One of the possible definitions of privacy is the right that all people have to control information about themselves, and particularly who can access personal information, under what conditions and with what guarantees. In many cases privacy is a concept that is intertwined with security. However, security is a much broader concept that encompasses different mechanisms.
Security provides us with tools to help protect privacy. One of the most widely used security techniques to protect information is data encryption. Encryption allows us to protect our information from unauthorized access. So, if by encrypting I am protecting my data and access to it, isn’t that enough?
in many cases, the information in the metadata is unprotected. For example, the content of an email can be encrypted. This gives us a [false] idea about some protection. When we send the message, there is a destination address. If the email sent is addressed, for example, to a political party, that fact would be revealing sensitive information despite having protected the content of the message.
On the other hand, there are many scenarios in which we cannot encrypt the information. For example, if we want to outsource the processing of a database or release it for third parties to carry out analyses or studies for statistical purposes. In these types of scenarios we often encounter the problem that the database contains a large amount of personal or sensitive information, and even if we remove personal identifiers (e.g., name or passport number), it may not be sufficient to protect the privacy of individuals.
Anonymization (also known as “data masking”) is a set of techniques that allows the user to protect the privacy of the documents or information by modifying the data. This means anonymization with gaps (deletion), anonymization with placeholders (substitution) or pseudoanonymizing data.
In general, anonymization aims to alter the data in such a way that, even if it is subsequently processed by a third party, the identity or sensitive attributes of the persons whose data is being processed cannot be revealed.
Privacy management is regulated similarly across legal jurisdictions in the world. In Europe, it is known as GDPR (General Data Protection Regulation). which was approved in 2016 and implemented in 2018. In the US, the California Consumer Privacy Act (CCPA) was approved in January 2018 and is applicable to businesses that
It is expected that most other States will follow the spirit of California’s CPA any time soon. This will affect the way organizations collect, hold, release, buy and sell personal data.
In Japan the reformed privacy law came into full force May 30, 2017 and it is known as Japanese Act on Protection of Personal Information (APPI). The main differences with the European GDPR are the specific clauses defining private identifiable which in Europe are “Personal data means any information relating to an identified or identifiable natural person” but APPI itemizes.
In general, all privacy laws want to provide citizens with the right to:
The new regulations seek to regulate the processing of our personal data. Each one of them establishes that data must be subject to adequate guarantees, minimizing personal data.
PangeaMT, is Pangeanic’s R&D arm. We lead the MAPA Project – the first multilingual anonymization effort making deep use of bilingual encoders for transformers in order to identify actors, personal identifiers such as names and surnames, addresses, job titles and functions, and a deep taxonomy.
Together with our partners (Centre National pour la Recherche Scientifique in Paris, Vicomtech, etc.) we are developing the first truly multilingual anonymization software. The project will release a fully customizable, open-source solution that can be adopted by Public Administrations to start their journey in de-identification and anonymization. Corporations will also be able to benefit from MAPA as the commercial version will be released on 01.01.2021.
PangeaMT will showcase its anonymization software for the Japanese market at the forthcoming AI EXPO in Tokyo from 28th-30th October, following its successful AI EXPO introduction of Japanese machine translation.