A new look at fault tolerant network routing
Danny Dolev, Joe Halpern, et al.
STOC 1984
Recent studies have illustrated historical financial data could be used to predict future revenues and profits. Prediction models would be accurate when long-run data that traces back for multiple years is available. However, changes in service structures often result in alteration of the nomenclatures of the services, making the streams of financial transactions associated with affected services discontinue. Manually inquiring the history of changes can be tedious and unsuccessful especially in large companies. In this paper, we propose a machine learning based algorithm for automatically discovering service name replacements. The proposed methodology draws heterogeneous features from financial data available in most ledger databases, and hence is generalizable. Our proposed methodology is shown to be effective on ground-truth synthesized data generated from real-world IBM service delivery ledger database.
Danny Dolev, Joe Halpern, et al.
STOC 1984
Aly Megahed, Guang-Jie Ren, et al.
SCC 2015
Jehoshua Bruck, Danny Dolev, et al.
Journal of Parallel and Distributed Computing
Danny Dolev, Rüdiger Reischuk, et al.
PODC 1994