Book Chapter10.1007/978-3-662-60408-3_3
Grundzüge des maschinellen Lernens
Carsten Lanquillon
- 01 Jan 2019
- pp 89-142
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TL;DR: In this paper, a Kapitel werden Grundzuge des maschinellen Lernens dargestellt, ein allgemeines Verstandnis dafur zu schaffen, was maschinelle Lernverfahren leisten konnen.
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Abstract: In diesem Kapitel werden Grundzuge des maschinellen Lernens dargestellt. Ziel ist es, ein allgemeines Verstandnis dafur zu schaffen, was maschinelle Lernverfahren leisten konnen. Neben bekannten Definitionen und einem kurzen Abriss uber die Entstehung maschineller Lernverfahren werden insbesondere Unterscheidungsmerkmale und Varianten sowie gangige Aufgabentypen erlautert. Erst danach werden beispielhaft verschiedene Lernverfahren vorgestellt, die besonders eingangig oder typisch sind und oft in der Praxis zum Einsatz kommen. In praktischen Anwendungen spielt aufgrund der grosen Datenmengen und zusatzlicher Anforderungen zum Datenschutz das verteilte Lernen eine immer wichtigere Rolle. Als Abschluss und gleichermasen Uberleitung zur Verbindung mit Blockchain-Technologie gilt der Ausblick am Ende des Kapitels.
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Citations
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