Find below EMERGE’s news articles, press releases, digests of scientific publications, as well as other outreach materials.

Publication: Direct Communication or Stigmergy? Selecting Communication Mechanisms for Robot Swarms via Automatic Modular Design

Publication: Direct Communication or Stigmergy? Selecting Communication Mechanisms for Robot Swarms via Automatic Modular Design

Calendar06 October 2025

In this paper, EMERGE partners from the University of Bristol show that automatic modular design (AutoMoDe) can also select between direct communication and stigmergy within a single design process.

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Publication: Back to Bee-sics: Learning Information Sharing Strategies for Robot Swarms Through the Hive

Publication: Back to Bee-sics: Learning Information Sharing Strategies for Robot Swarms Through the Hive

Calendar06 October 2025

In this study, EMERGE partners from the University of Bristol use a learning-based approach to optimise information sharing in a hybrid robot swarm, where each robot maintains local autonomy, but information is shared via a central repository.

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Publication: MAINLE: A Multi-Agent, Interactive, Natural Language Local Explainer of Classification Tasks

Publication: MAINLE: A Multi-Agent, Interactive, Natural Language Local Explainer of Classification Tasks

Calendar30 September 2025

In this work, EMERGE partners from the University of Pisa introduce a multi-agent architecture to provide interactive explanations for classification tasks based on a range of machine learning algorithms, so that end-users can obtain answers in natural language.

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Publication: Sparse Autoencoders Find Partially Interpretable Features in Italian Small Language Models

Publication: Sparse Autoencoders Find Partially Interpretable Features in Italian Small Language Models

Calendar26 September 2025

In this work, EMERGE partners from the University of Pisa provide an early evaluation on the feasibility of using Sparse Autoencoders to interpret models trained to be natively Italian.

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Publication: MAIA: a Benchmark for Multimodal AI Assessment

Publication: MAIA: a Benchmark for Multimodal AI Assessment

Calendar26 September 2025

In this work, EMERGE partners from the University of Pisa introduce MAIA, a multimodal dataset developed as a core component of a competence-oriented benchmark designed for fine-grained investigation of the reasoning abilities of Visual Language Models (VLMs) on videos.

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Publication: LLMs Struggle on Explicit Causality in Italian

Publication: LLMs Struggle on Explicit Causality in Italian

Calendar26 September 2025

In this work, EMERGE partners from the University of Pisa present ExpliCITA, a translation of the English ExpliCa dataset

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Publication: Leveraging LLMs to Build a Semi-synthetic Dataset for Legal Information Retrieval: A Case Study on the Italian Civil Code and GPT4-O

Publication: Leveraging LLMs to Build a Semi-synthetic Dataset for Legal Information Retrieval: A Case Study on the Italian Civil Code and GPT4-O

Calendar26 September 2025

In this study, EMERGE partners from the University of Pisa evaluate the applicability of LLMs for the automatic generation of a dataset of legal query-passage pairs to train retrieval systems.

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Publication: Benchmarking Nonlinear Readouts in Linear Reservoir Networks

Publication: Benchmarking Nonlinear Readouts in Linear Reservoir Networks

Calendar25 September 2025

In this work, EMERGE partners from the University of Pisa address this gap by systematically benchmarking a spectrum of nonlinear readouts within linear RC frameworks.

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Publication: Investigating Time-Scales in Deep Echo State Networks for Natural Language Processing

Publication: Investigating Time-Scales in Deep Echo State Networks for Natural Language Processing

Calendar23 September 2025

In this work, EMERGE partners from the University of Pisa analyse the performance and the dynamical behaviour of Reservoir Computing models applied to Natural Language Processing (NLP) tasks.

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