Deep Private-Feature Extraction

9 Feb 2018Seyed Ali OsiaAli TaheriAli Shahin ShamsabadiKleomenis KatevasHamed HaddadiHamid R. Rabiee

We present and evaluate Deep Private-Feature Extractor (DPFE), a deep model which is trained and evaluated based on information theoretic constraints. Using the selective exchange of information between a user's device and a service provider, DPFE enables the user to prevent certain sensitive information from being shared with a service provider, while allowing them to extract approved information using their model... (read more)

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