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How did the development of basic training models in the 17th century influence the progress of artificial intelligence? 


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The development of basic training models in the 17th century had no direct influence on the progress of artificial intelligence. The papers provided do not mention any connection between the two.

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The provided paper does not mention the development of basic training models in the 17th century or its influence on the progress of artificial intelligence. The paper focuses on the influence of Ludwig Wittgenstein's ideas on artificial intelligence.
Open accessPosted ContentDOI
03 Feb 2023
The provided paper does not mention the development of basic training models in the 17th century or its influence on the progress of artificial intelligence.
The provided paper does not mention the development of basic training models in the 17th century or their influence on the progress of artificial intelligence. The paper discusses the knowledge-based paradigm in AI and the challenges associated with manually constructing and maintaining domain models.
The provided paper does not mention the development of basic training models in the 17th century or its influence on the progress of artificial intelligence.
The provided paper does not mention the development of basic training models in the 17th century or its influence on the progress of artificial intelligence.

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