Study: Social Security numbers are predictable
The Social Security Administration called the study 'a dramatic exaggeration'
July 7, 2009 12:02 PM ETIDG News Service - Social Security numbers (SSNs) may not be as random as believed, as a new study contends that powerful mathematical techniques combined with open-source research can, in some cases, reveal a person's secret number.
The study, published on Monday in the journal Proceedings of the National Academy of Sciences, serves as a stark warning that SSNs are increasingly vulnerable, putting more people at risk of identity theft.
"Unless mitigating strategies are implemented, the predictability of SSNs exposes them to risks of identity theft on mass scales," the study said.
The study comes from Carnegie Mellon University's Alessandro Acquisti, an assistant professor of information technology and public policy, and Ralph Gross, a postdoctoral researcher.
The Social Security Administration responded on Tuesday, saying the public should not be alarmed since there is no foolproof method for predicting an SSN. However, the agency said it is developing a new system to randomly assign SSNs that will be in place next year, although those efforts are unrelated to the study.
"The method by which Social Security assigns numbers has been a matter of public record for years," the statement said. "The suggestion that Mr. Acquisti has cracked a code for predicting an SSN is a dramatic exaggeration."
Gross and Acquisti developed an algorithm that analyzed data from the Social Security Administration's Death Master File, a public database of some 65 million Americans who have died and their SSNs, which is used for antifraud purposes.
They looked for numerical patterns in the deceased's SSNs, drawing correlations between where a person was born and their birth date and how that data relates to their SSN.
"Our prediction algorithm exploits the observation that individuals with close birth dates and identical state of SSN assignment are likely to share similar SSNs," they wrote.
The first three digits of an SSN is an area number, which is based on the Zip code of the mailing address provided when a card was applied for. The next two digits is a group number, which assigned in a "precise but nonconsecutive order between one and 99." The last four digits is a serial number.
The algorithm, which the authors did not detail, successfully ascertained the first five digits for 44% of the records in the Death Master File for people born between 1989 to 2003. The complete SSN could be picked out for 8.5% of those people in under 1,000 attempts. For people born between 1973 and 1988, the algorithm could predict the first five digits for 7% of those in the Death Master File.
"SSNs were designed as identifiers at a time when personal computers and identity theft were unthinkable," the study said.
Reprinted with permission from
Story copyright 2009 International Data Group. All rights reserved.
Social Security numbers
Additional Resources



Learn the important issues you must consider before starting your next mobility initiative. Get your mobility white paper from IDC now, compliments of Sybase.
White Papers & Webcasts
The Tangled Web: Silent Threats & Invisible Enemies
Download Now
Data in Action: Making the Planet Smarter
Register Now
Email Archiving: A Business-Critical Application
Get this paper now!
Gene Kim's Practical Steps to Achieve and Maintain NERC Compliance
Learn seven steps operators can take to meet IT configuration requirements set forth in the NERC-CIP standards.
The Workday User Experience Video
Watch Workday's Creative Director, Scott Lietzke, discuss the business-centered design philosophy at Workday.
Not Just Words: Enforce Your Email and Web Acceptable Usage Policies
Get this paper now!
Business Process Framework Demo
Learn about Configurable Business Processes and Calculated Fields. Watch Now!
The New World of eCrime: Targeted Brand Attacks and How to Combat Them
Download This Whitepaper Now!
Manager Experience Demo
Go beyond self-service solutions to perform more effectively. Watch Now.

