Amir Bagja, K. Kusrini, M. Arief
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摘要

合作社是社会组织或经济机构,在经济潜力的增长、发展和社区成功方面发挥着非常重要的作用。合作活动之一是向社区成员提供信贷或贷款。合作信贷是最重要的银行业务之一,为社会提供信贷服务。在实践中,错误往往是由于不准确的信用分析或客户自己的行为而产生的。本研究的目的是比较朴素贝叶斯算法和支持向量机(SVM)的准确率结果,其中最好的准确率结果可以作为参考,以确定贷款的盈利能力。本研究使用的属性由11个属性组成,分别是:性别、婚姻状况、职业、亲属、名义收入、收入标准、贷款金额、贷款期限、利率、分期付款和阶层作为收入特征。本研究使用的数据集包括Daru Nahdla Capita伊斯兰教法合作社的166名成员。将数据进行5次分割,将数据集的70%作为测试数据,30%作为训练数据,对朴素贝叶斯算法进行测试的结果,得到的准确率值为97.00%,召回率为100.00%,F1得分为99.00%。准确率98.00%。因此,朴素贝叶斯算法是一种分类和预测准确的算法
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Komparasi Algoritma Naïve Bayes Dan Support Vector Machine (SVM) Untuk Klasifikasi Kelayakan Pemberian Pinjaman
Cooperatives are social organizations or economic bodies that have a very important role in the growth, development of economic potential and community success. One of the cooperative activities is the provision of credit or loans to community members. Cooperative credit is one of the most important banking activities and serves to provide credit to the community. In practice, errors often arise due to inaccurate credit analysis, or the behavior of the customers themselves. The purpose of this research is to compare the accuracy results between the Naive Bayes algorithm and Support Vector Machine (SVM), where the best accuracy results can later be used as a reference to determine the profitability of lending. The attributes used in this study consist of 11 attributes, namely: Gender, marital status, occupation, relatives, nominal income, income criteria, loan amount, loan term, interest rate, installments and class as income characteristics. The dataset used in this study includes 166 members of the Daru Nahdla Capita Shari'ah cooperative. The results of testing the naive bayes algorithm after dividing the data five times, dividing the data set 70% as test data and 30% as training data, obtained a precision value of 97.00%, recall 100.00%, F1 score 99.00%. and accuracy 98.00%. Thus, the Naive Bayesian algorithm is an algorithm that shows accurate classification and prediction
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