Challenge: a fierce battle is being fought between symbolic and distributed approaches to language and cognition . a recent study shows that morphosyntactic knowledge is encoded in a near-discrete fashion in LLMs .
Approach: a new position paper examines the role of distributed and distributed approaches in language learning . authors argue that deep learning models represent a synthesis between the two traditions .
Outcome: a new position paper shows that deep learning models for language represent a synthesis between the two traditions.

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On LLMs-Driven Synthetic Data Generation, Curation, and Evaluation: A Survey (2024.findings-acl)

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Challenge: Large Language Models (LLMs) provide a data-centric solution to alleviate limitations of real-world data with synthetic data generation.
Approach: They propose a generic workflow for LLM-driven synthetic data generation.
Outcome: The proposed workflows highlight gaps in existing research and outline avenues for future studies.
Symbol-LLM: Towards Foundational Symbol-centric Interface For Large Language Models (2024.acl-long)

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Challenge: Large Language Models (LLMs) have limitations when it comes to comprehending and expressing world knowledge that extends beyond the boundaries of natural language.
Approach: They propose a model that integrates symbolic data into LLM training without loss of generality ability.
Outcome: The proposed model performs better on symbol- and NL-centric tasks.
Neuro-Symbolic Natural Language Processing (2025.emnlp-tutorials)

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Challenge: Large Language Models (LLMs) have limitations in terms of safe and controlled reasoning, interpretability and adaptability . this tutorial aims to bridge the gap between the practical performance of LLMs and the principled modelling of language and inference of formal methods.
Approach: This tutorial aims to bridge the gap between the practical performance of Large Language Models and the principled modelling of language and inference of formal methods.
Outcome: This tutorial aims to bridge the gap between the performance of LLMs and the principled modelling of language and inference of formal methods.
How Do Large Language Models Capture the Ever-changing World Knowledge? A Review of Recent Advances (2023.emnlp-main)

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Challenge: Large language models (LLMs) are impressive in solving tasks, but they can quickly be outdated after deployment.
Approach: They provide a review of recent advances in aligning deployed large language models with the ever-changing world knowledge.
Outcome: The proposed models can be used to perform various tasks directly through in-context learning or for further fine-tuning for domain-specific uses.
Language Models Struggle to Use Representations Learned In-Context (2026.acl-long)

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Challenge: a recent study shows that large language models are capable of inducing rich representations of data that are seen in-context . a novel task, adaptive world modeling, shows that even the most performant LLMs cannot reliably leverage novel semantics defined in-constitut.
Approach: They propose to use in-context representations to induce rich representations of data . they also propose to probe models using a novel task to enable flexible deployment .
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Large Language Models: The Need for Nuance in Current Debates and a Pragmatic Perspective on Understanding (2023.emnlp-main)

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Challenge: Current Large Language Models (LLMs) are unparalleled in their ability to generate grammatically correct, fluent text.
Approach: They argue that LLMs only parrot statistical patterns in training data and that language learning in LLM cannot inform human language learning.
Outcome: The proposed model can generate grammatically correct, fluent text without requiring human intervention.
Beyond A Single AI Cluster: A Survey of Decentralized LLM Training (2025.emnlp-main)

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Challenge: Decentralized LLM training leverages dispersed resources at varying scales.
Approach: They propose a resource-driven paradigm that leverages dispersed resources across clusters, datacenters and even regions.
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LLMs as Planning Formalizers: A Survey for Leveraging Large Language Models to Construct Automated Planning Models (2025.findings-acl)

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Challenge: Large Language Models excel in various natural language tasks but struggle with long-horizon planning problems requiring structured reasoning.
Approach: They propose to integrate large language models into AP and NLP planning frameworks by reviewing current research and identifying critical challenges and future directions.
Outcome: The proposed frameworks are used to support reliable off-the-shelf AP planners.
The Data Frontier for Large Language Models: Selection, Synthesis, and Tools (2026.acl-tutorials)

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Challenge: acquiring and curating high-quality training data remains a significant bottleneck . acquiring such high-quality data is a key challenge for researchers and practitioners .
Approach: This tutorial provides a comprehensive and practical guide to the state-of-the-art in data research directions for LLMs.
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Probing LLMs for Joint Encoding of Linguistic Categories (2023.findings-emnlp)

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Challenge: Existing research suggests that a linguistic hierarchy emerges in large language models . little is known about how encodings of different linguistic phenomena interact within the models - and to what extent processing of linguistically-related categories relies on the same, shared model representations.
Approach: They propose a framework for testing the joint encoding of linguistic categories in large language models.
Outcome: The proposed framework shows that the same patterns hold across languages in multilingual LLMs.

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