咨询与建议

限定检索结果

文献类型

  • 356 篇 期刊文献
  • 316 篇 会议
  • 1 册 图书

馆藏范围

  • 673 篇 电子文献
  • 0 种 纸本馆藏

日期分布

学科分类号

  • 452 篇 工学
    • 348 篇 计算机科学与技术...
    • 300 篇 软件工程
    • 96 篇 信息与通信工程
    • 50 篇 电气工程
    • 45 篇 控制科学与工程
    • 44 篇 生物工程
    • 39 篇 化学工程与技术
    • 30 篇 生物医学工程(可授...
    • 27 篇 电子科学与技术(可...
    • 24 篇 机械工程
    • 17 篇 光学工程
    • 16 篇 航空宇航科学与技...
    • 15 篇 建筑学
    • 13 篇 交通运输工程
    • 12 篇 仪器科学与技术
    • 12 篇 土木工程
    • 11 篇 动力工程及工程热...
  • 201 篇 理学
    • 116 篇 数学
    • 50 篇 生物学
    • 43 篇 统计学(可授理学、...
    • 34 篇 物理学
    • 25 篇 化学
    • 15 篇 系统科学
  • 143 篇 管理学
    • 88 篇 管理科学与工程(可...
    • 68 篇 图书情报与档案管...
    • 29 篇 工商管理
  • 29 篇 医学
    • 24 篇 临床医学
    • 18 篇 基础医学(可授医学...
    • 12 篇 药学(可授医学、理...
  • 15 篇 法学
    • 13 篇 社会学
  • 10 篇 农学
  • 9 篇 经济学
  • 3 篇 教育学
  • 3 篇 文学
  • 2 篇 艺术学

主题

  • 35 篇 semantics
  • 21 篇 knowledge engine...
  • 21 篇 training
  • 20 篇 conferences
  • 20 篇 data mining
  • 18 篇 feature extracti...
  • 15 篇 task analysis
  • 14 篇 deep learning
  • 12 篇 data models
  • 11 篇 big data
  • 11 篇 machine learning
  • 10 篇 computational mo...
  • 10 篇 visualization
  • 9 篇 object detection
  • 9 篇 knowledge graph
  • 8 篇 computer science
  • 8 篇 knowledge manage...
  • 8 篇 convolution
  • 8 篇 contrastive lear...
  • 8 篇 predictive model...

机构

  • 89 篇 school of inform...
  • 86 篇 school of comput...
  • 32 篇 college of compu...
  • 31 篇 key laboratory o...
  • 24 篇 key laboratory o...
  • 24 篇 key laboratory o...
  • 22 篇 key laboratory o...
  • 20 篇 key laboratory o...
  • 18 篇 key laboratory o...
  • 14 篇 key labs of data...
  • 14 篇 key laboratory o...
  • 14 篇 key laboratory o...
  • 13 篇 college of compu...
  • 13 篇 pazhou lab
  • 13 篇 department of ma...
  • 12 篇 key laboratory o...
  • 12 篇 key laboratory o...
  • 12 篇 key laboratory o...
  • 11 篇 school of softwa...
  • 10 篇 mininglamp acade...

作者

  • 31 篇 wu xindong
  • 29 篇 du xiaoyong
  • 28 篇 chen hong
  • 24 篇 xindong wu
  • 23 篇 sun geng
  • 21 篇 li cuiping
  • 20 篇 niyato dusit
  • 17 篇 wang meng
  • 17 篇 zhang jing
  • 17 篇 xiaoyong du
  • 15 篇 liu hongyan
  • 15 篇 xuegang hu
  • 15 篇 wang yang
  • 15 篇 li jiahui
  • 15 篇 wang jiacheng
  • 15 篇 chenyang bu
  • 14 篇 he jun
  • 13 篇 meng wang
  • 13 篇 hong chen
  • 13 篇 zhao zhang

语言

  • 617 篇 英文
  • 43 篇 其他
  • 13 篇 中文
检索条件"机构=Key Lab of Data Engineering and Knowledge Engineering of Ministry of Education"
673 条 记 录,以下是371-380 订阅
排序:
Semi-supervised classification on data streams with recurring concept drift and concept evolution
收藏 引用
knowledge-Based Systems 2021年 215卷 106749-106749页
作者: Zheng, Xiulin Li, Peipei Hu, Xuegang Yu, Kui Key Laboratory of Knowledge Engineering with Big Data (Hefei University of Technology) Ministry of Education China School of Computer Science and Information Engineering Hefei University of Technology Hefei 230601 China Anhui Province Key Laboratory of Industry Safety and Emergency Technology Hefei 230601 Anhui China
Mining non-stationary stream is a challenging task due to its unique property of infinite length and dynamic characteristics let alone the issues of concept drift, concept evolution and limited labeled data. Although ... 详细信息
来源: 评论
LSBert: Lexical Simplification Based on BERT
收藏 引用
IEEE/ACM Transactions on Audio Speech and Language Processing 2021年 29卷 3064-3076页
作者: Qiang, Jipeng Li, Yun Zhu, Yi Yuan, Yunhao Shi, Yang Wu, Xindong Department of Computer Science Jiangsu Yangzhou China Key Laboratory of Knowledge Engineering with Big Data Hefei University of Technology Ministry of Education Anhui Hefei China Mininglamp Academy of Sciences Minininglamp Beijing 100864 China
Lexical simplification (LS) aims at replacing complex words with simpler alternatives. LS commonly consists of three main steps: complex word identification, substitute generation, and substitute ranking. Existing LS ... 详细信息
来源: 评论
Max-Min Fairness in IRS-Aided MISO Broadcast Channel via Joint Transmit and Reflective Beamforming
Max-Min Fairness in IRS-Aided MISO Broadcast Channel via Joi...
收藏 引用
GLOBECOM 2020 - 2020 IEEE Global Communications Conference
作者: Caihong Kai Wenqi Ding Wei Huang Key Laboratory of Knowledge Engineering with Big Data (Hefei University of Technology) School of Computer Science and Information Engineering Hefei University of Technology Ministry of Education Hefei China
The potential application of intelligent reflecting surfaces (IRSs) for future wireless cellular communication systems has motivated the study of metasurface for achieving additional space degree of freedom, where IRS... 详细信息
来源: 评论
Toward Enhanced Robustness in Unsupervised Graph Representation Learning: A Graph Information Bottleneck Perspective
arXiv
收藏 引用
arXiv 2022年
作者: Wang, Jihong Luo, Minnan Li, Jundong Liu, Ziqi Zhou, Jun Zheng, Qinghua The Ministry of Education Key Lab for Intelligent Networks and Network Security School of Computer Science and Technology Xi’an Jiaotong University Xi’an710049 China The Department of Electrical and Computer Engineering Department of Computer Science School of Data Science University of Virginia United States The Ant Financial Services Group Zhejiang Hangzhou310000 China
Recent studies have revealed that GNNs are vulnerable to adversarial attacks. Most existing robust graph learning methods measure model robustness based on label information, rendering them infeasible when label infor... 详细信息
来源: 评论
Parallel generated method of transcriptional regulatory networks
Parallel generated method of transcriptional regulatory netw...
收藏 引用
作者: Liu, Shuai Ta, Na Lu, Mengye Liu, Gaocheng Bai, Weiling Li, Wenhui College of Computer Science Inner Mongolia University Hohhot010012 China Inner Mongolia Key Laboratory of Social Computing and Data Processing Hohhot010012 China Key Laboratory of Symbolic Computation and Knowledge Engineering of Ministry of Education Changchun130012 China College of Computer Science and Technology Jilin University Changchun130012 China
Generated method of transcriptional regulatory networks remains an important research in biology. Many approaches have been proposed to construct transcriptional regulatory networks. However, with the increase of ChIP... 详细信息
来源: 评论
Adaptive domain of dynamic distribution based on manifold space
Adaptive domain of dynamic distribution based on manifold sp...
收藏 引用
IEEE International Conference on Big knowledge (ICBK)
作者: Daoyuan Yu Xuegang Hu Key Laboratory of Knowledge Engineering with Big Data (Hefei University of Technology) Ministry of Education School of Computer Science and Information Engineering Hefei University of Technology Hefei China
Domain adaption aims to use the source domain knowledge to assist the model learning. Most of the existing methods are based on the feature representation learning model, which are achieved by aligning the data distri... 详细信息
来源: 评论
Incrementally zero-shot detection by an extreme value analyzer
arXiv
收藏 引用
arXiv 2021年
作者: Zheng, Sixiao Fu, Yanwei Hou, Yanxi Academy for Engineering & Technology Fudan University Shanghai Engineering Research Center of AI& Robotics Engineering Research Center of AI & Robotics Ministry of Education China School of Data Science MOE Frontiers Center for Brain Science Shanghai Key Lab of Intelligent Information Processing Fudan University China School of Data Science Fudan University China
Human beings not only have the ability to recognize novel unseen classes, but also can incrementally incorporate the new classes to existing knowledge preserved. However, zero-shot learning models assume that all seen... 详细信息
来源: 评论
Recovering Accurate labeling Information from Partially Valid data for Effective Multi-label Learning
arXiv
收藏 引用
arXiv 2020年
作者: Li, Ximing Wang, Yang College of Computer Science and Technology Jilin University China Key Laboratory of Symbolic Computation Knowledge Engineering of Ministry of Education Jilin University China Key Laboratory of Knowledge Engineering with Big Data Ministry of Education Hefei University of Technology China School of Computer Sci & Information Engineering Hefei University of Technology China
Partial Multi-label Learning (PML) aims to induce the multi-label predictor from datasets with noisy supervision, where each training instance is associated with several candidate labels but only partially valid. To a... 详细信息
来源: 评论
Disentangled Representation Learning with Transmitted Information Bottleneck
arXiv
收藏 引用
arXiv 2023年
作者: Dang, Zhuohang Luo, Minnan Jia, Chengyou Dai, Guang Wang, Jihong Chang, Xiaojun Wang, Jingdong The School of Computer Science and Technology The Ministry of Education Key Laboratory of Intelligent Networks and Network Security The Shaanxi Province Key Laboratory of Big Data Knowledge Engineering Xi'an Jiaotong University Shaanxi Xi’an710049 China The SGIT AI Laboratory Xi’an710048 China The State Grid Shaanxi Electric Power Company Ltd. State Grid Corporation of China Xi’an710048 China The School of Information Science and Technology University of Science and Technology of China Hefei230026 China Abu Dhabi United Arab Emirates Baidu Inc Beijing100085 China
Encoding only the task-related information from the raw data, i.e., disentangled representation learning, can greatly contribute to the robustness and generalizability of models. Although significant advances have bee... 详细信息
来源: 评论
Zero-knowledge Proof-based Practical Federated Learning on Blockchain
arXiv
收藏 引用
arXiv 2023年
作者: Xing, Zhibo Zhang, Zijian Li, Meng Liu, Jiamou Zhu, Liehuang Russello, Giovanni Asghar, Muhammad Rizwan The School of Computer Science The University of Auckland Auckland New Zealand The School of Cyberspace Science and Technology Beijing Institute of Technology Beijing100081 China Southeast Institute of Information Technology Beijing Institute of Technology Fujian351100 China Key Laboratory of Knowledge Engineering with Big Data Hefei University of Technology Ministry of Education School of Computer Science and Information Engineering Hefei University of Technology Anhui Hefei230601 China Anhui Province Key Laboratory of Industry Safety and Emergency Technology Intelligent Interconnected Systems Laboratory of Anhui Province Hefei University of Technology China The Department of Computer Science University of Surrey The School of Computer Science The University of Auckland Auckland New Zealand
Since the concern of privacy leakage extremely discourages user participation in sharing data, federated learning has gradually become a promising technique for both academia and industry for achieving collaborative l... 详细信息
来源: 评论