Characterizing N-Dimension Data Clusters: A Density-based Metric for Compactness and Homogeneity Evaluation

Dylan Molinié, K. Madani
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引用次数: 3

Abstract

: The new challenges Science is facing nowadays are legion; they mostly focus on high level technology, and more specifically Robotics , Internet of Things , Smart Automation (cities, houses, plants, buildings, etc.), and more recently Cyber-Physical Systems and Industry 4.0 . For a long time, cognitive systems have been seen as a mere dream only worth of Science Fiction. Even though there is much to be done, the researches and progress made in Artificial Intelligence have let cognition-based systems make a great leap forward, which is now an actual great area of interest for many scientists and industrialists. Nonetheless, there are two main obstacles to system’s smartness: computational limitations and the infinite number of states to define; Machine Learning-based algorithms are perfectly suitable to Cognition and Automation, for they allow an automatic – and accurate – identification of the systems, usable as knowledge for later regulation. In this paper, we discuss the benefits of Machine Learning, and we present some new avenues of reflection for automatic behavior correctness identification through space partitioning, and density conceptualization and computation.
表征n维数据簇:紧凑性和同质性评估的基于密度的度量
当前,科学面临的新挑战层出不穷;他们主要关注高水平的技术,更具体地说,机器人,物联网,智能自动化(城市,房屋,工厂,建筑等),以及最近的网络物理系统和工业4.0。很长一段时间以来,认知系统一直被视为仅仅是科幻小说中的梦想。尽管还有很多工作要做,但人工智能领域的研究和进步已经让基于认知的系统取得了巨大的飞跃,这是许多科学家和实业家真正感兴趣的领域。尽管如此,系统的智能仍然存在两个主要障碍:计算限制和需要定义的无限数量的状态;基于机器学习的算法非常适合于认知和自动化,因为它们允许对系统进行自动和准确的识别,可以作为知识用于以后的监管。在本文中,我们讨论了机器学习的好处,并提出了一些通过空间划分、密度概念化和计算来实现自动行为正确性识别的新途径。
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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