With the current economic
situations, credit card companies are using big data analytics now more than
ever. If you have ever wondered how you can either get approved or disapproved for
a credit card within a few minutes if not seconds based on just a few numbers
input by you then this blog is for you. Credit card companies have collected
years of data and have set up certain predictive metrics to figure out if the
person applying for a credit card should be approved or not. I found a great
program for this type of analysis called BigML. This is another free program
that is incredibly powerful.
In order to use BigML you must
first create a username and password. You will receive an email with a
confirmation link once you have input your information. Then click on the
confirmation link in your email and you are ready to start working with this
amazing product. It has a few datasets already listed for you to learn with and
one of those is, “Credit Application’s dataset.” I used that data to set up
diagrams and a prediction sheet.
Once you have input the data
your screen will change to a breakdown screen of the different categories
within the dataset provided. This is represented in figure 1 below. After you
are on that screen you can click on view dataset and it will change to show miniature
graphs of each category on the right side of the screen. This is shown in
Figure 2 below.
Figure
1: Data Category Breakdown
Figure
2: Display of Miniature Category Graphs
Once you are done with that feature
you can click on the Models tab at the top. This will take you to a new screen
where you will need to click on the model you wish to look at. In my opinion
this is the best part of the program because it gives you an overall view of
how each path can be traced to see which people would be approved or denied.
This could be useful to anyone thinking about getting a credit card because they
could look at the branch that they fit in and have a good idea if they would be
approved for a credit card. Figure 3 below shows what this looks like with a
good path of 64.61% confidence based on the answers provided on the right side
of the screen. Figure 4 shows a representation of a bad applicant with a 52.30%
confidence based on the information on the right of the screen.
Figure 3: Good Applicant
Figure 4: Bad Applicant
Once you are done looking at
this portion of the program you can click on the predictions section of the
program. This section is probably the most useful for the credit card company
because you input the applicant’s information and it will tell you if this
applicant is a good or bad person for credit approval. This allows for quick
approval for retail credit cards. Figure 5 below shows the prediction screen
and some of the input sections.
Figure 5: Prediction Screen
If you are interested in trying out this program please go to:
Couldn't find the dataset so I could closely follow, but your tute was very helpful nonetheless.
ReplyDeleteThanks