Application of the K-Means Method for Clustering Land and Building Tax Payments Based on Tax Types (Case Study: BPKPAD Binjai City)

Riski Ramadhansyah, Akim Manaor Hara Pardede, Anton Sihombing
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Abstract

Land and Building Tax or abbreviated as PBB is a fee that must be paid for the existence of land and buildings owned by the community or residents. The determination of PBB in Binjai City is based on the application of the Land Value Zone (ZNT) which is close to the market price, which will be able to create equitable development throughout Binjai City. BPKPAD (Regional Revenue and Assets Financial Management Agency) Binjai City is a government agency that receives PBB payments from the community. Data - data on PBB payments for the people of Binjai City have been stored in an existing system and every year it will continue to increase so that it will cause data accumulation in the land and building tax archives. A data processing system is needed to manage these data, one of which can be done with data mining which can process piles of data into useful information and can be utilized by grouping PBB data based on criteria. Clustering is a method in data mining that can be used to automatically detect clusters of adjacent records that have a certain definition in all variables. K-Means algorithm is a simple algorithm to classify or group a large number of objects with certain attributes into groups (clusters). So that this system can be used as input for the Binjai City BPKPAD in finding solutions to increase regional income from PBB payments.
基于税种的土地和建筑税收K-Means聚类方法的应用(以滨江市为例)
土地和建筑税(Land and Building Tax,简称PBB)是社区或居民为拥有土地和建筑物而必须缴纳的费用。滨江市的地价基准的确定,是以接近市场价格的土地价值地带(ZNT)的适用为基础的,这样可以在滨江市创造公平的发展。BPKPAD(地区收入和资产财务管理机构)滨江市是一个政府机构,接收来自社区的PBB付款。数据-滨江市人民的PBB支付数据已经存储在现有系统中,并且每年都会继续增加,因此会在土地和建筑税务档案中造成数据积累。需要一个数据处理系统来管理这些数据,其中一个可以通过数据挖掘来完成,数据挖掘可以将成堆的数据处理成有用的信息,并可以根据标准对PBB数据进行分组。聚类是数据挖掘中的一种方法,可用于自动检测在所有变量中具有特定定义的相邻记录的聚类。K-Means算法是一种将大量具有一定属性的对象进行分类或分组的简单算法。这样,这个系统就可以作为滨江市BPKPAD寻找解决方案的输入,以增加区域收入。
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