UniMorph 3.0: Universal Morphology (2020.lrec-1)

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Challenge: Explicit modeling of morphology has demonstrable benefits for language modeling, speech recognition, word embedding and keyword search.
Approach: They propose a language-independent feature schema for rich morphological annotation and a type-level resource for annotated data in diverse languages.
Outcome: The proposed schema has been improved to make it more complete and correct, and adds 66 new languages and parts of speech for 12 languages.

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UniMorph 2.0: Universal Morphology (L18-1)

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Challenge: The Universal Morphology project is a collaborative effort to improve how NLP handles complex morphology across the world's languages.
Approach: They propose to use a universal tagset to annotate morphological data using a schema that includes a lemma and a bundle of morphology features.
Outcome: The project releases annotated morphological data using a universal tagset, the UniMorph schema.
UniMorph 4.0: Universal Morphology (2022.lrec-1)

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Khuyagbaatar Batsuren, Omer Goldman, Salam Khalifa, Nizar Habash, Witold Kieraś, Gábor Bella, Brian Leonard, Garrett Nicolai, Kyle Gorman, Yustinus Ghanggo Ate, Maria Ryskina, Sabrina Mielke, Elena Budianskaya, Charbel El-Khaissi, Tiago Pimentel, Michael Gasser, William Abbott Lane, Mohit Raj, Matt Coler, Jaime Rafael Montoya Samame, Delio Siticonatzi Camaiteri, Esaú Zumaeta Rojas, Didier López Francis, Arturo Oncevay, Juan López Bautista, Gema Celeste Silva Villegas, Lucas Torroba Hennigen, Adam Ek, David Guriel, Peter Dirix, Jean-Philippe Bernardy, Andrey Scherbakov, Aziyana Bayyr-ool, Antonios Anastasopoulos, Roberto Zariquiey, Karina Sheifer, Sofya Ganieva, Hilaria Cruz, Ritván Karahóǧa, Stella Markantonatou, George Pavlidis, Matvey Plugaryov, Elena Klyachko, Ali Salehi, Candy Angulo, Jatayu Baxi, Andrew Krizhanovsky, Natalia Krizhanovskaya, Elizabeth Salesky, Clara Vania, Sardana Ivanova, Jennifer White, Rowan Hall Maudslay, Josef Valvoda, Ran Zmigrod, Paula Czarnowska, Irene Nikkarinen, Aelita Salchak, Brijesh Bhatt, Christopher Straughn, Zoey Liu, Jonathan North Washington, Yuval Pinter, Duygu Ataman, Marcin Wolinski, Totok Suhardijanto, Anna Yablonskaya, Niklas Stoehr, Hossep Dolatian, Zahroh Nuriah, Shyam Ratan, Francis M. Tyers, Edoardo M. Ponti, Grant Aiton, Aryaman Arora, Richard J. Hatcher, Ritesh Kumar, Jeremiah Young, Daria Rodionova, Anastasia Yemelina, Taras Andrushko, Igor Marchenko, Polina Mashkovtseva, Alexandra Serova, Emily Prud’hommeaux, Maria Nepomniashchaya, Fausto Giunchiglia, Eleanor Chodroff, Mans Hulden, Miikka Silfverberg, Arya D. McCarthy, David Yarowsky, Ryan Cotterell, Reut Tsarfaty, Ekaterina Vylomova
Challenge: The Universal Morphology project provides broad-coverage instantiated morphological inflection tables for hundreds of diverse languages.
Approach: They propose a language-independent feature schema for rich morphological annotation and a type-level resource of annotated data in diverse languages realizing that schema.
Outcome: The proposed schema has added 66 new languages, including 24 endangered languages.
K-UniMorph: Korean Universal Morphology and its Feature Schema (2023.findings-acl)

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Challenge: Previously, the Korean language has been underrepresented in the field of morphological paradigms amongst hundreds of diverse world languages.
Approach: They propose a new Universal Morphology dataset for Korean that preserves its distinct characteristics.
Outcome: The proposed dataset extracts inflected Korean verb forms from the largest annotated corpus for Korean.
CoNLL-UL: Universal Morphological Lattices for Universal Dependency Parsing (L18-1)

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Challenge: Using the universal dependencies framework, we address the need for a universal representation of morphological analysis that can capture alternative morphology of surface tokens and is compatible with the segmentation and morphologic annotation guidelines prescribed for UD treebanks.
Approach: They propose a new annotation format for word lattices that represent morphological analyses and a resource that obeys this format for a range of typologically different languages.
Outcome: The proposed model can capture alternative morphological analyses of surface tokens and is compatible with the segmentation and morphology guidelines prescribed for UD treebanks.
Wikinflection Corpus: A (Better) Multilingual, Morpheme-Annotated Inflectional Corpus (2020.lrec-1)

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Challenge: Inflectional corpora with annotated morpheme boundaries are scarce in the NLP community . a generated, multilingual inflectional lexicon with morphological features is not as good as UniMorph's .
Approach: They evaluate a multilingual inflectional corpus with morpheme boundaries from the English Wiktionary and the UniMorph project's inflection corpus.
Outcome: The generated Wikinflection corpus is not as good as UniMorph's, but extracts significant amount of words from the intersection of the two corpora.
Towards Universal Segmentations: UniSegments 1.0 (2022.lrec-1)

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Challenge: Existing data resources for morphological segmentation are limited to 32 languages . a large number of word forms exist, with some sub-parts being "recycled" many times .
Approach: They propose a multilingual data resource for morphological segmentation in 32 languages . they analyze diversity of how individual linguistic phenomena are captured across them .
Outcome: The proposed scheme is based on 17 existing data resources relevant for segmentation in 32 languages.
Morphology Without Borders: Clause-Level Morphology (2022.tacl-1)

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Challenge: Morphological tasks use large multi-lingual datasets that organize words into inflection tables . lack of a clear linguistic and operational definition of what is a word impairs universality of tasks .
Approach: They propose to view morphology as a clause-level phenomenon, rather than word-level . they propose to use a dataset for clause- level morphological tasks in 4 different languages .
Outcome: The proposed dataset for clause-level morphology covers 4 typologically different languages: English, German, Turkish, and Hebrew.
Universal Dependencies v2: An Evergrowing Multilingual Treebank Collection (2020.lrec-1)

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Challenge: Universal Dependencies is an open community effort to create cross-linguistically consistent treebank annotation for many languages.
Approach: They describe version 2 of the universal guidelines and discuss major changes from UD v1 to UD 2 . they propose a morphological layer, a syntactic layer and a word segmentation layer .
Outcome: The proposed treebanks are available for 90 languages and have been updated to meet the needs of multilingual parsers and researchers.
Unifying Morphology Resources with OntoLex-Morph. A Case Study in German (2022.lrec-1)

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Challenge: OntoLex is a widely used community standard for machine-readable lexical resources on the web.
Approach: They propose a module for representing morphology that can be used to encode and integrate morphological resources on a unified basis.
Outcome: The proposed module can be used to represent morphological resources on a unified basis.
Morphological Reinflection with Multiple Arguments: An Extended Annotation schema and a Georgian Case Study (2022.acl-short)

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Challenge: morphological annotations are a common problem in some languages, but the flat structure of the current schema makes it impossible to treat them.
Approach: They propose a general solution for polypersonal agreement in Georgian language . they extend the existing UniMorph annotation schema to address this problem .
Outcome: The proposed framework covers all possible variants of argument marking, and is accurate and balanced.

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