Topic Modelling in Spontaneous Speech Data
Abstract
The development of large-scale, language corpora has highlighted
the increasing need for automated methods, to assist humans in
the inefficient task of sorting and labelling
language-transcripts by semantic contents (i.e. topics). One
approach to semantic labelling involves using a class of
unsupervised, machine-learning algorithms known as “topic
modelling”. These algorithms process a document (e.g. a
transcript), and identify clusters representing words that occur
in proximity to each other in the document.
To date, topic modelling has been implemented widely in written
language – including newspapers, academic articles, and
business reports – but much less to spontaneous speech data.
The linguistics literature has identified the need to apply more
qualitative and analytic approaches, when judging and improving
topic modelling for future use. My research applies
topic-modelling algorithms to transcripts from sociolinguistic
interviews, compiled for the Sydney Speaks Project. I apply
certain modifications to improve topic-modelling’s performance,
including the use of a custom stoplist, a human benchmark for
measuring efficacy, and linguistically-based, text partitioning.
The findings support the idea that text partitioning and a custom
stoplist, produce results that align better with the human
benchmark.
Description
Citation
Collections
Source
Type
Book Title
Entity type
Access Statement
License Rights
Restricted until
Downloads
File
Description