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24 - 26 February 2024, ICAART 2024 Special Session on Large Language Models & Natural Language Processing in Artificial Intelligence (LLMaNLPinAI 2024), Rome, Italy

Date: 24 - 26 February 2024
Time: 23:59
Location: Rome, Italy
Target audience: Computational Linguistics, Logic, Computer Science, AI
Deadline: Thursday 21 December 2023

Computational and technological developments that incorporate natural language are proliferating. Adequate coverage encounters difficult problems related to partiality, underspecification, and context-dependency, which are signature features of information in nature and natural languages. Increased power of hardware and software allows collection of large language sources, which require Natural Language Processing (NLP). Large language models (LLM) are important for information processing. LLM and NLP are interrelated and significant in AI.
This ICAART 2024 Special Session covers theoretical work, applications, approaches, and techniques for computational models of information and its presentation by language (artificial, human, or natural in other ways). The goal is to promote computational systems of intelligent language processing and related models of information, language, reasoning, etc.

Papers must be submitted electronically via the web-based submission system. After thorough reviewing by the special session program committee, all accepted papers will be published in a special section of the conference proceedings book. All papers presented at the conference venue will be available at the SCITEPRESS Digital Library. We expect a post-conference, post-proceedings Special Issue with extended publications based on selected papers presented at NLPinAI at ICAART 2021--2023 and LLMaNLPinAI24.

For more information, see https://icaart.scitevents.org/LLMaNLPinAI.aspx or contact ICAART Secretariat at .

Please note that this newsitem has been archived, and may contain outdated information or links.