First Call For Submissions

Welcome to the 1st Workshop on Taming Large Language Models:
Controllability in the era of Interactive Assistants! This workshop aims to
unite esteemed scholars, researchers, and practitioners specializing in
Natural Language Generation (NLG). This event will foster in-depth
discussions and explorations of the challenges and prospects associated
with content control in LLMs. Emphasizing the intersection of NLG research
and the instruction-learning paradigm, the workshop will serve as a
platform for fruitful collaborations and knowledge exchange. This hybrid
workshop will be co-located with INLG 2023 (
https://inlg2023.github.io/workshops.html) at Prague.

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Important Dates

   -

   Submission deadline: June 15, 2023
   -

   Author notification: July 21, 2023
   -

   Camera-ready deadline: August 14, 2023
   -

   Workshop date: September 12, 2023

Submission Portal: https://softconf.com/n/tllm2023
Website: https://ctrlnlg.github.io/

**All deadlines are 11.59 pm AOE time.
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Topics

We welcome submissions on one or more of the following topics:

   -

   Alignment: Investigating techniques to better align LLMs with human
   values and intentions, including reward modeling, human-in-the-loop
   systems, and quantifying alignment metrics. Understanding the objectives
   pursued by a model and aligning them with human preferences are key
   challenges. We encourage research on methods to increase alignments, such
   as through prompt design and fine-tuning.
   -

   In-context Learning: Exploring the role of context in LLMs, including
   how to improve context understanding, manage context drift, and enhance
   context-aware responses. Also, investigating the use of in-context learning
   as a control mechanism.
   -

   Instruction-based Control: Comparing  popular controlling mechanisms,
   including approaches such as logit manipulation, decoder mixing, and
   classifier guidance, amongst others, against the simpler instruction-based
   control.
   -

   Generality: Investigating controllable techniques that work across tasks
   and datasets.
   -

   Safety and Robustness: Assessing potential risks and vulnerabilities in
   LLMs, along with solutions such as adversarial training, safe exploration,
   and monitoring model behavior during deployment.
   -

   Controllability vs. Robustness: Developing methods to better understand
   LLMs' decision-making processes, and how it acts in grounded scenarios.
   Understanding its reliance on implicit vs. explicit memory.
   -

   Scalability and efficiency: Investigating novel approaches for reducing
   computational requirements for achieving control in LLMs.
   -

   Real-world applications and case studies: Showcasing successful LLM
   deployments in various fields, such as healthcare, finance, education, and
   creative industries, along with lessons learned and future opportunities.


Submissions

We welcome reports of original research in the form of two types:

   -

   Long papers (8 pages + references)


   -

   Short papers (4 pages + references)


We encourage all authors to include relevant discussions of ethical
considerations and impact in the body of the paper.

Submissions will be made via SoftConf/START: https://softconf.com/n/tllm2023
<https://softconf.com/n/icard2023/>

Submission Format

   -

   The proceedings will be published by ACL Anthology.
   -

   All long, short, and abstract submissions must follow the two-column ACL
   format , which are available as an Overleaf template
   <https://www.overleaf.com/read/crtcwgxzjskr> and also downloadable
   directly <https://github.com/acl-org/acl-style-files> (Latex and Word).
   Please refer to the SIGDIAL 2023 website for the most recent version of the
   templates.
   -

   Submissions must conform to the official ACL style guidelines, which are
   contained in these templates. Submissions must be electronic, in PDF format.
   -

   All submissions should be anonymized to facilitate double blind
   reviewing.
   -

   Submissions that do not adhere to the author guidelines or ACL policies
   <https://www.aclweb.org/adminwiki/index.php?title=ACL_Author_Guidelines>
will
   be rejected without review.
   -

   Appendix should be added in the main document after references. Appendix
   does not count towards the page length.


Any questions regarding submissions can be sent to
[email protected]
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