AI-Digital Engine of Economic and Knowledge Type
Masayuki Matsui (mmatsui55@nifty.com)
Chapter Chapter 6 in Artifacts Versus Nature Body, 2023, pp 59-68 from Springer
Abstract:
Abstract Based on numbers, data, information signals, and science, humankind has developed an artificial language tools and artifacts. At intangible artifacts, we first compared ordered queuing versus flow number methodsFlow number methods to visualize cumulative processes for such entities as big data, and showed the anatomy (Carnott-like cycleCarnott-like cycle) of ellipse-cross typeEllipse-cross type at the economics (engine) versus reliability (handle)Economics (engine) versus reliability (handle) of body map by using this progressive-loop methodProgressive-loop method cycle at GDP case in Matsui (2022). Next, we discussed a few methods and examples of virtual enginesVirtual engines of economic and knowledge systems by Matsui’s equationMatsui’s equation and ME (Mequation) approachME (Mequation) approach. Finally, formulation types of AI-like matrix engineAI-like matrix engine (square matrix or correlation table) and Matsui’s matrix approachMatsui’s matrix approach are graphically given at a white box of SW (middle initiativeMiddle initiative) base, and would contribute to a knowledge-based and digital society.
Keywords: Digital engine; Ellipse pair-map; Progressive loop dynamism; Matrix approach; Intangible artifacts (search for similar items in EconPapers)
Date: 2023
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Persistent link: https://EconPapers.repec.org/RePEc:spr:sprchp:978-981-99-7699-7_6
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DOI: 10.1007/978-981-99-7699-7_6
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