Session 61 Financial Partners’ Journey Through NSLDS Pam Eliadis and Valerie Sherrer
2 Objectives Identify how loan level data affects student eligibility Specify how the flow of enrollment data impacts timely conversion to repayment Examine ways financial partners can improve NSLDS Data Quality Recognize what data reported to NSLDS impacts the Cohort Default Rate Define NSLDS Security rules and user responsibilities Re-engineering NSLDS to Enhance Student Aid History Management
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4 Student Eligibility 1
5 Loan level data that affect Student Eligibility: –Loan Statuses –Originations –Disbursements –Cancellations/Refunds –Outstanding Balances
6 Student Eligibility Schools see eligibility information: 1.ISIR 2.NSLDS FAP Website
7 Student Eligibility Loan Status Default Status is based on Lender Claim Payment Rehabilitated Loans should be reported timely
8 Student Eligibility - Aggregates Three Major Variables: –Net Loan Amounts (Guaranty minus Cancellations) –Disbursements –Outstanding Principal Balance Aggregate Loan Limits are calculated for each student on NSLDS to assist the FAA in determining student eligibility.
9 Student Eligibility – Loan Status Identification of Consolidation’s Underlying Loans: –Loan Status Code = PN, DN, PC, DP or PF –Loan Status Date within 210 days (before or after) of the Consolidation Loan Date
10 Student Eligibility Originations Report Originations as they happen Helps Schools see pending aid for Transfer Students
11 Student Eligibility Cancellations/Refunds Factor in determining the Net Loan Amount for aggregate calculation
12 Student Eligibility Disbursements Factor in aggregate calculation
13 Student Eligibility Outstanding Principal and Interest Balance Amounts OPB factored in aggregate calculations, OIB and Other Fees are not
14 2 Enrollment Reporting
15 Enrollment Reporting Impacts of Enrollment Reporting on Financial Partners –Enrollment Reporting Flow –Changes to the Loan Status –Impact on the Date Entered Repayment –Effects of Non-Reported Enrollment Changes
16 Enrollment Reporting How do students get on a school’s roster? –Reporting of a loan –School adds them to a roster –Reporting of an ACG or SMART Grant (as of Jan. 2007)
17 Enrollment Reporting Flow
18 Enrollment Reporting When student drops below half-time attendance: Loan Status: IA to IG
19 Enrollment Reporting When student re-enters school: Loan Status: RP to DA
20 Enrollment Reporting Impact on Date Entered Repayment (DER) –Enrollment Effective Date used to drive DER –DER is loan based, not student based –GA Data Provider Instructions Grace = Separation + 6 months DER = Separation + 6 months + 1 day After entering repayment, DER does not change
21 Enrollment Reporting Possible Effects of Non-Reported Enrollment Changes –Loan converted to repayment early –Loan entering repayment delayed –Borrower enters grace period without knowledge
22 Enrollment Reporting Data Quality Monitoring 2006IA/IDDA Jan 260,389 65,378 Feb 282,46982,381 Mar 294,92191,004 Apr 290,53287,451 May 297,56987,417 Jun 281,14073,435 Jul 265,88164,955 Aug261,977 60,826 Inconsistencies between enrollment and loan statuses
23 Enrollment Reporting Effective Enrollment Reporting and usage: –Reduces risk of default –Minimizes technical defaults NSLDS: –Maintains the official enrollment data –Provides GA’s enrollment data weekly –Instructs GA’s to inform Lender/Lender Servicers timely
24 3 NSLDS Data Quality
25 NSLDS Data Quality Examine how Financial Partners can improve NSLDS Data Quality –Timely reporting to GAs by lenders –Accurate Contact information –Accurate information
26 NSLDS Data Quality Benefits of Timely Reporting –Timely reporting of information affecting student eligibility –New data reported quickly for decision making –Effective program management and oversight
27 NSLDS Data Quality Accurate Contact Information
28 NSLDS Data Quality – Accurate Contact Information Contact information displayed on NSLDS web sites Contact Information used for the Interactive Voice Response Unit for FEDAID
29 NSLDS Data Quality – Accurate Information Resolve reporting errors Close unconsummated loans Report loan transfers
30 NSLDS Data Quality – Accurate Information Resolve reporting errors: –Actively work reporting errors –Analyze loan errors holistically –Resolve for next submission
31 NSLDS Data Quality –Accurate Information Non-Closure of Unconsummated Loans: –May cause GAs to “assume” the loan status –Creates conflicting information
32 NSLDS Data Quality Accurate Information Unconsummated Loan Aging Assumed by the GA
33 NSLDS Data Quality GA Data Quality Measures –Review Benchmark reports –Data Integrity Improvement Plans –Reconcile Fee Payment Backup Data –Annual Reconciliation with NSLDS –Research Reasonability Report variances
34 NSLDS Data Quality Accurate Information
35 NSLDS Data Quality – Accurate Information Number of Identifier Conflicts by Month Jan ,708 Feb ,691 Mar ,714 Apr ,623 May ,464 Jun ,601 Jul ,835 Aug ,208
36 4 Cohort Default Rates
37 Cohort Default Rates Recognize what data reported to NSLDS impacts the Cohort Default Rate (CDR) –Formula –Fields –Rates –Frequency –Adjustments
38 Cohort Default Rates Borrowers who entered repayment in FY04 and defaulted in FY04 & 05 divided by Borrowers who entered repayment in FY04
39 Cohort Default Rates What NSLDS fields affect the CDR calculation? –Date Entered Repayment (DER) –Loan Type –Date Claim Paid –Claim Reason Code –Loan Status Codes –Student Identifiers
40 Cohort Default Rates Two Lender Calculations –Originating Lender Rate –Current Holder Rate One GA Calculation
41 Cohort Default Rates How often are the CDRs Calculated? –Draft Cohort Default Rate (CDR) Calculate January Publish February –Official Cohort Default Rate (CDR) Calculate August Publish September
42 Cohort Default Rates CDR on the Web
43 Cohort Default Rates CDR on the Web
44 Cohort Default Rates How do Financial Partners request an adjustment to their CDR? –Lenders: Data Correction to GA within 30 days of publication The GA has 15 days to respond –GA: GA has 45 days to submit data corrections CDR Guide for GAs and Lenders:
45 5 NSLDS Security
46 NSLDS Security Define NSLDS Security rules and user responsibilities –DCL Gen –Audit Reports –Data Mining –User IDs
47 NSLDS Security Dear Colleague Letter GEN –NSLDS may not be used for marketing purposes –Student/Borrower’s permission is required –Reminds users of Federal Student Aid’s enforcement obligation
48 NSLDS Security Audit Reports –Every student look-up is tracked by User ID –Lender Audit Security Reports Requested by Destination Point Administrator Number of look-ups by user id Past 90 days
49 NSLDS Security No Data Mining Completely Automated Public Turing Test to Tell Computers and Humans Apart (CAPTCHA) tool Monitoring top 20 users and organizations
50 NSLDS Security User ID’s –Will be disabled after 12 months of inactivity –Cannot be shared with colleagues –Obtain through FSAwebenroll.ed.gov
51 6 NSLDS Re-engineering
52 NSLDS Re-Engineering NSLDS Functionality –Monitor aid eligibility through applicant pre- screening, post-screening, and transfer monitoring processes; –Receive student enrollment updates from schools and their servicers, process and store this information in the Operational Data Store (ODS), and then distribute relevant enrollment updates to interested trading partners (i.e. lenders, lender/servicers, guaranty agencies).
53 NSLDS Re-Engineering NSLDS Functionality –Manage the default rate processes including calculation, distribution, and publishing of default rates –Provide aid-level calculation services and provide SAHM operational reports and metrics –Manage receipt of student, aid, and organization data to provide an integrated student view of financial aid history
54 NSLDS Re-engineering Goals for Re-Engineering –Align with Federal Student Aid Data Strategy Efforts Implement FFEL data flow changes to facilitate design and implementation of Information Framework(IF)/ Student Aid History Management (SAHM)
55 NSLDS Re-engineering Goals for Re-Engineering Improve Data Usefulness: –Data Timeliness –Data Quality –Program Monitoring and Oversight
56 NSLDS Re-engineering FFELP Community Benefits: –Data source becomes responsible for reporting –Using current industry data exchange formats and methods (i.e. XML Schemas) –Standardized reporting for all life-cycle stages (i.e CommonLine) –Reduced duplicative reporting among FFEL participants –Interface Consistency
57 NSLDS Re-engineering Students, Parents, and Schools Benefits: –Timely information for making eligibility decisions –Enhanced data integrity –Program Information Parity
58 NSLDS Re-engineering Federal Student Aid Benefits: –Improved Customer Service to all constituents –Facilitates better decision making –Enhanced data integrity –Improved oversight of FFEL Program –Meets Target State Vision for the Enterprise
59 NSLDS Re-engineering Next Steps: –Collaboration with community stakeholders –Focus Groups being held in conjunction with both Federal Student Aid conferences –Definition of requirements
60 Thank you! We appreciate your feedback and comments. We can be reached at: Phone: Valerie Sherrer Pam Eliadis at Fax: