[期刊论文]


Differentially private random decision forests using smooth sensitivity

作   者:
Sam Fletcher;Md Zahidul Islam;

出版年:2017

页     码:16 - 31
出版社:Elsevier BV


摘   要:

We propose a new differentially-private decision forest algorithm that minimizes both the number of queries required, and the sensitivity of those queries. To do so, we build an ensemble of random decision trees that avoids querying the private data except to find the majority class label in the leaf nodes. Rather than using a count query to return the class counts like the current state-of-the-art, we use the Exponential Mechanism to only output the class label itself. This drastically reduces the sensitivity of the query - often by several orders of magnitude - which in turn reduces the amount of noise that must be added to preserve privacy. Our improved sensitivity is achieved by using ''smooth sensitivity'', which takes into account the specific data used in the query rather than assuming the worst-case scenario. We also extend work done on the optimal depth of random decision trees to handle continuous features, not just discrete features. This, along with several other improvements, allows us to create a differentially private decision forest with substantially higher predictive power than the current state-of-the-art.



关键字:

Privacy ; Data mining ; Decision tree ; Decision forest ; Differential privacy ; Smooth sensitivity


所属期刊
Expert Systems with Applications
ISSN: 0957-4174
来自:Elsevier BV