Important Dates

* All deadlines are calculated at 11:59 pm
UTC-12 hours

Pre-submission mentorship application Aug 4 (Fri), 2023
Submission deadline Sep 1 (Fri), 2023
Acceptance notification Oct 2 (Mon), 2023
Camera-ready due Oct 15 (Sun), 2023
Workshop Nov 1 (Wed), 2023

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Proceedings

Here’s a link to a copy of our proceedings. For official publication please refer to ACLPUB or IJCNLP-AACL 2023 website!

Archival

An Investigation of Warning Erroneous Chat Translations in Cross-lingual Communication

Yunmeng Li, Jun Suzuki, Makoto Morishita, Kaori Abe and Kentaro Inui

Cross-lingual Transfer Learning for Javanese Dependency Parsing

Fadli Aulawi Al Ghiffari, Ika Alfina and Kurniawati Azizah

Evaluating Large Language Models’ Understanding of Financial Terminology via Definition Modeling

James Jhirad, Edison Marrese-Taylor and Yutaka Matsuo

Exploring Automatic Evaluation Methods based on a Decoder-based LLM for Text Generation

Tomohito Kasahara and Daisuke Kawahara

Gender Inflected or Bias Inflicted: On Using Grammatical Gender Cues for Bias Evaluation in Machine Translation

Pushpdeep Singh

Graph-Enriched Biomedical Language Models: A Research Proposal

Andrey Sakhovskiy, Alexander Panchenko and Elena Tutubalina

Intermediate-Task Transfer Learning for Peer Review Score Prediction

Panitan Muangkammuen, Fumiyo Fukumoto, Jiyi Li and Yoshimi Suzuki

Long-form Simultaneous Speech Translation: Thesis Proposal

Peter Polák

Modeling Collaborative Dialogue in Minecraft with Action-Utterance Model

Takuma Ichikawa and Ryuichiro Higashinaka

Rethinking Response Evaluation from Interlocutor’s Eye for Open-Domain Dialogue Systems

Yuma Tsuta, Naoki Yoshinaga, Shoetsu Sato and Masashi Toyoda

Speech Synthesis Model Based on Face Landmarks

Chenji Jin, Yoshimi Suzuki and Fei Lin

Style-sensitive Sentence Embeddings for Evaluating Similarity in Speech Style of Japanese Sentences by Contrastive Learning

Yuki Zenimoto, Shinzan Komata and Takehito Utsuro

Non-archival

Delving into Evaluation Metrics for Generation: A Thorough Assessment of How Metrics Generalize to Rephrasing Across Languages

Grace Wang, Tia Chen and Duygu Ataman