Zusammenfassung
Der vorliegende Text gibt aus der Sicht eines Mathematikers und Informatikers einige Hinweise zu dem Gebiet der neuronalen Netze und des Konnektionismus, orientiert an dem Verständnis und den Erfahrungen aus verschiedenen Anwendungen in diesem Bereich, wie sie am Forschungsinstitut für anwendungsorientierte Wissensverarbeitung (FAW) in Ulm in den letzten Jahren erarbeitet wurden.
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Radermacher, F.J. (1994). Das Paradigma Neuronale Netze / Konnektionismus: Einige Anmerkungen und Hinweise zu Anwendungen. In: Bol, G., Nakhaeizadeh, G., Vollmer, KH. (eds) Finanzmarktanwendungen neuronaler Netze und ökonometrischer Verfahren. Wirtschaftswissenschaftliche Beiträge, vol 93. Physica-Verlag HD. https://doi.org/10.1007/978-3-642-46948-0_12
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