{"title":"探索数据挖掘:方面和新兴趋势","authors":"Sumeer Gul, Shohar Bano, Taseen Shah","doi":"10.1108/dlp-08-2020-0078","DOIUrl":null,"url":null,"abstract":"\nPurpose\nData mining along with its varied technologies like numerical mining, textual mining, multimedia mining, web mining, sentiment analysis and big data mining proves itself as an emerging field and manifests itself in the form of different techniques such as information mining; big data mining; big data mining and Internet of Things (IoT); and educational data mining. This paper aims to discuss how these technologies and techniques are used to derive information and, eventually, knowledge from data.\n\n\nDesign/methodology/approach\nAn extensive review of literature on data mining and its allied techniques was carried to ascertain the emerging procedures and techniques in the domain of data mining. Clarivate Analytic’s Web of Science and Sciverse Scopus were explored to discover the extent of literature published on Data Mining and its varied facets. Literature was searched against various keywords such as data mining; information mining; big data; big data and IoT; and educational data mining. Further, the works citing the literature on data mining were also explored to visualize a broad gamut of emerging techniques about this growing field.\n\n\nFindings\nThe study validates that knowledge discovery in databases has rendered data mining as an emerging field; the data present in these databases paves the way for data mining techniques and analytics. This paper provides a unique view about the usage of data, and logical patterns derived from it, how new procedures, algorithms and mining techniques are being continuously upgraded for their multipurpose use for the betterment of human life and experiences.\n\n\nPractical implications\nThe paper highlights different aspects of data mining, its different technological approaches, and how these emerging data technologies are used to derive logical insights from data and make data more meaningful.\n\n\nOriginality/value\nThe paper tries to highlight the current trends and facets of data mining.\n","PeriodicalId":438470,"journal":{"name":"Digit. Libr. 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This paper aims to discuss how these technologies and techniques are used to derive information and, eventually, knowledge from data.\\n\\n\\nDesign/methodology/approach\\nAn extensive review of literature on data mining and its allied techniques was carried to ascertain the emerging procedures and techniques in the domain of data mining. Clarivate Analytic’s Web of Science and Sciverse Scopus were explored to discover the extent of literature published on Data Mining and its varied facets. Literature was searched against various keywords such as data mining; information mining; big data; big data and IoT; and educational data mining. Further, the works citing the literature on data mining were also explored to visualize a broad gamut of emerging techniques about this growing field.\\n\\n\\nFindings\\nThe study validates that knowledge discovery in databases has rendered data mining as an emerging field; the data present in these databases paves the way for data mining techniques and analytics. This paper provides a unique view about the usage of data, and logical patterns derived from it, how new procedures, algorithms and mining techniques are being continuously upgraded for their multipurpose use for the betterment of human life and experiences.\\n\\n\\nPractical implications\\nThe paper highlights different aspects of data mining, its different technological approaches, and how these emerging data technologies are used to derive logical insights from data and make data more meaningful.\\n\\n\\nOriginality/value\\nThe paper tries to highlight the current trends and facets of data mining.\\n\",\"PeriodicalId\":438470,\"journal\":{\"name\":\"Digit. Libr. 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引用次数: 4
摘要
目的数据挖掘与数值挖掘、文本挖掘、多媒体挖掘、web挖掘、情感分析、大数据挖掘等技术一起证明了自己是一个新兴的领域,并以不同的技术形式表现出来,如信息挖掘;大数据挖掘;大数据挖掘和物联网(IoT);以及教育数据挖掘。本文旨在讨论如何使用这些技术和技巧来获取信息,并最终从数据中获取知识。设计/方法/方法对数据挖掘及其相关技术的文献进行了广泛的回顾,以确定数据挖掘领域中出现的程序和技术。我们探索了Clarivate Analytic的Web of Science和Sciverse Scopus,以发现发表在数据挖掘及其各个方面的文献的范围。文献检索针对各种关键词,如数据挖掘;信息挖掘;大数据;大数据和物联网;以及教育数据挖掘。此外,引用数据挖掘文献的作品也被探索,以可视化这个不断发展的领域的广泛新兴技术。研究结果验证了数据库中的知识发现使数据挖掘成为一个新兴领域;这些数据库中的数据为数据挖掘技术和分析铺平了道路。本文提供了一个独特的观点,关于数据的使用,以及从中衍生的逻辑模式,新的程序,算法和挖掘技术如何不断升级,以用于改善人类生活和体验的多用途用途。本文重点介绍了数据挖掘的不同方面,其不同的技术方法,以及如何使用这些新兴的数据技术从数据中获得逻辑见解并使数据更有意义。原创性/价值本文试图突出当前数据挖掘的趋势和方面。
Purpose
Data mining along with its varied technologies like numerical mining, textual mining, multimedia mining, web mining, sentiment analysis and big data mining proves itself as an emerging field and manifests itself in the form of different techniques such as information mining; big data mining; big data mining and Internet of Things (IoT); and educational data mining. This paper aims to discuss how these technologies and techniques are used to derive information and, eventually, knowledge from data.
Design/methodology/approach
An extensive review of literature on data mining and its allied techniques was carried to ascertain the emerging procedures and techniques in the domain of data mining. Clarivate Analytic’s Web of Science and Sciverse Scopus were explored to discover the extent of literature published on Data Mining and its varied facets. Literature was searched against various keywords such as data mining; information mining; big data; big data and IoT; and educational data mining. Further, the works citing the literature on data mining were also explored to visualize a broad gamut of emerging techniques about this growing field.
Findings
The study validates that knowledge discovery in databases has rendered data mining as an emerging field; the data present in these databases paves the way for data mining techniques and analytics. This paper provides a unique view about the usage of data, and logical patterns derived from it, how new procedures, algorithms and mining techniques are being continuously upgraded for their multipurpose use for the betterment of human life and experiences.
Practical implications
The paper highlights different aspects of data mining, its different technological approaches, and how these emerging data technologies are used to derive logical insights from data and make data more meaningful.
Originality/value
The paper tries to highlight the current trends and facets of data mining.