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Introduction to Neural Transfer Learning With Transformers for Social Science Text Analysis

DSEID
DSEID-001-8790212
DOI
10.1177/00491241221134527
Journal
Sociological Methods & Research
Publisher
SAGE Publications
Published
2024-11
Status
metadata_only

Abstract

Transformer-based models for transfer learning have the potential to achieve high prediction accuracies on text-based supervised learning tasks with relatively few training data instances. These models are thus likely to benefit social scientists that seek to have as accurate as possible text-based measures, but only have limited resources for annotating training data. To enable social scientists to leverage these potential benefits for their research, this article explains how these methods work, why they might be advantageous, and what their limitations are. Additionally, three Transformer-based models for transfer learning, BERT, RoBERTa, and the Longformer, are compared to conventional machine learning algorithms on three applications. Across all evaluated tasks, textual styles, and training data set sizes, the conventional models are consistently outperformed by transfer learning with Transformers, thereby demonstrating the benefits these models can bring to text-based social science research.

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Metadata

Title
Introduction to Neural Transfer Learning With Transformers for Social Science Text Analysis
Delta ID
DSEID-001-8790212
Authors
Sandra Wankmüller
Abstract source
crossref
Source URL
None
Access
closed_or_uncertain
Licence
unknown
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WhenEventFieldOldNew
2026-06-18 19:37:53.011249+00:00identifier_assignedDSEIDDSEID-001-8790212