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The Improvement Plan for Indicator System of Personal Information Management Level Diagnosis in the Era of the 4th Industrial Revolution: Focusing on Application of Personal Information Protection Standards linked to specific IT technologies

제4차 산업시대의 개인정보 관리수준 진단지표체계 개선방안: 특정 IT기술연계 개인정보보호기준 적용을 중심으로

  • Shin, Young-Jin (Division of Intelligent SW Engineering-Information Security, PaiChai University)
  • 신영진 (배재대학교 지능SW공학부 정보보안학)
  • Received : 2021.09.24
  • Accepted : 2021.12.20
  • Published : 2021.12.28

Abstract

This study tried to suggest ways to improve the indicator system to strengthen the personal information protection. For this purpose, the components of indicator system are derived through domestic and foreign literature, and it was selected as main the diagnostic indicators through FGI/Delphi analysis for personal information protection experts and a survey for personal information protection officers of public institutions. As like this, this study was intended to derive an inspection standard that can be reflected as a separate index system for personal information protection, by classifying the specific IT technologies of the 4th industrial revolution, such as big data, cloud, Internet of Things, and artificial intelligence. As a result, from the planning and design stage of specific technologies, the check items for applying the PbD principle, pseudonymous information processing and de-identification measures were selected as 2 common indicators. And the checklists were consisted 2 items related Big data, 5 items related Cloud service, 5 items related IoT, and 4 items related AI. Accordingly, this study expects to be an institutional device to respond to new technological changes for the continuous development of the personal information management level diagnosis system in the future.

개인정보보호위원회에서 공공기관을 대상으로 시행하고 있는 개인정보 관리수준 진단제도의 지표체계는 「개인정보 보호법」의 법적 준수사항을 점검하지만, 새로운 IT기술의 도입에 따르는 개인정보보호사항을 기준으로 적용하는 데 한계가 있었다. 따라서, 본 연구에서는 제4차 산업혁명의 핵심기술인 빅데이터, 클라우드, 사물인터넷, 인공지능을 특정IT기술의 도입에 따라, 개인정보보호가 강화될 수 있도록 별도의 지표체계가 운영될 수 있도록 지표체계의 개선방안을 제안하고자 한다. 이를 위해서 선정한 특정IT기술의 개인정보보호사항에 관한 국내외 문헌조사를 통해 지표체계의 구성요소를 도출하고, 공공기관의 개인정보 보호담당자 대상으로 한 설문조사 및 개인정보보호 전문가대상으로 FGI/Delphi분석을 통해 진단지표로 선정하였다. 이렇게 선정한 지표체계는 먼저, 모든 특정IT기술의 기획 및 설계단계에서부터 개인정보보호원칙(PbD)과 가명정보처리 및 비식별 조치에 관한 기준의 적용여부를 점검하는 공통지표를 선정하였다. 이외에 빅데이터에 관한 2개 점검항목, 클라우드에 관한 개인정보 처리방침 게재 사항 등 5개 점검항목, 사물인터넷관련 원칙적용, 로그기록 관리 등 5개 점검항목, 인공지능에 관한 원칙 적용 등 4개 점검항목을 선정하였다. 이처럼 본 연구는 개인정보 관리수준 진단제도의 발전을 위해 새로운 IT기술변화에 대응할 수 있도록 개인정보보호의 신속한 대응을 유도하는 진단제도가 되도록 제언하고자 하였다.

Keywords

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