Efficient Hybrid Algorithms for Computing Clusters Overlap
Published in Procedia Computer Science, 2016
Recommended citation: Javangula, P., Modarre, K., Shenoy, P., Liu, Y., & Nayebi, A. (2017). " Efficient Hybrid Algorithms for Computing Clusters Overlap 1." Procedia Computer Science. 108: 1050-1059. https://www.sciencedirect.com/science/article/pii/S1877050917308050
Every year, marketers target different segments of the population with multitudes of advertisements. However, millions of dollars are wasted targeting similar segments with different advertisements. Furthermore, it is extremely expensive to compute the similarity between the segments because these segments can be very large, on the order of millions and billions. In this project, we come up with a fast probabilistic algorithm, described in Section 3, that can determine the similarity between large segments with a higher degree of accuracy than other known methods.
Recommended citation: Javangula P, Modarre K, Shenoy P, et al. Efficient Hybrid Algorithms for Computing Clusters Overlap[J]. Procedia Computer Science, 2017, 108: 1050-1059.