Triple DES: Privacy Preserving in Big Data Healthcare

Big data stand as a technique to retrieve, collect, manage and also analyze a vast quantity of structured and also unstructured data which are tough to process utilizing the traditional database that involves new technologies to examine them. With the expanding success of the big data usage, loads of challenges emerged. Timeless, scalability and privacy are the chief problems that researchers endeavor to work out. Privacy-preserving is at present a highly active domain of research. To guarantee a safe and trustworthy big data atmosphere, it is imperative to pinpoint the drawbacks of the existing solutions furthermore conceive directions for future study. In the given paper, the security and also the privacy-preserving on big data is proposed concerning the healthcare industry and to beat security issues in existing approach. Mainly anonymizations along with Triple DES techniques aimed at security purpose are incorporated. Triple DES offers a fairly simple technique of increasing the key size of DES to shield against such attacks, devoid of necessitates to design an entirely new block cipher algorithm. Data anonymization work as an information sanitizer whose target is to defend the data privacy. It encrypts or takes away the personally recognizable data as of the data sets in order that the persons about whom the data designate remain anonymous. In this work, a combination of anonymization and Triple DES are utilized that are shortly called as the A3DES algorithm. Experimental outcome reveals that the approach performed well when contrasted with all other related approaches.

[1]  Mohammad Shorfuzzaman,et al.  Leveraging cloud based big data analytics in knowledge management for enhanced decision making in organizations , 2017, ArXiv.

[2]  Victor I. Chang,et al.  Privacy-preserving smart IoT-based healthcare big data storage and self-adaptive access control system , 2018, Inf. Sci..

[3]  Hanan El Bakkali,et al.  A new technique ensuring privacy in big data: K-anonymity without prior value of the threshold k , 2018 .

[4]  Xinjun Qi,et al.  An Overview of Privacy Preserving Data Mining , 2012 .

[5]  J. Priyadarshini,et al.  Scalable Privacy Preservation in Big Data a Survey , 2015 .

[6]  Sheikh Iqbal Ahamed,et al.  A privacy preserving framework for RFID based healthcare systems , 2017, Future Gener. Comput. Syst..

[7]  E. Poovammal,et al.  A Survey on Privacy Preserving Data Mining Techniques , 2017 .

[8]  Ali A. Ghorbani,et al.  A Lightweight Privacy-Preserving Data Aggregation Scheme for Fog Computing-Enhanced IoT , 2017, IEEE Access.

[9]  Long Zhang,et al.  A New Data Collection Technique for Preserving Privacy , 2018, J. Priv. Confidentiality.

[10]  Abderrahim Beni Hssane,et al.  Big data security and privacy in healthcare: A Review , 2017, EUSPN/ICTH.

[11]  Pargi Sridhar Reddy A Novel Technique for Privacy Preserving Data Publishing , 2014 .

[12]  Mohammad Abdur Razzaque,et al.  A comprehensive review on privacy preserving data mining , 2015, SpringerPlus.

[13]  Li Xiu,et al.  Application of data mining techniques in customer relationship management: A literature review and classification , 2009, Expert Syst. Appl..

[14]  Jian Xu,et al.  Privacy-preserving data integrity verification by using lightweight streaming authenticated data structures for healthcare cyber-physical system , 2020, Future Gener. Comput. Syst..

[15]  Yuan Tian,et al.  A Secure Privacy-Preserving Data Aggregation Scheme Based on Bilinear ElGamal Cryptosystem for Remote Health Monitoring Systems , 2017, IEEE Access.

[16]  Shalini Batra,et al.  An efficient multi-party scheme for privacy preserving collaborative filtering for healthcare recommender system , 2018, Future Gener. Comput. Syst..

[17]  Abderrahim Beni Hssane,et al.  Big healthcare data: preserving security and privacy , 2018, Journal of Big Data.

[18]  Shuyu Li,et al.  Security and Privacy for Big Data , 2016 .

[19]  Malka N. Halgamuge,et al.  A Review on Security and Privacy Challenges of Big Data , 2018 .