Aryaman Arora


2021

pdf bib
For the Purpose of Curry: A UD Treebank for Ashokan Prakrit
Adam Farris | Aryaman Arora
Proceedings of the Fifth Workshop on Universal Dependencies (UDW, SyntaxFest 2021)

pdf bib
Bhāṣācitra: Visualising the dialect geography of South Asia
Aryaman Arora | Adam Farris | Gopalakrishnan R | Samopriya Basu
Proceedings of the 2nd International Workshop on Computational Approaches to Historical Language Change 2021

We present Bhāṣācitra, a dialect mapping system for South Asia built on a database of linguistic studies of languages of the region annotated for topic and location data. We analyse language coverage and look towards applications to typology by visualising example datasets. The application is not only meant to be useful for feature mapping, but also serves as a new kind of interactive bibliography for linguists of South Asian languages.

pdf bib
SNACS Annotation of Case Markers and Adpositions in Hindi
Aryaman Arora | Nitin Venkateswaran | Nathan Schneider
Proceedings of the Society for Computation in Linguistics 2021

2020

pdf bib
PASTRIE: A Corpus of Prepositions Annotated with Supersense Tags in Reddit International English
Michael Kranzlein | Emma Manning | Siyao Peng | Shira Wein | Aryaman Arora | Nathan Schneider
Proceedings of the 14th Linguistic Annotation Workshop

We present the Prepositions Annotated with Supsersense Tags in Reddit International English (“PASTRIE”) corpus, a new dataset containing manually annotated preposition supersenses of English data from presumed speakers of four L1s: English, French, German, and Spanish. The annotations are comprehensive, covering all preposition types and tokens in the sample. Along with the corpus, we provide analysis of distributional patterns across the included L1s and a discussion of the influence of L1s on L2 preposition choice.

pdf bib
Supervised Grapheme-to-Phoneme Conversion of Orthographic Schwas in Hindi and Punjabi
Aryaman Arora | Luke Gessler | Nathan Schneider
Proceedings of the 58th Annual Meeting of the Association for Computational Linguistics

Hindi grapheme-to-phoneme (G2P) conversion is mostly trivial, with one exception: whether a schwa represented in the orthography is pronounced or unpronounced (deleted). Previous work has attempted to predict schwa deletion in a rule-based fashion using prosodic or phonetic analysis. We present the first statistical schwa deletion classifier for Hindi, which relies solely on the orthography as the input and outperforms previous approaches. We trained our model on a newly-compiled pronunciation lexicon extracted from various online dictionaries. Our best Hindi model achieves state of the art performance, and also achieves good performance on a closely related language, Punjabi, without modification.