New Paper - Fast Private Adaptive Query Answering for Large Data Domains
I have a new paper out with my colleagues from UMass Amherst and Penn State: Fast Private Adaptive Query Answering for Large Data Domains. Marginals are statistics that capture low-dimensional structure and correlations among sets of attributes in a dataset and are an important building block for differentially private algorithms. In this paper, we focus on answering large workloads of marginals for discrete tabular datasets over large data domains (i.e., many attributes), which is a computational bottleneck for state-of-the-art query answering and synthetic data mechanisms such as AIM. We introduce a new query answering mechanism called AIM+GReM that integrates our GReM-MLE (Gaussian Residual-to-Marginals) reconstruction method with AIM, which yields improved scalability and competitive error on large datasets.