Deep study on autonomous learning techniques for complex pattern recognition in interconnected information systems

IF 13.3 1区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS
Zahra Amiri , Arash Heidari , Nima Jafari , Mehdi Hosseinzadeh
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引用次数: 0

Abstract

Artificial Intelligence (AI) and Machine Learning (ML) are being used more and more to handle complex tasks in many different areas. As a result, interconnected information systems are growing, which means that autonomous systems are needed to help them adapt, find complex patterns, and make better decisions in areas like cybersecurity, finance, healthcare, authentication, marketing, and supply chain optimization. Even though there have been improvements in self-learning methods for complex pattern recognition in linked information systems, these studies still do not have a complete taxonomy that sorts these methods by how they can be used in different areas. It is hard to fully understand important factors and do the comparisons that are needed to drive the growth and use of autonomous learning in linked systems because of this gap. Because these methods are becoming more important, new study is looking into how they can be used in different areas. Still, recent study shows that we do not fully understand the environment of other uses for independent learning methods, which encourages us to keep looking into it. We come up with a new classification system that puts applications into six groups: finding cybersecurity threats, finding fraud in finance, diagnosing and monitoring healthcare, biometric authentication, personalized marketing, and optimizing the supply chain in systems that are all connected. The latest developments in this area can be seen by carefully looking at basic factors like pros and cons, modeling setting, and datasets. In particular, the data show that Elsevier and Springer both put out a lot of important papers (26.5 % and 11.8 %, respectively). With rates of 12.9 %, 11 %, and 8 %, respectively, the study shows that accuracy, mobility, and privacy are the most important factors. Tools like Python and MATLAB are now the most popular ways to test possible answers in this growing field.

深入研究互联信息系统中复杂模式识别的自主学习技术
人工智能(AI)和机器学习(ML)越来越多地被用于处理许多不同领域的复杂任务。因此,相互连接的信息系统越来越多,这意味着在网络安全、金融、医疗保健、身份验证、市场营销和供应链优化等领域需要自主系统来帮助它们适应环境、发现复杂模式并做出更好的决策。尽管用于关联信息系统中复杂模式识别的自学方法已经有所改进,但这些研究仍然没有一个完整的分类标准,根据这些方法在不同领域的应用方式对其进行分类。由于这一差距,我们很难充分理解重要因素,也很难进行必要的比较,以推动联接系统中自主学习的发展和应用。由于这些方法正变得越来越重要,新的研究正在探讨如何在不同领域使用这些方法。不过,最近的研究表明,我们并不完全了解自主学习方法的其他使用环境,这促使我们继续研究。我们提出了一个新的分类系统,将应用分为六组:查找网络安全威胁、查找金融欺诈、诊断和监控医疗保健、生物识别身份验证、个性化营销,以及优化互联系统中的供应链。通过仔细研究利弊、建模设置和数据集等基本因素,可以看出该领域的最新进展。数据尤其显示,爱思唯尔和施普林格都发表了大量重要论文(分别占 26.5% 和 11.8%)。研究显示,准确性、流动性和隐私性是最重要的因素,这三个因素的比例分别为 12.9%、11% 和 8%。在这个不断发展的领域,Python 和 MATLAB 等工具是目前最流行的测试可能答案的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Computer Science Review
Computer Science Review Computer Science-General Computer Science
CiteScore
32.70
自引率
0.00%
发文量
26
审稿时长
51 days
期刊介绍: Computer Science Review, a publication dedicated to research surveys and expository overviews of open problems in computer science, targets a broad audience within the field seeking comprehensive insights into the latest developments. The journal welcomes articles from various fields as long as their content impacts the advancement of computer science. In particular, articles that review the application of well-known Computer Science methods to other areas are in scope only if these articles advance the fundamental understanding of those methods.
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