论Paul Cilliers的复杂性方法:后结构主义与模型排他性

IF 0.6 Q3 SOCIAL SCIENCES, INTERDISCIPLINARY
R. van der Merwe
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引用次数: 5

摘要

Paul Cilliers开发了一种新颖的后结构复杂性方法,影响了几位为当前复杂性文学做出贡献的作家。与此同时,Cilliers提倡使用连接主义神经网络(而不是基于规则的分析模型)对复杂系统进行建模。在本文中,我认为同时持有这两种立场是两难的。Cilliers对复杂性的后结构解释指出,复杂系统的模型总是情境性和临时性的;复杂系统没有排他的模型。然而,这种观点似乎与Cilliers将连接主义神经网络作为复杂系统建模的最佳方式的推广不一致。教训是,那些目前遵循Cilliers的后结构复杂性方法的人也不能发展出复杂系统的首选模型,而那些目前倡导复杂系统的某些首选模型的人不能在不放弃其首选模型的客观性和/或优越性的情况下采用后结构复杂性方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On Paul Cilliers’ Approach to Complexity:Post-structuralism versus Model Exclusivity
Paul Cilliers has developed a novel post-structural approach to complexity that has influenced several writers contributing to the current complexity literature. Concomitantly however, Cilliers advocates for modelling complex systems using connectionist neural networks (rather than analytic, rule-based models). In this article, I argue that it is dilemmic to simultaneously hold these two positions. Cilliers’ post-structural interpretation of complexity states that models of complex systems are always contextual and provisional; there is no exclusive model of complex systems. This sentiment however appears at odds with Cilliers’ promotion of connectionist neural networks as the best way to model complex systems. The lesson is that those who currently follow Cilliers’ post-structural approach to complexity cannot also develop a preferred model of complex systems, and those who currently advocate for some preferred model of complex systems cannot adopt the post-structural approach to complexity without giving up the purported objectivity and/or superiority of their preferred model .
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来源期刊
Interdisciplinary Description of Complex Systems
Interdisciplinary Description of Complex Systems SOCIAL SCIENCES, INTERDISCIPLINARY-
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审稿时长
3 weeks
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