Biblio
Filters: Author is Zhang, Yuyu [Clear All Filters]
A Swarm-based Data Sanitization Algorithm in Privacy-Preserving Data Mining. 2019 IEEE Congress on Evolutionary Computation (CEC). :1461–1467.
.
2019. In recent decades, data protection (PPDM), which not only hides information, but also provides information that is useful to make decisions, has become a critical concern. We present a sanitization algorithm with the consideration of four side effects based on multi-objective PSO and hierarchical clustering methods to find optimized solutions for PPDM. Experiments showed that compared to existing approaches, the designed sanitization algorithm based on the hierarchical clustering method achieves satisfactory performance in terms of hiding failure, missing cost, and artificial cost.
A Multiple Objective PSO-Based Approach for Data Sanitization. 2018 Conference on Technologies and Applications of Artificial Intelligence (TAAI). :148–151.
.
2018. In this paper, a multi-objective particle swarm optimization (MOPSO)-based framework is presented to find the multiple solutions rather than a single one. The presented grid-based algorithm is used to assign the probability of the non-dominated solution for next iteration. Based on the designed algorithm, it is unnecessary to pre-define the weights of the side effects for evaluation but the non-dominated solutions can be discovered as an alternative way for data sanitization. Extensive experiments are carried on two datasets to show that the designed grid-based algorithm achieves good performance than the traditional single-objective evolution algorithms.