NoorGhateh: A Benchmark Dataset for Training and Evaluating Arabic Morphological Analysis Systems
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https://zenodo.org/doi/10.5281/zenodo.18138582
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Noor-Ghateh: A Benchmark Dataset for Evaluating Arabic Word Segmentation Tools in the Hadith Domain
📘 Overview
Noor-Ghateh is a manually annotated Classical Arabic morphological dataset derived from the jurisprudential text Sharayeʿ al-Islam.The dataset provides fine-grained clitic segmentation, 15 morphological attributes, and gold-standard human annotation, making it a valuable benchmark for:
Morphological analyzers
Segmentation systems
Lemmatizers & root extractors
Classical Arabic NLP research
Benchmarking domain sensitivity across analyzers
The dataset includes 223,690 tokens, with a publicly available 313-token sample released in XML, JSON, and CSV-embedded-XML formats.
🧱 Data Format
1. XML Format (Primary)
The XML structure uses <Base> → <Root> → <word> hierarchy.Each <word> element includes 14 morphological attributes such as:
Seq — morpheme order
Slice — surface form
Affix — prefix/suffix/stem
Pos, Lemma, Case, Categ, DervT, Num, Root
TOV, Time, Voic, Kol, Lang
2. JSON Format
Direct JSON mapping of the XML hierarchy for machine learning pipelines.
3. CSV-embedded XML
Each row contains:Surface form — Segmented form — XML annotation block
🎯 Intended Use Cases
Training and evaluating morphological segmentation systems
Testing classical Arabic analyzers (Farasa, CAMeL Tools, ALP, MADAMIRA)
Building lemmatizers and root extractors
Domain-sensitivity analysis
Digital humanities research in Hadith & jurisprudence
Linguistic studies of Classical Arabic morphology
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Zenodo创建时间:
2026-01-03



