2022
DOI: 10.47709/cnahpc.v4i2.1580
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Evaluation of ATM Location Placement Using the K-Means Clustering in BNI Denpasar Regional Office

Abstract: The existence of an ATM location requires a placement evaluation that aims to support business and provide convenience and comfort to customers when using or transacting. This study aims to evaluate the placement of ATM locations using the K-Means method, and research using data obtained from data mining to obtain decisions that lead to not strategic, strategic, and very strategic ATM locations. This study uses data sourced from the BNI ATM database and performance data in one semester or six months, namely Ja… Show more

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(1 citation statement)
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“…The K-Means algorithm, a method for non-hierarchical data grouping, endeavors to divide the available data into multiple groups by identifying similar characteristics, thereby efficiently and accurately segregating data with shared attributes from those with differing ones (Tarigan et al, 2023). The K-Means method offers the advantage of being relatively straightforward to implement, capable of managing sizable datasets, and executing the process swiftly (Suwirya et al, 2022). K-Means clustering can serve as preprocessing for other classification methods because it efficiently organizes data into clusters based on similarity, aiding subsequent algorithms in discerning patterns and making accurate predictions (Usman & Stores, 2020).…”
Section: Introductionmentioning
confidence: 99%
“…The K-Means algorithm, a method for non-hierarchical data grouping, endeavors to divide the available data into multiple groups by identifying similar characteristics, thereby efficiently and accurately segregating data with shared attributes from those with differing ones (Tarigan et al, 2023). The K-Means method offers the advantage of being relatively straightforward to implement, capable of managing sizable datasets, and executing the process swiftly (Suwirya et al, 2022). K-Means clustering can serve as preprocessing for other classification methods because it efficiently organizes data into clusters based on similarity, aiding subsequent algorithms in discerning patterns and making accurate predictions (Usman & Stores, 2020).…”
Section: Introductionmentioning
confidence: 99%