Abstract :
We demonstrate Damson, a novel and powerful tool for publishing the results of biomedical research with strong privacy guarantees. Damson is developed based on the theory of differential privacy, which ensures that the adversary cannot infer the presence or absence of any individual from the published results, even with substantial background knowledge. Damson supports a variety of analysis tasks that are common in biomedical studies, including histograms, marginals, data cubes, classification, regression, clustering, and ad-hoc selection-counts. Additionally, Damson contains an effective query optimization engine, which obtains high accuracy for analysis results, while minimizing the privacy costs of performing such analysis.
Keywords :
data analysis; data privacy; query processing; Damson demonstration; ad-hoc selection-counts; biomedical research; data cubes; differential privacy; histograms; large data analysis; marginals; pattern classification; pattern clustering; regression analysis; substantial background knowledge; Accuracy; Data privacy; Histograms; Logistics; Noise; Privacy; Remuneration; differential privacy; large data; medical analysis;