Next-Generation Simulation Illuminates Scientific Problems of Organised Complexity
As artificial intelligence becomes increasingly prevalent in scientific research, data-driven methodologies appear to overshadow traditional approaches in resolving scientific problems. In this Perspective, we revisit a classic classification of scientific problems and acknowledge that a series of u...
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Language | English |
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18.01.2024
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Abstract | As artificial intelligence becomes increasingly prevalent in scientific
research, data-driven methodologies appear to overshadow traditional approaches
in resolving scientific problems. In this Perspective, we revisit a classic
classification of scientific problems and acknowledge that a series of
unresolved problems remain. Throughout the history of researching scientific
problems, scientists have continuously formed new paradigms facilitated by
advances in data, algorithms, and computational power. To better tackle
unresolved problems, especially those of organised complexity, a novel paradigm
is necessitated. While recognising that the strengths of new paradigms have
expanded the scope of resolvable scientific problems, we aware that the
continued advancement of data, algorithms, and computational power alone is
hardly to bring a new paradigm. We posit that the integration of paradigms,
which capitalises on the strengths of each, represents a promising approach.
Specifically, we focus on next-generation simulation (NGS), which can serve as
a platform to integrate methods from different paradigms. We propose a
methodology, sophisticated behavioural simulation (SBS), to realise it. SBS
represents a higher level of paradigms integration based on foundational models
to simulate complex systems, such as social systems involving sophisticated
human strategies and behaviours. NGS extends beyond the capabilities of
traditional mathematical modelling simulations and agent-based modelling
simulations, and therefore, positions itself as a potential solution to
problems of organised complexity in complex systems. |
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AbstractList | As artificial intelligence becomes increasingly prevalent in scientific
research, data-driven methodologies appear to overshadow traditional approaches
in resolving scientific problems. In this Perspective, we revisit a classic
classification of scientific problems and acknowledge that a series of
unresolved problems remain. Throughout the history of researching scientific
problems, scientists have continuously formed new paradigms facilitated by
advances in data, algorithms, and computational power. To better tackle
unresolved problems, especially those of organised complexity, a novel paradigm
is necessitated. While recognising that the strengths of new paradigms have
expanded the scope of resolvable scientific problems, we aware that the
continued advancement of data, algorithms, and computational power alone is
hardly to bring a new paradigm. We posit that the integration of paradigms,
which capitalises on the strengths of each, represents a promising approach.
Specifically, we focus on next-generation simulation (NGS), which can serve as
a platform to integrate methods from different paradigms. We propose a
methodology, sophisticated behavioural simulation (SBS), to realise it. SBS
represents a higher level of paradigms integration based on foundational models
to simulate complex systems, such as social systems involving sophisticated
human strategies and behaviours. NGS extends beyond the capabilities of
traditional mathematical modelling simulations and agent-based modelling
simulations, and therefore, positions itself as a potential solution to
problems of organised complexity in complex systems. |
Author | Zhao, Yu Ning, Ronghui Jiang, Changjun Zeng, Shirong Wang, Cheng Wang, Chuwen Zhang, Wang |
Author_xml | – sequence: 1 givenname: Cheng surname: Wang fullname: Wang, Cheng – sequence: 2 givenname: Chuwen surname: Wang fullname: Wang, Chuwen – sequence: 3 givenname: Wang surname: Zhang fullname: Zhang, Wang – sequence: 4 givenname: Shirong surname: Zeng fullname: Zeng, Shirong – sequence: 5 givenname: Yu surname: Zhao fullname: Zhao, Yu – sequence: 6 givenname: Ronghui surname: Ning fullname: Ning, Ronghui – sequence: 7 givenname: Changjun surname: Jiang fullname: Jiang, Changjun |
BackLink | https://doi.org/10.48550/arXiv.2401.09851$$DView paper in arXiv |
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Snippet | As artificial intelligence becomes increasingly prevalent in scientific
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Title | Next-Generation Simulation Illuminates Scientific Problems of Organised Complexity |
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