Special Issues

Big Data and Cognitive Computing publishes Special Issues to create collections of papers on specific topics, with the aim of building a community of authors and readers to discuss the latest research and develop new ideas and research directions. Special Issues are led by Guest Editors, who are experts on the topic and all Special Issue submissions follow MDPI's standard editorial process. The journal’s Editor-in-Chief and/or designated Editorial Board Member will oversee Guest Editor appointments and Special Issue proposals, checking their content for relevance and ensuring the suitability of the material for the journal. The papers published in a Special Issue will be collected and displayed on a dedicated page of the journal’s website. Further information on MDPI's Special Issue policies and Guest Editor responsibilities can be found here. For any inquiries related to a Special Issue, please contact the Editorial Office.

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Reasoning for Safety in Artificial Intelligence: Optimisation, Multi-Agent Systems, and Trustworthy Inference
edited by Leonardo Ranaldi
submission deadline 3 Dec 2026 | Viewed by 42 | Submission Open
Keywords: reasoning in AI; multi-agent systems; agentic AI; safety and oversight; optimisation-based reasoning; dialectical argumentation; trustworthy AI; weak-to-strong supervision; reasoning evaluation; explainability and verification
Next-Generation Medical Image Analysis: Multimodal, Decentralized, Fair and Reasoning-Centric Approaches
edited by and Pramit Saha
submission deadline 18 Dec 2026 | Viewed by 46 | Submission Open
Keywords: medical image analysis; agentic AI; multimodal learning; vision-language models; large language models; large reasoning models; clinical explainability and reasoning; fairness; reliable and trustworthy AI; uncertainty; interpretability; human– AI collaboration; federated learning
Sentiment Analysis in the Context of Big Data
edited by
submission deadline 29 Dec 2026 | Viewed by 11 | Submission Open
Keywords: transformer; large language models (LLM); aspect-based analysis; predictive analysis; data processing
Advances in Natural Language Processing and Text Mining: 2nd Edition
edited by and
submission deadline 31 Dec 2026 | Viewed by 256 | Submission Open
Keywords: natural language processing; text mining; deep learning; large language models; information retrieval; entity linking; relation extraction; multimodal NLP; low-resource NLP; NLP and text mining for social good
Artificial Intelligence Models and Cognitive Computing: Innovations from Algorithms to Intelligent Systems
edited by Xin Su and Zhiquan Bai
submission deadline 31 Dec 2026 | Viewed by 119 | Submission Open
Keywords: artificial intelligence (AI); cognitive computing; large models/foundation models; multimodal learning; neuro-symbolic reasoning; reinforcement learning; generative artificial intelligence (Generative AI); edge and cloud intelligence; explainable artificial intelligence (XAI); trustworthy and human-centered AI
Artificial Intelligence and Digital Twin Technologies for Smart and Sustainable Built Environments submission deadline 31 Dec 2026 | Viewed by 82 | Submission Open
Keywords: artificial intelligence; digital twin; Internet of Things (IoT); big data analytics; machine learning; cognitive computing; smart cities; structural health monitoring; predictive maintenance; sustainable built environment
Artificial Intelligence Techniques for Audio, Image, and Multisensory Signal Processing
edited by
submission deadline 27 Jan 2027 | Viewed by 71 | Submission Open
Keywords: artificial intelligence; signal processing; audio processing; image processing; multisensory data; deep learning; multimodal fusion; machine learning; computer vision; acoustic analysis
Multimodal Deep Learning and Its Applications
edited by Ping Hu, and Lu Zhang
submission deadline 31 Jan 2027 | Viewed by 18 | Submission Open
Keywords: multimodal deep learning; multimodal large language models; multimodal recommendation; cross-modal retrieval; graph representation learning; multimodal data fusion
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