Satia Suhada, Taufik Hidayatulloh, Siti Fatimah
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引用次数: 11

摘要

人民信贷银行(BPR) Nusamba苏加亚,是一家银行金融机构,接受存款、储蓄或其他形式,并将资金作为企业进行交易。然而,随着时间的推移,有一些信贷消费者陷入了困境,这些信贷崩溃可能会阻碍货币的流动,给银行造成损失。总的来说,BPR Nusamba苏加亚(BPR Nusamba suaja)聘请信用分析人员分析信贷额度和实地调查以减少不良信贷额度的能力。因此,为了帮助信贷价值客户决策活动的信用分析人员,需要一种基于计算机的系统模型,这种系统可以提供数据分析能力、对信贷申请人的标准评估的便利。支持决策系统(SPK)是帮助申请人进行信用筛选的最佳选择。该系统的设计采用了一种名为FMADM的多边杀伤升减生产模式(WP)的模糊决策方法,这种方法之所以被选中,是因为标准的降低计算过于复杂,因此很容易研究。预计构建的系统将有助于BPR Nusamba suaja的工作,特别是在信用分析部门对信贷进行筛选时,可以加快申请人的信用筛选过程,并可以减少判断消费者是否值得信贷的错误。关键字——信贷、信贷MADM、weghmba衍生品银行信贷(BPR)但随着时间的推移,有一种不良信用,这种信用可以抵消交通的流动,导致银行失去资金。将军,BPR Nusamba苏加亚派遣一名信用分析人员来评估评估评估人员的能力,并进行实地评估以消除不良债务人。因此,在寻求帮助消费者决策信用分析人员的建议时,请求计算机系统的基础上,这种模式可以在数据分析工具评估评估评估评估中提供帮助。决定支持系统(DSS)是帮助选择获得批准信用申请的正确选择。系统是由使用的是多种多样的过敏反应产品(WP)的设计,这种方法之所以被选中,是因为威信柜的可变计算是不太复杂的,所以很容易学习。该系统预计将帮助BPR Nusamba苏加亚的工作,特别是在应用机构信用分析的部分,选择可以启动股票批准信用申请的程序,并可能减少可转让信用的错误。Keyword——信贷,模糊的MADM, weighted product
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Penerapan Fuzzy MADM Model Weighted Product dalam Pengambilan Keputusan Kelayakan Penerimaan Kredit Di BPR Nusamba Sukaraja
Bank perkreditan Rakyat (BPR) Nusamba Sukaraja yang merupakan lembaga keuangan perbankan yang menerima simpanan deposito, tabungan atau bentuk lainnya dan menyalurkan dana sebagai usaha. Akan tetapi seiring berjalannya waktu tercatat ada beberapa konsumen kredit mengalami kredit macet dimana kredit macet tersebut dapat menghambat arus lalu lintas uang dan menyebabkan kerugian bagi bank. Pada umumnya, BPR Nusamba Sukaraja merekrut tenaga kerja dibagian credit analyst untuk melakukan analisi terhadap kemampuan membayar pemohon kredit dan survey lapangan untuk mengurangi kredit macet. Oleh karena itu dalam upaya membantu credit analyst dalam kegiatan pengambilan keputusan konsumen layak kredit, diperlukan model sistem berbasis komputer yang apat memberikan kemudahan dalam kemampuan analisa data, perhitungan penilaian kriteria pemohon kredit. Sebuah sistem pendukung keputusan (SPK) merupakan pilihan tepat untuk membantu penyeleksian pemohon kredit. Sistem dirancang dengan menggunakan metode Fuzzy Multiple Attribute Decission Making (FMADM) model Weighted Product (WP), metode ini dipilih karena perhitungan pembobotan kriteria yang tidak terlalu rumit, sehingga mudah dipelajari. Sistem yang dibangun diharapkan dapat membantu kerja BPR Nusamba Sukaraja, khususnya pada bagian credit analyst dalam melakukan penyeleksian pemohon kredit, dapat mempercepat proses penyeleksian pemohon kredit dan dapat mengurangi kesalahan daam menentukan konsumen layak kredit. Kata Kunci— kredit, fuzzy MADM, weighted product Bank Perkreditan Rakyat (BPR) Nusamba Sukaraja is banking financial institution that accepts savings deposits, deposits or any other form and transmit the funds as a business. But as time goes by was recorded there are some consumer credit are having bad credit which can impede the flow of traffic and cause a loss of money for the bank. In General, BPR Nusamba Sukaraja hiring the credit analyst to conduct an analysis of the ability of paying the credit applicant and survey the field to reduce the bad debts. Therefore, in an attempt to help the credit analyst in consumer decision-making activities deserve credit, required computer-based system that models can provide ease in data analysis ability assessment applicant criteria calculation credit. A decision support system (DSS) is the right choice to help selecting appropriate credit applicants. The system is designed with the use of methods of Fuzzy Multiple Attribute Decision Making (F-MADM) model Weighted Product (WP), this method was chosen because the calculation of the weighting of criteria that are not too complicated, so easy to learn. Systems that were built are expected to help the work of BPR Nusamba Sukaraja, particularly on the part of credit analyst in the conduct of the applicant's credit, selection can accelerate the process of selecting appropriate credit applicants and could reduce mistakes in determine consumers deserve credit. Keyword— credit, fuzzy MADM, weighted product
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