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PWIFE-321 - ●●## Analysis of the data setThe dataset was downloaded from a public dataset website and used for financial and credit analysis. Since anonymized public data is used to protect personal information, there is no need for personal information protection. The data set was read and divided into Train and Test datasets with a ratio of 7:3 for the process of training and validating the machine and deep learning models. The data set is divided into a number of categories such as location, age, income, and classification, and contains 5190 records.### Percentage of Alex Credit Classification ClientsI have entered 3190 records in the data set of the length to create a binary classification model of credit classification issues. It contains 2200 worthy customers and 990 unsuccessful customers. As a result, 69.4% of the customers are worthy and 30.6% of the customers are unsuccessful.The data set should be divided into 7:3 ratios with the split process to train and verify the machine and deep learning models. The diagram below indicates that training of the models would consist of 2233 instances of Use and validation of the models would consist of 957 instances of Use.### Contribution of High results without analysisFor the classification process, only the binary classification framework was used to classify the data. Fault data classification is a problem, which can cause a high degree of accuracy without evaluation. Therefore, the accuracy was not used only as a degree of accuracy, but was also considered in the calculation of Accuracy, Precision, Recall, and F1 Score results.The data set was then divided into a number of categories such as location, age, income, and classification, and in total contains 5190 records. The dataset is divided into a number of categories such as location, age, income, and classification, and contains 5190 records. The data set was then divided into a number of categories such as location, age, age, income, and classification, and contains 5190 records. The data set is divided into a number of categories such as location, age, income, and classification, and contains 5190 records. The data set is divided into a number of categories such as location, age, age, income, and classification, and contains 5190 records. The data set is divided into a number of categories such as location, age, income, and classification, and contains 5190 records. The data set is divided into a number of categories such as location, age, age, income, and classification, and contains 5190 records. The data set is divided into a number of categories such as location, age, age, income, and classification, and contains 5190 records. The data set is divided into a number of categories such as location, age, age, six...## Open source acc Input Frame:Attack the data setSince anonymized public data is used to protect personal information, there is no need for personal information protection. The data set was read and divided into Train and Test datasets with a ratio of 7:3 for the process of training and validating the machine and deep learning models. The data set is divided into a number of categories such as location, age, age, income, and classification, and contains 5190 records. The data set is divided into a number of categories such as location, age, age, income, and classification, and contains 5190 records. the data set is divided into a number of categories such as location, age, age, income, and classification, and contains 5190 records. The data set is divided into a number of categories such as location, age, age, income, and classification, and contains 5190 records. The data set is divided into a number of categories such as location, age, age, income, and classification, and contains 5190 records. The data set is divided into a number of categories such as location, age, age, income, and classification, and contains 519 the data set is divided into a number of categories such as location, age, age, income, and classification, and contains 5190 records. the data set is divided into a number of categories such as location, age, age, income, and six...## Analysis of the data setThe dataset was downloaded from a public dataset website and used for financial and credit analysis. Since anonymized public data is used to protect personal information, there is no need for personal information protection. The data set was read and divided into Train and Test datasets with a ratio of 7:3 for the process of training and validating the machine and deep learning models. The data set is divided into a number of categories such as location, age, age, income, and classification, and contains 5190 records. The data set is divided into a number of categories such as location, age, age, income, and classification, and contains 5190 records. the data set is divided into a number of categories such as location, age, age, income, and classification, and contains 5190 records. The data set is divided into a number of categories such as location, age, age, income, and classification, and contains 5190 records. the data set is divided into a number of categories such as location, age, age, income, and classification, and contains 5190 records. The data set is divided into a number of categories such as location, age, age, income, and classification, and contains 5190 records. the data set is divided into a number of categories such as location, age, age, income, and classification, and contains 5190 records. The data set is divided into a number of categories such as location, age, age, income, and classification, and contains 5190 records. the data set is divided into a number of categories such as location, age, age, income, and classification, and contains 5190 records. The data set is divided into a number of categories such as location, age, age, income, and classification, and contains 5190 records. the data set is divided into a number of categories such as location, age, age, income, and classification, and contains 5190 records. The data set is divided into a number of categories such as location, age, age, income, and classification, and contains 5190 records. the data set is divided into a number of categories such as location, age, age, income, and classification, and contains 5190 records. 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2017年1月1日