Automated Knowledge Extraction from the Federal Acquisition Regulations System (FARS)

Author/Creator ORCID

Date

2017-12-11

Department

Program

Citation of Original Publication

Srishty Saha, Karuna Pande Joshi, Renee Frank, Michael Aebig, Jiayong Lin, Automated Knowledge Extraction from the Federal Acquisition Regulations System (FARS), December 11, 2017, DOI: 10.1109/BigData.2017.8258353

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© 2017 IEEE

Abstract

With increasing regulation of Big Data, it is becoming essential for organizations to ensure compliance with various data protection standards. The Federal Acquisition Regulations System (FARS) within the Code of Federal Regulations (CFR) includes facts and rules for individuals and organizations seeking to do business with the US Federal government. Parsing and gathering knowledge from such lengthy regulation documents is currently done manually and is time and human intensive. Hence, developing a cognitive assistant for automated analysis of such legal documents has become a necessity. We have developed semantically rich approach to automate the analysis of legal documents and have implemented a system to capture various facts and rules contributing towards building an efficient legal knowledge base that contains details of the relationships between various legal elements, semantically similar terminologies, deontic expressions and cross-referenced legal facts and rules. In this paper, we describe our framework along with the results of automating knowledge extraction from the FARS document (Title 48, CFR). Our approach can be used by Big Data Users to automate knowledge extraction from Large Legal documents