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Main Authors: Signoroni, Edoardo, Rychlý, Pavel
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.28418
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author Signoroni, Edoardo
Rychlý, Pavel
author_facet Signoroni, Edoardo
Rychlý, Pavel
contents Lombard, an underresourced language variety spoken by approximately 3.8 million people in Northern Italy and Southern Switzerland, lacks a unified orthographic standard. Multiple orthographic systems exist, creating challenges for NLP resource development and model training. This paper presents the first study of automatic Lombard orthography classification and LombardoGraphia, a curated corpus of 11,186 Lombard Wikipedia samples tagged across 9 orthographic variants, and models for automatic orthography classification. We curate the dataset, processing and filtering raw Wikipedia content to ensure text suitable for orthographic analysis. We train 24 traditional and neural classification models with various features and encoding levels. Our best models achieve 96.06% and 85.78% overall and average class accuracy, though performance on minority classes remains challenging due to data imbalance. Our work provides crucial infrastructure for building variety-aware NLP resources for Lombard.
format Preprint
id arxiv_https___arxiv_org_abs_2603_28418
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle LombardoGraphia: Automatic Classification of Lombard Orthography Variants
Signoroni, Edoardo
Rychlý, Pavel
Computation and Language
I.2.7
Lombard, an underresourced language variety spoken by approximately 3.8 million people in Northern Italy and Southern Switzerland, lacks a unified orthographic standard. Multiple orthographic systems exist, creating challenges for NLP resource development and model training. This paper presents the first study of automatic Lombard orthography classification and LombardoGraphia, a curated corpus of 11,186 Lombard Wikipedia samples tagged across 9 orthographic variants, and models for automatic orthography classification. We curate the dataset, processing and filtering raw Wikipedia content to ensure text suitable for orthographic analysis. We train 24 traditional and neural classification models with various features and encoding levels. Our best models achieve 96.06% and 85.78% overall and average class accuracy, though performance on minority classes remains challenging due to data imbalance. Our work provides crucial infrastructure for building variety-aware NLP resources for Lombard.
title LombardoGraphia: Automatic Classification of Lombard Orthography Variants
topic Computation and Language
I.2.7
url https://arxiv.org/abs/2603.28418