Context-Aware Local Differential Privacy
About
Local differential privacy (LDP) is a strong notion of privacy for individual users that often comes at the expense of a significant drop in utility. The classical definition of LDP assumes that all elements in the data domain are equally sensitive. However, in many applications, some symbols are more sensitive than others. This work proposes a context-aware framework of local differential privacy that allows a privacy designer to incorporate the application's context into the privacy definition. For binary data domains, we provide a universally optimal privatization scheme and highlight its connections to Warner's randomized response (RR) and Mangat's improved response. Motivated by geolocation and web search applications, for $k$-ary data domains, we consider two special cases of context-aware LDP: block-structured LDP and high-low LDP. We study discrete distribution estimation and provide communication-efficient, sample-optimal schemes and information-theoretic lower bounds for both models. We show that using contextual information can require fewer samples than classical LDP to achieve the same accuracy.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Regression | California Housing Standard (test) | MSE0.5912 | 78 | |
| Regression | Communities and Crime 1990 US Census / 1990 US LEMAS / 1995 FBI UCR (test (20%)) | MSE (Mean)0.0184 | 78 | |
| Regression | Criteo Sponsored Search Conversion Log (test) | MSE4.32e+3 | 78 | |
| Training Process | Communities and Crime (train) | Training Time (s)0.5679 | 5 | |
| Training Process | Criteo Sponsored Search Conversion Log (train) | Training Time8.2425 | 5 | |
| Training Process | California Housing (train) | Training Time6.1876 | 5 |