New algorithms increase the privacy of sensitive data

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New algorithms increase the privacy of sensitive data


Credit: Pixabay/CC0 Public Domain

When you visit a doctor, information such as medication prescriptions, X-rays, and genetic tests is recorded to assist the physician. In these cases, a technology called federated learning, or collaborative learning, is used to reduce the risk of exposing sensitive data. This technology allows multiple devices to work together without sharing actual data with each other.

Saloni Kwatra, doctoral student at the Department of Computer Science, has identified flaws in the technology in her dissertation and developed to enhance user security.

“Federated learning is often used to protect . However, during system updates, sensitive information can still leak. My research has led to algorithms that can prevent such leaks,” says Saloni Kwatra.

To achieve this, she has used two techniques: k-anonymity and differential privacy. With k-anonymity, data is organized so that each combination of identifying details (such as height, age, or eye color) is shared by multiple individuals. This makes it difficult to distinguish or identify anyone, as they are grouped with others who have the same characteristics.

Differential privacy, on the other hand, ensures that the results of an analysis are not significantly affected whether or not a specific individual is included in the dataset. This way, individual privacy is protected even when data is used for research or studies.

Methods to combat interference attacks

Saloni Kwatra has also explored how synthetic data, which imitates real patterns without containing actual personal information, can be protected against so-called attribute inference attacks. In these attacks, an adversary attempts to reconstruct specific characteristics of an individual. These new algorithms are particularly relevant for sectors where is crucial, such as health care, finance, and telecommunications.

“In those areas, these algorithms can help maintain user privacy while making systems both more secure and efficient,” says Saloni Kwatra.

More information:
Navigating data privacy and utility: a strategic perspective

Provided by
Umea University


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New algorithms increase the privacy of sensitive data (2024, October 29)
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