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10 Machine Learning Blueprints You Should Know for Cybersecurity
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With the growing prevalence of machine learning, some concerns have been raised about how it could potentially be a risk to user privacy. Prior research has shown that even carefully anonymized datasets can be analyzed by attackers and de-anonymized using pattern analysis or background knowledge. The core idea that privacy is based upon is a user’s right to control the collection, storage, and use of their data. Additionally, privacy regulations mandate that no sensitive information about a user should be leaked, and they also restrict what user information can be used for machine learning tasks such as ad targeting or fraud detection. This has led to concerns about user data being used for machine learning, and privacy is a crucial topic every data scientist needs to know about.
This chapter covers differential privacy, a technique used to perform data analysis while maintaining user privacy at the same time. Differential...