Saved in:
Bibliographic Details
Main Authors: Pauli, Yves, Marsman, Jan-Bernard, Rabe, Finn, Edkins, Victoria, Hüppi, Roya, Ciampelli, Silvia, Misra, Akhil Ratan, Lang, Nils, Hinzen, Wolfram, Sommer, Iris, Homan, Philipp
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2511.15512
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866908665637765120
author Pauli, Yves
Marsman, Jan-Bernard
Rabe, Finn
Edkins, Victoria
Hüppi, Roya
Ciampelli, Silvia
Misra, Akhil Ratan
Lang, Nils
Hinzen, Wolfram
Sommer, Iris
Homan, Philipp
author_facet Pauli, Yves
Marsman, Jan-Bernard
Rabe, Finn
Edkins, Victoria
Hüppi, Roya
Ciampelli, Silvia
Misra, Akhil Ratan
Lang, Nils
Hinzen, Wolfram
Sommer, Iris
Homan, Philipp
contents The introduction of large language models and other influential developments in AI-based language processing have led to an evolution in the methods available to quantitatively analyse language data. With the resultant growth of attention on language processing, significant challenges have emerged, including the lack of standardisation in organising and sharing linguistic data and the absence of standardised and reproducible processing methodologies. Striving for future standardisation, we first propose the Language Processing Data Structure (LPDS), a data structure inspired by the Brain Imaging Data Structure (BIDS), a widely adopted standard for handling neuroscience data. It provides a folder structure and file naming conventions for linguistic research. Second, we introduce pelican nlp, a modular and extensible Python package designed to enable streamlined language processing, from initial data cleaning and task-specific preprocessing to the extraction of sophisticated linguistic and acoustic features, such as semantic embeddings and prosodic metrics. The entire processing workflow can be specified within a single, shareable configuration file, which pelican nlp then executes on LPDS-formatted data. Depending on the specifications, the reproducible output can consist of preprocessed language data or standardised extraction of both linguistic and acoustic features and corresponding result aggregations. LPDS and pelican nlp collectively offer an end-to-end processing pipeline for linguistic data, designed to ensure methodological transparency and enhance reproducibility.
format Preprint
id arxiv_https___arxiv_org_abs_2511_15512
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Standardising the NLP Workflow: A Framework for Reproducible Linguistic Analysis
Pauli, Yves
Marsman, Jan-Bernard
Rabe, Finn
Edkins, Victoria
Hüppi, Roya
Ciampelli, Silvia
Misra, Akhil Ratan
Lang, Nils
Hinzen, Wolfram
Sommer, Iris
Homan, Philipp
Computation and Language
The introduction of large language models and other influential developments in AI-based language processing have led to an evolution in the methods available to quantitatively analyse language data. With the resultant growth of attention on language processing, significant challenges have emerged, including the lack of standardisation in organising and sharing linguistic data and the absence of standardised and reproducible processing methodologies. Striving for future standardisation, we first propose the Language Processing Data Structure (LPDS), a data structure inspired by the Brain Imaging Data Structure (BIDS), a widely adopted standard for handling neuroscience data. It provides a folder structure and file naming conventions for linguistic research. Second, we introduce pelican nlp, a modular and extensible Python package designed to enable streamlined language processing, from initial data cleaning and task-specific preprocessing to the extraction of sophisticated linguistic and acoustic features, such as semantic embeddings and prosodic metrics. The entire processing workflow can be specified within a single, shareable configuration file, which pelican nlp then executes on LPDS-formatted data. Depending on the specifications, the reproducible output can consist of preprocessed language data or standardised extraction of both linguistic and acoustic features and corresponding result aggregations. LPDS and pelican nlp collectively offer an end-to-end processing pipeline for linguistic data, designed to ensure methodological transparency and enhance reproducibility.
title Standardising the NLP Workflow: A Framework for Reproducible Linguistic Analysis
topic Computation and Language
url https://arxiv.org/abs/2511.15512