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A Clustering Algorithm via Density Perception and Hierarchical Aggregation Based on Urban Multimodal Big Data for Identifying and Analyzing Categories of Poverty-Stricken Households in China

机译:基于城市多模式大数据的密度感知和分层聚合的聚类算法识别和分析中国贫困家庭类别的群体

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Nowadays, urban multimodal big data are freely available to the public due to the growing number of cities, which plays a critical role in many fields such as transportation, education, medical treatment, and land resource management. The successful completion of poverty-relief work can greatly improve the quality of people’s life and ensure the sustainable development of the society. Poverty is a severe challenge for human society. It is of great significance to apply machine learning to mine different categories of poverty-stricken households and further provide decision support for poverty alleviation. Traditional poverty alleviation methods need to consume a lot of manpower, material resources, and financial resources. Based on the density-based spatial clustering of applications with noise (DBSCAN), this paper designs the hierarchical DBSCAN clustering algorithm to identify and analyze the categories of poverty-stricken households in China. First, the proposed method adjusts the neighborhood radius dynamically for dividing the data space into several initial clusters with different densities. Then, neighbor clusters are identified by the border and inner distances constantly and aggregated recursively to form new clusters. Based on the idea of division and aggregation, the proposed method can recognize clusters of different forms and deal with noises effectively in the data space with imbalanced density distribution. The experiments indicate that the method has the ideal performance of clustering, which identifies the commonness and difference in characteristics of poverty-stricken households reasonably. In terms of the specific indicator “Accuracy,” the accuracy increases by 2.3% compared with other methods.
机译:如今,由于城市数量越来越多的城市,城市多式化大数据自由地提供给公众,这在许多领域起着关键作用,如运输,教育,医疗和土地资源管理。成功完成扶贫工作可以大大提高人民生活质量,确保社会的可持续发展。贫困是人类社会的严峻挑战。涂抹机器学习来挖掘不同类别的贫困家庭并进一步提供决策支持是具有重要意义。传统的扶贫方法需要消耗许多人力,物质资源和财务资源。基于噪声(DBSCAN)的基于密度的空间聚类,本文设计了分层DBSCAN聚类算法,以识别和分析中国贫困户的类别。首先,该方法动态地调整邻域半径,以将数据空间划分为具有不同密度的几个初始簇。然后,邻居集群由边界和内距不断地识别并递归地聚合以形成新的簇。基于划分和聚合的思想,所提出的方法可以在具有不平衡密度分布的数据空间中有效地识别不同形式的簇,并有效地处理噪声。实验表明,该方法具有聚类的理想表现,这概述了贫困家庭合理特征的共识和差异。就具体指标“精度”而言,与其他方法相比,精度增加2.3%。

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