I. Leššo, P. Horovčák, P. Flegner, Zuzana Gašpárová
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引用次数: 0
摘要
KDD (knowledge discovery in databases)一词出现于上世纪90年代初,是信息技术在社会中的普及和信息技术发展的结果。在数据库、数据仓库和数据存储库中组织大规模、自动化的数据收集,可以从数据中获取隐含的和潜在有用的信息。这个问题在实践中主要与战略管理决策的需要有关。本文指出了一种在职业特征数据的长期测量中进行知识发现的可能途径。这篇论文的作者使用一种特殊的方法评估了两个城市(Košice,布拉格)的长期气温测量结果。温度数据被在线扫描,并通过互联网传输到数据库。由此产生的两个温度序列被适当地重组为具有内积的向量空间结构。通过适当地将数据向量从时域转换到频域,并在随后的可视化中表明,从热力学的角度来看,人的环境是一个具有混沌特征的非线性动态系统。虽然所获得的知识只是以一种精确的方式证实了先验的期望,但所描述的方法可以普遍地用于具有观察到的动力学的过程类。
Contribution to the problem of knowledge discovery of a processional character in databases
The term KDD (knowledge discovery in databases) appeared in early 90s of the last century, due to the spread of information technology in the society and as a result of information technology development. The organization of large-scale, automated collection of data in databases, in data warehouses and data repositories enables non-trivial acquisition of implicit and potentially useful information from data. This issue is in practice mostly linked to the needs of strategic management decisions. In the present paper one of the possible approaches to knowledge discovery in long-term measurement of data of a processional character is pointed out. Authors of the paper, using a special method, evaluated the long-term measurements of the air temperature in two cities (Košice, Prague). The temperature data were scanned online and transmitted to the database via the internet. The resulting two sequences of temperatures are appropriately reorganized into the structure of a vector space with the inner product. By a suitable transformation of data vectors from the time domain to the frequency domain and by subsequent visualization it was shown that the environment of man, in terms of thermodynamics, is a non-linear dynamic system with the characteristics of chaos. Although the knowledge gained only confirmed in an exact way a priori expectations, the method described can be used universally across the class of processes with the observed dynamics.