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首页> 外文期刊>Wiley interdisciplinary reviews. Data mining and knowledge discovery >Differentiating households to analyze consumption patterns: a data mining study on official household budget data
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Differentiating households to analyze consumption patterns: a data mining study on official household budget data

机译:区分家庭来分析消费模式:官方家庭预算数据的数据挖掘研究

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xml:id="widm1227-para-0001"> Official data, administered by National Statistic Institutes ( NSIs ), play crucial role for being a major element of the governmental economic and social decision‐making process. This strategic role raises a significant necessity for statistical authorities to adopt new data tools to shift the statistical quality of the published data to a higher level. Data mining ( DM ) techniques and algorithms are promising tools to provide new ways to mine the crucial, complex, and voluminous official data to complement or substitute the traditional and lagged‐behind tools that NSIs have been using. This study addresses this potential utilization of DM tools on official data with a specific problem in an important survey for official statistics: Household Budget Survey. Through this study, clustering techniques are employed to characterize the household types and association rule mining technique is used to mine consumption patterns for each differentiated type. It is aimed to integrate the proposed model into data preprocessing procedure of the NSI to be able to engage in the real time analyses and to contribute exactness and timeliness of the data. WIREs Data Mining Knowl Discov 2018, 8:e1227. doi: 10.1002/widm.1227 > This article is categorized under: Algorithmic Development Association Rules Application Areas Government and Public Sector Application Areas Industry Specific Applications
机译: xml:id =“widm1227-para-0001”> 国家统计机构管理的官方数据( NSIS ),为成为政府经济和社会决策过程的主要因素发挥至关重要的作用。这种战略职责提高了统计机构采用新数据工具将公布数据的统计质量转移到更高级别的统计质量的重要性。数据挖掘 ( DM )技术和算法是有希望的工具,为挖掘至关重要,复杂和大量的官方数据来补充或替代传统和滞后的工具的新方法 NSIS 一直在使用。本研究解决了这种潜在的利用 DM 官方数据官方数据的官方数据的工具:家庭预算调查。通过本研究,采用聚类技术来表征家庭类型和关联规则挖掘技术用于挖掘每个差异类型的消耗模式。旨在将所提出的模型集成到数据预处理程序中 NSI 能够从事实时分析并贡献数据的准确性和及时性。 电线数据挖掘知识iscov 2018,8:E1227。 DOI:10.1002 / WIDM.1227 > 本文分类为: 算法开发&关联规则 应用领域&政府和公共部门 应用领域&行业特定应用

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