code examples will leverage the cloud computing platform Code Ocean to guide readers through implementation of these algorithms.",
keywords = "Computational syntax, cognitive linguistics, cognitive grammar, Construction Grammar, usage-based grammar",
author = "Dunn, {Jonathan E}",
year = "2024",
month = may,
day = "8",
doi = "10.1017/9781009233743",
language = "English (US)",
isbn = "9781009233767",
series = "Elements in Cognitive Linguistics",
publisher = "Cambridge University Press",
address = "United Kingdom",
}