Privacy-Preserving Deep Learning via Additively Homomorphic Encryption
Title | Privacy-Preserving Deep Learning via Additively Homomorphic Encryption |
Publication Type | Conference Paper |
Year of Publication | 2019 |
Authors | Moriai, Shiho |
Conference Name | 2019 IEEE 26th Symposium on Computer Arithmetic (ARITH) |
Date Published | June 2019 |
Publisher | IEEE |
ISBN Number | 978-1-7281-3366-9 |
Keywords | additively homomorphic encryption, AI, Big Data, Data analysis, data privacy, Deep Learning, digital arithmetic, Encryption, financial data processing, financial institutions, fourth industrial revolution, fraud, Human Behavior, human factors, information and communication technology, IoT, JST CREST AI, neural nets, privacy, privacy issues, privacy-preserving deep learning, privacy-preserving financial data analytics systems, privacy-preserving logistic regression, pubcrawl, regression analysis, resilience, Resiliency, Scalability, social challenges, social life, social sciences computing, Society 5.0, super-smart society |
Abstract | We aim at creating a society where we can resolve various social challenges by incorporating the innovations of the fourth industrial revolution (e.g. IoT, big data, AI, robot, and the sharing economy) into every industry and social life. By doing so the society of the future will be one in which new values and services are created continuously, making people's lives more conformable and sustainable. This is Society 5.0, a super-smart society. Security and privacy are key issues to be addressed to realize Society 5.0. Privacy-preserving data analytics will play an important role. In this talk we show our recent works on privacy-preserving data analytics such as privacy-preserving logistic regression and privacy-preserving deep learning. Finally, we show our ongoing research project under JST CREST "AI". In this project we are developing privacy-preserving financial data analytics systems that can detect fraud with high security and accuracy. To validate the systems, we will perform demonstration tests with several financial institutions and solve the problems necessary for their implementation in the real world. |
URL | https://ieeexplore.ieee.org/document/8877418 |
DOI | 10.1109/ARITH.2019.00047 |
Citation Key | moriai_privacy-preserving_2019 |
- resilience
- neural nets
- privacy
- privacy issues
- privacy-preserving deep learning
- privacy-preserving financial data analytics systems
- privacy-preserving logistic regression
- pubcrawl
- regression analysis
- JST CREST AI
- Resiliency
- Scalability
- social challenges
- social life
- social sciences computing
- Society 5.0
- super-smart society
- additively homomorphic encryption
- IoT
- information and communication technology
- Human Factors
- Human behavior
- fraud
- fourth industrial revolution
- financial institutions
- financial data processing
- encryption
- digital arithmetic
- deep learning
- data privacy
- data analysis
- Big Data
- AI