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Survey on incremental and iterative models in big data mining environment

机译:大数据挖掘环境中增量和迭代模型的调查

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It has become increasingly popular to mine big data in order to gain insights to help business decisions or to provide more desirable personalized, higher quality services. They usually include data sets with sizes beyond the ability of commonly used software tools to retrieve, manage, and process data within an adequate elapsed time. So there is big demand for distributed computing framework. As new data and updates are constantly arriving, the results of data mining applications become incomplete over time. In such situations it is desirable to periodically refresh the mined data in order to keep it up-to-date. This paper describes the existing approaches to big data mining which uses these frameworks in an incremental approach that saves and reuses the previous states of computations. It also explores several enhancements introduced in this same framework with iterative mapping characteristics. Gaps in the current methods are identified in this literature review.
机译:挖掘大数据以获取见识以帮助制定业务决策或提供更理想的个性化,更高质量的服务已变得越来越普遍。它们通常包含的数据集的大小超出了常用软件工具在足够的时间范围内检索,管理和处理数据的能力。因此对分布式计算框架有很大的需求。随着新数据和更新的不断到来,数据挖掘应用程序的结果将随着时间的推移变得不完整。在这种情况下,需要定期刷新所采集的数据,以使其保持最新状态。本文介绍了现有的大数据挖掘方法,该方法以增量方式使用这些框架,从而节省并重用以前的计算状态。它还探索了在同一框架中引入的具有迭代映射特性的一些增强功能。本文献综述指出了当前方法中的空白。

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