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International research group at @uniuef focusing on AI and RL. Topics include deepfake detection, LLMs, RecSystems, superalignment, speaker recognition, and multi-agent RL. Advancing trustworthy, human-aligned AI. More info coming soon!
StatML Research Group







Belated congratulations to Dr Federico Malato, one of the most active members of our StatML group, on earning his PhD on 15 Dec 2025! 👏🚀🎉 His dissertation explores retrieval learning hybrid agents: using a memory module + search to actively recall past experiences and improve decision making.
Hello BlueSky! We're StatML, the Statistical Machine Learning research group at the University of Eastern Finland. We study AI and Reinforcement Learning from multiple perspectives. Our website is launching soon, and we can’t wait to share more about our work!
From UEF StatML to #NeurIPS 2025 in San Diego 🚀 Federico Malato is presenting together with Ville Hautamäki their poster “Zero shot World Models via Search in Memory”. Congratulations to the authors and thanks to everyone who stops by the poster 😊
🧵 ICASSP 2026 update: two papers involving StatML members have been accepted. 🎉 One on targeted fine tuning for DNN based wireless receivers using influence functions, and one on generalizable speech deepfake detection via meta learned LoRA. Huge congratulations to all authors! 🙌
🧵2/3: 1) “Targeted Fine-Tuning of DNN-Based Receivers via Influence Functions” by Tuononen, Penttinen, Hautamäki (StatML) arxiv.org/abs/2509.15950 Influence functions pinpoint the training samples behind bit decisions, enabling targeted fine-tuning that improves BER (single-target > random).