On Defining Smart Cities using Transformer Neural Networks

Andrei Khurshudov
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Abstract

Cities worldwide are rapidly adopting “smart” technologies, transforming urban life. Despite this trend, a universally accepted definition of “smart city” remains elusive. Past efforts to define it haven’t yielded a consensus, as evidenced by the numerous definitions in use. In this paper, we endeavored to create a new “compromise” definition that should resonate with most experts previously involved in defining this concept and aimed to validate one of the existing definitions. We reviewed 60 definitions of smart cities from industry, academia, and various relevant organizations, employing transformer architecture-based generative AI and semantic text analysis to reach this compromise. We proposed a semantic similarity measure as an evaluation technique, which could generally be used to compare different smart city definitions, assessing their uniqueness or resemblance. Our methodology employed generative AI to analyze various existing definitions of smart cities, generating a list of potential new composite definitions. Each of these new definitions was then tested against the pre-existing individual definitions we’ve gathered, using cosine similarity as our metric. This process identified smart city definitions with the highest average cosine similarity, semantically positioning them as the closest on average to all the 60 individual definitions selected.
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利用变压器神经网络定义智能城市
世界各地的城市正在迅速采用 "智能 "技术,改变城市生活。尽管出现了这种趋势,但 "智慧城市 "这一公认的定义仍然难以确定。过去为定义 "智慧城市 "所做的努力并未达成共识,目前使用的众多定义就是明证。在本文中,我们努力创造一个新的 "折中 "定义,该定义应与之前参与定义这一概念的大多数专家产生共鸣,并旨在验证现有的定义之一。我们回顾了来自工业界、学术界和各种相关组织的 60 个智慧城市定义,并采用了基于变换器架构的生成式人工智能和语义文本分析来达成这一折衷方案。我们提出了一种语义相似性度量作为评估技术,一般可用于比较不同的智慧城市定义,评估其独特性或相似性。我们的方法采用生成式人工智能来分析现有的各种智慧城市定义,从而生成一个潜在的新复合定义列表。然后,我们使用余弦相似度作为衡量标准,将每个新定义与我们收集到的已有单个定义进行对比测试。这一过程识别出了平均余弦相似度最高的智慧城市定义,从语义上将其定位为平均最接近所有被选中的 60 个单个定义。
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