Accession Number : AD1016815


Title :   Big Data Analysis of Contractor Performance Information for Services Acquisition in DoD: A Proof of Concept


Descriptive Note : Conference Paper


Corporate Author : Naval Postgraduate School Monterey United States


Personal Author(s) : Apte,Uday ; Rendon,Rene ; Dixon,Mike


Full Text : https://apps.dtic.mil/dtic/tr/fulltext/u2/1016815.pdf


Report Date : 30 Apr 2016


Pagination or Media Count : 46


Abstract : This paper explores the use of Big Data analytic techniques to explore and analyze large datasets that are used to capture information about DoD services acquisitions. We describe the burgeoning field of Big Data analytics, how it is used in the private sector, and how it could potentially be used in acquisition research. We test the application of Big Data analytic techniques by applying them to a dataset of CPARS (Contractor Performance Assessment Reporting System) ratings of acquired services, and we create predictive models that explore the causes of failed services contracts using three analytic techniques: logistic regression, decision tree analysis, and neural networks. The report concludes with recommendations for using Big Data analytic techniques in acquisition.


Descriptors :   department of defense , acquisitions , Contract administration , contractors , prediction , REGRESSION ANALYSIS , neural nets


Distribution Statement : APPROVED FOR PUBLIC RELEASE