Natural Language Reasoning and Structured Explanations Workshop at ACL 2023

Event Dates

Jul 13, 2023 - Jul 13, 2023

Location

ACL 2023 (Toronto, Canada)

Submission Deadline

Apr 24, 2023

***Second Call for Papers***

*** Natural Language Reasoning and Structured Explanations Workshop at ACL 2023 ***

Website: https://nl-reasoning-workshop.github.io/ [1]

Dates

———–

All deadlines are 11:59 PM AoE time.

– Workshop Paper Due Date: April 24, 2023

– Notification of acceptance: May 22, 2023

– Camera-ready papers due:May 30, 2023

– Workshop date: TBD

(ACL 2023 will take place in Toronto, Canada from 9th to 14th July, 2023.)

List of Topics

——————

We welcome submissions on all topics related to natural language reasoning

or structured explanations, which might include:

– Multi-step natural language reasoning

– Structured explanations

– Foundations of natural language reasoning

– Applications of natural language reasoning

– Knowledge retrieval for multi-step reasoning

– Reasoning as programs

With recent scaling of large pre-trained Transformer language models (LLMs),

the scope of feasible NLP tasks has broadened, including tasks requiring

increasingly complex reasoning. Although LLMs have shown remarkable

performance, it is still unclear how to best elicit this reasoning and how

the answers that models give follow from what they "know." This

workshop aims to bring together a diverse set of perspectives and attempt to

establish common ground for how various kinds of explanation structures can

tackle a broad class of reasoning problems in natural language and beyond.

As such, the workshop welcomes and covers a wide range of topics, including

(non-exclusively):

**Multi-step natural language reasoning:** Solving reasoning problems, such

as those involving abstract manipulations, has been a long-standing

challenge in the field of artificial intelligence. Large language models

have recently achieved a new state-of-the-art performance on many reasoning

benchmarks, often with approaches only requiring prompting. Current research

frontiers are exploring what kinds of explanation formats are most

effective, how reasoning is most effectively broken down, how to get

language models to plan their reasoning, and what resources can be used to

improve reasoning capabilities of language models. Tasks include

mathematical reasoning, logical reasoning, commonsense reasoning, and more.

**Structured explanations:** Explanations for these complex tasks are

typically composed of two or more facts that are used to help the reasoning

process while also providing a record of the path taken to arrive at an

inference. What representations can be best used by inference algorithms to

construct large explanations? Frontiers of research include exploring search

algorithms over such representations, how to represent annotations at scale

and continual learning models.

**Foundations of natural language reasoning:** Does the structured reasoning

constitute a plausible (interpretable to humans) and faithful (true to the

model's processes) explanation? Does perturbing the reasoning lead to

correctly modified behavior?

Applications of natural language reasoning: New QA settings, language

grounding, explainable diagnosis systems, theorem provers using natural

language, reasoning for scientific discovery, and more.

**Knowledge retrieval for multi-step reasoning:** It has been shown that

LLMs can store factual knowledge implicitly in their parameters, however,

their ability to access and manipulate knowledge is still limited. Future

avenues of research include effective methods to combine parametric and

non-parametric knowledge for complex reasoning, conditioning retrieval

given intermediate reasoning context, retrieving better provenance for

structured explanations.

**Reasoning as programs:** Another body of work within computational

cognitive science and AI has formalized reasoning as inference over

programs, building on classical views of human reasoning in a symbol-like

language of thought and linguistic semantics with logical languages.

Language models of code to produce structured reasoning for commonsense

problems or other similar approaches are all in scope here

Submission Guidelines

——————————–

We welcome two types of papers: regular workshop papers and non-archival

submissions. Only regular workshop papers will be included in the workshop

proceedings. All submissions should be in PDF format and made through the

Softconf website set up for this workshop

(https://softconf.com/acl2023/nl-reasoning/ [2]). In line with the ACL main

conference policy, camera-ready versions of papers will be given one

additional page of content.

**Regular workshop papers:** Authors should submit a paper up to 8 pages

(both short and long papers are welcome), with unlimited pages for

references, following the ACL 2023 formatting requirements. The reported

research should be substantially original. All submissions will be reviewed

in a single track, regardless of length. Accepted papers will be presented

as posters by default, and best papers may be given the opportunity for a

brief talk to introduce their work. Reviewing will be double-blind, and thus

no author information should be included in the papers; self-reference that

identifies the authors should be avoided or anonymised. Accepted papers will

appear in the workshop proceedings.

**Non-archival submissions:** We also solicit cross-submissions, i.e.,

papers on relevant topics that have appeared in other venues (e.g., workshop

or conference papers at NLP, ML, or cognitive science venues, among others).

Accepted papers will be presented at the workshop, with an indication of

original venue, but will not be included in the workshop proceedings.

Cross-submissions are ideal for related work which would benefit from

exposure to the NLReasoning audience. Interested authors should submit their

papers in PDF format through the NLReasoning Softconf website, with a note

on the original venue. They will be reviewed in a single-blind fashion.

Papers in this category do not need to follow the ACL format, and the

submission length is determined by the original venue. The paper selection

will be solely determined by the organizing committee.

In addition, we welcome papers on relevant topics that are under review or

to be submitted to other venues (including the ACL 2023 main conference).

These papers must follow the regular workshop paper format and will not be

included in the workshop proceedings. Papers in this category will be

reviewed by workshop reviewers.

Note to authors: While you submit your paper through Softconf

(https://softconf.com/acl2023/nl-reasoning/ [3]), please select the

"Submission Type" properly based on the guidelines.

For questions about the submission guidelines, please contact workshop

organizers via nl-reasoning@googlegroups.com [4].

Organizers

—————-

Bhavana Dalvi, Allen Institute for AI

Greg Durrett, UT Austin

Peter Jansen, University of Arizona

Danilo Ribeiro, Northwestern University

Catherine Wong, Massachusetts Institute of Technology

Jason Wei, Google Brain

Read more:

https://www.aclweb.org/portal/content/natural-language-reasoning-and-structured-explanations-workshop-planned-workshop-eacl-acl

[1] https://nl-reasoning-workshop.github.io/

[2] https://softconf.com/acl2023/nl-reasoning/

[3] https://softconf.com/acl2023/nl-reasoning/

[4] mailto:nl-reasoning@googlegroups.com