Köglmayr, Daniel und Spahic, Miralem und Flynn, Andrew und Räth, Christoph (2026) Two-shot learning of multiple strange attractors. Neural Networks. Elsevier. doi: 10.1016/j.neunet.2026.109209. ISSN 0893-6080.
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Kurzfassung
The brain combines short- and long-term memory to process, store, and recall multiple different pieces of information. Inspired by this and recent results on multifunctional and parameter-aware learning, we extend a new machine learning technique that combines short- and long-term memory units, specifically, a system consisting of a next-generation reservoir computer (NGRC) and extremely randomized trees (ERT), to process, store, and recall multiple different strange attractors. We train the combined NGRC+ERT system using a two-shot learning approach which significantly improves performance by filtering out unnecessary features, thereby avoiding extensive hyperparameter optimization. We first show that an NGRC+ERT system achieves highly accurate reconstruction of the short- and long-term dynamics of both the Lorenz and Halvorsen chaotic attractors when using an exponential filtering scheme. We validate these findings by training the NGRC+ERT system to reconstruct 16 different attractors and show that sufficient index-based separation in feature space suppresses unwanted switching dynamics, thus stabilizing long-term memory recall. Finally, we identify that defects in short-term memory processing can provoke failure modes in long-term memory recall resulting in confabulation.
| elib-URL des Eintrags: | https://elib.dlr.de/225128/ | ||||||||||||||||||||
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| Dokumentart: | Zeitschriftenbeitrag | ||||||||||||||||||||
| Titel: | Two-shot learning of multiple strange attractors | ||||||||||||||||||||
| Autoren: |
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| Datum: | Juni 2026 | ||||||||||||||||||||
| Erschienen in: | Neural Networks | ||||||||||||||||||||
| Referierte Publikation: | Ja | ||||||||||||||||||||
| Open Access: | Ja | ||||||||||||||||||||
| Gold Open Access: | Nein | ||||||||||||||||||||
| In SCOPUS: | Ja | ||||||||||||||||||||
| In ISI Web of Science: | Ja | ||||||||||||||||||||
| DOI: | 10.1016/j.neunet.2026.109209 | ||||||||||||||||||||
| Verlag: | Elsevier | ||||||||||||||||||||
| ISSN: | 0893-6080 | ||||||||||||||||||||
| Status: | veröffentlicht | ||||||||||||||||||||
| Stichwörter: | Reservoir computing; Machine learning; Chaotic systems; Attractor reconstruction; Multifunctionality; Extremely randomized trees | ||||||||||||||||||||
| HGF - Forschungsbereich: | keine Zuordnung | ||||||||||||||||||||
| HGF - Programm: | keine Zuordnung | ||||||||||||||||||||
| HGF - Programmthema: | keine Zuordnung | ||||||||||||||||||||
| DLR - Schwerpunkt: | Digitalisierung | ||||||||||||||||||||
| DLR - Forschungsgebiet: | D KIZ - Künstliche Intelligenz | ||||||||||||||||||||
| DLR - Teilgebiet (Projekt, Vorhaben): | D - Kurzstudien [KIZ] | ||||||||||||||||||||
| Standort: | Ulm | ||||||||||||||||||||
| Institute & Einrichtungen: | Institut für KI-Sicherheit Institut für Frontier Materials auf der Erde und im Weltraum > Funktionale Granulate und Komposite | ||||||||||||||||||||
| Hinterlegt von: | Köglmayr, Daniel | ||||||||||||||||||||
| Hinterlegt am: | 16 Jun 2026 13:47 | ||||||||||||||||||||
| Letzte Änderung: | 19 Jun 2026 10:33 |
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