子图匹配是图论中最基本的操作.研究子图匹配的一个变种,即:在一个节点拥有若干元素的大图数据库中,找到与给定查询图结构同构并且对应节点元素的加权集合包含度大于给定值的所有子图,称作基于包含度的子图匹配(subgraph matching with ...子图匹配是图论中最基本的操作.研究子图匹配的一个变种,即:在一个节点拥有若干元素的大图数据库中,找到与给定查询图结构同构并且对应节点元素的加权集合包含度大于给定值的所有子图,称作基于包含度的子图匹配(subgraph matching with inclusion degree,简称SMID).该查询能够应用于多种场景,包括论文检索、社区发现、企业招聘等.为高效实现SMID,设计了同时包含节点元素和图结构信息的数据签名与查询签名,在离线处理阶段,利用数据签名为数据图建立动态签名树(DS-Tree),以加快在线处理时图节点的匹配过程.为解决DS-Tree占用空间大的问题,设计了一种DS-Tree压缩方法,在对查询效率影响不大的情况下减小了索引空间.为进一步加快查询效率,还提出了支配子图查询算法.在真实数据和人工数据上的实验结果表明,所提出的方法在效率和扩展性方面优于现有其他方法.展开更多
Machine-learning methodologies have increasingly been embraced in landslide susceptibility assessment.However,the considerable time and financial burdens of landslide inventories often result in persistent data scarci...Machine-learning methodologies have increasingly been embraced in landslide susceptibility assessment.However,the considerable time and financial burdens of landslide inventories often result in persistent data scarcity,which frequently impedes the generation of accurate and informative landslide susceptibility maps.Addressing this challenge,this study compiled a nationwide dataset and developed a transfer learning-based model to evaluate landslide susceptibility in the Chongqing region specifically.Notably,the proposed model,calibrated with the warmup-cosine annealing(WCA)learning rate strategy,demonstrated remarkable predictive capabilities,particularly in scenarios marked by data limitations and when training data were normalized using parameters from the source region.This is evidenced by the area under the receiver operating characteristic curve(AUC)values,which exhibited significant improvements of 51.00%,24.40%and 2.15%,respectively,compared to a deep learning model,in contexts where only 1%,5%and 10%of data from the target region were used for retraining.Simultaneously,there were reductions in loss of 16.12%,27.61%and 15.44%,respectively,in these instances.展开更多
文摘子图匹配是图论中最基本的操作.研究子图匹配的一个变种,即:在一个节点拥有若干元素的大图数据库中,找到与给定查询图结构同构并且对应节点元素的加权集合包含度大于给定值的所有子图,称作基于包含度的子图匹配(subgraph matching with inclusion degree,简称SMID).该查询能够应用于多种场景,包括论文检索、社区发现、企业招聘等.为高效实现SMID,设计了同时包含节点元素和图结构信息的数据签名与查询签名,在离线处理阶段,利用数据签名为数据图建立动态签名树(DS-Tree),以加快在线处理时图节点的匹配过程.为解决DS-Tree占用空间大的问题,设计了一种DS-Tree压缩方法,在对查询效率影响不大的情况下减小了索引空间.为进一步加快查询效率,还提出了支配子图查询算法.在真实数据和人工数据上的实验结果表明,所提出的方法在效率和扩展性方面优于现有其他方法.
基金Project(2301DH09002)supported by the Bureau of Planning and Natural Resources,Chongqing,ChinaProject(2022T3051)supported by the Science and Technology Service Network Initiative,ChinaProject(2018-ZL-01)supported by the Sichuan Transportation Science and Technology,China。
文摘Machine-learning methodologies have increasingly been embraced in landslide susceptibility assessment.However,the considerable time and financial burdens of landslide inventories often result in persistent data scarcity,which frequently impedes the generation of accurate and informative landslide susceptibility maps.Addressing this challenge,this study compiled a nationwide dataset and developed a transfer learning-based model to evaluate landslide susceptibility in the Chongqing region specifically.Notably,the proposed model,calibrated with the warmup-cosine annealing(WCA)learning rate strategy,demonstrated remarkable predictive capabilities,particularly in scenarios marked by data limitations and when training data were normalized using parameters from the source region.This is evidenced by the area under the receiver operating characteristic curve(AUC)values,which exhibited significant improvements of 51.00%,24.40%and 2.15%,respectively,compared to a deep learning model,in contexts where only 1%,5%and 10%of data from the target region were used for retraining.Simultaneously,there were reductions in loss of 16.12%,27.61%and 15.44%,respectively,in these instances.