The 8th Workshop on Representation Learning for NLP (RepL4NLP 2023)

Event Notification Type: 
Call for Papers
Abbreviated Title: 
RepL4NLP 2023
Location: 
ACL 2023
Country: 
Canada
City: 
Toronto
Contact: 
Maximilian Mozes
Nora Kassner
Shauli Ravfogel
Submission Deadline: 
Monday, 24 April 2023

The 8th Workshop on Representation Learning for NLP (RepL4NLP 2023) will be hosted by ACL 2023 and held on 13/14 July 2023. The workshop is being organised by Burcu Can, Maximilian Mozes, Samuel Cahyawijaya, Naomi Saphra, Nora Kassner, Shauli Ravfogel, Abhilasha Ravichander, and Chen Zhao; and advised by Isabelle Augenstein, Anna Rogers, Kyunghyun Cho, Edward Grefenstette, and Laura Rimell. The workshop is organised by the ACL Special Interest Group on Representation Learning (SIGREP).

The 8th Workshop on Representation Learning for NLP aims to continue the success of the Repl4NLP workshop series, with the 1st Workshop on Representation Learning for NLP having received about 50 submissions and over 250 attendees - the second most attended collocated event at ACL'16 after WMT. The workshop was introduced as a synthesis of several years of independent *CL workshops focusing on vector space models of meaning, compositionality, and the application of deep neural networks and spectral methods to NLP. It provides a forum for discussing recent advances on these topics, as well as future research directions in linguistically motivated vector-based models in NLP. The workshop will take place in a hybrid setting, and, as in previous years, feature interdisciplinary keynotes, paper presentations, posters, as well as a panel discussion.

Topics:

  • Developing new representations: at the document, sentence, word, or sub-word level, using language model objectives, word embeddings, spectral methods, etc.
  • Evaluating existing representations: probing representations for generalization, compositionality & robustness, adversarial evaluation, analysis of representations.
  • Efficient learning of representations and inference: with respect to training and inference time, model size, amount of training data, etc.
  • Beyond English / text representations: multi-modal, cross-lingual, knowledge-informed embeddings, structure-informed embeddings (syntax, morphology), etc.
  • The relation between representations and the model's behaviour: how do representations eventually lead to the buildup of predictions, and how do interventions in the representation space causally affect the model's behaviour.

Important dates:

  • Direct paper submission deadline April 24, 2023
  • ARR commitment deadline: May 15, 2023
  • Notification of acceptance May 22, 2023
  • Camera-ready paper due May 30, 2023
  • Pre-recorded video due June 12, 2023