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Titlebook: Databases Theory and Applications; 29th Australasian Da Junhu Wang,Gao Cong,Jianzhong Qi Conference proceedings 2018 Springer International

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楼主: Arthur
发表于 2025-3-28 15:28:16 | 显示全部楼层
Angiographic Explorations: Techniquesnce. We show which factors influence this tradeoff. Based on our experiments, we present an adaptive prediction model that supports the DBMS in deciding whether to utilize these components. In addition, we evaluate non-coherent memory access as an additional access method and discuss its benefits and shortcomings.
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H. P. Krayenbuehl,M. Jakob,O. M. Hessel similarity measure to evaluate the similarity between two set of trajectories, borrowing the idea of the Earth Mover’s Distance. Empirical studies on a large real trajectory dataset show that our proposed similarity measure is effective and robust.
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The Natural History of Saphenous Vein Graftsh partitioning techniques to speed-up query processing along both dimensions. We conduct experiments on real-world large graph datasets and show benefits of our algorithm compared to several other baseline schemes.
发表于 2025-3-29 12:33:52 | 显示全部楼层
The economics of treatment choiceupled with contrast sequential pattern mining to extract behaviors preceding a churn event. The results demonstrate a significant lift in the performance of prediction models when pattern features are used in combination with demographic and account features.
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Trajectory Set Similarity Measure: An EMD-Based Approachel similarity measure to evaluate the similarity between two set of trajectories, borrowing the idea of the Earth Mover’s Distance. Empirical studies on a large real trajectory dataset show that our proposed similarity measure is effective and robust.
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