用于自动决策的人工直觉

IF 2.9 4区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Applied Artificial Intelligence Pub Date : 2023-07-24 DOI:10.1080/08839514.2023.2230749
M. Trovati, Khalid Teli, Nikolaos Polatidis, Ufuk Alpsahin Cullen, Simon Bolton
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引用次数: 0

摘要

自动化决策技术在数据科学、人工智能和一般机器学习中发挥着至关重要的作用。然而,这些技术需要平衡准确性和计算复杂性,因为它们的解决方案需求可能需要对构成相应场景的潜在大量事件组合进行详尽的分析。直觉是识别问题解决方案的重要工具。更具体地说,它可以用于以“并行”的方式识别、组合和发现知识,因此更有效。因此,在数据科学中嵌入人工直觉可能会提供识别和处理信息的新方法。关于这一主题的广泛研究主要基于定性方法。然而,由于该领域的复杂性,可用的定量模型和实现有限。在这篇文章中,作者已经扩展了评估,包括一个现实世界,多学科领域,以提供一个更全面的评估。结果表明,当嵌入决策和信息提取模型和框架时,人工直觉的价值。事实上,他们在文章中讨论的方法所产生的产出与该领域的一组专家所执行的类似任务进行了比较。这表明了可比较的结果进一步显示了该框架的潜力,以及人工直觉作为决策和信息提取工具的潜力。
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Artificial Intuition for Automated Decision-Making
Automated decision-making techniques play a crucial role in data science, AI, and general machine learning. However, such techniques need to balance accuracy with computational complexity, as their solution requirements are likely to need exhaustive analysis of the potentially numerous events combinations, which constitute the corresponding scenarios. Intuition is an essential tool in the identification of solutions to problems. More specifically, it can be used to identify, combine and discover knowledge in a “parallel” manner, and therefore more efficiently. As a consequence, the embedding of artificial intuition within data science is likely to provide novel ways to identify and process information. There is extensive research on this topic mainly based on qualitative approaches. However, due to the complexity of this field, limited quantitative models and implementations are available. In this article, the authors have extended the evaluation to include a real-world, multi-disciplinary area in order to provide a more comprehensive assessment. The results demonstrate the value of artificial intuition, when embedded in decision-making and information extraction models and frameworks. In fact, the output produced by the approach discussed in their article was compared with a similar task carried out by a group of experts in the field. This demonstrates comparable results further showing the potential of this framework, as well as artificial intuition as a tool for decision-making and information extraction.
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来源期刊
Applied Artificial Intelligence
Applied Artificial Intelligence 工程技术-工程:电子与电气
CiteScore
5.20
自引率
3.60%
发文量
106
审稿时长
6 months
期刊介绍: Applied Artificial Intelligence addresses concerns in applied research and applications of artificial intelligence (AI). The journal also acts as a medium for exchanging ideas and thoughts about impacts of AI research. Articles highlight advances in uses of AI systems for solving tasks in management, industry, engineering, administration, and education; evaluations of existing AI systems and tools, emphasizing comparative studies and user experiences; and the economic, social, and cultural impacts of AI. Papers on key applications, highlighting methods, time schedules, person-months needed, and other relevant material are welcome.
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