Actionable Knowledge Discovery (AKD) is a crucial aspect of data mining that is gaining popularity and being applied in a wide range of domains. This is because AKD can extract valuable insights and information, also known as knowledge, from large datasets. The goal of this paper is to examine different research studies that focus on various domains and have different objectives. The paper will review and discuss the methods used in these studies in detail. AKD is a process of identifying and extracting actionable insights from data, which can be used to make informed decisions and improve business outcomes. It is a powerful tool for uncovering patterns and trends in data that can be used for various applications such as customer relationship management, marketing, and fraud detection. The research studies reviewed in this paper will explore different techniques and approaches for AKD in different domains, such as healthcare, finance, and telecommunications. The paper will provide a thorough analysis of the current state of AKD in the field and will review the main methods used by various research studies. Additionally, the paper will evaluate the advantages and disadvantages of each method and will discuss any novel or new solutions presented in the field. Overall, this paper aims to provide a comprehensive overview of the methods and techniques used in AKD and the impact they have on different domains.
翻译:3. 本文件将详细审查和讨论这些研究所使用的方法。AKD是一个从数据挖掘中找出和提取可操作的见解的过程,可以用来作出知情的决定和改善商业成果。它是一个强有力的工具,可以揭示可用于客户关系管理、营销和欺诈检测等各种应用的数据模式和趋势。本文件所审查的研究将探讨不同领域,如保健、金融和电信等领域的AKD的不同技术和方法。该文件将透彻分析AKD在外地的当前状况,并将审查各种研究研究使用的主要方法。此外,该文件将评估每一种方法的优缺点,并将讨论外地提出的任何新颖或新解决办法。本文将探讨不同领域,如保健、金融和电信等领域的AKD的不同技术和办法。