面向数据分类的数据流挖掘技术综述以及未来的趋势

Faisal Ramzan, Muawaz Ayyaz
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引用次数: 0

摘要

数据挖掘是一门新兴的跨学科控制管理数据回收和数据流挖掘技术,其主题是收集、监督、处理、分解和可视化大量有组织或非结构化数据。数据流挖掘是指如何通过算法从大量数据中发现未知模式。随着数学、统计学、数据科学和计算机科学领域的重大进展,它经历了快速的改进。数据流通常由各种来源生成,例如传感器网络、社交媒体提要、金融交易、在线零售、网络流量和许多其他应用程序。收集到的数据还可以用于各种目的,例如,执行评估、发现不正常情况、识别更改或发现操作系统的问题。此数据流分析使用不同的数据流挖掘技术完成。本文提供了用于数据流挖掘的不同方法的广泛概述。首先,我们研究了数据流挖掘的不同技术。接下来,我们将讨论不同的聚类和分类技术及其优点。然后对不同的数据流挖掘技术进行了评价,结果表明一些技术对实时数据流是可行的,而另一些则不可行。本研究提供了对技术及其益处的完整理解。到目前为止所做的研究需要对数据挖掘技术进行足够详尽的研究,因此需要未来的工作来评估哪种技术对实时数据流是可行的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A COMPREHENSIVE REVIEW ON DATA STREAM MINING TECHNIQUES FOR DATA CLASSIFICATION; AND FUTURE TRENDS
Data Mining is a developing interdisciplinary control managing Data Reclamation and Data Stream Mining techniques, whose subject is gathering, overseeing, processing, breaking down, and visualizing the huge volume of organized or unstructured data. Data stream mining indicates how to look at Unknown patterns from a massive amount of data over algorithms. It has experienced quick improvement with significant progress in math, statistics, data science, and computer science domains. Data streams are commonly generated by various sources such as sensor networks, social media feeds, financial transactions, online retail, network traffic, and many other applications. The gathered data could be additionally utilized for various purposes, for example, execution assessment, irregularity discovery, change identification, or issue finding of the operating systems. This data stream analysis is done using different data stream mining techniques. This paper provides a broad overview of the distinct approaches used for data stream mining. Initially, we studied the different techniques of data stream mining. Next, we discuss the different clustering and classification techniques and their benefits. Then we examine the evaluation of different data stream mining techniques results that some techniques are feasible for real-time data streams and some of not. This study provides a complete understanding of techniques and their benefits. The studies done so far need to be sufficiently exhaustive for data mining techniques, so future work is needed to assess which technique is feasible for real-time data streams.
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