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Challenge Description

We are seeking approaches to pooling mortgage loans (hereafter referred to simply as "loans"). We recommend an approach based on "knapsack alrogithms", a family of algorithms that attempt to maximize the value of items placed in a container (AKA a knapsack) without exceeding the container's capacity.
In our subject area, the container/knapsack is called a pool, and the items to be placed into those pools are loans.
Your challenge: given approximately 1.4 million loans, try to place as many of them as possible into pools. There are ten classes of pools, each of which has a specific value and a set on constraints that determine which loans can be placed into the pool. You can make multiple instances of each pool class; however, please remember that a given loan can appear in at most one pool. Your base score will be the total values of all of the pools that you successfully construct. On top of this base score, you will receive bonus points for completeness of your solution, innovation, and throughput/efficiency.

Loans

Mortgage loans are the input dataset for this challenge. For the purposes of this challenge, we have supplied you with a set of about 1.5 million loan records. There are twelve attributes per loan:

Attribute Type Description
loan_id string The loan's unique identifier
upb float The loan's unpaid principal balance
note_rate float The loan's note rate, AKA its interest rate
borrower_fico int The primary borrower's credit (FICO) score
coborrower_fico int The coborrower's credit (FICO) score -- only present if more than one borrower
combined_fico int If both borrower_fico and coborrower_fico are non-null then this is the average of those two values, else it is equal to borrower_fico
state string The two-letter state code where the property is located
dti int debt-to-income ratio of the borrower
ltv int loan-to-value ratio -- ratio of the amount of the loan to the price of the home
maturity_date string (form is mmyyyy) the month and year in which the loan matures, AKA, when the balance is scheduled to reach zero
loan_term int The duration of the loan, expressed as months
property_type string Two-letter code indicating the type of dwelling (SF for single family, CO for condo, etc.)

Input Files

The input dataset is comprised of 16 files in the GitHub repo, fnma-dataset-00.txt throught fnma-dataset-15.txt. You should clone the repo and then concatenate the files to create a single input file. The fnma-dataset-00.txt file has a header row, so make sure that is the file that is at the top of the concatenated file.

Pools

Your challenge is to build as many pools of loans as you can from the loan dataset, and to maximize the value of each of the pools that you build. There are ten classes of pools. Each pool class has a capacity, which is the maximum total UPBs of the loans placed into the pool. Each pool also has a set of constraints. These constraints are the rules that define the loans that are allowed to be added to the pool; for example, a pool might only allow loans where the DTI (debt-to-income ratio) is between 28 and 42. There are overall constraints that apply to all pool classes, and there are specific constraints for each class.

Overall Constraints

  • Maturity Date -- all loans within a pool must have the same maturity_date
  • Loan Term -- all loans within a pool must have the same loan_term
  • FICO -- if combined_fico is not null, then it must be used for all calculations involving FICO scores
  • Property Type -- optional bonus constraint -- for each pool that restricts its loans to all have the same property_type value, for example if they are all loans for condos ('CO'), then you will receive bonus points for adhering to this optional constraint.
  • Most Important Of All -- A loan can be in at most one pool

Pool Classes and Constraints

There are ten pool classes. Each class has a set of constraints that determine which loans are eligible to be placed into pools of that class. There are six of these specific constraints per class:

Constraint Description
Pool Size The min and max size of the pool, where size is defined as the sum of the UPBs of the loans in the pool
Note Rate The min and max loan note_rate value allowed in the pool
FICO Score The min and max combined_fico value allowed in the pool
State % The maximum percentage of loans from any given US state allowed into the pool; for example, if the value is 5%, then the total number of loans from a single state, such as NY, cannot exceed 5% of the loans in the pool
DTI The min and max dti value allowed in the pool
LTV The min and max ltv value allowed in the pool

As previously mentioned, there are ten pool classes, each of which has preset values for the six specific constraints described above:

Class Size Note Rate FICO State % DTI LTV
1 $5,000,000 - $20,000,000 5.00 - 7.00 640 - 745 5% 35 - 50 75-85
2 $5,000,000 - $20,000,000 4 - 6 600 - 770 5% 40 - 45 70 - 90
3 $5,000,000 - $20,000,000 3 - 7 600 - 700 10% 45 - 55 60 - 95
4 $5,000,000 - $20,000,000 3 - 7 670 - 750 5% 47 - 52 35 - 80
5 $5,000,000 - $20,000,000 3 - 7 675 - 780 5% 30 - 55 60 - 85
6 $5,000,000 - $30,000,000 3 - 7 690 - 790 15% 15 - 35 70 - 85
7 $5,000,000 - $30,000,000 2 - 5 720 - 850 5% 10 - 45 70 - 80
8 $15,000,000 - $40,000,000 1.5 - 7 550 - 740 5% 20 - 45 0 - 85
9 $15,000,000 - $40,000,000 1.5 - 9 730 - 770 5% 35 - 45 90 - 95
10 $15,000,000 - $40,000,000 1.5 - 6.5 400 - 850 25% 20 - 60 70 - 99

Pool Value

Every pool class has an associated value, or score. Class 1 has the highest score, and they descend from there to class 10, which has the lowest score. Your implementation will be evaluated partially on the sum of the scores of the pools that you construct, so you want to optimize your algorithm to favor the construction of lower-numbered pool classes (1, 2, 3) over the construction of higher-numbered pool classes.

Output Format

In order for us to evaluate your implementation, we need the output to be in a specific format.

Output File Name Format

Your output should consist of one text file per pool that you generate. The file name should be of the form pool--.txt; for example, if you generate two class-three pools and 1 class-four pool, then the file names would be:

  • pool-3-1.txt
  • pool-3-2.txt
  • pool-4-1.txt

Output Row Format

Each pool file should contain one loan per line. Each line should contain all of the loan's input attributes/columns, delimited by pipes.

Utilize Our Mentors

We have a group of mentors who are competent programmers and are knowledgeable in the mortgage subject domain. Do not hesitate to reach out to us at our table or via Slack.

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