Symbolic AI versus Connectionism in Music Research.

作者: Petri Toiviainen

DOI: 10.4324/9780203059746-9

关键词:

摘要: In cognitive science and research on artificial intelligence, there are two central paradigms: the symbolic analogical. Within analogical paradigm, interest in neural networks, or connectionism, has experienced a resurgence during last decade; this change also been reflected field of musical modeling. This article provides general survey relationship between AI both level from point view music research. is followed by short introduction to which includes description main principles their structure function as well presentation examples use music.

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