Journal Article10.1016/J.JVCIR.2019.02.009
An artificial intelligence based data-driven approach for design ideation
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TL;DR: An integrated approach for enhancing design ideation by applying artificial intelligence and data mining techniques, which consists of two models, a semantic ideation network and a visual concepts combination model, which provide inspiration semantically and visually based on computational creativity theory.
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About: This article is published in Journal of Visual Communication and Image Representation. The article was published on 01 May 2019. The article focuses on the topics: Engineering design process & Computational creativity.
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Citations
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