展览 发表于 2025-4-1 02:19:25
http://reply.papertrans.cn/103/10217/1021662/1021662_61.pngEjaculate 发表于 2025-4-1 08:56:19
Robust Federated Learning with Realistic Corruptionf the noise is large, while those from benign clients are never filtered throughout the training process. For realistic gradient noise, our approach significantly outperforms existing methods, while the performance under the worst-case attack (i.e. the Byzantine attack) remains nearly the same. Expe分解 发表于 2025-4-1 13:27:42
http://reply.papertrans.cn/103/10217/1021662/1021662_63.pngBAIL 发表于 2025-4-1 15:46:21
0302-9743 t Conference on Web and Big Data, APWeb-WAIM 2024, held in Jinhua, China, during August 30–September 1, 2024...The 171 full papers presented in these proceedings were carefully reviewed and selected from 558 submissions...The papers are organized in the following topical sections:.Volume I: Natural船员 发表于 2025-4-1 19:16:33
SAM: A Spatial-Aware Learned Index for Disk-Based Multi-dimensional Searchonsumption. To address these issues, we propose a spatial-aware learned index for disk-based multi-dimensional search (SAM for short). Its core idea is to use a data transformation technique based on dual-distance metric to map more similar data in space into compact regions and the mapped values arAntagonist 发表于 2025-4-1 22:58:34
BIVXDB: A Bottom Information Invert Index to Speed up the Query Performance of LSM-Treerange query process involves filtering and sorting SSTables at each level, resulting in significant performance overhead. To enhance range query performance, we traverse all KV pairs during the SSTable creation phase when compaction, and construct an efficient global index named BIVX with LSM-tree’s斜谷 发表于 2025-4-2 05:48:13
SAM: A Spatial-Aware Learned Index for Disk-Based Multi-dimensional Searchonsumption. To address these issues, we propose a spatial-aware learned index for disk-based multi-dimensional search (SAM for short). Its core idea is to use a data transformation technique based on dual-distance metric to map more similar data in space into compact regions and the mapped values arsinoatrial-node 发表于 2025-4-2 07:06:03
Dual-Contrastive Multi-view Clustering Under the Guidance of Global Similarity and Pseudo-labeling studies focus on the selection of contrastive learning method in the feature space, while the selection of positive and negative samples in the contrast process is too arbitrary and often ignores the global relationship among data samples, which may lead to samples from the same clusters having喃喃而言 发表于 2025-4-2 12:13:17
BIVXDB: A Bottom Information Invert Index to Speed up the Query Performance of LSM-Treerange query process involves filtering and sorting SSTables at each level, resulting in significant performance overhead. To enhance range query performance, we traverse all KV pairs during the SSTable creation phase when compaction, and construct an efficient global index named BIVX with LSM-tree’sExplosive 发表于 2025-4-2 18:09:49
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