German Credit Data Set Arff

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German Credit Data Set Arff Average ratng: 3,0/5 8900 votes
German Credit Data Set Arff

I am working on a project to develop a system that detect credit card fraud. Abit il9 pro v 1.0 drivers. I have no data set to test my system on instead I want to create a database that looks similar to that of a real bank database. Are there some samples out there? I mean one that would show some columns to include? Of course, I know it depends on the requirements of my system but, what have you done - that is what I want to see. I know some would have worked on similar situations.

Corp

What have you included? PS: I know (from SO) that credit card information must not be stored without authorization or some policies out there BUT this is specifically for demonstrating my system, just demonstration! Datasets like this will typically be 'academic', meaning scrubbed and anonymized and used for demo or publishing purposes.

One example is the ', which is in as used. This dataset classifies people described by a set of attributes as good or bad credit risks. Comes in two formats (one all numeric). Also comes with a cost matrix. As far as I can tell, this data is the story of 1000 credit lines and not specifically credit cards.

One useful thing may be to reverse search who is using this dataset, namely. Other possibilities:.

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1) Install WEKE then 2) Download the German credit data set, save the file with the.arff format then make the experiments as per your syllabus. There may be several options for tools available for a data set. When a bank receives a loan application. Here is a link to the German Credit data.

German Credit Data Set Arff

German Credit Data Set

dataset (or ) This file concerns credit card applications. All attribute names and values have been changed to meaningless symbols to protect confidentiality of the data. This dataset is interesting because there is a good mix of attributes - continuous, nominal with small numbers of values, and nominal with larger numbers of values. There are also a few missing values.