Title :
Precursory steps to mining HCFA health care claims
Author :
Sokol, Lisa ; Garcia, Bob ; West, Mike ; Rodriguez, Justin ; Johnson, Kirk
Abstract :
Data mining can be used effectively to detect health care fraud and abuse. First, data mining has been successful at applying visualization to very large data sets and recognizing new and unusual patterns of activity. Second, data mining has allowed us to better direct and utilize limited health care fraud detection and investigative resources by recognizing and quantifying the underlying indicators of fraudulent claims, fraudulent providers, and fraudulent beneficiaries. A large amount of work must be performed prior to the actual data mining; probably about 80% percent of our time is spent getting ready to perform the actual data mining. These precursory tasks include: customer discussions, data extraction and cleaning, transformation of the database, and auditing (basic statistics and visualization of the information) of the data. The paper describes the tasks associated as they were performed for HCFA (Health Care Financing Administration) in the USA.
Keywords :
data mining; data visualisation; fraud; health care; insurance data processing; medical information systems; very large databases; HCFA; HCFA health care claim mining; Health Care Financing Administration; USA; auditing; customer discussions; data extraction; data mining; database transformation; fraudulent beneficiaries; fraudulent claims; fraudulent providers; health care fraud; health care fraud detection; investigative resources; precursory tasks; very large data sets; visualization; Cleaning; Data mining; Data visualization; Hospitals; Information systems; Kirk field collapse effect; Medical services; Pattern recognition; Statistics; Visual databases;
Conference_Titel :
System Sciences, 2001. Proceedings of the 34th Annual Hawaii International Conference on
Conference_Location :
Maui, HI, USA
Print_ISBN :
0-7695-0981-9
DOI :
10.1109/HICSS.2001.926570