Workshop on Structured Linguistic Data and 
Evaluation (SLiDE)

A full-day workshop at <https://lrec2026.info/> LREC 
2026<https://lrec2026.info/>, 11-16 May 2026, Palma, Mallorca (Spain)
The workshop will be held on May 11, 2026
Webpage: https://www.slide-workshop.org/

Last Call For Papers
In the last ten years, significant advances in deep learning models and the 
development of Large Language Models (LLMs) have revolutionized the fields of 
computational linguistics (CL) and natural language processing (NLP). In turn, 
this has led to a complete re-assessment of the language resources and 
evaluation practices necessary for training LLMs and analyzing their outputs. 
In particular, the availability of very large amounts of unstructured data for 
training foundational models has come into focus, while the value of 
high-quality structured linguistic data with rich annotations at various levels 
of linguistic analysis has been downplayed by comparison. However, as CL and 
NLP practitioners engage further with LLMs and debate their strengths and 
weaknesses, the importance of high-quality, structured linguistic data has been 
re-emphasized.
The proposed workshop can be seen as related to the Treebanks and Linguistic 
Theories (TLT) conference series and the more recent SyntaxFest venue. Over the 
years, these venues have provided a central forum for high-quality research on 
treebanks, syntactic theory, syntax-semantics interface, structured meaning 
representations, and annotated linguistic resources. With record participation 
in recent years, they demonstrate the vitality and relevance of this line of 
work. The Workshop on Structured Linguistic Data is conceived as both a 
continuation of this tradition and an adaptation to the new realities of an 
LLM-dominated research landscape. The workshop will bring together researchers 
from these overlapping traditions to advance methods, resources, and practices 
for integrating structured linguistic data into the LLM era.

Topics of interest include but are not limited to:
Linguistic Data Analyses, Language Resources, and Evaluation

  *
Grammar processing with NLP and LLM-based tools
  *
Phonological and morphological analysis and LLM tokenization
  *
Annotation strategies with LLM-empowered methodologies and tools
  *
Design principles and annotation schemes for structured linguistic data
  *
Multi-lingual and cross-lingual settings
  *
Mapping of structured linguistic data to Linked Open Data resources
  *
Evaluation informed by language typology
  *
Language resources for underresourced and endangered languages
  *
The use of structured linguistic data for NLP applications
  *
The use of structured linguistic data in acquiring linguistic knowledge
  *
(Semi-)automatic methods for creating structured linguistic data

Spoken language Data

  *
Speech-to-text applications
  *
Speech Generation techniques
  *
Speech data preparation, curation and evaluation

 Multimodality and Situated Dialogue

  *
Structured multimodal resources: gesture AMR (GAMR), gaze and posture 
annotation, multimodal dialogue corpora.
  *
Multimodal grounding: linking language with visual, gestural, and action 
representations
  *
Structured representations for co-attention and alignment in multiparty dialogue
  *
Multimodal evaluation resources for LLMs

Pragmatics and Discourse

  *
Structured data for discourse and dialogue: discourse relation annotation, 
coherence structures, dialogue acts
  *
Pragmatic annotation (speech acts, presupposition, implicature, politeness, 
stance)
  *
Structured approaches to common ground tracking and Theory of Mind in LLMs

Semantics and Lexical Meaning

  *
Dependency analysis and semantic parsing
  *
Annotation beyond syntax: semantics, pragmatics and discourse
  *
Structured data for lexical semantics: sense inventories, semantic frames, 
qualia structure, and type-theoretic resources
  *
Computational semantics resources:  Abstract Meaning Representation (AMR), 
Universal Meaning Representation (UMR), Discourse, Representation Structures, 
Minimal Recursion Semantics (MRS), Type Theory with Records (TTR)
  *
Distributional and neural-symbolic representations of lexical meaning: (e.g., 
Holographic Reduced Representations (HRR), hyperdimensional computing) for 
structured LLM grounding
  *
Aligning vector-based meaning representations with symbolic/typed structures

We invite paper submissions in two distinct tracks:

  *
regular papers on substantial and original research, including empirical 
evaluation results, where appropriate – 8 pages excluding references and 
potential ethics statements;
  *
short papers on smaller, focused contributions, work in progress, negative 
results, surveys, or opinion pieces – 4 pages excluding references and 
potential ethics statements.

Invited speakers
Naiara Perez (University of the Basque Country)
Shira Wein (Amherst College)

Paper Submission and Templates

  *
Submission follows the LREC 2026 conference instructions, using the Softconf 
START conference management system accessible through the following link: 
https://softconf.com/lrec2026/SLiDE/
  *
Submissions should follow the LREC stylesheet, available on the conference 
website on the <https://lrec2026.info/authors-kit/> Author’s 
kit<https://lrec2026.info/authors-kit/> page.

Papers must be anonymized to support double-blind reviewing.

Important Dates
February 22, 2026: Paper submission deadline
March 15, 2026: Notification of acceptance
March 25, 2026: Camera-ready papers
May 2026: Workshop at LREC 2026
All deadlines are 11.59 pm UTC -12h (“anywhere on Earth”).

Workshop Organizers
Jan Hajič (Prague University, Czech Republic)
Erhard Hinrichs (Tübingen University, Germany)
Sandra Kübler (Indiana University, USA)
Joakim Nivre (Uppsala University, Sweden)
Petya Osenova (Sofia University, Bulgaria)
James Pustejovsky (Brandeis University, USA)


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